Improving ICU Capacity During COVID-19 Outbreaks
Harnessing AI to better manage ICU capacity during crisis.
Project Overview
Updated March 31, 2023
The Problem
Access to intensive care is critical for public health.
Prior to the COVID-19 pandemic, Canadian intensive care units (ICUs) were already operating at about 90 per cent capacity and exceeded capacity for about 50 days a year. ICU overcrowding causes delays in critical care for patients that need it most – every hour that ICU admission is delayed for a patient result in a 1.5 per cent increase in risk of death.
Respiratory infections such as pneumonia and influenza account for 20 per cent of ICU admissions and were a leading cause of death worldwide prior to COVID-19. With COVID-19 driving an increased demand for the ventilators, specialized treatments and close monitoring by doctors in ICUs, the entire health system is at greater threat of being overwhelmed.
How We Are Solving It
The Result
This project developed software to predict patient risk of hospital admission, Intensive Care Unit (ICU) admission and expected length of ICU stay based on patients’ medical imaging. The project team successfully collated de-identified clinical and imaging data from over 160,000 patients and the ability to accurately predict such factors plays an important role in not only maximizing hospital capacity during patient surges with community acquired pneumonia, including COVID-19, and to inform optimal treatment and monitoring for individual patients.