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Early and Prediagnostic Detection of Pancreatic Cancer from Computed Tomography

Wenxuan Li
Pedro R. A. S. Bassi
Lizhou Wu
Xinze Zhou
Yuxuan Zhao
Qi Chen
Szymon Plotka
Tianyu Lin
Zheren Zhu
Marisa Martin
Justin Caskey
Shanshan Jiang
Xiaoxi Chen
Jaroslaw B. Ćwikla
Artur Sankowski
Yaping Wu
Sergio Decherchi
Andrea Cavalli
Chandana Lall
Cristian Tomasetti
Yaxing Guo
Xuan Yu
Yuqing Cai
Hualin Qiao
Jie Bao
Chenhan Hu
Ximing Wang
Arkadiusz Sitek
Kai Ding
Heng Li
Meiyun Wang
Dexin Yu
Guang Zhang
Yang Yang
Kang Wang
Alan L. Yuille
Zongwei Zhou
Main:16 Pages
4 Figures
Bibliography:4 Pages
6 Tables
Appendix:5 Pages
Abstract

Pancreatic ductal adenocarcinoma (PDAC), one of the deadliest solid malignancies, is often detected at a late and inoperable stage. Retrospective reviews of prediagnostic CT scans, when conducted by expert radiologists aware that the patient later developed PDAC, frequently reveal lesions that were previously overlooked. To help detecting these lesions earlier, we developed an automated system named ePAI (early Pancreatic cancer detection with Artificial Intelligence). It was trained on data from 1,598 patients from a single medical center. In the internal test involving 1,009 patients, ePAI achieved an area under the receiver operating characteristic curve (AUC) of 0.939-0.999, a sensitivity of 95.3%, and a specificity of 98.7% for detecting small PDAC less than 2 cm in diameter, precisely localizing PDAC as small as 2 mm. In an external test involving 7,158 patients across 6 centers, ePAI achieved an AUC of 0.918-0.945, a sensitivity of 91.5%, and a specificity of 88.0%, precisely localizing PDAC as small as 5 mm. Importantly, ePAI detected PDACs on prediagnostic CT scans obtained 3 to 36 months before clinical diagnosis that had originally been overlooked by radiologists. It successfully detected and localized PDACs in 75 of 159 patients, with a median lead time of 347 days before clinical diagnosis. Our multi-reader study showed that ePAI significantly outperformed 30 board-certified radiologists by 50.3% (P < 0.05) in sensitivity while maintaining a comparable specificity of 95.4% in detecting PDACs early and prediagnostic. These findings suggest its potential of ePAI as an assistive tool to improve early detection of pancreatic cancer.

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