Novel Tinnitus Diagnosis: Biology and Technology for Public Health Management.

Journal: Studies in health technology and informatics
Published Date:

Abstract

Tinnitus, characterized by the perception of ringing or buzzing in the ears, significantly affects millions globally and negatively impacts their quality of life. Current management strategies vary in effectiveness, underscoring the need for precise, comprehensive diagnostic methods. This study introduces a Quantum Machine Learning (QML) solution for public health management in tinnitus detection, specifically targeting noise-exposed and hypertensive laborers. The proposed Tinnitus Detection-Diagnostic Support System (TDDSS) aims to improve public health management by accurately classifying tinnitus based on behavior, severity, and type, thus determining whether an individual is affected. Leveraging the synergies between advanced quantum mechanics and machine learning techniques, this approach promises enhanced system efficiency, automation, simultaneous data processing capabilities from different sensors, and diagnostic accuracy. Experimental comparisons reveal that the Quantum Neural Network (QNN) significantly outperforms Traditional Machine Learning (TML) algorithms. The experimental results showed that the quantum neural network outperforms (with 99% accuracy) highest among all when compared with the other commonly used traditional machine learning algorithms.

Authors

  • Fahad Ahmad
    Department of Basic Sciences, Common First Year, Jouf University, Sakaka 72341, Saudi Arabia.
  • Ayesha Shabbir
    Department of Computer Sciences, Kinnaird College for Women, Punjab, Pakistan.
  • Saad Awadh Alanazi
    Department of Computer Science, College of Computer and Information Sciences, Jouf University, Sakaka, Aljouf 72341, Saudi Arabia.
  • Maryam Shabbir
    Faculty of Pharmacy, The University of Lahore, Lahore, Pakistan.
  • Elisavet Andrikopoulou
    School of Computing, Faculty of Technology, University of Portsmouth, United Kingdom.
  • Kashaf Junaid
    School of Biological and Behavioural Sciences, Queen Mary University of London, London E1 4NS, United Kingdom.