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Machine learning to detect the SINEs of cancer

Authors :
Douville, Christopher
Lahouel, Kamel
Kuo, Albert
Grant, Haley
Avigdor, Bracha Erlanger
Curtis, Samuel D.
Summers, Mahmoud
Cohen, Joshua D.
Wang, Yuxuan
Mattox, Austin
Dudley, Jonathan
Dobbyn, Lisa
Popoli, Maria
Ptak, Janine
Nehme, Nadine
Silliman, Natalie
Blair, Cherie
Romans, Katharine
Thoburn, Christopher
Gizzi, Jennifer
Schoen, Robert E.
Tie, Jeanne
Gibbs, Peter
Ho-Pham, Lan T.
Tran, Bich N. H.
Tran, Thach S.
Nguyen, Tuan V.
Goggins, Michael
Wolfgang, Christopher L.
Wang, Tian-Li
Shih, Ie-Ming
Lennon, Anne Marie
Hruban, Ralph H.
Bettegowda, Chetan
Kinzler, Kenneth W.
Papadopoulos, Nickolas
Vogelstein, Bert
Tomasetti, Cristian
Source :
Science Translational Medicine; January 2024, Vol. 16 Issue: 731
Publication Year :
2024

Abstract

We previously described an approach called RealSeqS to evaluate aneuploidy in plasma cell-free DNA through the amplification of ~350,000 repeated elements with a single primer. We hypothesized that an unbiased evaluation of the large amount of sequencing data obtained with RealSeqS might reveal other differences between plasma samples from patients with and without cancer. This hypothesis was tested through the development of a machine learning approach called Alu Profile Learning Using Sequencing (A-PLUS) and its application to 7615 samples from 5178 individuals, 2073 with solid cancer and the remainder without cancer. Samples from patients with cancer and controls were prespecified into four cohorts used for model training, analyte integration, and threshold determination, validation, and reproducibility. A-PLUS alone provided a sensitivity of 40.5% across 11 different cancer types in the validation cohort, at a specificity of 98.5%. Combining A-PLUS with aneuploidy and eight common protein biomarkers detected 51% of the cancers at 98.9% specificity. We found that part of the power of A-PLUS could be ascribed to a single feature—the global reduction of AluS subfamily elements in the circulating DNA of patients with solid cancer. We confirmed this reduction through the analysis of another independent dataset obtained with a different approach (whole-genome sequencing). The evaluation of Alu elements may therefore have the potential to enhance the performance of several methods designed for the earlier detection of cancer.

Details

Language :
English
ISSN :
19466234 and 19466242
Volume :
16
Issue :
731
Database :
Supplemental Index
Journal :
Science Translational Medicine
Publication Type :
Periodical
Accession number :
ejs65263026
Full Text :
https://doi.org/10.1126/scitranslmed.adi3883