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Deep Learning Based Multimodal Progression Modeling for Alzheimer’s Disease

Liuqing Yang, Xifeng Wang, Qi Guo, Scott Gladstein, Dustin Wooten, Tengfei Li, Weining Robieson, Yan Sun, Xin Huang, for the Alzheimer’s Disease Neuroimaging Initiative

2021Statistics in Biopharmaceutical Research27 citationsDOI

Abstract

The progression of Alzheimer’s disease (AD) is a continuous process in cognitive and biomarker changes, with only a fraction of mild cognitive impairment (MCI) patients eventually advancing to AD. There is no definite biomarker signature to determine this eventual progress. The discovery and development of prognostic biomarker signatures for AD is essential to address the challenges of AD drug discovery and development. The deep learning (DL) technique is a recent breakthrough in data science that enables researchers to discover previously unknown features comprised by complicated patterns learnt from large datasets. It has outperformed many traditional machine learning methods in computer vision tasks. In this article, we evaluated the performance of DL algorithms in differentiating patients with diagnosis of AD, MCI, or no evidence of dementia using baseline MRI data of the brain, and integrated features extracted from the neural network with other baseline biomarkers to develop an AD prognostic signature. This signature can be used to understand the patient heterogeneity in a study cohort and provide enrichment strategies for AD clinical trial design.

Topics & Concepts

DementiaBiomarkerMachine learningArtificial intelligenceComputer scienceBiomarker discoveryDeep learningDiseaseDrug developmentMedicineCognitionInternal medicineDrugPsychiatryProteomicsGeneChemistryBiochemistryMachine Learning in HealthcareDementia and Cognitive Impairment ResearchAI in cancer detection
Deep Learning Based Multimodal Progression Modeling for Alzheimer’s Disease | Litcius