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SHR Neuro Krebs Kardio Lipid Stoffw Microb

Silva, N; Zhang, D; Kulvicius, T; Gail, A; Barreiros, C; Lindstaedt, S; Kraft, M; Bölte, S; Poustka, L; Nielsen-Saines, K; Wörgötter, F; Einspieler, C; Marschik, PB.
The future of General Movement Assessment: The role of computer vision and machine learning - A scoping review.
Res Dev Disabil. 2021; 110:103854 Doi: 10.1016/j.ridd.2021.103854 [OPEN ACCESS]
Web of Science PubMed PUBMED Central FullText FullText_MUG

 

Führende Autor*innen der Med Uni Graz
Marschik Dajie
Marschik Peter
Silverio da Silva Nelson de Jesus
Co-Autor*innen der Med Uni Graz
Einspieler Christa
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Abstract:
BACKGROUND: The clinical and scientific value of Prechtl general movement assessment (GMA) has been increasingly recognised, which has extended beyond the detection of cerebral palsy throughout the years. With advancing computer science, a surging interest in developing automated GMA emerges. AIMS: In this scoping review, we focused on video-based approaches, since it remains authentic to the non-intrusive principle of the classic GMA. Specifically, we aimed to provide an overview of recent video-based approaches targeting GMs; identify their techniques for movement detection and classification; examine if the technological solutions conform to the fundamental concepts of GMA; and discuss the challenges of developing automated GMA. METHODS AND PROCEDURES: We performed a systematic search for computer vision-based studies on GMs. OUTCOMES AND RESULTS: We identified 40 peer-reviewed articles, most (n = 30) were published between 2017 and 2020. A wide variety of sensing, tracking, detection, and classification tools for computer vision-based GMA were found. Only a small portion of these studies applied deep learning approaches. A comprehensive comparison between data acquisition and sensing setups across the reviewed studies, highlighting limitations and advantages of each modality in performing automated GMA is provided. CONCLUSIONS AND IMPLICATIONS: A "method-of-choice" for automated GMA does not exist. Besides creating large datasets, understanding the fundamental concepts and prerequisites of GMA is necessary for developing automated solutions. Future research shall look beyond the narrow field of detecting cerebral palsy and open up to the full potential of applying GMA to enable an even broader application.

Find related publications in this database (Keywords)
Augmented general movement assessment
Automation
Cerebral palsy
Computer vision
Deep learning
Developmental disorder
Early detection
General movements
Infancy
Machine learning
Neurodevelopment
Pose estimation
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