| Literature DB >> 32085921 |
Peter Washington1, Natalie Park2, Parishkrita Srivastava3, Catalin Voss4, Aaron Kline5, Maya Varma4, Qandeel Tariq5, Haik Kalantarian5, Jessey Schwartz5, Ritik Patnaik6, Brianna Chrisman1, Nathaniel Stockham7, Kelley Paskov8, Nick Haber9, Dennis P Wall10.
Abstract
Data science and digital technologies have the potential to transform diagnostic classification. Digital technologies enable the collection of big data, and advances in machine learning and artificial intelligence enable scalable, rapid, and automated classification of medical conditions. In this review, we summarize and categorize various data-driven methods for diagnostic classification. In particular, we focus on autism as an example of a challenging disorder due to its highly heterogeneous nature. We begin by describing the frontier of data science methods for the neuropsychiatry of autism. We discuss early signs of autism as defined by existing pen-and-paper-based diagnostic instruments and describe data-driven feature selection techniques for determining the behaviors that are most salient for distinguishing children with autism from neurologically typical children. We then describe data-driven detection techniques, particularly computer vision and eye tracking, that provide a means of quantifying behavioral differences between cases and controls. We also describe methods of preserving the privacy of collected videos and prior efforts of incorporating humans in the diagnostic loop. Finally, we summarize existing digital therapeutic interventions that allow for data capture and longitudinal outcome tracking as the diagnosis moves along a positive trajectory. Digital phenotyping of autism is paving the way for quantitative psychiatry more broadly and will set the stage for more scalable, accessible, and precise diagnostic techniques in the field.Entities:
Keywords: Artificial intelligence; Autism; Continuous phenotyping; Digital therapeutics; Machine learning; Mobile diagnostics
Mesh:
Year: 2019 PMID: 32085921 PMCID: PMC7292741 DOI: 10.1016/j.bpsc.2019.11.015
Source DB: PubMed Journal: Biol Psychiatry Cogn Neurosci Neuroimaging ISSN: 2451-9022