718 lines
36 KiB
TeX
718 lines
36 KiB
TeX
\documentclass{bioinfo}
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\copyrightyear{2018}
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\pubyear{2018}
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\usepackage{graphicx}
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\usepackage{hyperref}
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\usepackage{url}
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\usepackage{amsmath}
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\usepackage[ruled,vlined]{algorithm2e}
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\newcommand\mycommfont[1]{\footnotesize\rmfamily{\it #1}}
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\SetCommentSty{mycommfont}
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\SetKwComment{Comment}{$\triangleright$\ }{}
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\usepackage{natbib}
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\bibliographystyle{apalike}
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\DeclareMathOperator*{\argmax}{argmax}
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\begin{document}
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\firstpage{1}
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\title[Aligning nucleotide sequences with minimap2]{Minimap2: versatile pairwise alignment for nucleotide sequences}
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\author[Li]{Heng Li}
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\address{Broad Institute, 415 Main Street, Cambridge, MA 02142, USA}
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\maketitle
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\begin{abstract}
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\section{Motivation:} Recent advances in sequencing technologies promise
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ultra-long reads of $\sim$100 kilo bases (kb) in average, full-length mRNA or
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cDNA reads in high throughput and genomic contigs over 100 mega bases (Mb) in
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length. Existing alignment programs are unable or inefficient to process such data
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at scale, which presses for the development of new alignment algorithms.
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\section{Results:} Minimap2 is a general-purpose alignment program to map DNA or long
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mRNA sequences against a large reference database. It works with accurate short
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reads of $\ge$100bp in length, $\ge$1kb genomic reads at error rate $\sim$15\%,
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full-length noisy Direct RNA or cDNA reads, and assembly contigs or closely
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related full chromosomes of hundreds of megabases in length. Minimap2 does
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split-read alignment, employs concave gap cost for long insertions and
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deletions (INDELs) and introduces new heuristics to reduce spurious alignments.
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It is 3--4 times as fast as mainstream short-read mappers at comparable
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accuracy, and is $\ge$30 times faster than long-read genomic or cDNA
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mappers at higher accuracy, surpassing most aligners specialized in one type of
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alignment.
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\section{Availability and implementation:}
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\href{https://github.com/lh3/minimap2}{https://github.com/lh3/minimap2}
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\section{Contact:} hengli@broadinstitute.org
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\end{abstract}
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\section{Introduction}
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Single Molecule Real-Time (SMRT) sequencing technology and Oxford Nanopore
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technologies (ONT) produce reads over 10kbp in length at an error rate
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$\sim$15\%. Several aligners have been developed for such
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data~\citep{Chaisson:2012aa,Li:2013aa,Liu:2016ab,Sovic:2016aa,Liu:2017aa,Lin:2017aa,Sedlazeck169557}.
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Most of them were five times as slow as mainstream short-read
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aligners~\citep{Langmead:2012fk,Li:2013aa} in terms of the number of bases
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mapped per second. We speculated there could be substantial room for speedup on
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the thought that 10kb long sequences should be easier to map than 100bp reads
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because we can more effectively skip repetitive regions, which are often the
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bottleneck of short-read alignment. We confirmed our speculation by achieving
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approximate mapping 50 times faster than BWA-MEM~\citep{Li:2016aa}.
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\citet{Suzuki130633} extended our work with a fast and novel algorithm on
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generating base-level alignment, which in turn inspired us to develop minimap2
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with added functionality.
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Both SMRT and ONT have been applied to the sequencing of spliced mRNAs (RNA-seq). While
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traditional mRNA aligners work~\citep{Wu:2005vn,Iwata:2012aa}, they are not
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optimized for long noisy sequence reads and are tens of times slower than
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dedicated long-read aligners. When developing minimap2 initially for aligning
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genomic DNA only, we realized minor modifications could enable the base
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algorithm to map mRNAs as well. Minimap2 becomes a first RNA-seq aligner
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specifically designed for long noisy reads. We have also extended the original
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algorithm to map short reads at a speed faster than several mainstream
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short-read mappers.
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In this article, we will describe the minimap2 algorithm and its applications
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to different types of input sequences. We will evaluate the performance and
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accuracy of minimap2 on several simulated and real data sets and demonstrate
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the versatility of minimap2.
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\begin{methods}
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\section{Methods}
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Minimap2 follows a typical seed-chain-align procedure as is used by most
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full-genome aligners. It collects minimizers~\citep{Roberts:2004fv} of the
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reference sequences and indexes them in a hash table. Then for each query
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sequence, minimap2 takes query minimizers as \emph{seeds}, finds exact matches
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(i.e. \emph{anchors}) to the reference, and identifies sets of colinear anchors as
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\emph{chains}. If base-level alignment is requested, minimap2 applies dynamic
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programming (DP) to extend from the ends of chains and to close
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regions between adjacent anchors in chains.
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Minimap2 uses indexing and seeding algorithms similar to
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minimap~\citep{Li:2016aa}, and furthers the predecessor with more accurate
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chaining, the ability to produce base-level alignment and the support of
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spliced alignment.
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\subsection{Chaining}
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\subsubsection{Chaining}
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An \emph{anchor} is a 3-tuple $(x,y,w)$, indicating interval $[x-w+1,x]$ on the
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reference matching interval $[y-w+1,y]$ on the query. Given a list of anchors
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sorted by ending reference position $x$, let $f(i)$ be the maximal chaining
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score up to the $i$-th anchor in the list. $f(i)$ can be calculated with
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dynamic programming:
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\begin{equation}\label{eq:chain}
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f(i)=\max\big\{\max_{i>j\ge 1} \{ f(j)+\alpha(j,i)-\beta(j,i) \},w_i\big\}
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\end{equation}
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where $\alpha(j,i)=\min\big\{\min\{y_i-y_j,x_i-x_j\},w_i\big\}$ is the number of
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matching bases between the two anchors. $\beta(j,i)>0$ is the gap cost. It
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equals $\infty$ if $y_j\ge y_i$ or $\max\{y_i-y_j,x_i-x_j\}>G$ (i.e. the
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distance between two anchors is too large); otherwise
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\begin{equation}\label{eq:chain-gap}
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\beta(j,i)=\gamma_c\big((y_i-y_j)-(x_i-x_j)\big)
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\end{equation}
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In implementation, a gap of length $l\not=0$ costs
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\[
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\gamma_c(l)=0.01\cdot \bar{w}\cdot|l|+0.5\log_2|l|
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\]
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where $\bar{w}$ is the average seed length. For $N$ anchors, directly computing all $f(\cdot)$ with
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Eq.~(\ref{eq:chain}) takes $O(N^2)$ time. Although theoretically faster
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chaining algorithms exist~\citep{Abouelhoda:2005aa}, they
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are inapplicable to generic gap cost, complex to implement and usually
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associated with a large constant. We introduced a simple heuristic to
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accelerate chaining.
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We note that if anchor $i$ is chained to $j$, chaining $i$ to a predecessor
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of $j$ is likely to yield a lower score. When evaluating Eq.~(\ref{eq:chain}),
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we start from anchor $i-1$ and stop the process if we cannot find a better
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score after up to $h$ iterations. This approach reduces the average time to
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$O(hN)$. In practice, we can almost always find the optimal chain with
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$h=50$; even if the heuristic fails, the optimal chain is often close.
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\subsubsection{Backtracking}
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Let $P(i)$ be the index of the best predecessor of anchor $i$. It equals 0 if
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$f(i)=w_i$ or $\argmax_j\{f(j)+\alpha(j,i)-\beta(j,i)\}$ otherwise. For each
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anchor $i$ in the descending order of $f(i)$, we apply $P(\cdot)$ repeatedly to
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find its predecessor and mark each visited $i$ as `used', until $P(i)=0$ or we
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reach an already `used' $i$. This way we find all chains with no anchors used
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in more than one chains.
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\subsubsection{Identifying primary chains}\label{sec:primary}
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In the absence of copy number changes, each query segment should not be mapped
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to two places in the reference. However, chains found at the previous step may
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have significant or complete overlaps due to repeats in the reference~\citep{Li:2010fk}.
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Minimap2 used the following procedure to identify \emph{primary chains} that do
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not greatly overlap on the query.
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Let $Q$ be an empty set initially. For each
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chain from the best to the worst according to their chaining scores: if on the
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query, the chain overlaps with a chain in $Q$ by 50\% or higher percentage of
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the shorter chain, mark the chain as secondary to the chain in $Q$; otherwise,
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add the chain to $Q$. In the end, $Q$ contains all the primary chains. We did
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not choose a more sophisticated data structure (e.g. range tree or k-d tree)
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because this step is not the performance bottleneck.
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For each primary chain, minimap2 estimates its mapping quality with an
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empirical formula:
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\[
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{\rm mapQ}=40\cdot (1-f_2/f_1)\cdot\min\{1,m/10\}\cdot\log f_1
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\]
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where $m$ is the number of anchors on the primary chain, $f_1$ is the chaining
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score, and $f_2\le f_1$ is the score of the best chain that is secondary to the
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primary chain. Intuitively, a chain is assigned to a higher mapping quality if
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it is long and its best secondary chain is weak.
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\subsubsection{Estimating per-base sequence divergence}
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Suppose a query sequence harbors $n$ seeds of length $k$, $m$ of which are
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present in a chain. We want to estimate the sequence divergence $\epsilon$
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between the query and the reference sequences in the chain. This is useful
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when base-level alignment is too expensive to perform.
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If we model substitutions with a homogeneous Poisson process along the query
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sequence, the probablity of seeing $k$ consecutive bases without substitutions
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is $e^{-k\epsilon}$. On the assumption that all $k$-mers are independent of
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each other, the likelihood function of $\epsilon$ is
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\[
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\mathcal{L}(\epsilon|n,m,k)=e^{-m\cdot k\epsilon}(1-e^{-k\epsilon})^{n-m}
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\]
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The maximum likelihood estimate of $\epsilon$ is
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\[
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\hat{\epsilon}=\frac{1}{k}\log\frac{n}{m}
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\]
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In reality, sequencing errors are sometimes clustered and $k$-mers are not
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independent of each other, especially when we take minimizers as seeds. These
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violate the assumptions in the derivation above. As a result, $\hat{\epsilon}$
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is only approximate and can be biased. It also ignores long deletions from the
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reference sequence. In practice, fortunately, $\hat{\epsilon}$ is often close
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to and strongly correlated with the sequence divergence estimated from
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base-level alignments. On the several datasets used in
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Section~\ref{sec:long-genomic}, the Spearman correlation coefficient is around
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$0.9$.
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\subsubsection{Indexing with homopolymer compressed $k$-mers}
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SmartDenovo
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(\href{https://github.com/ruanjue/smartdenovo}{https://github.com/ruanjue/smartdenovo};
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J. Ruan, personal communication) indexes reads with homopolymer-compressed (HPC)
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$k$-mers and finds the strategy improves overlap sensitivity for SMRT reads.
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Minimap2 adopts the same heuristic.
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The HPC string of a string $s$, denoted by ${\rm HPC}(s)$, is constructed by
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contracting homopolymers in $s$ to a single base. An HPC $k$-mer of $s$ is a
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$k$-long substring of ${\rm HPC}(s)$. For example, suppose $s={\tt GGATTTTCCA}$,
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${\rm HPC}(s)={\tt GATCA}$ and the first HPC 4-mer is ${\tt GATC}$.
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To demonstrate the effectiveness of HPC $k$-mers, we performed read overlapping
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for the example {\it E. coli} SMRT reads from PBcR~\citep{Berlin:2015xy}, using
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different types of $k$-mers. With normal 15bp minimizers per 5bp window,
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minimap2 finds 90.9\% of $\ge$2kb overlaps inferred from the read-to-reference
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alignment. With HPC 19-mers per 5bp window, minimap2 finds 97.4\% of overlaps. It achieves this
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higher sensitivity by indexing 1/3 fewer minimizers, which further helps
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performance. HPC-based indexing reduces the sensitivity for current ONT reads, though.
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\subsection{Aligning genomic DNA}\label{sec:genomic}
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\subsubsection{Alignment with 2-piece affine gap cost}
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Minimap2 performs DP-based global alignment between adjacent anchors in a
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chain. It uses a 2-piece affine gap cost~\citep{Gotoh:1990aa}:
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\begin{equation}\label{eq:2-piece}
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\gamma_a(l)=\min\{q+|l|\cdot e,\tilde{q}+|l|\cdot\tilde{e}\}
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\end{equation}
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Without losing generality, we always assume $q+e<\tilde{q}+\tilde{e}$.
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On the condition that $e>\tilde{e}$, it applies cost $q+|l|\cdot e$ to gaps
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shorter than $\lceil(\tilde{q}-q)/(e-\tilde{e})\rceil$ and applies
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$\tilde{q}+|l|\cdot\tilde{e}$ to longer gaps. This scheme helps to recover
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longer insertions and deletions~(INDELs).
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The equation to compute the optimal alignment under $\gamma_a(\cdot)$ is
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\begin{equation}\label{eq:ae86}
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\left\{\begin{array}{l}
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H_{ij} = \max\{H_{i-1,j-1}+s(i,j),E_{ij},F_{ij},\tilde{E}_{ij},\tilde{F}_{ij}\}\\
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E_{i+1,j}= \max\{H_{ij}-q,E_{ij}\}-e\\
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F_{i,j+1}= \max\{H_{ij}-q,F_{ij}\}-e\\
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\tilde{E}_{i+1,j}= \max\{H_{ij}-\tilde{q},\tilde{E}_{ij}\}-\tilde{e}\\
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\tilde{F}_{i,j+1}= \max\{H_{ij}-\tilde{q},\tilde{F}_{ij}\}-\tilde{e}
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\end{array}\right.
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\end{equation}
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where $s(i,j)$ is the score between the $i$-th reference base and $j$-th query
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base. Eq.~(\ref{eq:ae86}) is a natural extension to the equation under affine
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gap cost~\citep{Gotoh:1982aa,Altschul:1986aa}.
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\subsubsection{The Suzuki-Kasahara formulation}
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When we allow gaps longer than several hundred base pairs, nucleotide-level
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alignment is much slower than chaining. SSE acceleration is critical to the
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performance of minimap2. Traditional SSE implementations~\citep{Farrar:2007hs}
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based on Eq.~(\ref{eq:ae86}) can achieve 16-way parallelization for short
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sequences, but only 4-way parallelization when the peak alignment score reaches
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32767. Long sequence alignment may exceed this threshold. Inspired by
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\citet{Wu:1996aa} and the following work, \citet{Suzuki130633} proposed a
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difference-based formulation that lifted this limitation.
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In case of 2-piece gap cost, define
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\[
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\left\{\begin{array}{ll}
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u_{ij}\triangleq H_{ij}-H_{i-1,j} & v_{ij}\triangleq H_{ij}-H_{i,j-1} \\
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x_{ij}\triangleq E_{i+1,j}-H_{ij} & \tilde{x}_{ij}\triangleq \tilde{E}_{i+1,j}-H_{ij} \\
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y_{ij}\triangleq F_{i,j+1}-H_{ij} & \tilde{y}_{ij}\triangleq \tilde{F}_{i,j+1}-H_{ij}
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\end{array}\right.
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\]
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We can transform Eq.~(\ref{eq:ae86}) to
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\begin{equation}\label{eq:suzuki}
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\left\{\begin{array}{lll}
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z_{ij}&=&\max\{s(i,j),x_{i-1,j}+v_{i-1,j},y_{i,j-1}+u_{i,j-1},\\
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&&\tilde{x}_{i-1,j}+v_{i-1,j},\tilde{y}_{i,j-1}+u_{i,j-1}\}\\
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u_{ij}&=&z_{ij}-v_{i-1,j}\\
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v_{ij}&=&z_{ij}-u_{i,j-1}\\
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x_{ij}&=&\max\{0,x_{i-1,j}+v_{i-1,j}-z_{ij}+q\}-q-e\\
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y_{ij}&=&\max\{0,y_{i,j-1}+u_{i,j-1}-z_{ij}+q\}-q-e\\
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\tilde{x}_{ij}&=&\max\{0,\tilde{x}_{i-1,j}+v_{i-1,j}-z_{ij}+\tilde{q}\}-\tilde{q}-\tilde{e}\\
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\tilde{y}_{ij}&=&\max\{0,\tilde{y}_{i,j-1}+u_{i,j-1}-z_{ij}+\tilde{q}\}-\tilde{q}-\tilde{e}
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\end{array}\right.
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\end{equation}
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where $z_{ij}$ is a temporary variable that does not need to be stored.
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An important property of Eq.~(\ref{eq:suzuki}) is that all values are bounded
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by scoring parameters. To see that,
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\[
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x_{ij}=E_{i+1,j}-H_{ij}=\max\{-q,E_{ij}-H_{ij}\}-e
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\]
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With $E_{ij}\le H_{ij}$, we have
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\[
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-q-e\le x_{ij}\le\max\{-q,0\}-e=-e
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\]
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and similar inequations for $y_{ij}$, $\tilde{x}_{ij}$ and $\tilde{y}_{ij}$.
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In addition,
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\[
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u_{ij}=z_{ij}-v_{i-1,j}\ge\max\{x_{i-1,j},\tilde{x}_{i-1,j}\}\ge-q-e
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\]
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As the maximum value of $z_{ij}=H_{ij}-H_{i-1,j-1}$ is $M$, the maximal
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matching score, we can derive
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\[
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u_{ij}\le M-v_{i-1,j}\le M+q+e
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\]
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In conclusion, in Eq.~(\ref{eq:suzuki}), $x$ and $y$ are bounded by $[-q-e,-e]$,
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$\tilde{x}$ and $\tilde{y}$ by $[-\tilde{q}-\tilde{e},-\tilde{e}]$, and $u$ and
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$v$ by $[-q-e,M+q+e]$. When $-128\le-q-e<M+q+e\le127$, each of them can be stored as
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a 8-bit integer. This enables 16-way SSE vectorization regardless of the peak
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score of the alignment.
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For a more efficient SSE implementation, we transform the row-column coordinate
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to the diagonal-antidiagonal coordinate by letting $r\gets i+j$ and $t\gets i$.
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Eq.~(\ref{eq:suzuki}) becomes:
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\begin{equation*}
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\left\{\begin{array}{lll}
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z_{rt}&=&\max\{s(t,r-t),x_{r-1,t-1}+v_{r-1,t-1},y_{r-1,t}\\
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&&+u_{r-1,t},\tilde{x}_{r-1,t-1}+v_{r-1,t-1},\tilde{y}_{r-1,t}+u_{r-1,t}\}\\
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u_{rt}&=&z_{rt}-v_{r-1,t-1}\\
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v_{rt}&=&z_{rt}-u_{r-1,t}\\
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x_{rt}&=&\max\{0,x_{r-1,t-1}+v_{r-1,t-1}-z_{rt}+q\}-q-e\\
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y_{rt}&=&\max\{0,y_{r-1,t}+u_{r-1,t}-z_{rt}+q\}-q-e\\
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\tilde{x}_{rt}&=&\max\{0,\tilde{x}_{r-1,t-1}+v_{r-1,t-1}-z_{rt}+\tilde{q}\}-\tilde{q}-\tilde{e}\\
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\tilde{y}_{rt}&=&\max\{0,\tilde{y}_{r-1,t}+u_{r-1,t}-z_{rt}+\tilde{q}\}-\tilde{q}-\tilde{e}
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\end{array}\right.
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\end{equation*}
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In this formulation, cells with the same diagonal index $r$ are independent of
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each other. This allows us to fully vectorize the computation of all cells on
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the same anti-diagonal in one inner loop. It also simplifies banded alignment,
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which would be difficult with striped vectorization~\citep{Farrar:2007hs}.
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On the condition that $q+e<\tilde{q}+\tilde{e}$ and $e>\tilde{e}$, the initial
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values in the diagonal-antidiagonal formuation are
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\[
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\left\{\begin{array}{l}
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x_{r-1,-1}=y_{r-1,r}=-q-e\\
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\tilde{x}_{r-1,-1}=\tilde{y}_{r-1,r}=-\tilde{q}-\tilde{e}\\
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u_{r-1,r}=v_{r-1,-1}=\eta(r)\\
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\end{array}\right.
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\]
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where
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\[
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\eta(r)=\left\{\begin{array}{ll}
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-q-e & (r=0) \\
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-e & (r<\lceil\frac{\tilde{q}-q}{e-\tilde{e}}-1\rceil) \\
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r\cdot(e-\tilde{e})-(\tilde{q}-q)-\tilde{e} & (r=\lceil\frac{\tilde{q}-q}{e-\tilde{e}}-1\rceil) \\
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-\tilde{e} & (r>\lceil\frac{\tilde{q}-q}{e-\tilde{e}}-1\rceil)
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\end{array}\right.
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\]
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These can be derived from the initial values for Eq.~(\ref{eq:ae86}).
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When performing global alignment, we do not need to compute $H_{rt}$ in each cell.
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We use 16-way vectorization throughout the alignment process. When extending
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alignments from ends of chains, we need to find the cell $(r,t)$ where $H_{rt}$
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reaches the maximum. We resort to 4-way vectorization to compute
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$H_{rt}=H_{r-1,t}+u_{rt}$. Because this computation is simple,
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Eq.~(\ref{eq:suzuki}) is still the dominant performance bottleneck.
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In practice, our 16-way vectorized implementation of global alignment is three
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times as fast as Parasail's 4-way vectorization~\citep{Daily:2016aa}. Without
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banding, our implementation is slower than Edlib~\citep{Sosic:2017aa}, but with
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a 1000bp band, it is considerably faster. When performing global alignment
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between anchors, we expect the alignment to stay close to the diagonal of the
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DP matrix. Banding is applicable most of time.
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|
|
\subsubsection{The Z-drop heuristic}
|
|
|
|
With global alignment, minimap2 may force to align unrelated sequences between
|
|
two adjacent anchors. To avoid such an artifact, we compute accumulative
|
|
alignment score along the alignment path and break the alignment where the
|
|
score drops too fast in the diagonal direction. More precisely, let $S(i,j)$ be
|
|
the alignment score along the alignment path ending at cell $(i,j)$ in the DP
|
|
matrix. We break the alignment if there exist $(i',j')$ and $(i,j)$, $i'<i$ and
|
|
$j'<j$, such that
|
|
\[
|
|
S(i',j')-S(i,j)>Z+e\cdot|(i-i')-(j-j')|
|
|
\]
|
|
where $e$ is the gap extension cost and $Z$ is an arbitrary threshold.
|
|
This strategy is first used in BWA-MEM. It is similar to X-drop employed in
|
|
BLAST~\citep{Altschul:1997vn}, but unlike X-drop, it would not break the
|
|
alignment in the presence of a single long gap.
|
|
|
|
When minimap2 breaks a global alignment between two anchors, it performs local
|
|
alignment between the two subsequences involved in the global alignment, but
|
|
this time with the one subsequence reverse complemented. This additional
|
|
alignment step may identify short inversions that are missed during chaining.
|
|
|
|
\subsubsection{Filtering out misplaced anchors}
|
|
Due to sequencing errors and local homology, some anchors in a chain may be
|
|
wrong. If we blindly align regions between two misplaced anchors, we will
|
|
produce a suboptimal alignment. To reduce this artifact, we filter out
|
|
anchors that lead to a $>$10bp insertion and a $>$10bp deletion at the same
|
|
time, and filter out terminal anchors that lead to a long gap towards the ends
|
|
of a chain. These heuristics greatly alleviate the issues with misplaced
|
|
anchors, but they are unable to fix all such errors. Local misalignment is a
|
|
limitation of minimap2 which we hope to address in future.
|
|
|
|
\subsection{Aligning spliced sequences}
|
|
|
|
The algorithm described above can be adapted to spliced alignment. In this
|
|
mode, the chaining gap cost distinguishes insertions to and deletions from the
|
|
reference: $\gamma_c(l)$ in Eq.~(\ref{eq:chain-gap}) takes the form of
|
|
\[
|
|
\gamma_c(l)=\left\{\begin{array}{ll}
|
|
0.01\cdot\bar{w}\cdot l+0.5\log_2 l & (l>0) \\
|
|
\min\{0.01\cdot\bar{w}\cdot|l|,\log_2|l|\} & (l<0)
|
|
\end{array}\right.
|
|
\]
|
|
Similarly, the gap cost function used for DP-based alignment is changed to
|
|
\[
|
|
\gamma_a(l)=\left\{\begin{array}{ll}
|
|
q+l\cdot e & (l>0) \\
|
|
\min\{q+|l|\cdot e,\tilde{q}\} & (l<0)
|
|
\end{array}\right.
|
|
\]
|
|
In alignment, a deletion no shorter than $\lceil(\tilde{q}-q)/e\rceil$ is
|
|
regarded as an intron, which pays no cost to gap extensions.
|
|
|
|
To pinpoint precise splicing junctions, minimap2 introduces reference-dependent
|
|
cost to penalize non-canonical splicing:
|
|
\begin{equation}\label{eq:splice}
|
|
\left\{\begin{array}{l}
|
|
H_{ij} = \max\{H_{i-1,j-1}+s(i,j),E_{ij},F_{ij},\tilde{E}_{ij}-a(i)\}\\
|
|
E_{i+1,j}= \max\{H_{ij}-q,E_{ij}\}-e\\
|
|
F_{i,j+1}= \max\{H_{ij}-q,F_{ij}\}-e\\
|
|
\tilde{E}_{i+1,j}= \max\{H_{ij}-d(i)-\tilde{q},\tilde{E}_{ij}\}\\
|
|
\end{array}\right.
|
|
\end{equation}
|
|
Let $T$ be the reference sequence. $d(i)$ is computed as
|
|
\[d(i)=\left\{\begin{array}{ll}
|
|
0 & \mbox{if $T[i+1,i+3]$ is ${\tt GTA}$ or ${\tt GTG}$} \\
|
|
p/2 & \mbox{if $T[i+1,i+3]$ is ${\tt GTC}$ or ${\tt GTT}$} \\
|
|
p & \mbox{otherwise}
|
|
\end{array}\right.\]
|
|
where $T[i,j]$ extracts a substring of $T$ between $i$ and $j$ inclusively.
|
|
$d(i)$ penalizes non-canonical donor sites with $p$ and less frequent Eukaryotic
|
|
splicing signal ${\tt GT[C/T]}$ with $p/2$~\citep{Irimia:2008aa}. Similarly,
|
|
\[a(i)=\left\{\begin{array}{ll}
|
|
0 & \mbox{if $T[i-2,i]$ is ${\tt CAG}$ or ${\tt TAG}$} \\
|
|
p/2 & \mbox{if $T[i-2,i]$ is ${\tt AAG}$ or ${\tt GAG}$} \\
|
|
p & \mbox{otherwise}
|
|
\end{array}\right.\]
|
|
models the acceptor signal. Eq.~(\ref{eq:splice}) is close to an equation in
|
|
\citet{Zhang:2006aa} except that we allow insertions immediately followed by
|
|
deletions and vice versa; in addition, we use the Suzuki-Kasahara diagonal
|
|
formulation in actual implementation.
|
|
|
|
If RNA-seq reads are not sequenced from stranded libraries, the read strand
|
|
relative to the underlying transcript is unknown. By default, minimap2 aligns
|
|
each chain twice, first assuming ${\tt GT}$--${\tt AG}$ as the splicing signal
|
|
and then assuming ${\tt CT}$--${\tt AC}$, the reverse complement of ${\tt
|
|
GT}$--${\tt AG}$, as the splicing signal. The alignment with a higher score is
|
|
taken as the final alignment. This procedure also infers the relative strand of
|
|
reads that span canonical splicing sites.
|
|
|
|
In the spliced alignment mode, minimap2 further increases the density of
|
|
minimizers and disables banded alignment. Together with the two-round DP-based
|
|
alignment, spliced alignment is several times slower than genomic DNA
|
|
alignment.
|
|
|
|
\subsection{Aligning short paired-end reads}
|
|
|
|
During chaining, minimap2 takes a pair of reads as one fragment with a gap of
|
|
unknown length in the middle. It applies a normal gap cost between seeds on the
|
|
same read but is a more permissive gap cost between seeds on different reads.
|
|
More precisely, the gap cost during chaining is ($l\not=0$):
|
|
\[
|
|
\gamma_c(l)=\left\{\begin{array}{ll}
|
|
0.01\cdot\bar{w}\cdot |l|+0.5\log_2 |l| & \mbox{if two seeds on the same read} \\
|
|
\min\{0.01\cdot\bar{w}\cdot|l|,\log_2|l|\} & \mbox{otherwise}
|
|
\end{array}\right.
|
|
\]
|
|
After identifying primary chains (Section~\ref{sec:primary}), we split each
|
|
fragment chain into two read chains and perform alignment for each read as in
|
|
Section~\ref{sec:genomic}. Finally, we pair hits of each read end to find
|
|
consistent paired-end alignments.
|
|
|
|
\end{methods}
|
|
|
|
\section{Results}
|
|
|
|
Minimap2 is implemented in the C programming language and comes with APIs in
|
|
both C and Python. It is distributed under the MIT license, free to both
|
|
commercial and academic uses. Minimap2 uses the same base algorithm for all
|
|
applications, but it has to apply different sets of parameters depending on
|
|
input data types. Similar to BWA-MEM, minimap2 introduces `presets' that
|
|
modify multiple parameters with a simple invokation. Detailed settings
|
|
and command-line options can be found in the minimap2 manpage. In addition to
|
|
the applications described in the following sections, minimap2 also retains
|
|
minimap's functionality to find overlaps between long reads and to search
|
|
against large multi-species databases such as \emph{nt} from NCBI.
|
|
|
|
\subsection{Aligning long genomic reads}\label{sec:long-genomic}
|
|
|
|
\begin{figure}[!tb]
|
|
\centering
|
|
\includegraphics[width=.5\textwidth]{roc-color.pdf}
|
|
\caption{Evaluation on aligning simulated reads. Simulated reads were mapped
|
|
to the primary assembly of human genome GRCh38. A read is considered correctly
|
|
mapped if its longest alignment overlaps with the true interval, and the
|
|
overlap length is $\ge$10\% of the true interval length. Read alignments are
|
|
sorted by mapping quality in the descending order. For each mapping quality
|
|
threshold, the fraction of alignments (out of the number of input reads) with
|
|
mapping quality above the threshold and their error rate are
|
|
plotted along the curve. (a) long-read alignment evaluation. 33,088 $\ge$1000bp
|
|
reads were simulated using pbsim~\citep{Ono:2013aa} with error profile sampled
|
|
from file `m131017\_060208\_42213\_*.1.*' downloaded at
|
|
\href{http://bit.ly/chm1p5c3}{http://bit.ly/chm1p5c3}. The N50 read length is
|
|
11,628. Aligners were run under the default setting for SMRT reads.
|
|
Kart outputted all alignments at mapping quality 60, so is not shown in the
|
|
figure. It mapped nearly all reads with 4.1\% of alignments being wrong, less
|
|
accurate than others. (b) short-read alignment evaluation. 10 million pairs of
|
|
150bp reads were simulated using mason2~\citep{Holtgrewe:2010aa} with option
|
|
`\mbox{--illumina-prob-mismatch-scale 2.5}'. Short-read aligners were run under
|
|
the default setting except for changing the maximum fragment length to
|
|
800bp.}\label{fig:eval}
|
|
\end{figure}
|
|
|
|
As a sanity check, we evaluated minimap2 on simulated human reads along with
|
|
BLASR~(v1.MC.rc64; \citealp{Chaisson:2012aa}),
|
|
BWA-MEM~(v0.7.15; \citealp{Li:2013aa}),
|
|
GraphMap~(v0.5.2; \citealp{Sovic:2016aa}),
|
|
Kart~(v2.2.5; \citealp{Lin:2017aa}),
|
|
minialign~(v0.5.3; \href{https://github.com/ocxtal/minialign}{https://github.com/ocxtal/minialign}) and
|
|
NGMLR~(v0.2.5; \citealp{Sedlazeck169557}). We excluded rHAT~\citep{Liu:2016ab}
|
|
and LAMSA~\citep{Liu:2017aa} because they either
|
|
crashed or produced malformatted output. In this evaluation, minimap2 has
|
|
higher power to distinguish unique and repetitive hits, and achieves overall
|
|
higher mapping accuracy (Fig.~\ref{fig:eval}a). Minimap2 and
|
|
NGMLR provide better mapping quality estimate: they rarely give repetitive hits
|
|
high mapping quality. Apparently, other aligners may
|
|
occasionally miss close suboptimal hits and be overconfident in wrong mappings.
|
|
On run time, minimap2 took 200 CPU seconds, comparable to minialign and Kart, and is over
|
|
30 times faster than the rest. Minimap2 consumed 6.8GB memory at the peak,
|
|
more than BWA-MEM (5.4GB), similar to NGMLR and less than others.
|
|
|
|
On real human SMRT reads, the relative performance and fraction of mapped reads reported by
|
|
these aligners are broadly similar to the metrics on simulated data. We are
|
|
unable to provide a good estimate of mapping error rate due to the lack of the
|
|
truth. On ONT $\sim$100kb human reads~\citep{Jain128835}, BWA-MEM failed.
|
|
Kart, minialign and minimap2 are over 70 times faster than others. We have also
|
|
examined tens of $\ge$100bp INDELs in IGV~\citep{Robinson:2011aa} and can
|
|
confirm the observation by~\citet{Sedlazeck169557} that BWA-MEM often breaks
|
|
them into shorter gaps. The issue is much alleviated with minimap2, thanks
|
|
to the 2-piece affine gap cost.
|
|
|
|
\subsection{Aligning long spliced reads}
|
|
|
|
We evaluated minimap2 on SIRV control data~(AC:SRR5286959;
|
|
\citealp{Byrne:2017aa}) where the truth is known. Minimap2 predicted 59\,918
|
|
introns from 11\,018 reads. 93.8\% of splice juctions are precise. We examined
|
|
wrongly predicted junctions and found the majority were caused by clustered
|
|
splicing signals (e.g. two adjacent ${\tt GT}$ sites). When INDEL sequencing
|
|
errors are frequent, it is difficult to find precise splicing sites in this
|
|
case. If we allow up to 10bp distance from true splicing sites, 98.4\% of
|
|
aligned introns are approximately correct. It is worth noting that for SIRV, we
|
|
asked minimap2 to model the ${\tt GT..AG}$ splicing signal only without extra
|
|
bases. This is because SIRV does not honor the evolutionarily prevalent signal
|
|
${\tt GT[A/G]..[C/T]AG}$~\citep{Irimia:2008aa}.
|
|
|
|
\begin{table}[!tb]
|
|
\processtable{Evaluation of junction accuracy on 2D ONT reads}
|
|
{\footnotesize\label{tab:intron}
|
|
\begin{tabular}{p{3.1cm}rrrr}
|
|
\toprule
|
|
& GMAP & minimap2 & SpAln & STAR\\
|
|
\midrule
|
|
Run time (CPU min) & 631 & 15.9 & 2\,076 & 33.9 \\
|
|
Peak RAM (GByte) & 8.9 & 14.5 & 3.2 & 29.2\vspace{1em}\\
|
|
\# aligned reads & 103\,669 & 104\,199 & 103\,711 & 26\,479 \\
|
|
\# chimeric alignments & 1\,904 & 1\,488 & 0 & 0 \\
|
|
\# non-spliced alignments & 15\,854 & 14\,798 & 17\,033 & 10\,545\vspace{1em}\\
|
|
\# aligned introns & 692\,275 & 693\,553 & 692\,945 & 78\,603 \\
|
|
\# novel introns & 11\,239 & 3\,113 & 8\,550 & 1\,214 \\
|
|
\% exact introns & 83.8\% & 94.0\% & 87.9\% & 55.2\% \\
|
|
\% approx. introns & 91.8\% & 96.9\% & 92.5\% & 82.4\% \\
|
|
\botrule
|
|
\end{tabular}
|
|
}{Mouse reads (AC:SRR5286960; R9.4 chemistry) were mapped to the primary assembly of mouse
|
|
genome GRCm38 with the following tools and command options: minimap2 (`-ax
|
|
splice'); GMAP (`-n 0 --min-intronlength 30 --cross-species'); SpAln (`-Q7 -LS
|
|
-S3'); STARlong (according to
|
|
\href{http://bit.ly/star-pb}{http://bit.ly/star-pb}). The alignments were
|
|
compared to the EnsEMBL gene annotation, release 89. A predicted intron
|
|
is \emph{novel} if it has no overlaps with any annotated introns. An intron
|
|
is \emph{exact} if it is identical to an annotated intron. An intron is
|
|
\emph{approximate} if both its 5'- and 3'-end are within 10bp around the ends
|
|
of an annotated intron.}
|
|
\end{table}
|
|
|
|
We next aligned real mouse reads~\citep{Byrne:2017aa} with GMAP~(v2017-06-20;
|
|
\citealp{Wu:2005vn}), minimap2, SpAln~(v2.3.1; \citealp{Iwata:2012aa}) and
|
|
STAR~(v2.5.3a; \citealp{Dobin:2013kx}). In general, minimap2 is more
|
|
consistent with existing annotations (Table~\ref{tab:intron}): it finds
|
|
more junctions with a higher percentage being exactly or approximately correct.
|
|
Minimap2 is over 40 times faster than GMAP and SpAln. While STAR is close to
|
|
minimap2 in speed, it does not work well with noisy reads.
|
|
|
|
We have also evaluated spliced aligners on a human Nanopore Direct RNA-seq
|
|
dataset (\href{http://bit.ly/na12878ont}{http://bit.ly/na12878ont}). Minimap2
|
|
aligned 10 million reads in $<$1 wall-clock hour using 16 CPU cores. 94.2\% of
|
|
aligned splice junctions consistent with gene annotations. In comparison,
|
|
GMAP under option `-k 14 -n 0 --min-intronlength 30 --cross-species' is 160
|
|
times slower; 68.7\% of GMAP junctions are found in known gene annotations. The
|
|
percentage increases to 84.1\% if an aligned junction within 10bp from an
|
|
annotated junction is considered to be correct. On a public Iso-Seq dataset
|
|
(human Alzheimer brain from
|
|
\href{http://bit.ly/isoseqpub}{http://bit.ly/isoseqpub}), minimap2 is also
|
|
faster at higher junction accuracy in comparison to other aligners in
|
|
Table~\ref{tab:intron}.
|
|
|
|
We noted that GMAP and SpAln have not been optimized for noisy reads. We are
|
|
showing the best setting we have experimented, but their developers should be
|
|
able to improve their accuracy further.
|
|
|
|
%\begin{table}[!tb]
|
|
%\processtable{Evaluation of junction accuracy on SMRT Iso-Seq reads}
|
|
%{\footnotesize
|
|
%\begin{tabular}{lrrrr}
|
|
%\toprule
|
|
% & GMAP & minimap2 & SpAln & STAR \\ % one GMAP thread took 14 days to align a tiny fraction of reads
|
|
%\midrule
|
|
%Run time (CPU min) & - & 243 & 2,352 & 1,647 \\
|
|
%\# aligned reads & 1,113,502 & 1,123,025 & 1,094,092 & 682,452 \\
|
|
%\# chimeric alignments & 48,927 & 33,091 & 0 & 0 \\
|
|
%\# non-spliced alignments & 334,097 & 339,081 & 291,447 & 272,536 \vspace{1em}\\
|
|
%\# aligned introns & 8,922,221 & 9,071,755 & 9,208,564 & 3,029,121 \\
|
|
%\# novel introns & 48,927 & 42,773 & 82,230 & 17,791 \\
|
|
%\% exact introns & 90.6\% & 94.9\% & 91.7\% & 84.7\% \\
|
|
%\% approx. introns & 94.0\% & 96.9\% & 93.4\% & 93.8\% \\
|
|
%\botrule
|
|
%\end{tabular}
|
|
%}{}
|
|
%\end{table}
|
|
|
|
\subsection{Aligning short genomic reads}
|
|
|
|
We evaluated minimap2 along with Bowtie2~(v2.3.3; \citealt{Langmead:2012fk}), BWA-MEM and
|
|
SNAP (v1.0beta23; \citealt{Zaharia:2011aa}). Minimap2 is 3--4 times as fast as Bowtie2 and
|
|
BWA-MEM, but is 1.3 times slower than SNAP. Minimap2 is more accurate on this
|
|
simulated data set than Bowtie2 and SNAP but less accurate than BWA-MEM
|
|
(Fig.~\ref{fig:eval}b). Closer investigation reveals that BWA-MEM achieves
|
|
a higher accuracy partly because it tries to locally align a read in a small
|
|
region close to its mate. If we disable this feature, BWA-MEM becomes slightly
|
|
less accurate than minimap2. We might implement a similar heuristic
|
|
in minimap2 in future.
|
|
|
|
To evaluate the accuracy of minimap2 on real data, we aligned human reads
|
|
(AC:ERR1341796) with BWA-MEM and minimap2, and called SNPs and small INDELs
|
|
with GATK HaplotypeCaller v3.5~\citep{Depristo:2011vn}. This run was sequenced
|
|
from experimentally mixed CHM1 and CHM13 cell lines. Both of them are homozygous
|
|
across the whole genome and have been \emph{de novo} assembled with SMRT reads
|
|
to high quality. This allowed us to construct an independent truth variant
|
|
dataset~\citep{Li223297} for
|
|
ERR1341796. In this evaluation, minimap2 has higher SNP false negative rate
|
|
(FNR; 2.5\% of minimap2 vs 2.2\% of BWA-MEM), but fewer false positive SNPs per
|
|
million bases (FPPM; 3.0 vs 3.9), lower 2--50bp INDEL FNR (7.3\% vs 7.5\%) and
|
|
similar INDEL FPPM (both 1.0). Minimap2 is broadly similar to BWA-MEM in the
|
|
context of small variant calling.
|
|
|
|
\subsection{Aligning long-read assemblies}
|
|
|
|
Minimap2 can align a human SMRT assembly (AC:GCA\_001297185.1) against
|
|
GRCh38 in 7 minutes using 8 CPU cores, over 20 times faster than
|
|
MUMmer4~\citep{Marcais:2018aa}. With the paftools.js script from the minimap2
|
|
package, we called 2.67 million single-base substitutions out of 2.78Gbp
|
|
genomic regions. The transition-to-transversion ratio (ts/tv) is 2.01. In
|
|
comparison, using MUMmer4's dnadiff pipeline, we called 2.86 million
|
|
substitutions in 2.83Gbp at ts/tv=1.87. Given that ts/tv averaged across the
|
|
human genome is about 2 but ts/tv averaged over random errors is 0.5, the
|
|
minimap2 callset arguably has higher accuracy.
|
|
|
|
The sample being assembled is a female. Minimap2 still called 201 substitutions
|
|
on the Y chromosome. These substitutions all come from one contig aligned at
|
|
96.8\% sequence identity. The contig could be a diverged segmental duplication
|
|
absent from GRCh38. In constrast, on the Y chromosome, MUMmer4 called 9070
|
|
substitutions across 73 SMRT contigs. The accuracy of the MUMmer4 pipeline is
|
|
probably lower than our minimap2-based pipeline.
|
|
|
|
\section{Discussions}
|
|
|
|
Minimap2 is a versatile mapper and pairwise aligner for nucleotide sequences.
|
|
It works with short reads, assembly contigs and long noisy genomic and RNA-seq
|
|
reads, and can be used as a read mapper, long-read overlapper or a full-genome
|
|
aligner. Minimap2 is also accurate and efficient, often outperforming other
|
|
domain-specific alignment tools in terms of both speed and accuracy.
|
|
|
|
The capability of minimap2 comes from a fast base-level alignment algorithm and
|
|
an accurate chaining algorithm. When aligning long query sequences, base-level
|
|
alignment is often the performance bottleneck. The Suzuki-Kasahara algorithm
|
|
greatly alleviates the bottleneck and enables DP-based splice alignment
|
|
involving $>$100kb introns, which was impractically slow ten years ago. The
|
|
minimap2 chaining algorithm is fast and highly accurate by itself. In fact,
|
|
chaining alone is more accurate than all the other long-read mappers in
|
|
Fig.~\ref{fig:eval}a (data not shown). This accuracy helps to reduce downstream
|
|
base-level alignment of candidate chains, which is still times slower than
|
|
chaining even with the Suzuki-Kasahara improvement. In addition, taking a
|
|
general form, minimap2 chaining can be adapted to non-typical data types such as
|
|
spliced reads and multiple reads per fragment. This gives us the opportunity to
|
|
extend the same base algorithm to a variety of use cases.
|
|
|
|
Modern mainstream aligners often use a full-text index, such as suffix array or
|
|
FM-index, to index reference sequences. An advantage of this approach is that
|
|
we can use exact seeds of arbitrary lengths, which helps to increase seed
|
|
uniqueness and reduce unsuccessful extensions. Minimap2 indexes reference
|
|
k-mers with a hash table instead. Such fixed-length seeds are inferior to
|
|
variable-length seeds in theory, but can be computed much more efficiently in
|
|
practice. When a query sequence has multiple seed hits, we can afford to skip
|
|
highly repetitive seeds without affecting the final accuracy. This further
|
|
alleviates the concern with the seeding uniqueness. At the same time, at low
|
|
sequence identity, it is rare to see long seeds anyway. Hash table is the ideal
|
|
data structure for mapping long noisy sequences.
|
|
|
|
\section*{Acknowledgements}
|
|
We owe a debt of gratitude to H. Suzuki and M. Kasahara for releasing their
|
|
masterpiece and insightful notes before formal publication. We thank M.
|
|
Schatz, P. Rescheneder and F. Sedlazeck for pointing out the limitation of
|
|
BWA-MEM. We are also grateful to minimap2 users who have greatly helped to
|
|
suggest features and to fix various issues.
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\bibliography{minimap2}
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\end{document}
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