Development and validation of a deep learning and radiomics combined model for differentiating complicated from uncomplicated acute appendicitis

Author:

Liang Dan1,Fan Yaheng2,Zeng Yinghou2,Zhou Hui3,Zhou Hong4,Li Guangming3,Liang Yingying5,Zhong Zhangnan2,Chen Dandan5,Chen Amei5,Huang Bingsheng2,Wei Xinhua5

Affiliation:

1. First Affiliated Hospital of Jinan University

2. Medical AI Lab, School of Biomedical Engineering, Health Science Center, Shenzhen University

3. Department of Radiology, The Sixth Affiliated Hospital of Guangzhou Medical University, Qingyuan People’s Hospital

4. Department of Radiology, The First Affiliated Hospital of University of South China

5. Department of Radiology, Guangzhou First People's Hospital, School of Medicine, South China University of Technology

Abstract

Abstract Background Nonoperative management (NOM) of uncomplicated acute appendicitis (AA) has been shown to be feasible; however, the pretreatment prediction of complicated/uncomplicated AA remains challenging. We developed a deep learning and radiomics combined model to differentiate complicated from uncomplicated AA. Methods This retrospective multicenter study included 1165 adult AA patients (training cohort, 700 patients; validation cohort, 465 patients) with available abdominal pelvic CT images. The reference standard for complicated/uncomplicated AA was surgery and pathology records. We developed our combined model with CatBoost based on the selected clinical characteristics, CT visual features, deep learning features, and radiomics features. We externally validated our combined model and compared it with the conventional combined model, the deep learning radiomics (DLR) model, and the radiologist’s visual diagnosis using receiver operating characteristic (ROC) curve analysis. Results In the training cohort, the area under the ROC curve (AUC) of our combined model in distinguishing complicated from uncomplicated AA was 0.816 (95% CI: 0.785–0.844). In the validation cohort, our combined model showed robust performance across the three centers, with AUCs of 0.836 (95% CI: 0.785–0.879), 0.793 (95% CI: 0.695–0.872), and 0.723 (95% CI: 0.632–0.802). In the total validation cohort, our combined model (AUC = 0.799) performed better than the conventional combined model, DLR model and radiologist’s visual diagnosis (AUC = 0.723, 0.755, and 0.679; all P < 0.05). Decision curve analysis showed that our combined model provided greater net benefit in predicting complicated AA than the other three models. Conclusions Our combined model allows the accurate differentiation of complicated and uncomplicated AA.

Publisher

Research Square Platform LLC

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