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Modular machine learning for Alzheimer's disease classification from retinal vasculature

Jianqiao Tian, Glenn E. Smith, Han Guo, Boya Liu, Zehua Pan, Zijie Wang, Shuangyu Xiong, Ruogu Fang

2021Scientific Reports118 citationsDOIOpen Access PDF

Abstract

Alzheimer's disease is the leading cause of dementia. The long progression period in Alzheimer's disease provides a possibility for patients to get early treatment by having routine screenings. However, current clinical diagnostic imaging tools do not meet the specific requirements for screening procedures due to high cost and limited availability. In this work, we took the initiative to evaluate the retina, especially the retinal vasculature, as an alternative for conducting screenings for dementia patients caused by Alzheimer's disease. Highly modular machine learning techniques were employed throughout the whole pipeline. Utilizing data from the UK Biobank, the pipeline achieved an average classification accuracy of 82.44%. Besides the high classification accuracy, we also added a saliency analysis to strengthen this pipeline's interpretability. The saliency analysis indicated that within retinal images, small vessels carry more information for diagnosing Alzheimer's diseases, which aligns with related studies.

Topics & Concepts

InterpretabilityPipeline (software)DementiaRetinalComputer scienceDiseaseModular designAlzheimer's diseaseMedicineArtificial intelligenceMachine learningPathologyOphthalmologyOperating systemProgramming languageRetinal Imaging and AnalysisArtificial Intelligence in HealthcareDementia and Cognitive Impairment Research
Modular machine learning for Alzheimer's disease classification from retinal vasculature | Litcius