AIMS Mathematics (Apr 2024)

Nature-Inspired Metaheuristic Algorithm with deep learning for Healthcare Data Analysis

  • Hanan T. Halawani,
  • Aisha M. Mashraqi ,
  • Yousef Asiri ,
  • Adwan A. Alanazi ,
  • Salem Alkhalaf ,
  • Gyanendra Prasad Joshi

DOI
https://doi.org/10.3934/math.2024618
Journal volume & issue
Vol. 9, no. 5
pp. 12630 – 12649

Abstract

Read online

Cardiovascular disease (CVD) detection using deep learning (DL) includes leveraging advanced neural network (NN) models to analyze medical data, namely imaging, electrocardiograms (ECGs), and patient records. This study introduces a new Nature Inspired Metaheuristic Algorithm with Deep Learning for Healthcare Data Analysis (NIMADL-HDA) technique. The NIMADL-HDA technique examines healthcare data for the recognition and classification of CVD. In the presented NIMADL-HDA technique, Z-score normalization was initially performed to normalize the input data. In addition, the NIMADL-HDA method made use of a barnacle mating optimizer (BMO) for the feature selection (FS) process. For healthcare data classification, a convolutional long short-term memory (CLSTM) model was employed. At last, the prairie dog optimization (PDO) algorithm was exploited for the optimal hyperparameter selection procedure. The experimentation outcome analysis of the NIMADL-HDA technique was verified on a benchmark healthcare dataset. The obtained outcomes stated that the NIMADL-HDA technique reached an effectual performance over other models. The NIMADL-HDA method provides an adaptable and sophisticated solution for healthcare data analysis, aiming to improve the interpretability and accuracy of the algorithm in terms of medical applications.

Keywords