A systematic review on the application of machine learning models in psychometric questionnaires for the diagnosis of attention deficit hyperactivity disorder.
Lucía Caselles-PinaAlejandro Quesada-LópezAaron SújarEva María Garzón HernándezDavid Delgado-GómezPublished in: The European journal of neuroscience (2024)
Attention deficit hyperactivity disorder is one of the most prevalent neurodevelopmental disorders worldwide. Recent studies show that machine learning has great potential for the diagnosis of attention deficit hyperactivity disorder. The aim of the present article is to systematically review the scientific literature on machine learning studies for the diagnosis of attention deficit hyperactivity disorder, focusing on psychometric questionnaire tools. The Preferred Reporting Items for Systematic reviews and Meta-Analyses (PRISMA) guidelines were adopted. The review protocol was registered in the PROSPERO database. A search was conducted in three databases-Web of Science Core Collection, Scopus and Pubmed-with the aim of identifying studies that apply ML techniques to support the diagnosis of attention deficit hyperactivity disorder. A total of 17 empirical studies were found that met the established inclusion criteria. The results showed that machine learning can be used to increase the accuracy of attention deficit hyperactivity disorder diagnosis. Machine learning techniques are useful and effective strategies that can complement traditional diagnostics in patients with attention deficit hyperactivity disorder.
Keyphrases
- attention deficit hyperactivity disorder
- machine learning
- autism spectrum disorder
- working memory
- systematic review
- big data
- artificial intelligence
- meta analyses
- end stage renal disease
- randomized controlled trial
- case control
- public health
- deep learning
- emergency department
- newly diagnosed
- chronic kidney disease
- risk assessment
- adverse drug
- peritoneal dialysis