COVID-Net Biochem: An Explainability-driven Framework to Building Machine Learning Models for Predicting Survival and Kidney Injury of COVID-19 Patients from Clinical and Bioch

04/24/2022
by   Hossein Aboutalebi, et al.
0

Ever since the declaration of COVID-19 as a pandemic by the World Health Organization in 2020, the world has continued to struggle in controlling and containing the spread of the COVID-19 pandemic caused by the SARS-CoV-2 virus. This has been especially challenging with the rise of the Omicron variant and its subvariants and recombinants, which has led to a significant increase in patients seeking treatment and has put a tremendous burden on hospitals and healthcare systems. A major challenge faced during the pandemic has been the prediction of survival and the risk for additional injuries in individual patients, which requires significant clinical expertise and additional resources to avoid further complications. In this study we propose COVID-Net Biochem, an explainability-driven framework for building machine learning models to predict patient survival and the chance of developing kidney injury during hospitalization from clinical and biochemistry data in a transparent and systematic manner. In the first "clinician-guided initial design" phase, we prepared a benchmark dataset of carefully selected clinical and biochemistry data based on clinician assessment, which were curated from a patient cohort of 1366 patients at Stony Brook University. A collection of different machine learning models with a diversity of gradient based boosting tree architectures and deep transformer architectures was designed and trained specifically for survival and kidney injury prediction based on the carefully selected clinical and biochemical markers.

READ FULL TEXT
research
09/14/2021

COVID-Net Clinical ICU: Enhanced Prediction of ICU Admission for COVID-19 Patients via Explainability and Trust Quantification

The COVID-19 pandemic continues to have a devastating global impact, and...
research
10/28/2021

On the explainability of hospitalization prediction on a large COVID-19 patient dataset

We develop various AI models to predict hospitalization on a large (over...
research
09/14/2021

COVID-Net MLSys: Designing COVID-Net for the Clinical Workflow

As the COVID-19 pandemic continues to devastate globally, one promising ...
research
10/01/2020

TrueImage: A Machine Learning Algorithm to Improve the Quality of Telehealth Photos

Telehealth is an increasingly critical component of the health care ecos...
research
04/18/2021

CNN AE: Convolution Neural Network combined with Autoencoder approach to detect survival chance of COVID 19 patients

In this paper, we propose a novel method named CNN-AE to predict surviva...
research
01/09/2022

Privacy-aware Early Detection of COVID-19 through Adversarial Training

Early detection of COVID-19 is an ongoing area of research that can help...
research
11/02/2021

Learning and Predicting from Dynamic Models for COVID-19 Patient Monitoring

COVID-19 has challenged health systems to learn how to learn. This paper...

Please sign up or login with your details

Forgot password? Click here to reset