Sequence aligners can guarantee accuracy in almostO(mlogn) time: a rigorous average-case analysis of the seed-chain-extend heuristic

Author:

Shaw JimORCID,Yu Yun WilliamORCID

Abstract

AbstractSeed-chain-extend with k-mer seeds is a powerful heuristic technique for sequence alignment employed by modern sequence aligners. While effective in practice for both runtime and accuracy, theoretical guarantees on the resulting alignment do not exist for seed-chain-extend. In this work, we give the first rigorous bounds for the efficacy of seed-chain-extend with k-mersin expectation.Assume we are given a random nucleotide sequence of length ~nthat is indexed (or seeded) and a mutated substring of length ~mnwith mutation rateθ< 0.206. We prove that we can find ak=Θ(logn) for the k-mer size such that the expected runtime of seed-chain-extend under optimal linear gap cost chaining and quadratic time gap extension isO(mnf(θ)logn) wheref(θ) < 2.43 ·θholds as a loose bound. The alignment also turns out to be good; we prove that more thanfraction of the homologous bases arerecoverableunder an optimal chain. We also show that our bounds work when k-mers aresketched, i.e. only a subset of all k-mers is selected, and that sketching reduces chaining time without increasing alignment time or decreasing accuracy too much, justifying the effectiveness of sketching as a practical speedup in sequence alignment. We verify our results in simulation and on real noisy long-read data and show that our theoretical runtimes can predict real runtimes accurately. We conjecture that our bounds can be improved further, and in particular,f(θ) can be further reduced.

Publisher

Cold Spring Harbor Laboratory

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