wow-inequalities/02-data/intermediate/wos_sample/52791f63b19b3f748802eeba69447a7c-mengi-mehak-and-mal/info.yaml

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abstract: 'Background : Socio-behavioral disorders(SBD), a subtype of
neurodevelopmental disorders (NDDs) characterized by social and
behavioral abnormalities, is a significant mental health concern
requiring immediate attention. Phenotypic knowledge, biological
understanding and the tools developed are all from western countries.
Numerous researches have been conducted that have scrutinized the
performance accuracy of traditional-based SBD tools developed in western
culture. However, very little information is available for low or
middle-income countries. Objective: In middle-income countries like
India, there is a shortage of resources, trained professionals and a
lack of knowledge regarding which tools are effective for a particular
target group owing to which most of the cases go undetected and
undiagnosed until adolescence. Motivated by the earlier discussion, this
study''s objective is to consider all the pathways from traditional to
Artificial Intelligence (AI) tools developed for diagnosing SBD in the
Indian population. This research work expounds on the systematic study
and analysis of various conventional and fuzzy-based expert systems
introduced between 1925-2021. Methods: PRISMA guidelines were used to
select the articles published on the web of science, SCOPUS, and EMBASE
to identify relevant Indian studies. A total of 148 papers are
considered impactful for SBD prediction using traditional or fuzzy-based
techniques. This survey deliberated the work done by the different
researchers, highlighting the limitations in the existing literature and
the performance comparison of tools based on various parameters such as
accuracy, sensitivity, specificity, target audience, along with their
pros and cons. Some investigations have been designed, and the solutions
to those were explored. Results : Results of this study indicated that
most validated SBD tools present many barriers to use in the Indian
population. Thus, to overcome these implications, an Artificial
Intelligence(AI) framework, MRIMMTL, based on MRI multimodality transfer
learning techniques(TL), is proposed to be implemented for the early
detection of SBD subjects. (c) 2022 Elsevier B.V. All rights reserved.'
affiliation: 'Mengi, M (Corresponding Author), Cent Univ, Dept Comp Sci \& Informat
Technol, Jammu 181143, India.
Mengi, Mehak; Malhotra, Deepti, Cent Univ, Dept Comp Sci \& Informat Technol, Jammu
181143, India.'
article-number: '109633'
author: Mengi, Mehak and Malhotra, Deepti
author-email: '0550519.csit@cujammu.ac.in
deepti.csit@cujammu.ac.in'
author_list:
- family: Mengi
given: Mehak
- family: Malhotra
given: Deepti
da: '2023-09-28'
doi: 10.1016/j.asoc.2022.109633
earlyaccessdate: SEP 2022
eissn: 1872-9681
files: []
issn: 1568-4946
journal: APPLIED SOFT COMPUTING
keywords: 'Socio-behavioral disorders; Neurodevelopmental disorders; Autism
spectrum disorder; Attention deficit hyperactivity disorder; ASD; ADHD;
Artificial intelligence; Fuzzy tools; Soft computing; Transfer learning;
Domain adaptation; Screening tools; Diagnostic tools; Biomarkers'
keywords-plus: 'AUTISM SPECTRUM DISORDER; CHILD-BEHAVIOR-CHECKLIST; HIGH-FUNCTIONING
AUTISM; FUZZY COGNITIVE MAPS; ADHD RATING-SCALE; SCREENING TOOL;
ASPERGERS-DISORDER; 2-YEAR-OLDS STAT; YOUNG-CHILDREN; PRIMARY-CARE'
language: English
month: NOV
number-of-cited-references: '152'
papis_id: c826edb51ec99c93bdbb8d3aa5b9f6c8
ref: Mengi2022systematicliterature
tags:
- review
times-cited: '1'
title: 'A systematic literature review on traditional to artificial intelligence based
socio-behavioral disorders diagnosis in India: Challenges and future perspectives'
type: article
unique-id: WOS:000914071400001
usage-count-last-180-days: '4'
usage-count-since-2013: '5'
volume: '129'
web-of-science-categories: 'Computer Science, Artificial Intelligence; Computer Science,
Interdisciplinary Applications'
year: '2022'