COVID-Net Clinical ICU: Enhanced Prediction of ICU Admission for COVID-19 Patients via Explainability and Trust Quantification
Audrey Chung, Mahmoud Famouri, Andrew Hryniowski, and Alexander Wong

TL;DR
This paper introduces COVID-Net Clinical ICU, a neural network model that predicts ICU admission for COVID-19 patients with high accuracy, using explainability and trust metrics to enhance transparency and trustworthiness in clinical decision support.
Contribution
The paper presents a novel neural network model for ICU admission prediction that incorporates explainability and trust quantification to improve transparency and clinical utility.
Findings
Achieved 96.9% accuracy in predicting ICU admission.
Used explainability techniques to identify key clinical features influencing decisions.
Applied trust metrics to assess model reliability in clinical settings.
Abstract
The COVID-19 pandemic continues to have a devastating global impact, and has placed a tremendous burden on struggling healthcare systems around the world. Given the limited resources, accurate patient triaging and care planning is critical in the fight against COVID-19, and one crucial task within care planning is determining if a patient should be admitted to a hospital's intensive care unit (ICU). Motivated by the need for transparent and trustworthy ICU admission clinical decision support, we introduce COVID-Net Clinical ICU, a neural network for ICU admission prediction based on patient clinical data. Driven by a transparent, trust-centric methodology, the proposed COVID-Net Clinical ICU was built using a clinical dataset from Hospital Sirio-Libanes comprising of 1,925 COVID-19 patient records, and is able to predict when a COVID-19 positive patient would require ICU admission with…
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Taxonomy
TopicsMachine Learning in Healthcare · Sepsis Diagnosis and Treatment · Artificial Intelligence in Healthcare and Education
