| Literature DB >> 29844525 |
Yupeng Cun1, Tsun-Po Yang1,2, Viktor Achter3, Ulrich Lang3,4, Martin Peifer1,2.
Abstract
The genomes of cancer cells constantly change during pathogenesis. This evolutionary process can lead to the emergence of drug-resistant mutations in subclonal populations, which can hinder therapeutic intervention in patients. Data derived from massively parallel sequencing can be used to infer these subclonal populations using tumor-specific point mutations. The accurate determination of copy-number changes and tumor impurity is necessary to reliably infer subclonal populations by mutational clustering. This protocol describes how to use Sclust, a copy-number analysis method with a recently developed mutational clustering approach. In a series of simulations and comparisons with alternative methods, we have previously shown that Sclust accurately determines copy-number states and subclonal populations. Performance tests show that the method is computationally efficient, with copy-number analysis and mutational clustering taking <10 min. Sclust is designed such that even non-experts in computational biology or bioinformatics with basic knowledge of the Linux/Unix command-line syntax should be able to carry out analyses of subclonal populations.Entities:
Mesh:
Year: 2018 PMID: 29844525 DOI: 10.1038/nprot.2018.033
Source DB: PubMed Journal: Nat Protoc ISSN: 1750-2799 Impact factor: 13.491