A Machine Learning and Integration Based Architecture for Cognitive Disorder Detection Used for Early Autism Screening

About 15% of the world’s population suffers from some form of disability. In developed countries, about 1.5% of children are diagnosed with autism. Autism is a developmental disorder distinguished mainly by impairments in social interaction and communication and by restricted and repetitiv...

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Main Authors: Jesús Peral, David Gil, Sayna Rotbei, Sandra Amador, Marga Guerrero, Hadi Moradi
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/9/3/516
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spelling doaj-e84ef497c14d4e64bdad6721a60815222020-11-25T02:07:58ZengMDPI AGElectronics2079-92922020-03-019351610.3390/electronics9030516electronics9030516A Machine Learning and Integration Based Architecture for Cognitive Disorder Detection Used for Early Autism ScreeningJesús Peral0David Gil1Sayna Rotbei2Sandra Amador3Marga Guerrero4Hadi Moradi5Lucentia Research Group, Department of Software and Computing Systems, University of Alicante, 03690 Alicante, SpainLucentia Research Group, Department of Computer Science Technology and Computation, University of Alicante, 03690 Alicante, SpainDepartment of Information Technology, Mehr Alborz University, 1413913141 Tehran, IranU.I. for Computer Research; 03690 Alicante, SpainU.I. for Computer Research; 03690 Alicante, SpainSchool of ECE, University of Tehran, 14395-515 Tehran, IranAbout 15% of the world’s population suffers from some form of disability. In developed countries, about 1.5% of children are diagnosed with autism. Autism is a developmental disorder distinguished mainly by impairments in social interaction and communication and by restricted and repetitive behavior. Since the cause of autism is still unknown, there have been many studies focused on screening for autism based on behavioral features. Thus, the main purpose of this paper is to present an architecture focused on data integration and analytics, allowing the distributed processing of input data. Furthermore, the proposed architecture allows the identification of relevant features as well as of hidden correlations among parameters. To this end, we propose a methodology able to integrate diverse data sources, even data that are collected separately. This methodology increases the data variety which can lead to the identification of more correlations between diverse parameters. We conclude the paper with a case study that used autism data in order to validate our proposed architecture, which showed very promising results.https://www.mdpi.com/2079-9292/9/3/516data miningmachine learningdata integrationautism spectrum disorder
collection DOAJ
language English
format Article
sources DOAJ
author Jesús Peral
David Gil
Sayna Rotbei
Sandra Amador
Marga Guerrero
Hadi Moradi
spellingShingle Jesús Peral
David Gil
Sayna Rotbei
Sandra Amador
Marga Guerrero
Hadi Moradi
A Machine Learning and Integration Based Architecture for Cognitive Disorder Detection Used for Early Autism Screening
Electronics
data mining
machine learning
data integration
autism spectrum disorder
author_facet Jesús Peral
David Gil
Sayna Rotbei
Sandra Amador
Marga Guerrero
Hadi Moradi
author_sort Jesús Peral
title A Machine Learning and Integration Based Architecture for Cognitive Disorder Detection Used for Early Autism Screening
title_short A Machine Learning and Integration Based Architecture for Cognitive Disorder Detection Used for Early Autism Screening
title_full A Machine Learning and Integration Based Architecture for Cognitive Disorder Detection Used for Early Autism Screening
title_fullStr A Machine Learning and Integration Based Architecture for Cognitive Disorder Detection Used for Early Autism Screening
title_full_unstemmed A Machine Learning and Integration Based Architecture for Cognitive Disorder Detection Used for Early Autism Screening
title_sort machine learning and integration based architecture for cognitive disorder detection used for early autism screening
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2020-03-01
description About 15% of the world’s population suffers from some form of disability. In developed countries, about 1.5% of children are diagnosed with autism. Autism is a developmental disorder distinguished mainly by impairments in social interaction and communication and by restricted and repetitive behavior. Since the cause of autism is still unknown, there have been many studies focused on screening for autism based on behavioral features. Thus, the main purpose of this paper is to present an architecture focused on data integration and analytics, allowing the distributed processing of input data. Furthermore, the proposed architecture allows the identification of relevant features as well as of hidden correlations among parameters. To this end, we propose a methodology able to integrate diverse data sources, even data that are collected separately. This methodology increases the data variety which can lead to the identification of more correlations between diverse parameters. We conclude the paper with a case study that used autism data in order to validate our proposed architecture, which showed very promising results.
topic data mining
machine learning
data integration
autism spectrum disorder
url https://www.mdpi.com/2079-9292/9/3/516
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