» Articles » PMID: 36149257

Multimodal Attention-based Deep Learning for Alzheimer's Disease Diagnosis

Overview
Date 2022 Sep 23
PMID 36149257
Authors
Affiliations
Soon will be listed here.
Abstract

Objective: Alzheimer's disease (AD) is the most common neurodegenerative disorder with one of the most complex pathogeneses, making effective and clinically actionable decision support difficult. The objective of this study was to develop a novel multimodal deep learning framework to aid medical professionals in AD diagnosis.

Materials And Methods: We present a Multimodal Alzheimer's Disease Diagnosis framework (MADDi) to accurately detect the presence of AD and mild cognitive impairment (MCI) from imaging, genetic, and clinical data. MADDi is novel in that we use cross-modal attention, which captures interactions between modalities-a method not previously explored in this domain. We perform multi-class classification, a challenging task considering the strong similarities between MCI and AD. We compare with previous state-of-the-art models, evaluate the importance of attention, and examine the contribution of each modality to the model's performance.

Results: MADDi classifies MCI, AD, and controls with 96.88% accuracy on a held-out test set. When examining the contribution of different attention schemes, we found that the combination of cross-modal attention with self-attention performed the best, and no attention layers in the model performed the worst, with a 7.9% difference in F1-scores.

Discussion: Our experiments underlined the importance of structured clinical data to help machine learning models contextualize and interpret the remaining modalities. Extensive ablation studies showed that any multimodal mixture of input features without access to structured clinical information suffered marked performance losses.

Conclusion: This study demonstrates the merit of combining multiple input modalities via cross-modal attention to deliver highly accurate AD diagnostic decision support.

Citing Articles

Multimodal feature fusion-based graph convolutional networks for Alzheimer's disease stage classification using F-18 florbetaben brain PET images and clinical indicators.

Lee G, Jeong Y, Kang D, Yun H, Yoon M PLoS One. 2024; 19(12):e0315809.

PMID: 39715167 PMC: 11666044. DOI: 10.1371/journal.pone.0315809.


Machine Learning Driven by Magnetic Resonance Imaging for the Classification of Alzheimer Disease Progression: Systematic Review and Meta-Analysis.

Battineni G, Chintalapudi N, Amenta F JMIR Aging. 2024; 7():e59370.

PMID: 39714089 PMC: 11704653. DOI: 10.2196/59370.


Etiology of Late-Onset Alzheimer's Disease, Biomarker Efficacy, and the Role of Machine Learning in Stage Diagnosis.

Sarma M, Chatterjee S Diagnostics (Basel). 2024; 14(23).

PMID: 39682548 PMC: 11640179. DOI: 10.3390/diagnostics14232640.


Advancing healthcare through multimodal data fusion: a comprehensive review of techniques and applications.

Teoh J, Dong J, Zuo X, Lai K, Hasikin K, Wu X PeerJ Comput Sci. 2024; 10:e2298.

PMID: 39650483 PMC: 11623190. DOI: 10.7717/peerj-cs.2298.


Deep joint learning diagnosis of Alzheimer's disease based on multimodal feature fusion.

Wang J, Wen S, Liu W, Meng X, Jiao Z BioData Min. 2024; 17(1):48.

PMID: 39501294 PMC: 11536794. DOI: 10.1186/s13040-024-00395-9.


References
1.
Guerrero R, Schmidt-Richberg A, Ledig C, Tong T, Wolz R, Rueckert D . Instantiated mixed effects modeling of Alzheimer's disease markers. Neuroimage. 2016; 142:113-125. DOI: 10.1016/j.neuroimage.2016.06.049. View

2.
Uysal G, Ozturk M . Hippocampal atrophy based Alzheimer's disease diagnosis via machine learning methods. J Neurosci Methods. 2020; 337:108669. DOI: 10.1016/j.jneumeth.2020.108669. View

3.
Dyrba M, Barkhof F, Fellgiebel A, Filippi M, Hausner L, Hauenstein K . Predicting Prodromal Alzheimer's Disease in Subjects with Mild Cognitive Impairment Using Machine Learning Classification of Multimodal Multicenter Diffusion-Tensor and Magnetic Resonance Imaging Data. J Neuroimaging. 2015; 25(5):738-47. DOI: 10.1111/jon.12214. View

4.
Fang C, Li C, Forouzannezhad P, Cabrerizo M, Curiel R, Loewenstein D . Gaussian discriminative component analysis for early detection of Alzheimer's disease: A supervised dimensionality reduction algorithm. J Neurosci Methods. 2020; 344:108856. PMC: 11167623. DOI: 10.1016/j.jneumeth.2020.108856. View

5.
Beheshti I, Demirel H, Matsuda H . Classification of Alzheimer's disease and prediction of mild cognitive impairment-to-Alzheimer's conversion from structural magnetic resource imaging using feature ranking and a genetic algorithm. Comput Biol Med. 2017; 83:109-119. DOI: 10.1016/j.compbiomed.2017.02.011. View