Utilising Cot-Side Cameras in Neonatal Intensive Care Unit for Deep Learning-Assisted General Movement Assessment
Utilising Cot-Side Cameras in Neonatal Intensive Care Unit for Deep Learning-Assisted General Movement Assessment

Utilising Cot-Side Cameras in Neonatal Intensive Care Unit for Deep Learning-Assisted General Movement Assessment

Acta Paediatr. 2025 Sep 30. doi: 10.1111/apa.70319. Online ahead of print.

ABSTRACT

AIM: Neonatal units are increasingly utilising cot-side cameras to connect parents with their infants. Combined with deep learning, video obtained through cot-side cameras could assist clinicians in conducting seamless general movement assessment (GMA) of the writhing age.

METHOD: A literature search was conducted using PubMed, Embase and SCOPUS with the following keywords: cot-side cameras, deep learning, artificial intelligence, general movement assessment and writhing age.

RESULTS: Methods for acquiring and classifying human movement are categorised into contact, non-contact and hybrid approaches. Contact modalities typically include wearable sensors placed on the body to represent human posture, while hybrid modalities combine wearable sensors or markers with non-contact sensors. Non-contact approaches include radar-based and vision-based methods, which are the most common and accessible for motion capture, employing standard or specialised cameras to capture video data. Cot-side cameras used in neonatal clinics are primarily standard red-green-blue (RGB) devices and are the leading candidates for automated GMA. Advances in deep learning can enhance motion assessment with video data through appearance- and pose-based methods, supporting computer-aided GMA.

CONCLUSION: Advances in deep learning can enhance the motion assessment of RGB video data, offering a scalable and non-invasive solution for computer-aided GMA that could reshape early neurodevelopmental screening.

PMID:41025287 | DOI:10.1111/apa.70319