Classification of health deterioration by geometric invariants
Language English Country Ireland Media print-electronic
Document type Journal Article
PubMed
37276760
DOI
10.1016/j.cmpb.2023.107623
PII: S0169-2607(23)00288-2
Knihovny.cz E-resources
- Keywords
- Ballistocardiography, Cartan curvature, Convolutional neural network, Deterioration detection, Piezoeceramic sensor,
- MeSH
- Ballistocardiography * MeSH
- Humans MeSH
- Beds MeSH
- Neural Networks, Computer * MeSH
- Heart Rate MeSH
- Check Tag
- Humans MeSH
- Publication type
- Journal Article MeSH
BACKGROUND AND OBJECTIVES: Prediction of patient deterioration is essential in medical care, and its automation may reduce the risk of patient death. The precise monitoring of a patient's medical state requires devices placed on the body, which may cause discomfort. Our approach is based on the processing of long-term ballistocardiography data, which were measured using a sensory pad placed under the patient's mattress. METHODS: The investigated dataset was obtained via long-term measurements in retirement homes and intensive care units (ICU). Data were measured unobtrusively using a measuring pad equipped with piezoceramic sensors. The proposed approach focused on the processing methods of the measured ballistocardiographic signals, Cartan curvature (CC), and Euclidean arc length (EAL). RESULTS: For analysis, 218,979 normal and 216,259 aberrant 2-second samples were collected and classified using a convolutional neural network. Experiments using cross-validation with expert threshold and data length revealed the accuracy, sensitivity, and specificity of the proposed method to be 86.51 CONCLUSIONS: The proposed method provides a unique approach for an early detection of health concerns in an unobtrusive manner. In addition, the suitability of EAL over the CC was determined.
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