Fully Elman Neural Network: A Novel Deep Recurrent Neural Network Optimized by an Improved Harris Hawks Algorithm for Classification of Pulmonary Arterial Wedge Pressure
Masoud Fetanat, Michael Stevens, Pankaj Jain, Christopher Hayward,, Erik Meijering, Nigel H. Lovell

TL;DR
This paper introduces a novel deep learning framework combining a fully Elman neural network optimized by an improved Harris Hawks algorithm for non-invasive classification of pulmonary arterial wedge pressure, aiding heart failure management.
Contribution
It proposes a new fully Elman neural network architecture and an improved Harris Hawks optimizer, enhancing classification accuracy of PAWP in a clinical setting.
Findings
The CNN-FENN-HHO+ method outperforms other models in classification accuracy.
The approach reduces hazardous events in heart failure management.
The methods are validated on an imbalanced clinical dataset with cross-validation.
Abstract
Heart failure (HF) is one of the most prevalent life-threatening cardiovascular diseases in which 6.5 million people are suffering in the USA and more than 23 million worldwide. Mechanical circulatory support of HF patients can be achieved by implanting a left ventricular assist device (LVAD) into HF patients as a bridge to transplant, recovery or destination therapy and can be controlled by measurement of normal and abnormal pulmonary arterial wedge pressure (PAWP). While there are no commercial long-term implantable pressure sensors to measure PAWP, real-time non-invasive estimation of abnormal and normal PAWP becomes vital. In this work, first an improved Harris Hawks optimizer algorithm called HHO+ is presented and tested on 24 unimodal and multimodal benchmark functions. Second, a novel fully Elman neural network (FENN) is proposed to improve the classification performance.…
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