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Mobile detection of autism through machine learning on home video: A development and prospective validation study

机译:通过家庭视频上的机器学习对自闭症进行移动检测:一项发展和前瞻性验证研究

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摘要

BackgroundThe standard approaches to diagnosing autism spectrum disorder (ASD) evaluate between 20 and 100 behaviors and take several hours to complete. This has in part contributed to long wait times for a diagnosis and subsequent delays in access to therapy. We hypothesize that the use of machine learning analysis on home video can speed the diagnosis without compromising accuracy. We have analyzed item-level records from 2 standard diagnostic instruments to construct machine learning classifiers optimized for sparsity, interpretability, and accuracy. In the present study, we prospectively test whether the features from these optimized models can be extracted by blinded nonexpert raters from 3-minute home videos of children with and without ASD to arrive at a rapid and accurate machine learning autism classification.
机译:背景诊断自闭症谱系障碍(ASD)的标准方法评估了20至100种行为,需要花费数小时才能完成。这部分地导致了较长的诊断等待时间以及随后的治疗延迟。我们假设在家庭视频上使用机器学习分析可以加快诊断速度,而不会影响准确性。我们分析了2种标准诊断工具的项目级记录,以构建针对稀疏性,可解释性和准确性进行优化的机器学习分类器。在本研究中,我们前瞻性地测试了盲人非专家评估者是否可以从有和没有ASD的儿童的3分钟家庭视频中提取出这些优化模型的特征,从而获得快速准确的机器学习自闭症分类。

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