학술논문

Using Mobile Health Technology to Assess Childhood Autism in Low-Resource Community Settings in India: An Innovation to Address the Detection Gap
Document Type
Journal Articles
Reports - Research
Author
Indu Dubey (ORCID 0000-0002-3937-1058); Rahul BishainJayashree Dasgupta (ORCID 0000-0003-1904-4380); Supriya BhavnaniMatthew K. Belmonte (ORCID 0000-0002-4633-9400); Teodora GligaDebarati MukherjeeGeorgia Lockwood EstrinMark H. JohnsonSharat ChandranVikram PatelSheffali GulatiGauri DivanBhismadev Chakrabarti (ORCID 0000-0002-6649-7895)
Source
Autism: The International Journal of Research and Practice. 2024 28(3):755-769.
Subject
India
Language
English
ISSN
1362-3613
1461-7005
Abstract
A diagnosis of autism typically depends on clinical assessments by highly trained professionals. This high resource demand poses a challenge in low-resource settings. Digital assessment of neurodevelopmental symptoms by non-specialists provides a potential avenue to address this challenge. This cross-sectional case-control field study establishes proof of principle for such a digital assessment. We developed and tested an app, START, that can be administered by non-specialists to assess autism phenotypic domains (social, sensory, motor) through child performance and parent reports. N = 131 children (2-7 years old; 48 autistic, 43 intellectually disabled and 40 non-autistic typically developing) from low-resource settings in Delhi-NCR, India were assessed using START in home settings by non-specialist health workers. The two groups of children with neurodevelopmental disorders manifested lower social preference, greater sensory interest and lower fine-motor accuracy compared to their typically developing counterparts. Parent report further distinguished autistic from non-autistic children. Machine-learning analysis combining all START-derived measures demonstrated 78% classification accuracy for the three groups. Qualitative analysis of the interviews with health workers and families of the participants demonstrated high acceptability and feasibility of the app. These results provide feasibility, acceptability and proof of principle for START, and demonstrate the potential of a scalable, mobile tool for assessing neurodevelopmental conditions in low-resource settings.