2022
DOI: 10.1101/2022.10.24.513446
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COOBoostR: an extreme gradient boosting-based tool for robust tissue or cell-of-origin prediction of tumors

Abstract: We here present COOBoostR (https://github.com/SWJ9385/COOBoostR), a computational method designed for the putative prediction of tissue- or cell-of-origin of various cancer types. COOBoostR leverages regional somatic mutation density information and chromatin mark features to be applied to an extreme gradient boosting-based machine-learning algorithm. COOBoostR ranks chromatin marks from various tissue and cell types which best explain the somatic mutation density landscape of any sample of interest. Through i… Show more

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