作者
Chunyue Feng, Kokhaur Ong, David M Young, Bingxian Chen, Longjie Li, Xinmi Huo, Haoda Lu, Weizhong Gu, Fei Liu, Hongfeng Tang, Manli Zhao, Min Yang, Kun Zhu, Limin Huang, Qiang Wang, Gabriel Pik Liang Marini, Kun Gui, Hao Han, Stephan J Sanders, Lin Li, Weimiao Yu, Jianhua Mao
发表日期
2024/1/1
期刊
Bioinformatics
卷号
40
期号
1
页码范围
btad740
出版商
Oxford University Press
简介
Motivation
Pediatric kidney disease is a widespread, progressive condition that severely impacts growth and development of children. Chronic kidney disease is often more insidious in children than in adults, usually requiring a renal biopsy for diagnosis. Biopsy evaluation requires copious examination by trained pathologists, which can be tedious and prone to human error. In this study, we propose an artificial intelligence (AI) method to assist pathologists in accurate segmentation and classification of pediatric kidney structures, named as AI-based Pediatric Kidney Diagnosis (APKD).
Results
We collected 2935 pediatric patients diagnosed with kidney disease for the development of APKD. The dataset comprised 93 932 histological structures annotated manually by three skilled nephropathologists. APKD scored an average accuracy of 94% for each kidney structure category …
引用总数