AI Article Synopsis

  • Each cancer has unique evolutionary processes, but there are common patterns in tumor development that can help classify patients into subgroups with different treatment responses and survival rates.
  • The study introduces a new approach called RECAP, which tackles the Multiple Choice Consensus Tree problem to clarify these evolutionary histories and effectively cluster cancer patients based on their tumor characteristics.
  • Results show that RECAP outperforms existing methods on simulated data by accurately identifying repeated evolutionary patterns in lung and breast cancer, with the tool available for public use on GitHub.

Article Abstract

Motivation: While each cancer is the result of an isolated evolutionary process, there are repeated patterns in tumorigenesis defined by recurrent driver mutations and their temporal ordering. Such repeated evolutionary trajectories hold the potential to improve stratification of cancer patients into subtypes with distinct survival and therapy response profiles. However, current cancer phylogeny methods infer large solution spaces of plausible evolutionary histories from the same sequencing data, obfuscating repeated evolutionary patterns.

Results: To simultaneously resolve ambiguities in sequencing data and identify cancer subtypes, we propose to leverage common patterns of evolution found in patient cohorts. We first formulate the Multiple Choice Consensus Tree problem, which seeks to select a tumor tree for each patient and assign patients into clusters in such a way that maximizes consistency within each cluster of patient trees. We prove that this problem is NP-hard and develop a heuristic algorithm, Revealing Evolutionary Consensus Across Patients (RECAP), to solve this problem in practice. Finally, on simulated data, we show RECAP outperforms existing methods that do not account for patient subtypes. We then use RECAP to resolve ambiguities in patient trees and find repeated evolutionary trajectories in lung and breast cancer cohorts.

Availability And Implementation: https://github.com/elkebir-group/RECAP.

Supplementary Information: Supplementary data are available at Bioinformatics online.

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Source
http://dx.doi.org/10.1093/bioinformatics/btaa801DOI Listing

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