Daniels Jena, Haber Nick, Voss Catalin, Schwartz Jessey, Tamura Serena, Fazel Azar, Kline Aaron, Washington Peter, Phillips Jennifer, Winograd Terry, Feinstein Carl, Wall Dennis P
Appl Clin Inform. 2018 Jan;9(1):129-140. doi: 10.1055/s-0038-1626727. Epub 2018 Feb 21.
Recent advances in computer vision and wearable technology have created an opportunity to introduce mobile therapy systems for autism spectrum disorders (ASD) that can respond to the increasing demand for therapeutic interventions; however, feasibility questions must be answered first.
We studied the feasibility of a prototype therapeutic tool for children with ASD using Google Glass, examining whether children with ASD would wear such a device, if providing the emotion classification will improve emotion recognition, and how emotion recognition differs between ASD participants and neurotypical controls (NC).
We ran a controlled laboratory experiment with 43 children: 23 with ASD and 20 NC. Children identified static facial images on a computer screen with one of 7 emotions in 3 successive batches: the first with no information about emotion provided to the child, the second with the correct classification from the Glass labeling the emotion, and the third again without emotion information. We then trained a logistic regression classifier on the emotion confusion matrices generated by the two information-free batches to predict ASD versus NC.
All 43 children were comfortable wearing the Glass. ASD and NC participants who completed the computer task with Glass providing audible emotion labeling ( = 33) showed increased accuracies in emotion labeling, and the logistic regression classifier achieved an accuracy of 72.7%. Further analysis suggests that the ability to recognize surprise, fear, and neutrality may distinguish ASD cases from NC.
This feasibility study supports the utility of a wearable device for social affective learning in ASD children and demonstrates subtle differences in how ASD and NC children perform on an emotion recognition task.
计算机视觉和可穿戴技术的最新进展为引入针对自闭症谱系障碍(ASD)的移动治疗系统创造了机会,以应对对治疗干预日益增长的需求;然而,必须首先回答可行性问题。
我们研究了一种使用谷歌眼镜的针对自闭症谱系障碍儿童的原型治疗工具的可行性,考察自闭症谱系障碍儿童是否会佩戴这样的设备、提供情感分类是否会提高情感识别能力,以及自闭症谱系障碍参与者与神经典型对照组(NC)在情感识别方面有何不同。
我们对43名儿童进行了一项对照实验室实验:23名患有自闭症谱系障碍,20名作为神经典型对照组。儿童在电脑屏幕上连续分三批识别具有7种情绪之一的静态面部图像:第一批不向儿童提供有关情绪的信息,第二批由谷歌眼镜提供正确的情绪分类标签,第三批再次不提供情绪信息。然后,我们根据两个无信息批次生成的情感混淆矩阵训练一个逻辑回归分类器,以预测自闭症谱系障碍儿童与神经典型对照组儿童。
所有43名儿童都能舒适地佩戴谷歌眼镜。在谷歌眼镜提供可听情感标签的情况下完成电脑任务的自闭症谱系障碍和神经典型对照组参与者(n = 33)在情感标签方面的准确率有所提高,逻辑回归分类器的准确率达到72.7%。进一步分析表明,识别惊讶、恐惧和中性情绪的能力可能会区分自闭症谱系障碍病例与神经典型对照组。
这项可行性研究支持了可穿戴设备在自闭症谱系障碍儿童社交情感学习中的效用,并展示了自闭症谱系障碍儿童和神经典型对照组儿童在情感识别任务中的细微差异。