Hybrid optimal feature selection-based iterative deep convolution learning for COVID-19 classification system.

Comput Biol Med

Professor, Master of Computer Applications, Einstein College of Computer Application and Management, Khurda, Odisha, 752060, India. Electronic address:

Published: October 2024

AI Article Synopsis

  • The COVID-19 pandemic prompted the need for advanced early detection and diagnosis methods, leading to the integration of IoT devices in healthcare and the use of AI to analyze vast amounts of IoT data for disease prediction.
  • To address challenges in feature analysis of complex IoT data, the study introduces the optimal iterative COVID-19 classification network (OICC-Net), which combines machine learning optimization techniques and deep learning methods for accurate classification.
  • Using a combination of the RFI-PS-BWO algorithm and an iterative deep convolution learning method, the OICC-Net achieved impressive performance metrics, including a 99.97% F1-score and perfect sensitivity, specificity, and precision rates in classifying COVID-19 related

Article Abstract

The COVID-19 pandemic has necessitated the development of innovative and efficient methods for early detection and diagnosis. Integrating Internet of Things (IoT) devices and applications in healthcare has facilitated various functions. This work aims to employ practical artificial intelligence (AI) approaches to extract meaningful information from the vast amount of IoT data to perform disease prediction tasks. However, traditional AI methods need help in feature analysis due to the complexity and scale of IoT data. So, this work implements the optimal iterative COVID-19 classification network (OICC-Net) using machine learning optimization and deep learning approaches. Initially, the preprocessing operation normalizes the dataset with uniform values. Here, random forest infused particle swarm-based black widow optimization (RFI-PS-BWO) algorithm was used to get the disease-specific patterns from SARS-CoV-2 (SC2), and other disease classes, where patterns of the SC2 virus are very similar to those of other virus classes. In addition, an iterative deep convolution learning (IDCL) feature selection method is used to distinguish features from the RFI-PS-BWO data. This iterative process enhances the performance of feature selection by providing improved representation and reducing the dimensionality of the input data. Then, a one-dimensional convolutional neural network (1D-CNN) was employed to classify and identify the extracted features from SC2 with no virus classes. The 1D-CNN model is trained using a large dataset of COVID-19 samples, enabling it to learn intricate patterns and make accurate predictions. It was tested and found that the proposed OICC-Net system is more accurate than current methods, with a score of 99.97 % for F1-score, 100 % for sensitivity, 100 % for specificity, 99.98 % for precision, and 99.99 % for recall.

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Source
http://dx.doi.org/10.1016/j.compbiomed.2024.109031DOI Listing

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