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Cost-effective and efficient detection of autism from screening test data using light gradient boosting machine.

Kamma, Sai Pavan; Bano, Shahana; Niharika, Gorsa Lakshmi; Chilukuri, Guru Sai; Ghanta, Deepika

Authors

Sai Pavan Kamma

Gorsa Lakshmi Niharika

Guru Sai Chilukuri

Deepika Ghanta



Contributors

Jennifer S. Raj
Editor

Ram Palanisamy
Editor

Isidoros Perikos
Editor

Yong Shi
Editor

Abstract

Autism spectrum disorder (ASD) is a developmental disorder that affects the brain. Autism constrains a person’s ability to interact and communicate with others. The cause of autism, in general, is unknown though genetics does play a role in the manifestation of the condition. In the absence of clear identifiable biomarkers, shortcomings of the available prognostic approaches create a need for a new technique that is speedy, cost-efficient, and provides an error-free diagnosis. The system should also be able to adapt to the varying characteristics of subjects with ASD. The amelioration machine learning brings to automated medical diagnosis which has inspired us to come up with a solution. An adept screening and diagnostic test for patients exhibiting known autistic symptoms is a well-compiled, specific, and approved questionnaire, which facilitates an easy and cheap diagnosis. Autistic Spectrum Disorder Screening Test data is collected from one such questionnaire. We used a combination of three publicly available datasets containing records related to ASD in children, adolescents, and adults. There are a total of 1100 instances along with 21 attributes. The proposed study uses a Light Gradient Boost (LGB) based model for classification, along with Random Search for hyperparameter optimization, which yielded a high accuracy of 95.82%.

Citation

KAMMA, S.P., BANO, S., NIHARIKA, G.L., CHILUKURI, G.S. and GHANTA, D. 2022. Cost-effective and efficient detection of autism from screening test data using light gradient boosting machine. In Raj, J.S., Palanisamy, R., Perikos, I. and Shi, Y. (eds.) Proceedings of the 4th International conference on intelligent sustainable systems (ICISS 2021), 26-27 February 2021, Tirunelveli, India. Lecture notes in networks and systems, 213. Singapore: Springer [online], pages 777-789. Available from: https://doi.org/10.1007/978-981-16-2422-3_61

Presentation Conference Type Conference Paper (published)
Conference Name 4th International conference on intelligent sustainable systems (ICISS 2021)
Start Date Feb 26, 2021
End Date Feb 27, 2021
Acceptance Date Aug 27, 2021
Online Publication Date Aug 27, 2021
Publication Date Dec 31, 2022
Deposit Date Sep 18, 2023
Publicly Available Date Sep 18, 2023
Publisher Springer
Peer Reviewed Peer Reviewed
Volume 213
Pages 777-789
Series Title Lecture notes in networks and systems
Series Number 213
Series ISSN 2367-3370; 2367-3389
ISBN 9789811624216
DOI https://doi.org/10.1007/978-981-16-2422-3_61
Keywords Autism spectrum disorder (ASD); Autism; Diagnosis; Machine learning; Artificial intelligence in medicine
Public URL https://rgu-repository.worktribe.com/output/2063980

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