Feature replacement methods enable reliable home video analysis for machine learning detection of autism

Author:

Leblanc Emilie,Washington Peter,Varma Maya,Dunlap Kaitlyn,Penev Yordan,Kline Aaron,Wall Dennis P.

Abstract

AbstractAutism Spectrum Disorder is a neuropsychiatric condition affecting 53 million children worldwide and for which early diagnosis is critical to the outcome of behavior therapies. Machine learning applied to features manually extracted from readily accessible videos (e.g., from smartphones) has the potential to scale this diagnostic process. However, nearly unavoidable variability in video quality can lead to missing features that degrade algorithm performance. To manage this uncertainty, we evaluated the impact of missing values and feature imputation methods on two previously published autism detection classifiers, trained on standard-of-care instrument scoresheets and tested on ratings of 140 children videos from YouTube. We compare the baseline method of listwise deletion to classic univariate and multivariate techniques. We also introduce a feature replacement method that, based on a score, selects a feature from an expanded dataset to fill-in the missing value. The replacement feature selected can be identical for all records (general) or automatically adjusted to the record considered (dynamic). Our results show that general and dynamic feature replacement methods achieve a higher performance than classic univariate and multivariate methods, supporting the hypothesis that algorithmic management can maintain the fidelity of video-based diagnostics in the face of missing values and variable video quality.

Funder

National Institutes of Health

Hartwell Foundation

David and Lucile Packard Foundation

Beckman Center for Molecular and Genetic Medicine

Wallace H. Coulter Foundationv

Stanford Innovation Accelerator Pilot Program

Stanford's Precision Health and Integrated Diagnostics Center

Wu Tsai Neurosciences Institute, Stanford University

Spark Program in Translational Research

Stanford's Institute of Human Centered Artificial Intelligence

Weston Havens Foundation

Philanthropic support from Peter Sullivan

Stanford Interdisciplinary Graduate Fellowship

Walter V. and Idun Berry Postdoctoral Fellowship Program

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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