A Novel Multi-Stage Stacked Learning Framework for Cardiovascular Risk Stratification

Authors

  • M. E. Chandrasekar PG Scholar, Dept. of CSE Siddharth Institute of Engineering & Technology, Puttur, Andhra Pradesh, India
  • Dr. D. Nagaraju Professor, Dept. of CSE Siddharth Institute of Engineering & Technology, Puttur, Andhra Pradesh, India

Keywords:

Stroke Detection, Adaptive Machine Learning, Neuroimaging, MRI, CTScans, Deep Learning, Decision-Support Systems

Abstract

Cardiovasculardiseases (CVDs) remain the leading cause of global mortality, 
necessitating accurate and early risk stratification to improve clinical outcomes. 
This paper presents a novel multi-stage stacked learning framework for robust 
cardiovascular risk prediction by leveraging heterogeneous machine learning 
models in a hierarchical architecture. The proposed framework consists of a 
feature extraction layer followed by multiple base learners, including Support 
Vector Machine (SVM), Random Forest, XGBoost, and deep learning-based 
models, which capture diverse statistical and nonlinear patterns from clinical and 
imaging data. A meta-classifier aggregates the predictions of these base learners 
to generate a unified and optimized risk score. Experimental evaluation 
conducted on a benchmark cardiovascular dataset demonstrates that the proposed 
stacked architecture outperforms conventional single-model approaches and 
traditional ensemble techniques in terms of accuracy, precision, recall, and F1
score. The results highlight the effectiveness of multi-stage stacked learning in 
enhancing predictive robustness and supporting reliable clinical decision-making 
for early cardiovascular risk stratification. 

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Published

2026-05-20

How to Cite

A Novel Multi-Stage Stacked Learning Framework for Cardiovascular Risk Stratification. (2026). Erudite Journal of Engineering, Technology and Management Sciences, 6(2), 25-29. https://www.ejetms.com/index.php/ejetms/article/view/95