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Development and validation of an interpretable radiomic nomogram for severe radiation proctitis prediction in postoperative cervical cancer patients

Chaoyi Wei, Xinli Xiang, Xiaobo Zhou, Siyan Ren, Qingyu Zhou, Wenjun Dong, Haizhen Lin, Saijun Wang, Yuyue Zhang, Hai Lin, Qingzu He, Yuer Lu, Xiaoming Jiang, Jianwei Shuai, Xiance Jin, Congying Xie

2023Frontiers in Microbiology15 citationsDOIOpen Access PDF

Abstract

Background: Radiation proctitis is a common complication after radiotherapy for cervical cancer. Unlike simple radiation damage to other organs, radiation proctitis is a complex disease closely related to the microbiota. However, analysis of the gut microbiota is time-consuming and expensive. This study aims to mine rectal information using radiomics and incorporate it into a nomogram model for cheap and fast prediction of severe radiation proctitis prediction in postoperative cervical cancer patients. Methods: = 54). Multivariate logistic regression was used to build the radiomic and non-raidomic models. Results: The radiomics model [AUC=0.6855(0.5174-0.8535)] showed better performance and more net benefit in the validation set than the non-radiomic model [AUC=0.6641(0.4904-0.8378)]. In particular, we applied SHapley Additive exPlanation (SHAP) method for the first time to a radiomics-based logistic regression model to further interpret the radiomic features from case-based and feature-based perspectives. The integrated radiomic model enables the first accurate quantitative assessment of the probability of radiation proctitis in postoperative cervical cancer patients, addressing the limitations of the current qualitative assessment of the plan through dose-volume parameters only. Conclusion: We successfully developed and validated an integrated radiomic model containing rectal information. SHAP analysis of the model suggests that radiomic features have a supporting role in the quantitative assessment of the probability of radiation proctitis in postoperative cervical cancer patients.

Topics & Concepts

NomogramMedicineRadiation proctitisCervical cancerRadiomicsRadiation therapyCancerProctitisRadiologyMedical physicsOncologyInternal medicineDiseaseUlcerative colitisRadiomics and Machine Learning in Medical ImagingEffects of Radiation ExposureColorectal and Anal Carcinomas