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Age-related clonal hematopoiesis (ARCH) is characterized by age-associated accumulation of somatic mutations in hematopoietic stem cells (HSCs) or their pluripotent descendants. HSCs harboring driver mutations will be positively selected and cells carrying these mutations will rise in frequency. While ARCH is a known risk factor for blood malignancies, such as Acute Myeloid Leukemia (AML), why some people who harbor ARCH driver mutations do not progress to AML remains unclear. Here, we model the interaction of positive and negative selection in deeply sequenced blood samples from individuals who subsequently progressed to AML, compared to healthy controls, using deep learning and population genetics. Our modeling allows us to discriminate amongst evolutionary classes with high accuracy and captures signatures of purifying selection in most individuals. Purifying selection, acting on benign or mildly damaging passenger mutations, appears to play a critical role in preventing disease-predisposing clones from rising to dominance and is associated with longer disease-free survival. Through exploring a range of evolutionary models, we show how different classes of selection shape clonal dynamics and health outcomes thus enabling us to better identify individuals at a high risk of malignancy.

Original publication

DOI

10.1038/s41467-021-25172-8

Type

Journal article

Journal

Nature communications

Publication Date

08/2021

Volume

12

Addresses

Ontario Institute for Cancer Research, Toronto, ON, Canada.

Keywords

Hematopoietic Stem Cells, Humans, Leukemia, Myeloid, Acute Disease, Genetics, Population, Mutation, Models, Genetic, Adult, Aged, Middle Aged, Kaplan-Meier Estimate, Clonal Evolution, Deep Learning, Outcome Assessment, Health Care, Clonal Hematopoiesis