Optimizing Disease Prediction with Artificial Intelligence Driven Feature Selection and Attention Networks
D. Dhinakaran, S. Edwin Raja, M. Thiyagarajan, J. Jeno Jasmine, P., Raghavan

TL;DR
This paper presents a novel ensemble feature selection model combined with an attention-based neural network to improve multi-disease prediction accuracy using EHR data, achieving state-of-the-art results.
Contribution
Introduces the SEV-EB algorithm for robust feature selection and the HSC-AttentionNet architecture for enhanced disease prediction performance.
Findings
Achieved 95% accuracy in disease prediction
Attained 94% F1-score surpassing traditional methods
Demonstrated robustness and stability in predictions
Abstract
The rapid integration of machine learning methodologies in healthcare has ignited innovative strategies for disease prediction, particularly with the vast repositories of Electronic Health Records (EHR) data. This article delves into the realm of multi-disease prediction, presenting a comprehensive study that introduces a pioneering ensemble feature selection model. This model, designed to optimize learning systems, combines statistical, deep, and optimally selected features through the innovative Stabilized Energy Valley Optimization with Enhanced Bounds (SEV-EB) algorithm. The objective is to achieve unparalleled accuracy and stability in predicting various disorders. This work proposes an advanced ensemble model that synergistically integrates statistical, deep, and optimally selected features. This combination aims to enhance the predictive power of the model by capturing diverse…
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Taxonomy
MethodsTanh Activation · Convolution · Feature Selection · Sigmoid Activation · Long Short-Term Memory
