Computer aided diagnosis of neurodevelopmental disorders and genetic syndromes based on facial images – A systematic literature review
Fábio Rosindo Daher de Barros,
Caio Novais F. da Silva,
Gabriel de Castro Michelassi,
Helena Brentani,
Fátima L.S. Nunes,
Ariane Machado-Lima
Affiliations
Fábio Rosindo Daher de Barros
School of Arts, Sciences and Humanities – University of Sao Paulo (USP), Av. Arlindo Bettio, 1000, Sao Paulo, 03828-000, Sao Paulo, Brazil
Caio Novais F. da Silva
School of Arts, Sciences and Humanities – University of Sao Paulo (USP), Av. Arlindo Bettio, 1000, Sao Paulo, 03828-000, Sao Paulo, Brazil
Gabriel de Castro Michelassi
School of Arts, Sciences and Humanities – University of Sao Paulo (USP), Av. Arlindo Bettio, 1000, Sao Paulo, 03828-000, Sao Paulo, Brazil
Helena Brentani
Department of Psychiatry, University of Sao Paulo's School of Medicine (FMUSP), Sao Paulo, 05403-903, Sao Paulo, Brazil
Fátima L.S. Nunes
School of Arts, Sciences and Humanities – University of Sao Paulo (USP), Av. Arlindo Bettio, 1000, Sao Paulo, 03828-000, Sao Paulo, Brazil
Ariane Machado-Lima
School of Arts, Sciences and Humanities – University of Sao Paulo (USP), Av. Arlindo Bettio, 1000, Sao Paulo, 03828-000, Sao Paulo, Brazil; Corresponding author.
Neurodevelopment disorders can result in facial dysmorphisms. Therefore, the analysis of facial images using image processing and machine learning techniques can help construct systems for diagnosing genetic syndromes and neurodevelopmental disorders. The systems offer faster and cost-effective alternatives for genotyping tests, particularly when dealing with large-scale applications. However, there are still challenges to overcome to ensure the accuracy and reliability of computer-aided diagnosis systems. This article presents a systematic review of such initiatives, including 55 articles. The main aspects used to develop these diagnostic systems were discussed, namely datasets - availability, type of image, size, ethnicities and syndromes - types of facial features, techniques used for normalization, dimensionality reduction and classification, deep learning, as well as a discussion related to the main gaps, challenges and opportunities.