1. Development of a whole-slide-level segmentation-based dMMR/pMMR deep learning detector for colorectal cancer
- Author
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Zhou Tong, Yin Wang, Xuanwen Bao, Yu Deng, Bo Lin, Ge Su, Kejun Ye, Xiaomeng Dai, Hangyu Zhang, Lulu Liu, Wenyu Wang, Yi Zheng, Weijia Fang, Peng Zhao, Peirong Ding, Shuiguang Deng, and Xiangming Xu
- Subjects
Health sciences ,Medicine ,Oncology ,Health technology ,Science - Abstract
Summary: To investigate whole-slide-level prediction in the field of artificial intelligence identification of dMMR/pMMR from hematoxylin and eosin (H&E) in colorectal cancer (CRC), we established a segmentation-based dMMR/pMMR deep learning detector (SPEED). Our model was approximately 1,700 times faster than that of the classification-based model. For the internal validation cohort, our model yielded an overall AUC of 0.989. For the external validation cohort, the model exhibited a high performance, with an AUC of 0.865. The human‒machine strategy further improved the model performance for external validation by an AUC up to 0.988. Our whole-slide-level prediction model provided an approach for dMMR/pMMR detection from H&E whole slide images with excellent predictive performance and less computer processing time in patients with CRC.
- Published
- 2023
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