LGSPMED-PHJan 18, 2024

Noninvasive Acute Compartment Syndrome Diagnosis Using Random Forest Machine Learning

arXiv:2401.10386v31 citations
Originality Incremental advance
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This addresses the problem of inaccurate and invasive diagnostics for acute compartment syndrome in orthopedic emergencies, offering a cost-effective solution.

The study tackled the unreliable diagnosis of acute compartment syndrome by developing a noninvasive device using a random forest model with force-sensitive resistors, achieving up to 98% accuracy in simulated scenarios.

Acute compartment syndrome (ACS) is an orthopedic emergency, caused by elevated pressure within a muscle compartment, that leads to permanent tissue damage and eventually death. Diagnosis of ACS relies heavily on patient-reported symptoms, a method that is clinically unreliable and often supplemented with invasive intracompartmental pressure measurements that can malfunction in motion settings. This study proposes an objective and noninvasive diagnostic for ACS. The device detects ACS through a random forest machine learning model that uses surrogate pressure readings from force-sensitive resistors (FSRs) placed on the skin. To validate the diagnostic, a data set containing FSR measurements and the corresponding simulated intracompartmental pressure was created for motion and motionless scenarios. The diagnostic achieved up to 98% accuracy. The device excelled in key performance metrics, including sensitivity and specificity, with a statistically insignificant performance difference in motion present cases. Manufactured for 73 USD, our device may be a cost-effective solution. These results demonstrate the potential of noninvasive ACS diagnostics to meet clinical accuracy standards in real world settings.

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