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Radiographical assessment of tumour stroma and treatment outcomes using deep learning: a retrospective, multicohort study

Authors :
Yuming Jiang, MD
Xiaokun Liang, PhD
Zhen Han, MD
Wei Wang, MD
Sujuan Xi, MD
Tuanjie Li, MD
Chuanli Chen, MD
Qingyu Yuan, MD
Na Li, PhD
Jiang Yu, MD
Yaoqin Xie, ProfPhD
Yikai Xu, ProfMD
Zhiwei Zhou, ProfMD
George A Poultsides, ProfMD
Guoxin Li, ProfMD
Ruijiang Li, PhD
Source :
The Lancet: Digital Health, Vol 3, Iss 6, Pp e371-e382 (2021)
Publication Year :
2021
Publisher :
Elsevier, 2021.

Abstract

Summary: Background: The tumour stroma microenvironment plays an important part in disease progression and its composition can influence treatment response and outcomes. Histological evaluation of tumour stroma is limited by access to tissue, spatial heterogeneity, and temporal evolution. We aimed to develop a radiological signature for non-invasive assessment of tumour stroma and treatment outcomes. Methods: In this multicentre, retrospective study, we analysed CT images and outcome data of 2209 patients with resected gastric cancer from five independent cohorts recruited from two centres (Nanfang Hospital of Southern Medical University [Guangzhou, China] and Sun Yat-sen University Cancer Center [Guangzhou, China]). Patients with histologically confirmed gastric cancer, at least 15 lymph nodes harvested, preoperative abdominal CT available, and complete clinicopathological and follow-up data were eligible for inclusion. Tumour tissue was collected for patients in the training cohort (321 patients), internal validation cohort one (246 patients), and external validation cohort one (128 patients). Four stroma classes were defined according to the protein expression of α-smooth muscle actin and periostin assessed by immunohistochemistry. The primary objective was to predict the histologically based stroma classes by using preoperative CT images. We trained a deep convolutional neural network model using the training cohort and tested the model in the internal and external validation cohort one. We evaluated the model's association with prognosis in the training cohort, two internal, and two external validation cohorts and compared outcomes of patients who received or did not receive adjuvant chemotherapy. Findings: The deep-learning model achieved a high diagnostic accuracy for assessing tumour stroma in both internal validation cohort one (area under the receiver operating characteristic curve [AUC] 0·96–0·98]) and external validation cohort one (AUC 0·89–0·94). The stromal imaging signature was significantly associated with disease-free survival and overall survival in all cohorts (p

Details

Language :
English
ISSN :
25897500
Volume :
3
Issue :
6
Database :
Directory of Open Access Journals
Journal :
The Lancet: Digital Health
Publication Type :
Academic Journal
Accession number :
edsdoj.51570d88c7c496dbb9f1f1b337418c9
Document Type :
article
Full Text :
https://doi.org/10.1016/S2589-7500(21)00065-0