Fusion of fully integrated analog machine learning classifier with electronic medical records for real-time prediction of sepsis onset

Abstract

The objective of this work is to develop a fusion artificial intelligence (AI) model that combines patient electronic medical record (EMR) and physiological sensor data to accurately predict early risk of sepsis. The fusion AI model has two components—an on-chip AI model that continuously analyzes patient electrocardiogram (ECG) data and a cloud AI model that combines EMR and prediction scores from on-chip AI model to predict fusion sepsis onset score. The on-chip AI model is designed using analog circuits for sepsis prediction with high energy efficiency for integration with resource constrained wearable device. Combination of EMR and sensor physiological data improves prediction performance compared to EMR or physiological data alone, and the late fusion model has an accuracy of 93% in predicting sepsis 4 h before onset. The key differentiation of this work over existing sepsis prediction literature is the use of single modality patient vital (ECG) and simple demographic information, instead of comprehensive laboratory test results and multiple vital signs. Such simple configuration and high accuracy makes our solution favorable for real-time, at-home use for self-monitoring.

Document Details

Document Type
Pub Defense Publication
Publication Date
Apr 05, 2022
Source ID
10.1038/s41598-022-09712-w

Entities

People

  • Arindam Sanyal
  • Imon Banerjee
  • Monjoy Saha
  • Neal Bhatia
  • Sudarsan Sadasivuni

Organizations

  • Air Force Research Laboratory

Tags

Readers

  • Cardiovascular Physiology
  • Neural Network Machine Learning.
  • Sensor Fusion and Tracking Systems.

Technology Areas

  • AI & ML
  • Microelectronics