Romero-García Rubén, Martínez-Tomás Rafael, Pozo Pilar, de la Paz Félix, Sarriá Encarnación
Department of Artificial Intelligence, School of Computer Science, UNED, 28040 Madrid, Spain.
Department of Artificial Intelligence, School of Computer Science, UNED, 28040 Madrid, Spain; Joint Research Institute UNED and Health Institute Carlos III (IMIENS), 28040 Madrid, Spain.
J Biomed Inform. 2021 Jun;118:103797. doi: 10.1016/j.jbi.2021.103797. Epub 2021 Apr 30.
The use of humanoid robots as assistants in therapy processes is not new. Several projects in the past several years have achieved promising results when combining human-robot interaction with standard techniques. Moreover, there are multiple screening systems for autism; one of the most used systems is the Quantitative Checklist for Autism in Toddlers (Q-CHAT-10), which includes ten questions to be answered by the parents or caregivers of a child. We present Q-CHAT-NAO, an observation-based autism screening system supported by a NAO robot. It includes the six questions of the Q-CHAT-10 that can be adapted to work in a robotic context; unlike the original system, it obtains information from the toddler instead of from an indirect source. The detection results obtained after applying machine learning models to the six questions in the Autistic Spectrum Disorder Screening Data for Toddlers dataset were almost equivalent to those of the original version with ten questions. These findings indicate that the Q-CHAT-NAO could be a screening option that would exploit all the benefits related to human-robot interaction.
将类人机器人用作治疗过程中的辅助工具并非新鲜事。在过去几年里,有几个项目在将人机交互与标准技术相结合时取得了可喜的成果。此外,有多种针对自闭症的筛查系统;其中使用最广泛的系统之一是《幼儿自闭症量化检查表》(Q-CHAT-10),它包含十个问题,由孩子的父母或照顾者回答。我们展示了Q-CHAT-NAO,这是一个由NAO机器人支持的基于观察的自闭症筛查系统。它包含了Q-CHAT-10中的六个问题,这些问题经过调整后可在机器人环境中使用;与原始系统不同的是,它从幼儿那里获取信息,而不是从间接来源获取。将机器学习模型应用于《幼儿自闭症谱系障碍筛查数据》数据集中的六个问题后得到的检测结果几乎与原始的十个问题版本的结果相当。这些发现表明,Q-CHAT-NAO可能是一种能够利用人机交互所有优势的筛查选项。