A comparison of machine learning algorithms for the surveillance of autism spectrum disorder

被引:7
|
作者
Lee, Scott H. [1 ]
Maenner, Matthew J. [1 ]
Heilig, Charles M. [1 ]
机构
[1] Ctr Dis Control & Prevent, Atlanta, GA 30333 USA
来源
PLOS ONE | 2019年 / 14卷 / 09期
关键词
UNITED-STATES; CHILDREN;
D O I
10.1371/journal.pone.0222907
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Objective The Centers for Disease Control and Prevention (CDC) coordinates a labor-intensive process to measure the prevalence of autism spectrum disorder (ASD) among children in the United States. Random forests methods have shown promise in speeding up this process, but they lag behind human classification accuracy by about 5%. We explore whether more recently available document classification algorithms can close this gap. Materials and methods Using data gathered from a single surveillance site, we applied 8 supervised learning algorithms to predict whether children meet the case definition for ASD based solely on the words in their evaluations. We compared the algorithms' performance across 10 random train-test splits of the data, using classification accuracy, F1 score, and number of positive calls to evaluate their potential use for surveillance. Results Across the 10 train-test cycles, the random forest and support vector machine with Naive Bayes features (NB-SVM) each achieved slightly more than 87% mean accuracy. The NB-SVM produced significantly more false negatives than false positives (P = 0.027), but the random forest did not, making its prevalence estimates very close to the true prevalence in the data. The best-performing neural network performed similarly to the random forest on both measures. Discussion The random forest performed as well as more recently available models like the NB-SVM and the neural network, and it also produced good prevalence estimates. NB-SVM may not be a good candidate for use in a fully-automated surveillance workflow due to increased false negatives. More sophisticated algorithms, like hierarchical convolutional neural networks, may not be feasible to train due to characteristics of the data. Current algorithms might perform better if the data are abstracted and processed differently and if they take into account information about the children in addition to their evaluations. Conclusion Deep learning models performed similarly to traditional machine learning methods at predicting the clinician-assigned case status for CDC's autism surveillance system. While deep learning methods had limited benefit in this task, they may have applications in other surveillance systems.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Applications of Supervised Machine Learning in Autism Spectrum Disorder Research: a Review
    Kayleigh K. Hyde
    Marlena N. Novack
    Nicholas LaHaye
    Chelsea Parlett-Pelleriti
    Raymond Anden
    Dennis R. Dixon
    Erik Linstead
    Review Journal of Autism and Developmental Disorders, 2019, 6 : 128 - 146
  • [22] Applications of Unsupervised Machine Learning in Autism Spectrum Disorder Research: a Review
    Chelsea M. Parlett-Pelleriti
    Elizabeth Stevens
    Dennis Dixon
    Erik J. Linstead
    Review Journal of Autism and Developmental Disorders, 2023, 10 : 406 - 421
  • [23] Reproducible neuroimaging features for diagnosis of autism spectrum disorder with machine learning
    Cooper J. Mellema
    Kevin P. Nguyen
    Alex Treacher
    Albert Montillo
    Scientific Reports, 12
  • [24] Predictive Analysis of Autism Spectrum Disorder (ASD) using Machine Learning
    Farooqi, Naurin
    Bukhari, Faisal
    Iqbal, Waheed
    2021 INTERNATIONAL CONFERENCE ON FRONTIERS OF INFORMATION TECHNOLOGY (FIT 2021), 2021, : 305 - 310
  • [25] Applications of Supervised Machine Learning in Autism Spectrum Disorder Research: a Review
    Hyde, Kayleigh K.
    Novack, Marlena N.
    LaHaye, Nicholas
    Parlett-Pelleriti, Chelsea
    Anden, Raymond
    Dixon, Dennis R.
    Linstead, Erik
    REVIEW JOURNAL OF AUTISM AND DEVELOPMENTAL DISORDERS, 2019, 6 (02) : 128 - 146
  • [26] Application of Machine Learning Techniques to Detect the Children with Autism Spectrum Disorder
    Liao, Mengyi
    Duan, Hengyao
    Wang, Guangshuai
    JOURNAL OF HEALTHCARE ENGINEERING, 2022, 2022
  • [27] Applications of Unsupervised Machine Learning in Autism Spectrum Disorder Research: a Review
    Parlett-Pelleriti, Chelsea M.
    Stevens, Elizabeth
    Dixon, Dennis
    Linstead, Erik J.
    REVIEW JOURNAL OF AUTISM AND DEVELOPMENTAL DISORDERS, 2023, 10 (03) : 406 - 421
  • [28] Food for Thought: Machine Learning in Autism Spectrum Disorder Screening of Infants
    Siddiqui, Sohaib
    Gunaseelan, Luxhman
    Shaikh, Roohab
    Khan, Ahmed
    Mankad, Deepali
    Hamid, Muhammad A.
    CUREUS JOURNAL OF MEDICAL SCIENCE, 2021, 13 (10)
  • [29] The Classification System and Biomarkers for Autism Spectrum Disorder: A Machine Learning Approach
    Dai, Zhongyang
    Zhang, Haishan
    Lin, Feifei
    Feng, Shengzhong
    Wei, Yanjie
    Zhou, Jiaxiu
    BIOINFORMATICS RESEARCH AND APPLICATIONS, ISBRA 2021, 2021, 13064 : 289 - 299
  • [30] Machine Learning Methodologies for Predicting Autism Spectrum Disorder across Generations
    Keren, F.
    Keziah, F.
    Kumar, Rubesh T.
    Vanitha, L.
    Venmathi, A. R.
    Gnanaraj, Fredrick F.
    2024 INTERNATIONAL CONFERENCE ON ADVANCES IN COMPUTING, COMMUNICATION AND APPLIED INFORMATICS, ACCAI 2024, 2024,