Universal artificial intelligence platform for collaborative management of cataracts

Author:

Wu Xiaohang,Huang Yelin,Liu Zhenzhen,Lai Weiyi,Long Erping,Zhang Kai,Jiang Jiewei,Lin Duoru,Chen Kexin,Yu Tongyong,Wu Dongxuan,Li Cong,Chen Yanyi,Zou Minjie,Chen Chuan,Zhu Yi,Guo Chong,Zhang Xiayin,Wang Ruixin,Yang Yahan,Xiang Yifan,Chen Lijian,Liu Congxin,Xiong Jianhao,Ge Zongyuan,Wang Dingding,Xu Guihua,Du Shaolin,Xiao Chi,Wu Jianghao,Zhu Ke,Nie Danyao,Xu Fan,Lv Jian,Chen Weirong,Liu YizhiORCID,Lin HaotianORCID

Abstract

PurposeTo establish and validate a universal artificial intelligence (AI) platform for collaborative management of cataracts involving multilevel clinical scenarios and explored an AI-based medical referral pattern to improve collaborative efficiency and resource coverage.MethodsThe training and validation datasets were derived from the Chinese Medical Alliance for Artificial Intelligence, covering multilevel healthcare facilities and capture modes. The datasets were labelled using a three-step strategy: (1) capture mode recognition; (2) cataract diagnosis as a normal lens, cataract or a postoperative eye and (3) detection of referable cataracts with respect to aetiology and severity. Moreover, we integrated the cataract AI agent with a real-world multilevel referral pattern involving self-monitoring at home, primary healthcare and specialised hospital services.ResultsThe universal AI platform and multilevel collaborative pattern showed robust diagnostic performance in three-step tasks: (1) capture mode recognition (area under the curve (AUC) 99.28%–99.71%), (2) cataract diagnosis (normal lens, cataract or postoperative eye with AUCs of 99.82%, 99.96% and 99.93% for mydriatic-slit lamp mode and AUCs >99% for other capture modes) and (3) detection of referable cataracts (AUCs >91% in all tests). In the real-world tertiary referral pattern, the agent suggested 30.3% of people be ‘referred’, substantially increasing the ophthalmologist-to-population service ratio by 10.2-fold compared with the traditional pattern.ConclusionsThe universal AI platform and multilevel collaborative pattern showed robust diagnostic performance and effective service for cataracts. The context of our AI-based medical referral pattern will be extended to other common disease conditions and resource-intensive situations.

Funder

Guangdong Science and Technology Innovation Leading Talents

Science Foundation of China for Excellent Young Scientists

National Natural Science Foundation of China

Science and Technology Planning Projects of Guangdong Province

Natural Science Foundation of Guangdong Province

National Key Research and Development Program

Key Research Plan for the National Natural Science Foundation of China in Cultivation Project

Publisher

BMJ

Subject

Cellular and Molecular Neuroscience,Sensory Systems,Ophthalmology

Reference32 articles.

1. The National Health and Family Planning Commission of China . China statistical Yearbook of health and family planning. China Union Medical University Press, 2017.

2. Teleophthalmology: improving patient outcomes?;Sreelatha;Clin Ophthalmol,2016

3. Global Teleophthalmology With iPhones for Real-Time Slitlamp Eye Examination

4. The current state of Teleophthalmology in the United States;Rathi;Ophthalmology,2017

5. Clinically applicable deep learning for diagnosis and referral in retinal disease;De Fauw;Nat Med,2018

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