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Deep Learning for Fully Automated Prediction of Overall Survival in Patients Undergoing Resection for Pancreatic Cancer

Authors :
Jiawen Yao
Kai Cao
Yang Hou
Jian Zhou
Yingda Xia
Isabella Nogues
Qike Song
Hui Jiang
Xianghua Ye
Jianping Lu
Gang Jin
Hong Lu
Chuanmiao Xie
Rong Zhang
Jing Xiao
Zaiyi Liu
Feng Gao
Yafei Qi
Xuezhou Li
Yang Zheng
Le Lu
Yu Shi
Ling Zhang
Source :
Annals of Surgery.
Publication Year :
2022
Publisher :
Ovid Technologies (Wolters Kluwer Health), 2022.

Abstract

To develop an imaging-derived biomarker for prediction of overall survival (OS) of pancreatic cancer by analyzing preoperative multiphase contrast-enhanced computed topography (CECT) using deep learning.Exploiting prognostic biomarkers for guiding neoadjuvant and adjuvant treatment decisions may potentially improve outcomes in patients with resectable pancreatic cancer.This multicenter, retrospective study included 1516 patients with resected pancreatic ductal adenocarcinoma (PDAC) from 3 centers located in China. The discovery cohort (n=763), which included preoperative multiphase CECT scans and OS data from 2 centers, was used to construct a fully automated imaging-derived prognostic biomarker-DeepCT-PDAC-by training scalable deep segmentation and prognostic models (via self-learning) to comprehensively model the tumor-anatomy spatial relations and their appearance dynamics in multiphase CECT for OS prediction. The marker was independently tested using internal (n=574) and external validation cohorts (n=179, 3 centers) to evaluate its performance, robustness, and clinical usefulness.Preoperatively, DeepCT-PDAC was the strongest predictor of OS in both internal and external validation cohorts [hazard ratio (HR) for high versus low risk 2.03, 95% confidence interval (CI): 1.50-2.75; HR: 2.47, CI: 1.35-4.53] in a multivariable analysis. Postoperatively, DeepCT-PDAC remained significant in both cohorts (HR: 2.49, CI: 1.89-3.28; HR: 2.15, CI: 1.14-4.05) after adjustment for potential confounders. For margin-negative patients, adjuvant chemoradiotherapy was associated with improved OS in the subgroup with DeepCT-PDAC low risk (HR: 0.35, CI: 0.19-0.64), but did not affect OS in the subgroup with high risk.Deep learning-based CT imaging-derived biomarker enabled the objective and unbiased OS prediction for patients with resectable PDAC. This marker is applicable across hospitals, imaging protocols, and treatments, and has the potential to tailor neoadjuvant and adjuvant treatments at the individual level.

Subjects

Subjects :
Surgery

Details

ISSN :
00034932
Database :
OpenAIRE
Journal :
Annals of Surgery
Accession number :
edsair.doi.dedup.....44ad66f0f1477242c98b2f7ac20c72f0
Full Text :
https://doi.org/10.1097/sla.0000000000005465