MMRNet: Ensemble deep learning models for predicting mismatch repair deficiency in endometrial cancer from histopathological images

Li-Li Liu & Mu-Yan Cai et al. · 2025-04-29

Combining molecular classification with clinicopathologic methods improves risk assessment and chooses therapies for endometrial cancer (EC). Detecting mismatch repair (MMR) deficiencies in EC is crucial for screening Lynch syndrome and identifying immunotherapy candidates. An affordable and accessible tool is urgently needed to determine MMR status in EC patients. We introduce MMRNet, a deep convolutional neural network designed to predict MMR-deficient EC from whole-slide images stained with hematoxylin and eosin. MMRNet demonstrates strong performance, achieving an average area under the receiver operating characteristic curve (AUROC) of 0.897, with a sensitivity of 0.628 and a specificity of 0.949 in internal cross-validation. External validation using three additional datasets results in AUROCs of 0.790, 0.807, and 0.863. Employing a human-machine fusion approach notably improves diagnostic accuracy. MMRNet presents an effective method for identifying EC cases for confirmatory MMR testing and may assist in selecting candidates for immunotherapy.
Authors
Li-Li Liu, Bing-Zhong Jing, Xuan Liu, Rong-Gang Li, Zhao Wan, Jiang-Yu Zhang, Xiao-Ming Ouyang, Qing-Nuan Kong, Xiao-Ling Kang, Dong-Dong Wang, Hao-Hua Chen, Zi-Han Zhao, Hao-Yu Liang, Ma-Yan Huang, Cheng-You Zheng, Xia Yang, Xue-Yi Zheng, Xin-Ke Zhang, Li-Jun Wei, Chao Cao, Hong-Yi Gao, Rong-Zhen Luo, Mu-Yan Cai