RETRACTED: Classification and Detection of Autism Spectrum Disorder Based on Deep Learning Algorithms (Retracted Article)

被引:36
作者
Alsaade, Fawaz Waselallah [1 ]
Alzahrani, Mohammed Saeed [1 ]
机构
[1] King Faisal Univ, Coll Comp Sci & Informat Technol, POB 4000, Al Hasa, Saudi Arabia
关键词
D O I
10.1155/2022/8709145
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Autism spectrum disorder (ASD) is a type of mental illness that can be detected by using social media data and biomedical images. Autism spectrum disorder (ASD) is a neurological disease correlated with brain growth that later impacts the physical impression of the face. Children with ASD have dissimilar facial landmarks, which set them noticeably apart from typically developed (TD) children. Novelty of the proposed research is to design a system that is based on autism spectrum disorder detection on social media and face recognition. To identify such landmarks, deep learning techniques may be used, but they require a precise technology for extracting and producing the proper patterns of the face features. This study assists communities and psychiatrists in experimentally detecting autism based on facial features, by using an uncomplicated web application based on a deep learning system, that is, a convolutional neural network with transfer learning and the flask framework. Xception, Visual Geometry Group Network (VGG19), and NASNETMobile are the pretrained models that were used for the classification task. The dataset that was used to test these models was collected from the Kaggle platform and consisted of 2,940 face images. Standard evaluation metrics such as accuracy, specificity, and sensitivity were used to evaluate the results of the three deep learning models. The Xception model achieved the highest accuracy result of 91%, followed by VGG19 (80%) and NASNETMobile (78%).
引用
收藏
页数:10
相关论文
共 37 条
[1]  
Akter T., 2017, Int. J. Comput. Sci. Inf. Secur. (IJCSIS), V15, P331
[2]   A Monitoring System for Patients of Autism Spectrum Disorder Using Artificial Intelligence [J].
Al Banna, Md Hasan ;
Ghosh, Tapotosh ;
Abu Taher, Kazi ;
Kaiser, M. Shamim ;
Mahmud, Mufti .
BRAIN INFORMATICS, BI 2020, 2020, 12241 :251-262
[3]  
[Anonymous], INT STAT CLASSIFICAT
[4]  
APA, 2020, DIAGNOSTIC STAT MANU
[5]   Automatic Autism Spectrum Disorder Detection Thanks to Eye-Tracking and Neural Network-Based Approach [J].
Carette, Romuald ;
Cilia, Federica ;
Dequen, Gilles ;
Bosche, Jerome ;
Guerin, Jean-Luc ;
Vandromme, Luc .
INTERNET OF THINGS (IOT) TECHNOLOGIES FOR HEALTHCARE, HEALTHYIOT 2017, 2018, 225 :75-81
[6]  
Dahiya AV., 2020, PRACTICE INNOVATIONS, V5, P150, DOI DOI 10.1037/PRI0000121
[7]   Identification of neural connectivity signatures of autism using machine learning [J].
Deshpande, Gopikrishna ;
Libero, Lauren E. ;
Sreenivasan, Karthik R. ;
Deshpande, Hrishikesh D. ;
Kana, Rajesh K. .
FRONTIERS IN HUMAN NEUROSCIENCE, 2013, 7
[8]   Use of machine learning for behavioral distinction of autism and ADHD [J].
Duda, M. ;
Ma, R. ;
Haber, N. ;
Wall, D. P. .
TRANSLATIONAL PSYCHIATRY, 2016, 6 :e732-e732
[9]   The Geneva Minimalistic Acoustic Parameter Set (GeMAPS) for Voice Research and Affective Computing [J].
Eyben, Florian ;
Scherer, Klaus R. ;
Schuller, Bjoern W. ;
Sundberg, Johan ;
Andre, Elisabeth ;
Busso, Carlos ;
Devillers, Laurence Y. ;
Epps, Julien ;
Laukka, Petri ;
Narayanan, Shrikanth S. ;
Truong, Khiet P. .
IEEE TRANSACTIONS ON AFFECTIVE COMPUTING, 2016, 7 (02) :190-202
[10]   Epidemiology of Pervasive Developmental Disorders [J].
Fombonne, Eric .
PEDIATRIC RESEARCH, 2009, 65 (06) :591-598