Accurate estimation of biological age and its application in disease prediction using a multimodal image Transformer system

Jinzhuo Wang(Peking University), Yuanxu Gao(Macau University of Science and Technology), Fangfei Wang(Macau University of Science and Technology), Simiao Zeng(Guangzhou Medical University), Jiahui Li(Guangzhou Medical University), Hanpei Miao(Dongguan People’s Hospital), Taorui Wang(Guangzhou Medical University), Jin Zeng, Daniel T. Baptista‐Hon(Macau University of Science and Technology), Olivia Monteiro(Macau University of Science and Technology), Taihua Guan, Linling Cheng(Macau University of Science and Technology), Yuxing Lu(Peking University), Zhengchao Luo(Peking University), Ming Li(Wenzhou Medical University), Jian‐Kang Zhu(Southern University of Science and Technology), Sheng Nie(Nanfang Hospital), Kang Zhang(Macau University of Science and Technology), Yong Zhou(Shanghai Jiao Tong University)
Proceedings of the National Academy of Sciences
January 8, 2024
Cited by 28Open Access
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Abstract

Aging in an individual refers to the temporal change, mostly decline, in the body's ability to meet physiological demands. Biological age (BA) is a biomarker of chronological aging and can be used to stratify populations to predict certain age-related chronic diseases. BA can be predicted from biomedical features such as brain MRI, retinal, or facial images, but the inherent heterogeneity in the aging process limits the usefulness of BA predicted from individual body systems. In this paper, we developed a multimodal Transformer-based architecture with cross-attention which was able to combine facial, tongue, and retinal images to estimate BA. We trained our model using facial, tongue, and retinal images from 11,223 healthy subjects and demonstrated that using a fusion of the three image modalities achieved the most accurate BA predictions. We validated our approach on a test population of 2,840 individuals with six chronic diseases and obtained significant difference between chronological age and BA (AgeDiff) than that of healthy subjects. We showed that AgeDiff has the potential to be utilized as a standalone biomarker or conjunctively alongside other known factors for risk stratification and progression prediction of chronic diseases. Our results therefore highlight the feasibility of using multimodal images to estimate and interrogate the aging process.


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