Motivation: Whole genome and exome sequencing of matched tumor-normal sample pairs is becoming routine in cancer research. The consequent increased demand for somatic variant analysis of paired samples requires methods specialized to model this problem so as to sensitively call variants at any practical level of tumor impurity. Results: We describe Strelka, a method for somatic SNV and small indel detection from sequencing data of matched tumor-normal samples. The method employs a novel Bayesian approach which represents continuous allele frequencies for both tumor and normal samples, whilst leveraging the expected genotype structure of the normal. This is achieved by representing the normal sample as a mixture of germline variation with no...
Cancer development and progression is driven by genetic alterations. These alterations include somat...
The accurate detection of low-allelic variants is still challenging, particularly for the identifica...
Motivation: The study of cancer genomes now routinely involves using next-generation sequencing tech...
Somatic mutations promote the transformation of normal cells to cancer. Accurate identification of s...
Somatic mutations promote the transformation of normal cells to cancer. Accurate identification of s...
Next generation sequencing is extensively applied to catalogue somatic mutations in cancer, in resea...
SomaticSeq is an accurate somatic mutation detection pipeline implementing a stochastic boosting alg...
Precision medicine attempts to individualize cancer therapy by matching tumor-specific genetic chang...
Somatic single nucleotide variants (SNVs) are mutations resulting from the substitution of a single ...
Somatic mutation calling from next-generation sequencing data remains a challenge due to the difficu...
<div><p>A key constraint in genomic testing in oncology is that matched normal specimens are not com...
Abstract Background Accurate detection of somatic sin...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
During tumor inception and progression, culprit gene variants confer selective advantage to progenit...
Motivation: With the advent of relatively affordable high-throughput technologies, DNA sequencing of...
Cancer development and progression is driven by genetic alterations. These alterations include somat...
The accurate detection of low-allelic variants is still challenging, particularly for the identifica...
Motivation: The study of cancer genomes now routinely involves using next-generation sequencing tech...
Somatic mutations promote the transformation of normal cells to cancer. Accurate identification of s...
Somatic mutations promote the transformation of normal cells to cancer. Accurate identification of s...
Next generation sequencing is extensively applied to catalogue somatic mutations in cancer, in resea...
SomaticSeq is an accurate somatic mutation detection pipeline implementing a stochastic boosting alg...
Precision medicine attempts to individualize cancer therapy by matching tumor-specific genetic chang...
Somatic single nucleotide variants (SNVs) are mutations resulting from the substitution of a single ...
Somatic mutation calling from next-generation sequencing data remains a challenge due to the difficu...
<div><p>A key constraint in genomic testing in oncology is that matched normal specimens are not com...
Abstract Background Accurate detection of somatic sin...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
During tumor inception and progression, culprit gene variants confer selective advantage to progenit...
Motivation: With the advent of relatively affordable high-throughput technologies, DNA sequencing of...
Cancer development and progression is driven by genetic alterations. These alterations include somat...
The accurate detection of low-allelic variants is still challenging, particularly for the identifica...
Motivation: The study of cancer genomes now routinely involves using next-generation sequencing tech...