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AD-NET: Age-adjust neural network for improved MCI to AD conversion prediction

Fei Gao, Hyunsoo Yoon, Yanzhe Xu, Dhruman D. Goradia, Ji Luo, Teresa Wu, Yi‐Chang Su

2020NeuroImage Clinical61 citationsDOIOpen Access PDF

Abstract

The prediction of Mild Cognitive Impairment (MCI) patients who are at higher risk converting to Alzheimer's Disease (AD) is critical for effective intervention and patient selection in clinical trials. Different biomarkers including neuroimaging have been developed to serve the purpose. With extensive methodology development efforts on neuroimaging, an emerging field is deep learning research. One great challenge facing deep learning is the limited medical imaging data available. To address the issue, researchers explore the use of transfer learning to extend the applicability of deep models on neuroimaging research for AD diagnosis and prognosis. Existing transfer learning models mostly focus on transferring the features from the pre-training into the fine-tuning stage. Recognizing the advantages of the knowledge gained during the pre-training, we propose an AD-NET (Age-adjust neural network) with the pre-training model serving two purposes: extracting and transferring features; and obtaining and transferring knowledge. Specifically, the knowledge being transferred in this research is an age-related surrogate biomarker. To evaluate the effectiveness of the proposed approach, AD-NET is compared with 8 classification models from literature using the same public neuroimaging dataset. Experimental results show that the proposed AD-NET outperforms the competing models in predicting the MCI patients at risk for conversion to the AD stage.

Topics & Concepts

NeuroimagingTransfer of learningDeep learningArtificial intelligenceComputer scienceMachine learningArtificial neural networkCognitionPsychologyNeuroscienceDementia and Cognitive Impairment ResearchMachine Learning in HealthcareBrain Tumor Detection and Classification