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Evaluation of cell-free DNA approaches for multi-cancer early detection

Authors :
Arash Jamshidi
Minetta C. Liu
Eric A. Klein
Oliver Venn
Earl Hubbell
John F. Beausang
Samuel Gross
Collin Melton
Alexander P. Fields
Qinwen Liu
Nan Zhang
Eric T. Fung
Kathryn N. Kurtzman
Hamed Amini
Craig Betts
Daniel Civello
Peter Freese
Robert Calef
Konstantin Davydov
Saniya Fayzullina
Chenlu Hou
Roger Jiang
Byoungsok Jung
Susan Tang
Vasiliki Demas
Joshua Newman
Onur Sakarya
Eric Scott
Archana Shenoy
Seyedmehdi Shojaee
Kristan K. Steffen
Virgil Nicula
Tom C. Chien
Siddhartha Bagaria
Nathan Hunkapiller
Mohini Desai
Zhao Dong
Donald A. Richards
Timothy J. Yeatman
Allen L. Cohn
David D. Thiel
Donald A. Berry
Mohan K. Tummala
Kristi McIntyre
Mikkael A. Sekeres
Alan Bryce
Alexander M. Aravanis
Michael V. Seiden
Charles Swanton
Source :
Cancer Cell. 40:1537-1549.e12
Publication Year :
2022
Publisher :
Elsevier BV, 2022.

Abstract

In the Circulating Cell-free Genome Atlas (NCT02889978) substudy 1, we evaluate several approaches for a circulating cell-free DNA (cfDNA)-based multi-cancer early detection (MCED) test by defining clinical limit of detection (LOD) based on circulating tumor allele fraction (cTAF), enabling performance comparisons. Among 10 machine-learning classifiers trained on the same samples and independently validated, when evaluated at 98% specificity, those using whole-genome (WG) methylation, single nucleotide variants with paired white blood cell background removal, and combined scores from classifiers evaluated in this study show the highest cancer signal detection sensitivities. Compared with clinical stage and tumor type, cTAF is a more significant predictor of classifier performance and may more closely reflect tumor biology. Clinical LODs mirror relative sensitivities for all approaches. The WG methylation feature best predicts cancer signal origin. WG methylation is the most promising technology for MCED and informs development of a targeted methylation MCED test.

Details

ISSN :
15356108 and 02889978
Volume :
40
Database :
OpenAIRE
Journal :
Cancer Cell
Accession number :
edsair.doi.dedup.....4818603c4875331d9076cd2c42befbf7
Full Text :
https://doi.org/10.1016/j.ccell.2022.10.022