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Integrated image-based deep learning and language models for primary diabetes care

Authors :
Li, Jiajia
Guan, Zhouyu
Wang, Jing
Cheung, Carol Y.
Zheng, Yingfeng
Lim, Lee-Ling
Lim, Cynthia Ciwei
Ruamviboonsuk, Paisan
Raman, Rajiv
Corsino, Leonor
Echouffo-Tcheugui, Justin B.
Luk, Andrea O. Y.
Chen, Li Jia
Sun, Xiaodong
Hamzah, Haslina
Wu, Qiang
Wang, Xiangning
Liu, Ruhan
Wang, Ya Xing
Chen, Tingli
Zhang, Xiao
Yang, Xiaolong
Yin, Jun
Wan, Jing
Du, Wei
Quek, Ten Cheer
Goh, Jocelyn Hui Lin
Yang, Dawei
Hu, Xiaoyan
Nguyen, Truong X.
Szeto, Simon K. H.
Chotcomwongse, Peranut
Malek, Rachid
Normatova, Nargiza
Ibragimova, Nilufar
Srinivasan, Ramyaa
Zhong, Pingting
Huang, Wenyong
Deng, Chenxin
Ruan, Lei
Zhang, Cuntai
Zhang, Chenxi
Zhou, Yan
Wu, Chan
Dai, Rongping
Koh, Sky Wei Chee
Abdullah, Adina
Hee, Nicholas Ken Yoong
Tan, Hong Chang
Liew, Zhong Hong
Tien, Carolyn Shan-Yeu
Kao, Shih Ling
Lim, Amanda Yuan Ling
Mok, Shao Feng
Sun, Lina
Gu, Jing
Wu, Liang
Li, Tingyao
Cheng, Di
Wang, Zheyuan
Qin, Yiming
Dai, Ling
Meng, Ziyao
Shu, Jia
Lu, Yuwei
Jiang, Nan
Hu, Tingting
Huang, Shan
Huang, Gengyou
Yu, Shujie
Liu, Dan
Ma, Weizhi
Guo, Minyi
Guan, Xinping
Yang, Xiaokang
Bascaran, Covadonga
Cleland, Charles R.
Bao, Yuqian
Ekinci, Elif I.
Jenkins, Alicia
Chan, Juliana C. N.
Bee, Yong Mong
Sivaprasad, Sobha
Shaw, Jonathan E.
Simó, Rafael
Keane, Pearse A.
Cheng, Ching-Yu
Tan, Gavin Siew Wei
Jia, Weiping
Tham, Yih-Chung
Li, Huating
Sheng, Bin
Wong, Tien Yin
Source :
Nature Medicine; October 2024, Vol. 30 Issue: 10 p2886-2896, 11p
Publication Year :
2024

Abstract

Primary diabetes care and diabetic retinopathy (DR) screening persist as major public health challenges due to a shortage of trained primary care physicians (PCPs), particularly in low-resource settings. Here, to bridge the gaps, we developed an integrated image–language system (DeepDR-LLM), combining a large language model (LLM module) and image-based deep learning (DeepDR-Transformer), to provide individualized diabetes management recommendations to PCPs. In a retrospective evaluation, the LLM module demonstrated comparable performance to PCPs and endocrinology residents when tested in English and outperformed PCPs and had comparable performance to endocrinology residents in Chinese. For identifying referable DR, the average PCP’s accuracy was 81.0% unassisted and 92.3% assisted by DeepDR-Transformer. Furthermore, we performed a single-center real-world prospective study, deploying DeepDR-LLM. We compared diabetes management adherence of patients under the unassisted PCP arm (n= 397) with those under the PCP+DeepDR-LLM arm (n= 372). Patients with newly diagnosed diabetes in the PCP+DeepDR-LLM arm showed better self-management behaviors throughout follow-up (P< 0.05). For patients with referral DR, those in the PCP+DeepDR-LLM arm were more likely to adhere to DR referrals (P< 0.01). Additionally, DeepDR-LLM deployment improved the quality and empathy level of management recommendations. Given its multifaceted performance, DeepDR-LLM holds promise as a digital solution for enhancing primary diabetes care and DR screening.

Details

Language :
English
ISSN :
10788956 and 1546170X
Volume :
30
Issue :
10
Database :
Supplemental Index
Journal :
Nature Medicine
Publication Type :
Periodical
Accession number :
ejs66956236
Full Text :
https://doi.org/10.1038/s41591-024-03139-8