Litcius/Paper detail

Leveraging IoTs and Machine Learning for Patient Diagnosis and Ventilation Management in the Intensive Care Unit

Gregory B. Rehm, Sang Hoon Woo, Xin Luigi Chen, Brooks Kuhn, Irene Cortés‐Puch, Nicholas Anderson, Jason Y. Adams, Chen‐Nee Chuah

2020IEEE Pervasive Computing44 citationsDOIOpen Access PDF

Abstract

Future healthcare systems will rely heavily on clinical decision support systems (CDSS) to improve the decision-making processes of clinicians. To explore the design of future CDSS, we developed a research-focused CDSS for the management of patients in the intensive care unit that leverages Internet of Things (IoT) devices capable of collecting streaming physiologic data from ventilators and other medical devices. We then created machine learning (ML) models that could analyze the collected physiologic data to determine if the ventilator was delivering potentially harmful therapy and if a deadly respiratory condition, acute respiratory distress syndrome (ARDS), was present. We also present work to aggregate these models into a mobile application that can provide responsive, real-time alerts of changes in ventilation to providers. As illustrated in the recent COVID-19 pandemic, being able to accurately predict ARDS in newly infected patients can assist in prioritizing care. We show that CDSS may be used to analyze physiologic data for clinical event recognition and automated diagnosis, and we also highlight future research avenues for hospital CDSS.

Topics & Concepts

Computer scienceIntensive care unitClinical decision support systemARDSDecision support systemAcute respiratory distressMedical emergencyIntensive care medicineArtificial intelligenceMedicineMachine learningLungInternal medicineRespiratory Support and MechanismsHealthcare Technology and Patient MonitoringNon-Invasive Vital Sign Monitoring