Current trends on the early diagnosis of Alzheimer’s Disease by means of neural computation methods

Author:

Suarez-Araujo Carmen Paz1ORCID,Cabrera-Leon YlermORCID,Fernandez-Lopez Pablo1ORCID,Baez Patricio Garcıa2ORCID

Affiliation:

1. Instituto Universitario de Cibernetica, Empresa y Sociedad, Universidad de Las Palmas de Gran Canaria, Parque Cientıfico Tecnologico, Campus Universitario de Tafira, Las Palmas de Gran Canaria, CN, Spain

2. Departamento de Ingenierıa Informatica y de Sistemas, Universidad de La Laguna, Escuela Superior de Ingenierıa y Tecnologıa, San Cristobal de La Laguna, CN, Spain

Abstract

Abstract—The prevalence of dementia is expected to increment in the next decades as the elderly population grows and ages. Hence, Alzheimer’s Disease (AD), as the most frequent dementia, will be more problematic from a socioeconomic point of view. Different diagnostic criteria have been proposed by clinicians for the early diagnosis of AD. After discarding the longitudinal and prognosis articles, a selection of articles from the last decade and based on Artificial Neural Networks (ANNs) was collated from the PubMed database, and complemented with researches extracted from others. The latest trends on this field were discovered in these selected articles, which were later discussed. Only articles based whether on shallow ANNs, Deep Learning (DL) or a mix of both were included. The total number of cross-sectional articles that complied with our selection criteria was 154. Convolutional Neural Networks (CNNs) combined with neuroimaging has been the most popular approach, yielding very good performance results. Approaches based on nonneuroimaging techniques, such as gait, genetics, speech and neuropsychological tests, were less common but have their own advantages. Multimodality solutions may become even more prevalent in the near future. Similarly, novel diagnostic criteria will appear and the popularity of currently not-so-common ones will expand. A new proposal emerged from these trends, which is based on ontogenetic ANNs.

Publisher

Polish Academy of Sciences Chancellery

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