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Deep learning assists detection of esophageal cancer and precursor lesions in a prospective, randomized controlled study

Authors :
Li, Shao-wei
Zhang, Li-hui
Cai, Yue
Zhou, Xian-bin
Fu, Xin-yu
Song, Ya-qi
Xu, Shi-wen
Tang, Shen-ping
Luo, Ren-quan
Huang, Qin
Yan, Ling-ling
He, Sai-qin
Zhang, Yu
Wang, Jun
Ge, Shu-qiong
Gu, Bin-bin
Peng, Jin-bang
Wang, Yi
Fang, Li-na
Wu, Wei-dan
Ye, Wen-guang
Zhu, Min
Luo, Ding-hai
Jin, Xiu-xiu
Yang, Hai-deng
Zhou, Jing-jing
Wang, Zhen-zhen
Wu, Jian-fen
Qin, Qiao-qiao
Lu, Yan-di
Wang, Fei
Chen, Ya-hong
Chen, Xia
Xu, Shan-jing
Tung, Tao-Hsin
Luo, Chen-wen
Ye, Li-ping
Yu, Hong-gang
Mao, Xin-li
Source :
Science Translational Medicine; April 2024, Vol. 16 Issue: 743
Publication Year :
2024

Abstract

Endoscopy is the primary modality for detecting asymptomatic esophageal squamous cell carcinoma (ESCC) and precancerous lesions. Improving detection rate remains challenging. We developed a system based on deep convolutional neural networks (CNNs) for detecting esophageal cancer and precancerous lesions [high-risk esophageal lesions (HrELs)] and validated its efficacy in improving HrEL detection rate in clinical practice (trial registration ChiCTR2100044126 at www.chictr.org.cn). Between April 2021 and March 2022, 3117 patients ≥50 years old were consecutively recruited from Taizhou Hospital, Zhejiang Province, and randomly assigned 1:1 to an experimental group (CNN-assisted endoscopy) or a control group (unassisted endoscopy) based on block randomization. The primary endpoint was the HrEL detection rate. In the intention-to-treat population, the HrEL detection rate [28 of 1556 (1.8%)] was significantly higher in the experimental group than in the control group [14 of 1561 (0.9%), P= 0.029], and the experimental group detection rate was twice that of the control group. Similar findings were observed between the experimental and control groups [28 of 1524 (1.9%) versus 13 of 1534 (0.9%), respectively; P= 0.021]. The system’s sensitivity, specificity, and accuracy for detecting HrELs were 89.7, 98.5, and 98.2%, respectively. No adverse events occurred. The proposed system thus improved HrEL detection rate during endoscopy and was safe. Deep learning assistance may enhance early diagnosis and treatment of esophageal cancer and may become a useful tool for esophageal cancer screening.

Details

Language :
English
ISSN :
19466234 and 19466242
Volume :
16
Issue :
743
Database :
Supplemental Index
Journal :
Science Translational Medicine
Publication Type :
Periodical
Accession number :
ejs66093997
Full Text :
https://doi.org/10.1126/scitranslmed.adk5395