PEMapper / PECaller: A simplified approach to whole-genome sequencing

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This paper introduces PEMapper/PECaller, a computational package designed for efficient, large-scale whole-genome sequencing with minimal resource burden and a novel error model that matches or exceeds GATK performance.

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Abstract

ABSTRACT The analysis of human whole-genome sequencing data presents significant computational challenges. The sheer size of datasets places an enormous burden on computational, disk array, and network resources. Here we present an integrated computational package, PEMapper/PECaller, that was designed specifically to minimize the burden on networks and disk arrays, create output files that are minimal in size, and run in a highly computationally efficient way, with the single goal of enabling whole-genome sequencing at scale. In addition to improved computational efficiency, we implement a novel statistical framework that allows for a base-by-base error model, allowing this package to perform as well or better than the widely used Genome Analysis Toolkit (GATK) in all key measures of performance on human whole-genome sequences.

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last seen: 2026-05-19T01:45:01.086888+00:00