Litcius/Paper detail

Early Prediction of Hemodynamic Shock in Pediatric Intensive Care Units With Deep Learning on Thermal Videos

Vanshika Vats, Aditya Nagori, Pradeep Singh, Raman Dutt, Harsh Bandhey, Mahika Wason, Rakesh Lodha, Tavpritesh Sethi

2022Frontiers in Physiology12 citationsDOIOpen Access PDF

Abstract

Shock is one of the major killers in intensive care units, and early interventions can potentially reverse it. In this study, we advance a noncontact thermal imaging modality for continuous monitoring of hemodynamic shock working on 1,03,936 frames from 406 videos recorded longitudinally upon 22 pediatric patients. Deep learning was used to preprocess and extract the Center-to-Peripheral Difference (CPD) in temperature values from the videos. This time-series data along with the heart rate was finally analyzed using Long-Short Term Memory models to predict the shock status up to the next 6 h. Our models achieved the best area under the receiver operating characteristic curve of 0.81 ± 0.06 and area under the precision-recall curve of 0.78 ± 0.05 at 5 h, providing sufficient time to stabilize the patient. Our approach, thus, provides a reliable shock prediction using an automated decision pipeline that can provide better care and save lives.

Topics & Concepts

Shock (circulatory)MedicineModality (human–computer interaction)Intensive careHemodynamicsDeep learningReceiver operating characteristicPipeline (software)Psychological interventionArtificial intelligenceComputer scienceEmergency medicineIntensive care medicineCardiologyRadiologyInternal medicineNursingProgramming languageHemodynamic Monitoring and TherapyNon-Invasive Vital Sign MonitoringHeart Rate Variability and Autonomic Control