Georgescu Alexandra Livia, Koehler Jana Christina, Weiske Johanna, Vogeley Kai, Koutsouleris Nikolaos, Falter-Wagner Christine
Department of Psychology, Institute of Psychiatry, Psychology and Neuroscience, King's College London, London, United Kingdom.
Department of Psychiatry and Psychotherapy, University Hospital of Cologne, Cologne, Germany.
Front Robot AI. 2019 Nov 29;6:132. doi: 10.3389/frobt.2019.00132. eCollection 2019.
Autism Spectrum Disorder (ASD) is a spectrum of neurodevelopmental conditions characterized by difficulties in social communication and social interaction as well as repetitive behaviors and restricted interests. Prevalence rates have been rising, and existing diagnostic methods are both extremely time and labor consuming. There is an urgent need for more economic and objective automatized diagnostic tools that are independent of language and experience of the diagnostician and that can help deal with the complexity of the autistic phenotype. Technological advancements in machine learning are offering a potential solution, and several studies have employed computational approaches to classify ASD based on phenomenological, behavioral or neuroimaging data. Despite of being at the core of ASD diagnosis and having the potential to be used as a behavioral marker for machine learning algorithms, only recently have movement parameters been used as features in machine learning classification approaches. In a proof-of-principle analysis of data from a social interaction study we trained a classification algorithm on intrapersonal synchrony as an automatically and objectively measured phenotypic feature from 29 autistic and 29 typically developed individuals to differentiate those individuals with ASD from those without ASD. Parameters included nonverbal motion energy values from 116 videos of social interactions. As opposed to previous studies to date, our classification approach has been applied to non-verbal behavior objectively captured during naturalistic and complex interactions with a real human interaction partner assuring high external validity. A machine learning approach lends itself particularly for capturing heterogeneous and complex behavior in real social interactions and will be essential in developing automatized and objective classification methods in ASD.
自闭症谱系障碍(ASD)是一系列神经发育状况,其特征在于社交沟通和社交互动方面存在困难,以及重复行为和兴趣受限。患病率一直在上升,现有的诊断方法既极其耗时又费力。迫切需要更经济、客观的自动化诊断工具,这些工具独立于诊断人员的语言和经验,并且能够帮助应对自闭症表型的复杂性。机器学习的技术进步提供了一种潜在的解决方案,并且有几项研究已经采用计算方法根据现象学、行为学或神经影像数据对ASD进行分类。尽管运动参数是ASD诊断的核心,并且有可能用作机器学习算法的行为标记,但直到最近运动参数才被用作机器学习分类方法中的特征。在一项社交互动研究数据的原理验证分析中,我们以人际同步性作为一种自动且客观测量的表型特征,对来自29名自闭症患者和29名发育正常个体的数据训练了一种分类算法,以区分患有ASD的个体和未患ASD的个体。参数包括来自116段社交互动视频的非语言运动能量值。与迄今为止的先前研究不同,我们的分类方法已应用于在与真实人类互动伙伴进行自然且复杂的互动期间客观捕捉到的非语言行为,确保了较高的外部效度。机器学习方法特别适合捕捉真实社交互动中的异质性和复杂行为,并且对于开发ASD的自动化和客观分类方法至关重要。