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HomeBrain and Mental PerformanceAlzheimer's DiseaseApplying artificial intelligence for early risk forecasting of Alzheimer's disease

Applying artificial intelligence for early risk forecasting of Alzheimer’s disease

Researchers led by HKUST’s President, Prof. Nancy IP, in collaboration with the Chair Professor and Director of HKUST’s Big Data Institute, Prof. CHEN Lei, investigated whether AI — specifically deep learning models — can model AD risk using genetic information. The team established one of the first deep-learning models for estimating AD polygenic risks in both European-descent and Chinese populations. Compared to other models, these deep learning models more accurately classify patients with AD and stratify individuals into distinct groups based on disease risks associated with alterations of various biological processes.

In current daily practice, AD is diagnosed clinically, using various means including cognitive tests and brain imaging, but often when patients are showing symptoms, it is already well past the optimal intervention window. Therefore, early forecasting of AD risk can greatly aid diagnosis and the development of intervention strategies. By combining the new deep learning model with genetic testing, an individual’s lifetime risk of developing AD can be estimated with more than 70% accuracy.

AD is a heritable disorder that can be attributed to genomic variants. As these variants are present from birth and remain constant throughout life, examining an individual’s DNA information can help predict their relative risk of developing AD, thereby enabling early intervention and timely management. While FDA-approved genetic testing for the APOE-?4 genetic variant can estimate AD risk, it may be insufficient to identify high-risk individuals, because multiple genetic risks contribute to the disease. Therefore, it is essential to develop tests that integrate information from multiple AD risk genes to accurately determine an individual’s relative risk of developing AD over their lifetime.

“Our study demonstrates the efficacy of deep learning methods for genetic research and risk prediction for Alzheimer’s disease. This breakthrough will greatly accelerate population-scale screening and staging of Alzheimer’s disease risk. Besides risk prediction, this approach supports the grouping of individuals according to their disease risk and provides insights into the mechanisms that contribute to the onset and progression of the disease,” said Prof. Nancy Ip.

Meanwhile, Prof. Chen Lei remarked that, “this study exemplifies how the application of AI to the biological sciences can significantly benefit biomedical and disease-related studies. By utilizing a neural network, we effectively captured nonlinearity in high-dimensional genomic data, which improved the accuracy of Alzheimer’s disease risk prediction. In addition, through AI-based data analysis without human supervision, we categorized at-risk individuals into subgroups, which revealed insights into the underlying disease mechanisms. Our research also highlights how AI can elegantly, efficiently, and effectively address interdisciplinary challenges. I firmly believe that AI will play a vital role in various healthcare fields in the near future.”

The “Deep learning-based polygenic risk analysis for Alzheimer’s disease prediction” study was conducted in collaboration with researchers at the Shenzhen Institute of Advanced Technology and University College London as well as clinicians at local Hong Kong hospitals including Prince of Wales Hospital and Queen Elizabeth Hospital. The findings were recently published in Communications Medicine. The research team is now refining the model and aims to ultimately incorporate it into standard screening workflows.

AD, which affects over 50 million people worldwide, is a fatal disease that involves cognitive dysfunction and the loss of brain cells. Its symptoms include progressive memory loss as well as impaired movement, reasoning, and judgment.

As with anything you read on the internet, this article should not be construed as medical advice; please talk to your doctor or primary care provider before changing your wellness routine. This article is not intended to provide a medical diagnosis, recommendation, treatment, or endorsement.

Content may be edited for style and length.

References/Sources/Materials provided by:

This article was written at the Hong Kong University of Science and Technology

https://hkust.edu.hk/news/research-and-innovation/hkust-scientists-achieve-groundbreaking-first-applying-artificial

https://hkust.edu.hk/

anitalam@ust.hk

johnnytam@ust.hk

http://dx.doi.org/10.1038/s43856-023-00269-x

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