Blockchain-Based Deep Learning to Process IoT Data Acquisition in Cognitive Data.

Journal: BioMed research international
PMID:

Abstract

Remote health monitoring can help prevent disease at the earlier stages. The Internet of Things (IoT) concepts have recently advanced, enabling omnipresent monitoring. Easily accessible biomarkers for neurodegenerative disorders, namely, Alzheimer's disease (AD) are needed urgently to assist the diagnoses at its early stages. Due to the severe situations, these systems demand high-quality qualities including availability and accuracy. Deep learning algorithms are promising in such health applications when a large amount of data is available. These solutions are ideal for a distributed blockchain-based IoT system. A good Internet connection is critical to the speed of these system responses. Due to their limited processing capabilities, smart gateway devices cannot implement deep learning algorithms. In this paper, we investigate the use of blockchain-based deep neural networks for higher speed and delivery of healthcare data in a healthcare management system. The study exhibits a real-time health monitoring for classification and assesses the response time and accuracy. The deep learning model classifies the brain diseases as benign or malignant. The study takes into account three different classes to predict the brain disease as benign or malignant that includes AD, mild cognitive impairment, and normal cognitive level. The study involves a series of processing where most of the data are utilized for training these classifiers and ensemble model with a metaclassifier classifying the resultant class. The simulation is conducted to test the efficacy of the model over that of the OASIS-3 dataset, which is a longitudinal neuroimaging, cognitive, clinical, and biomarker dataset for normal aging and AD, and it is further trained and tested on the UDS dataset from ADNI. The results show that the proposed method accurately (98%) responds to the query with high speed retrieval of classified results with an increased training accuracy of 0.539 and testing accuracy of 0.559.

Authors

  • S Hannah
    Department of Computer, Science and Engineering, Anna University, India.
  • A J Deepa
    Ponjesly College of Engineering, Kaniyakumari, India.
  • Varghese S Chooralil
    Department of Computer Science and Engineering, Rajagiri School of Engineering & Technology, India.
  • S BrillySangeetha
    Department of Computer Science and Engineering, IES College of Engineering, India.
  • N Yuvaraj
    Research and Development, ICT Academy, IIT Madras Research Park, India.
  • R Arshath Raja
    Research and Development, ICT Academy, IIT Madras Research Park, India.
  • C Suresh
    CSE, Sri Ranganathar Institute of Engineering and Technology, Coimbatore, India.
  • Rahul Vignesh
    CSE, Dhanalakshmi Srinivasan College of Engineering, Coimbatore, India.
  • YasirAbdullahR
    Department of Computer Science and Engineering, Sri Krishna College of Engineering and Technology, India.
  • K Srihari
    Dept of CSE, SNS College of Engineering, CBE, India. Electronic address: harionto@gmail.com.
  • Assefa Alene
    Department of Chemical Engineering, College of Biological and Chemical Engineering, Addis Ababa Science and Technology University, Ethiopia.