The detection and prediction of surgical site infections using multi-modal sensors and machine learning: Results in an animal model

被引:3
作者
Hughes, Charmayne Mary Lee [1 ]
Jeffers, Andrew [2 ]
Sethuraman, Arun [2 ]
Klum, Michael [2 ]
Tan, Milly [2 ]
Tan, Valerie [2 ]
机构
[1] San Francisco State Univ, Hlth Equ Inst NeuroTech Lab, San Francisco, CA 94132 USA
[2] Crely Healthcare Pte Ltd, Singapore, Singapore
来源
FRONTIERS IN MEDICAL TECHNOLOGY | 2023年 / 5卷
关键词
surgical site infection; multi-modal sensors; non-invasive sensors; machine learning; wound healing; superficial incisional infection; animal model; FINANCIAL IMPACT; RISK; SURVEILLANCE; PREVENTION; COST;
D O I
10.3389/fmedt.2023.1111859
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
IntroductionSurgical Site Infection (SSI) is a common healthcare-associated infection that imposes a considerable clinical and economic burden on healthcare systems. Advances in wearable sensors and digital technologies have unlocked the potential for the early detection and diagnosis of SSI, which can help reduce this healthcare burden and lower SSI-associated mortality rates. MethodsIn this study, we evaluated the ability of a multi-modal bio-signal system to predict current and developing superficial incisional infection in a porcine model infected with Methicillin Susceptible Staphylococcus Aureus (MSSA) using a bagged, stacked, and balanced ensemble logistic regression machine learning model. ResultsResults demonstrated that the expression levels of individual biomarkers (i.e., peri-wound tissue oxygen saturation, temperature, and bioimpedance) differed between non-infected and infected wounds across the study period, with cross-correlation analysis indicating that a change in bio-signal expression occurred 24 to 31 hours before this change was reflected by clinical wound scoring methods employed by trained veterinarians. Moreover, the multi-modal ensemble model indicated acceptable discriminability to detect the presence of a current superficial incisional SSI (AUC = 0.77), to predict an SSI 24 hours in advance of veterinarian-based SSI diagnosis (AUC = 0.80), and to predict an SSI 48 hours in advance of veterinarian-based SSI diagnosis (AUC = 0.74). DiscussionIn sum, the results of the current study indicate that non-invasive multi-modal sensor and signal analysis systems have the potential to detect and predict superficial incisional SSIs in porcine subjects under experimental conditions.
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页数:10
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