Cloud Computing Based Network Analysis in Smart Healthcare System with Neural Network Architecture

Authors

  • Alcides Bernardo Tello Universidad Nacional Hermilio Valdizan, Huanuco 10001, Peru
  • Shi Jie Nanjing University of Posts and Telecommunications, Jiangsu Province, 210003, China
  • Dr. Manjunatha D Assistant Professor, Department of Electronics, University College of Science, Tumkur University, Tumkur, Karnataka -572103
  • Dr. Kusuma Kumari B M Assistant Professor, Department of Studies and Research in Computer Applications, Tumkur University, Tumakuru, Karnataka-572103
  • Dr Shabnam Sayyad Associate Professor, Department of Computer Engineering, AISSMS College of Engineering, Pune, India

DOI:

https://doi.org/10.17762/ijcnis.v14i3.5622

Keywords:

Smart healthcare; Diagnosis; Medical data classification; Cloud computing; Neural network

Abstract

The recent progressions in Artificial Intelligence (AI), the Internet of Things (IoT), and cloud computing transformed the traditional healthcare system into a smart healthcare system. Medical services can be improved through the incorporation of key technologies namely AI and IoT. The convergence of AI and IoT renders several openings in the healthcare system. In machine learning, deep learning can be considered a renowned topic with a wide range of applications like biomedicine, computer vision, speech recognition, drug discovery, visual object detection, natural language processing, disease prediction, bioinformatics, etc. Among these applications, medical science-related and health care applications were raised dramatically. This study develops a Cloud computing-based network analysis in the smart healthcare systems with neural network (CCNA-SHSNN) architecture. The presented CCNA-SHSNN technique assists in the decision-making process of the healthcare system in a real time cloud environment. For data pre-processing, the CCNA-SHSNN technique uses a normalization approach. Secondly, the CCNA-SHSNN technique applies the autoencoder (AE) model for healthcare data classification in the CC platform. At last, the gravitational search algorithm (GSA) is used for hyperparameter optimization of the AE model. The experimental outcomes are determined on a benchmark dataset and the outcomes signify the outperforming efficiency of the CCNA-SHSNN technique compared to existing techniques.

Author Biographies

Dr. Manjunatha D, Assistant Professor, Department of Electronics, University College of Science, Tumkur University, Tumkur, Karnataka -572103

   

Dr. Kusuma Kumari B M, Assistant Professor, Department of Studies and Research in Computer Applications, Tumkur University, Tumakuru, Karnataka-572103

   

Dr Shabnam Sayyad, Associate Professor, Department of Computer Engineering, AISSMS College of Engineering, Pune, India

   

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Published

2022-12-31

How to Cite

Tello, A. B. ., Jie, S. ., D, D. M. ., B M, D. K. K. ., & Sayyad, D. S. . (2022). Cloud Computing Based Network Analysis in Smart Healthcare System with Neural Network Architecture. International Journal of Communication Networks and Information Security (IJCNIS), 14(3), 269–279. https://doi.org/10.17762/ijcnis.v14i3.5622

Issue

Section

Research Articles