CLEMENT: genomic decomposition and reconstruction of non-tumor subclones

Author:

Chung Young-soo1ORCID,Kang Seungseok1ORCID,Kim Jisu23ORCID,Lee Sangbo1ORCID,Kim Sangwoo1ORCID

Affiliation:

1. Department of Biomedical Systems Informatics, Brain Korea 21 PLUS Project for Medical Science, Yonsei University College of Medicine , Seoul  03722 , Republic of Korea

2. DataShape team, Inria Saclay Île-De-France , Palaiseau  91120 , France

3. Department of Statistics, Seoul National University , Seoul  08826 , Republic of Korea

Abstract

Abstract Genome-level clonal decomposition of a single specimen has been widely studied; however, it is mostly limited to cancer research. In this study, we developed a new algorithm CLEMENT, which conducts accurate decomposition and reconstruction of multiple subclones in genome sequencing of non-tumor (normal) samples. CLEMENT employs the Expectation-Maximization (EM) algorithm with optimization strategies specific to non-tumor subclones, including false variant call identification, non-disparate clone fuzzy clustering, and clonal allele fraction confinement. In the simulation and in vitro cell line mixture data, CLEMENT outperformed current cancer decomposition algorithms in estimating the number of clones (root-mean-square-error = 0.58–0.78 versus 1.43–3.34) and in the variant-clone membership agreement (∼85.5% versus 70.1–76.7%). Additional testing on human multi-clonal normal tissue sequencing confirmed the accurate identification of subclones that originated from different cell types. Clone-level analysis, including mutational burden and signatures, provided a new understanding of normal-tissue composition. We expect that CLEMENT will serve as a crucial tool in the currently emerging field of non-tumor genome analysis.

Funder

Korea Health Industry Development Institute

National Research Foundation of Korea

MSIT

Korea Health Technology R&D Project

Korea Dementia Research Center

Ministry of Health & Welfare, Republic of Korea

Publisher

Oxford University Press (OUP)

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