Investigator

Lisha Qi

Associate professor · Tianjin Medical University Cancer Institute and Hospital, Pathology

LQLisha Qi
Papers(1)
Histopathology Images…
Institutions(1)
Tianjin Medical Unive…

Papers

Histopathology Images‐Based Deep Learning Prediction of Histological Types in Endometrial Cancer

ABSTRACT Background According to the new 2023 International Federation of Gynecology and Obstetrics staging system for endometrial cancer (EC), EC is classified into aggressive and nonaggressive histological types. Accurate diagnosis of the histological type of EC is crucial for optimizing treatment strategies and predicting patient outcomes. Objectives To develop and validate a deep convolutional neural network for predicting nonaggressive versus aggressive histological types from hematoxylin and eosin (H&E)‐stained images of EC specimens. Methods A deep convolutional neural network named EC‐AI HIS was developed to predict the nonaggressive or aggressive histological type from 1187 EC specimens. Its generalizability and clinical utility were assessed across multiple cohorts and benchmarked against pathological diagnoses. Furthermore, correlations between the model's predictions and molecular subtypes of EC were examined. Results EC‐AI HIS achieved an AUC of 0.911 (sensitivity 82%, specificity 83%). In fivefold cross‐validation, AUCs ranged from 0.865 to 0.909. External validation yielded an AUC of 0.859 (sensitivity 75%, specificity 83%). EC‐AI HIS maintained robustness on images from different scanners and of suboptimal quality. In clinical simulation settings, it showed higher sensitivity than pathologists and improved junior pathologists’ diagnostic accuracy. EC‐AI HIS scores were associated with molecular subtypes of EC and showed potential prognostic utility in the p53abn subtype. Conclusions EC‐AI HIS is an effective tool that can assist pathologists in classifying EC histological types.

25Works
1Papers

Positions

2015–

Associate professor

Tianjin Medical University Cancer Institute and Hospital · Pathology

2017–

Visiting Associate Professor

University of Texas Medical Branch · Pathology

2012–

Fellow in Gastrointestinal Pathology

Tianjin Medical University Cancer Institute and Hospital · Pathology

2007–

Resident in Pathology

Logistics University of of People's Armed Police Force · Pathology

Education

2018

Visiting Associate Professor

University of Texas Medical Branch · Pathology

2012

Ph.D.

Tianjin Medical University Cancer Institute and Hospital · Pathology

2007

Master degree

Tianjin Medical University · Pathology

2003

Medicine degree

Inner Mongolia Medical University · Clinical Medicine