Wu Chongruo, Liaqat Sidrah, Helvaci Halil, Cheung Sen-Ching Samson, Chuah Chen-Nee, Ozonoff Sally, Young Gregory
Department of Computer Science, University of California, Davis, CA, US.
Department of Electrical and Computer Engineering, University of Kentucky, Lexington, KY, US.
Healthcom. 2021 Mar;2020. doi: 10.1109/healthcom49281.2021.9398924. Epub 2021 Apr 14.
Early diagnosis of Autism Spectrum Disorder (ASD) is crucial for best outcomes to interventions. In this paper, we present a machine learning (ML) approach to ASD diagnosis based on identifying specific behaviors from videos of infants of ages 6 through 36 months. The behaviors of interest include directed gaze towards faces or objects of interest, positive affect, and vocalization. The dataset consists of 2000 videos of 3-minute duration with these behaviors manually coded by expert raters. Moreover, the dataset has statistical features including duration and frequency of the above mentioned behaviors in the video collection as well as independent ASD diagnosis by clinicians. We tackle the ML problem in a two-stage approach. Firstly, we develop deep learning models for automatic identification of clinically relevant behaviors exhibited by infants in a one-on-one interaction setting with parents or expert clinicians. We report baseline results of behavior classification using two methods: (1) image based model (2) facial behavior features based model. We achieve 70% accuracy for smile, 68% accuracy for look face, 67% for look object and 53% accuracy for vocalization. Secondly, we focus on ASD diagnosis prediction by applying a feature selection process to identify the most significant statistical behavioral features and a over and under sampling process to mitigate the class imbalance, followed by developing a baseline ML classifier to achieve an accuracy of 82% for ASD diagnosis.
自闭症谱系障碍(ASD)的早期诊断对于干预取得最佳效果至关重要。在本文中,我们提出了一种基于识别6至36个月大婴儿视频中特定行为的机器学习(ML)方法来进行ASD诊断。感兴趣的行为包括对感兴趣的面孔或物体的定向注视、积极情绪和发声。该数据集由2000个时长为3分钟的视频组成,这些行为由专家评分员进行手动编码。此外,该数据集具有统计特征,包括视频集合中上述行为的持续时间和频率,以及临床医生的独立ASD诊断结果。我们采用两阶段方法解决机器学习问题。首先,我们开发深度学习模型,用于在与父母或专家临床医生的一对一互动环境中自动识别婴儿表现出的临床相关行为。我们使用两种方法报告行为分类的基线结果:(1)基于图像的模型(2)基于面部行为特征的模型。我们在微笑分类上达到了70%的准确率,在注视面部上达到了68%的准确率,在注视物体上达到了67%的准确率,在发声上达到了53%的准确率。其次,我们专注于ASD诊断预测,通过应用特征选择过程来识别最重要的统计行为特征,并通过过采样和欠采样过程来缓解类别不平衡问题,随后开发一个基线ML分类器,以实现ASD诊断82%的准确率。