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Neural Computation-Based Methods for the Early Diagnosis and Prognosis of Alzheimer's Disease Not Using Neuroimaging Biomarkers: A Systematic Review

Overview
Publisher Sage Publications
Specialties Geriatrics
Neurology
Date 2024 Mar 15
PMID 38489188
Authors
Affiliations
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Abstract

Background: Objective: The goals of this work are to present state-of-the-art studies focused on the automatic diagnosis and prognosis of AD and its early stages, mainly mild cognitive impairment, and predicting how the research on this topic may change in the future.

Methods: Articles found in the existing literature needed to fulfill several selection criteria. Among others, their classification methods were based on artificial neural networks (ANNs), including deep learning, and data not from brain signals or neuroimaging techniques were used. Considering our selection criteria, 42 articles published in the last decade were finally selected.

Results: The most medically significant results are shown. Similar quantities of articles based on shallow and deep ANNs were found. Recurrent neural networks and transformers were common with speech or in longitudinal studies. Convolutional neural networks (CNNs) were popular with gait or combined with others in modular approaches. Above one third of the cross-sectional studies utilized multimodal data. Non-public datasets were frequently used in cross-sectional studies, whereas the opposite in longitudinal ones. The most popular databases were indicated, which will be helpful for future researchers in this field.

Conclusions: The introduction of CNNs in the last decade and their superb results with neuroimaging data did not negatively affect the usage of other modalities. In fact, new ones emerged.

Citing Articles

Toward an intelligent computing system for the early diagnosis of Alzheimer's disease based on the modular hybrid growing neural gas.

Cabrera-Leon Y, Fernandez-Lopez P, Garcia Baez P, Kluwak K, Navarro-Mesa J, Suarez-Araujo C Digit Health. 2024; 10:20552076241284349.

PMID: 39381826 PMC: 11459500. DOI: 10.1177/20552076241284349.

References
1.
Frizzell T, Glashutter M, Liu C, Zeng A, Pan D, Ghosh Hajra S . Artificial intelligence in brain MRI analysis of Alzheimer's disease over the past 12 years: A systematic review. Ageing Res Rev. 2022; 77:101614. DOI: 10.1016/j.arr.2022.101614. View

2.
Ilias L, Askounis D . Multimodal Deep Learning Models for Detecting Dementia From Speech and Transcripts. Front Aging Neurosci. 2022; 14:830943. PMC: 8969102. DOI: 10.3389/fnagi.2022.830943. View

3.
Wang H, Sheng L, Xu S, Jin Y, Jin X, Qiao S . Develop a diagnostic tool for dementia using machine learning and non-imaging features. Front Aging Neurosci. 2022; 14:945274. PMC: 9461143. DOI: 10.3389/fnagi.2022.945274. View

4.
Liu X, Chen K, Wu T, Weidman D, Lure F, Li J . Use of multimodality imaging and artificial intelligence for diagnosis and prognosis of early stages of Alzheimer's disease. Transl Res. 2018; 194:56-67. PMC: 5875456. DOI: 10.1016/j.trsl.2018.01.001. View

5.
Folstein M, Folstein S, McHugh P . "Mini-mental state". A practical method for grading the cognitive state of patients for the clinician. J Psychiatr Res. 1975; 12(3):189-98. DOI: 10.1016/0022-3956(75)90026-6. View