Author
Contributions by role
Author 1
Sunawar Khan
International Islamic University, Pakistan
Summary
Edited Journals
IECE Contributions

Open Access | Research Article | 30 March 2025
Uncovering COVID-19 Death Risk for Life on the Line with Machine Learning Precision
IECE Transactions on Neural Computing | Volume 1, Issue 1: 30-43, 2025 | DOI: 10.62762/TNC.2025.507897
Abstract
The global healthcare systems have faced unprecedented challenges due to the COVID-19 pandemic, necessitating innovative neural computing solutions to inform critical decision-making. In this study, we introduce a neural-inspired machine learning framework to predict COVID-19 mortality risk, utilizing a dataset comprising over one million records. We developed and evaluated a suite of advanced models—Decision Tree, Random Forest, Logistic Regression, Support Vector Machine, Gradient Boost Classifier, and a neural ensemble-based Voting Classifier—to analyze the influence of demographics, symptoms, and preexisting conditions on mortality predictions. Through meticulous feature engineering... More >

Graphical Abstract
Uncovering COVID-19 Death Risk for Life on the Line with Machine Learning Precision