Accesso libero

An Intelligent Multimodal Framework for Identifying Children with Autism Spectrum Disorder

International Journal of Applied Mathematics and Computer Science's Cover Image
International Journal of Applied Mathematics and Computer Science
Big Data and Signal Processing (Special section, pp. 399-473), Joanna Kołodziej, Sabri Pllana, Salvatore Vitabile (Eds.)
INFORMAZIONI SU QUESTO ARTICOLO

Cita

Achenbach, T. and Rescorla, L. (2000). Manual for the ASEBA Preschool Forms & Profiles, University of Vermount, Burlington, VA.Search in Google Scholar

Al-Jarrah, O.Y., Yoo, P.D., Muhaidat, S., Karagiannidis, G.K. and Taha, K. (2015). Efficient machine learning for big data: A review, Big Data Research2(3): 87–93.10.1016/j.bdr.2015.04.001Search in Google Scholar

Amaral, D.G., Schumann, C.M. and Nordahl, C.W. (2008). Neuroanatomy of autism, Trends in Neurosciences31(3): 137–145.10.1016/j.tins.2007.12.00518258309Search in Google Scholar

Ashwin, C., Hietanen, J.K. and Baron-Cohen, S. (2015). Atypical integration of social cues for orienting to gaze direction in adults with autism, Molecular Autism6(1): 5–14.10.1186/2040-2392-6-5432836225685307Search in Google Scholar

Baron-Cohen, S., Jolliffe, T., Mortimore, C. and Robertson, M. (1997). Another advanced test of theory of mind: Evidence from very high functioning adults with autism or Asperger syndrome, Journal of Child Psychology and Psychiatry38(7): 813–822.10.1111/j.1469-7610.1997.tb01599.x9363580Search in Google Scholar

Bernier, R., Mao, A. and Yen, J. (2011). Diagnosing autism spectrum disorders in primary care, Practitioner255(1745): 27–30.Search in Google Scholar

Chitategmark, M. (2016). Social attention allocation in ASD: A review and meta-analysis of eye-tracking studies, Review Journal of Autism & Developmental Disorders3(3): 209–223.10.1007/s40489-016-0077-xSearch in Google Scholar

Christensen, D.L., Baio, J., Braun, K.V.N., Bilder, D., Charles, J., Constantino, J.N., Daniels, J., Durkin, M.S., Fitzgerald, R.T. and Kurziusspencer, M. (2016). Prevalence and characteristics of autism spectrum disorder among children aged 8 years—Autism and developmental disabilities monitoring network, 11 sites, United States, 2012, Morbidity and Mortality Weekly Report—Surveillance Summaries65(3): 1–23.10.15585/mmwr.ss6503a1790970927031587Search in Google Scholar

Constantino, J.N., Kennon-Mcgill, S., Weichselbaum, C., Marrus, N. and Jones, W. (2017). Infant viewing of social scenes is under genetic control and is atypical in autism, Nature547(7663): 340–344.10.1038/nature22999584269528700580Search in Google Scholar

Drimalla, H., Landwehr, N., Baskow, I., Behnia, B. and Scheffer, T. (2018). Detecting autism by analyzing a simulated social interaction, Joint European Conference on Machine Learning and Knowledge Discovery in Databases, Berlin, Germany, pp. 193–208.Search in Google Scholar

Durkin, M., Maenner, M.J., Meaney, F.J., Levy, S.E. and DiGuiseppi, C. (2010). Socioeconomic inequality in the prevalence of autism spectrum disorder: Evidence from a US cross-sectional study, PLoS ONE5(7): e11551.10.1371/journal.pone.0011551290252120634960Search in Google Scholar

Eack, S.M., Mazefsky, C.A. and Minshew, N.J. (2015). Misinterpretation of facial expressions of emotion in verbal adults with autism spectrum disorder, Autism19(3): 308–315.10.1177/1362361314520755413502424535689Search in Google Scholar

Gan, Y.L., Chen, J.Y. and Xu, L.H. (2019). Facial expression recognition boosted by soft label with a diverse ensemble, Pattern Recognition Letters125(4): 105–112.10.1016/j.patrec.2019.04.002Search in Google Scholar

Greene, D.J., Colich, N., Iacoboni, M., Zaidel, E., Bookheimer, S.Y. and Dapretto, M. (2011). Atypical neural networks for social orienting in autism spectrum disorders, Neuroimage56(1): 354–362.10.1016/j.neuroimage.2011.02.031309139121334443Search in Google Scholar

Halim, A., Ford, G., Eric, G. and Wall Dennis, P. (2018). Machine learning approach for early detection of autism by combining questionnaire and home video identification, Journal of the American Medical Informatics Association25(8): 1000–1007.10.1093/jamia/ocy039764688129741630Search in Google Scholar

Hubert, B., Wicker, B., Moore, D.G., Monfardini, E., Duverger, H., Da Fonseca, D. and Deruelle, C. (2007). Brief report: Recognition of emotional and non-emotional biological motion in individuals with autistic spectrum disorders, Journal of Autism and Developmental Disorders37(7): 1386–1392.10.1007/s10803-006-0275-y17160459Search in Google Scholar

Jaiswal, S., Valstar, M.F., Gillott, A. and Daley, D. (2017). Automatic detection of ADHD and ASD from expressive behaviour in RGBD data, IEEE International Conference on Automatic Face & Gesture Recognition, Washington, DC, USA, pp. 762–769.Search in Google Scholar

Jiang, M., Sunday, M., Francis and Srishyla, D. (2019). Classifying individuals with ASD through facial emotion recognition and eye-tracking, Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Berlin, Germany, pp. 6063–6068.Search in Google Scholar

Kantavat, P., Kijsirikul, B., Songsiri, P., Fukui, K.-I. and Numao, M. (2018). Efficient decision trees for multi-class support vector machines using entropy and generalization error estimation, International Journal of Applied Mathematics & Computer Science28(4): 705–717, DOI: 10.2478/amcs-2018-0054.10.2478/amcs-2018-0054Search in Google Scholar

Kerrianne, E., Morrison, A.E. and Pinkham, S.K. (2019). Psychometric evaluation of social cognitive measures for adults with autism, Autism Research12(5): 766–778.10.1002/aur.2084649965030770676Search in Google Scholar

Liu, W., Li, M. and Yi, L. (2016). Identifying children with autism spectrum disorder based on their face processing abnormality: A machine learning framework, Autism Research9(8): 888–898.10.1002/aur.161527037971Search in Google Scholar

Manfredonia, J., Bangerter, A., Manyakov, N.V., Ness, S., Lewin, D., Skalkin, A., Boice, M., Goodwin, M. S., Dawson, G. and Hendren, R. (2018). Automatic recognition of posed facial expression of emotion in individuals with autism spectrum disorder, Journal of Autism and Developmental Disorders27(10): 1–15.10.1007/s10803-018-3757-930298462Search in Google Scholar

Müller and Frith, U. (2005). Autism-explaining the enigma, Kindheit Und Entwicklung14(4): 257.10.1026/0942-5403.14.4.257Search in Google Scholar

Parkhi, O., Vedaldi, A. and Zisserman, A. (2015). Deep face recognition, British Machine Vision Conference, Swansea, UK, p. 6.Search in Google Scholar

Poria, S., Cambria, E., Bajpai, R. and Hussain, A. (2017). A review of affective computing: From unimodal analysis to multimodal fusion, Information Fusion37(2): 98–125.10.1016/j.inffus.2017.02.003Search in Google Scholar

Remington, A., Swettenham, J., Campbell, R. and Coleman, M. (2009). Selective attention and perceptual load in autism spectrum disorder, Psychological Science20(11): 1388–1393.10.1111/j.1467-9280.2009.02454.x19843262Search in Google Scholar

Rozga, A., Mumaw, M., King, T. and Robins, D.L. (2009). Lack of emotion-specific facial mimicry responses among high-functioning individuals with an autism spectrum disorder (poster), International Meeting for Autism Research, Chicago, IL, USA, pp. S43–S44.Search in Google Scholar

Rundo, L., Militello, C., Russo, G., Garufi, A., Vitabile, S. and Gilardi, M. (2017a). Automated prostate gland segmentation based on an unsupervised fuzzy c-means clustering technique using multispectral T1w and T2w MR imaging, Information8(2): 1–28.10.3390/info8020049Search in Google Scholar

Rundo, L., Stefano, A., Militello, C., Russo, G., Sabini, M.G. and Arrigo, C. (2017b). A fully automatic approach for multimodal PET and MR image segmentation in Gamma Knife treatment planning, Computer Methods & Programs in Biomedicine144(3): 77–96.10.1016/j.cmpb.2017.03.01128495008Search in Google Scholar

Samad, M.D., Diawara, N., Bobzien, J.L., Harrington, J.W., Witherow, M.A. and Iftekharuddin, K.M. (2018). A feasibility study of autism behavioral markers in spontaneous facial, visual, and hand movement response data, IEEE Transactions on Neural Systems & Rehabilitation EngineeringPP(99): 1–1.Search in Google Scholar

Sasson, N.J. (2006). The development of face processing in autism, Journal of Autism & Developmental Disorders36(3): 381–394.10.1007/s10803-006-0076-316572261Search in Google Scholar

Sasson, N.J., Elison, J.T., Turner-Brown, L.M., Dichter, G.S. and Bodfish, J.W. (2011a). Brief report: Circumscribed attention in young children with autism, Journal of Autism & Developmental Disorders41(2): 242–247.10.1007/s10803-010-1038-3370985120499147Search in Google Scholar

Sasson, N.J., Pinkham, A.E., Carpenter, K.L. and Belger, A. (2011b). The benefit of directly comparing autism and schizophrenia for revealing mechanisms of social cognitive impairment, Journal of Neurodevelopmental Disorders3(2): 87–100.10.1007/s11689-010-9068-x318828921484194Search in Google Scholar

Sasson, N., Tsuchiya, N., Hurley, R., Couture, S.M., Penn, D.L., Adolphs, R. and Piven, J. (2007). Orienting to social stimuli differentiates social cognitive impairment in autism and schizophrenia, Neuropsychologia45(11): 2580–2588.10.1016/j.neuropsychologia.2007.03.009212825717459428Search in Google Scholar

Serra, A., Galdi, P. and Tagliaferri, R. (2018). Machine learning for bioinformatics and neuroimaging, Wiley Interdisciplinary Reviews: Data Mining & Knowledge Discovery8(5): e1248.10.1002/widm.1248Search in Google Scholar

Shaddy, D.J. (2006). Visual scanning and pupillary responses in young children with autism spectrum disorder, Journal of Clinical & Experimental Neuropsychology28(7): 1238–1256.10.1080/1380339050037679016840248Search in Google Scholar

Tariq, Q., Daniels, J. and Schwartz, J.N. (2018). Mobile detection of autism through machine learning on home video: A development and prospective validation study, PLoS Medicine15(11): e1002705.10.1371/journal.pmed.1002705625850130481180Search in Google Scholar

Traynor, J.M., Gough, A., Duku, E., Shore, D.I. and Hall, G.B.C. (2019). Eye tracking effort expenditure and autonomic arousal to social and circumscribed interest stimuli in autism spectrum disorder, Journal of Autism and Developmental Disorders49(1): 1988–2002.10.1007/s10803-018-03877-y30656526Search in Google Scholar

Trevisan, D.A., Hoskyn, M. and Birmingham, E. (2018). Facial expression production in autism: A meta-analysis, Autism Research11(2): 1586–1601.10.1002/aur.203730393953Search in Google Scholar

Wang, G.S., Chen, J.Y. and Zhang, K. (2018). The perception of emotional facial expressions by children with autism using hybrid multiple factorial design and eye-tracking, Chinese Science Bulletin63(31): 3204–3216, (in Chinese).10.1360/N972018-00553Search in Google Scholar

Wang, Y. and Chen, W. (2010). Broken mirror theory of autism, Advances in Psychological Science18(2): 297–305.Search in Google Scholar

Xu, L., Fu, H.Y., Goodarzi, M., Cai, C.B., Yin, Q.B., Wu, Y., Tang, B.C. and She, Y. B. (2018). Stochastic cross validation, Chemometrics & Intelligent Laboratory Systems175(4): 74–81.10.1016/j.chemolab.2018.02.008Search in Google Scholar

Xu, M., Shen, J. and Yu, H.Y. (2017). A review on data-driven healthcare decision-making support, Industrial Engineering and Management21(1): 1–13.Search in Google Scholar

Yi, H., Song, X.F., Jiang, B., Liu, Y.F. and Zhou, Z.H. (2013). Fault diagnosis based on self-tuning support vector machine in sample unbalance condition, Transactions of Beijing Institute of Technology33(4): 394–398.Search in Google Scholar

Yi, L., Feng, C., Quinn, P.C., Ding, H., Li, J., Liu, Y. and Lee, K. (2014). Do individuals with and without autism spectrum disorder scan faces differently? A new multi-method look at an existing controversy, Autism Research7(1): 72–83.10.1002/aur.134024124133Search in Google Scholar

Zhao, S., Uono, S., Yoshimura, S., Kubota, Y. and Toichi, M. (2017). Atypical gaze cueing pattern in a complex environment in individuals with ASD, Journal of Autism Developmental Disorders47(7): 1978–1986.10.1007/s10803-017-3116-228391454Search in Google Scholar

Zhong, S.S., Li, X. and Zhang, Y.J. (2019). Fault diagnosis of civil aero-engine driven by unbalanced samples based on DBN, Journal of Aerospace Power34(3): 708–716.Search in Google Scholar

Zunino, A., Morerio, P. and Cavallo, A. (2018). Video gesture analysis for autism spectrum disorder detection, 24th International Conference on Pattern Recognition (ICPR), Beijing, China, pp. 3421–3426.Search in Google Scholar

Zwaigenbaum, L., Bryson, S., Lord, C., Rogers, S., Carter, A., Carver, L., Chawarska, K., Constantino, J., Dawson, G. and Dobkins, K. (2009). Clinical assessment and management of toddlers with suspected autism spectrum disorder: Insights from studies of high-risk infants, Pediatrics123(5): 1383–1391.10.1542/peds.2008-1606283328619403506Search in Google Scholar

eISSN:
2083-8492
Lingua:
Inglese
Frequenza di pubblicazione:
4 volte all'anno
Argomenti della rivista:
Mathematics, Applied Mathematics