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Multimodal analysis of methylomics and fragmentomics in plasma cell-free DNA for multi-cancer early detection and localization

Authors :
Van Thien Chi Nguyen
Trong Hieu Nguyen
Nhu Nhat Tan Doan
Thi Mong Quynh Pham
Giang Thi Huong Nguyen
Thanh Dat Nguyen
Thuy Thi Thu Tran
Duy Long Vo
Thanh Hai Phan
Thanh Xuan Jasmine
Van Chu Nguyen
Huu Thinh Nguyen
Trieu Vu Nguyen
Thi Hue Hanh Nguyen
Le Anh Khoa Huynh
Trung Hieu Tran
Quang Thong Dang
Thuy Nguyen Doan
Anh Minh Tran
Viet Hai Nguyen
Vu Tuan Anh Nguyen
Le Minh Quoc Ho
Quang Dat Tran
Thi Thu Thuy Pham
Tan Dat Ho
Bao Toan Nguyen
Thanh Nhan Vo Nguyen
Thanh Dang Nguyen
Dung Thai Bieu Phu
Boi Hoan Huu Phan
Thi Loan Vo
Thi Huong Thoang Nai
Thuy Trang Tran
My Hoang Truong
Ngan Chau Tran
Trung Kien Le
Thanh Huong Thi Tran
Minh Long Duong
Hoai Phuong Thi Bach
Van Vu Kim
The Anh Pham
Duc Huy Tran
Trinh Ngoc An Le
Truong Vinh Ngoc Pham
Minh Triet Le
Dac Ho Vo
Thi Minh Thu Tran
Minh Nguyen Nguyen
Thi Tuong Vi Van
Anh Nhu Nguyen
Thi Trang Tran
Vu Uyen Tran
Minh Phong Le
Thi Thanh Do
Thi Van Phan
Hong-Dang Luu Nguyen
Duy Sinh Nguyen
Van Thinh Cao
Thanh-Thuy Thi Do
Dinh Kiet Truong
Hung Sang Tang
Hoa Giang
Hoai-Nghia Nguyen
Minh-Duy Phan
Le Son Tran
Source :
eLife, Vol 12 (2023)
Publication Year :
2023
Publisher :
eLife Sciences Publications Ltd, 2023.

Abstract

Despite their promise, circulating tumor DNA (ctDNA)-based assays for multi-cancer early detection face challenges in test performance, due mostly to the limited abundance of ctDNA and its inherent variability. To address these challenges, published assays to date demanded a very high-depth sequencing, resulting in an elevated price of test. Herein, we developed a multimodal assay called SPOT-MAS (screening for the presence of tumor by methylation and size) to simultaneously profile methylomics, fragmentomics, copy number, and end motifs in a single workflow using targeted and shallow genome-wide sequencing (~0.55×) of cell-free DNA. We applied SPOT-MAS to 738 non-metastatic patients with breast, colorectal, gastric, lung, and liver cancer, and 1550 healthy controls. We then employed machine learning to extract multiple cancer and tissue-specific signatures for detecting and locating cancer. SPOT-MAS successfully detected the five cancer types with a sensitivity of 72.4% at 97.0% specificity. The sensitivities for detecting early-stage cancers were 73.9% and 62.3% for stages I and II, respectively, increasing to 88.3% for non-metastatic stage IIIA. For tumor-of-origin, our assay achieved an accuracy of 0.7. Our study demonstrates comparable performance to other ctDNA-based assays while requiring significantly lower sequencing depth, making it economically feasible for population-wide screening.

Details

Language :
English
ISSN :
2050084X
Volume :
12
Database :
Directory of Open Access Journals
Journal :
eLife
Publication Type :
Academic Journal
Accession number :
edsdoj.43c93b76df74ebbb83d778241a75b5d
Document Type :
article
Full Text :
https://doi.org/10.7554/eLife.89083