TrAp: a Tree Approach for Fingerprinting Subclonal Tumor Composition
Francesco Strino, Fabio Parisi, Mariann Micsinai, Yuval Kluger

TL;DR
TrAp is a novel computational framework that deconvolves tumor sequencing data to reveal subclonal composition, evolutionary paths, and mutation profiles, aiding in understanding tumor heterogeneity and progression.
Contribution
The paper introduces TrAp, an efficient algorithm for deconvolving mixed tumor signals into subpopulations, a capability lacking in existing methods.
Findings
TrAp accurately deconvolves subpopulations with moderate errors.
Application to real tumor data shows consistency with single-cell mutation profiles.
Revealed evolutionary relationships among metastases in a melanoma patient.
Abstract
Revealing the clonal composition of a single tumor is essential for identifying cell subpopulations with metastatic potential in primary tumors or with resistance to therapies in metastatic tumors. Sequencing technologies provide an overview of an aggregate of numerous cells, rather than subclonal-specific quantification of aberrations such as single nucleotide variants (SNVs). Computational approaches to de-mix a single collective signal from the mixed cell population of a tumor sample into its individual components are currently not available. Herein we propose a framework for deconvolving data from a single genome-wide experiment to infer the composition, abundance and evolutionary paths of the underlying cell subpopulations of a tumor. The method is based on the plausible biological assumption that tumor progression is an evolutionary process where each individual aberration event…
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