NeuroNasal: Advanced AI-Driven Self-Supervised Learning Approach for Enhanced Sinonasal Pathology Detection.

Journal: Sensors (Basel, Switzerland)
PMID:

Abstract

Sinus diseases are inflammations or infections of the sinuses that significantly impact patient quality of life. They cause nasal congestion, facial pain, headaches, thick nasal discharge, and a reduced sense of smell. However, accurately diagnosing these diseases is challenging due to multiple factors, including inadequate patient adherence to pre-diagnostic protocols. By leveraging the latest developments in Artificial Intelligence (AI), there exists a substantial opportunity to improve the precision and effectiveness of classification of these diseases. In this study, we present a novel AI-based approach for sinonasal pathology detection, using Self-Supervised Learning (SSL) techniques and Random Forest (RF) algorithms. We have collected a new diagnostic imaging dataset, which is a major contribution to this study. The dataset contains 137 CT and MRI images meticulously labeled by expert radiologists, with two classes: healthy and unhealthy (sinus disease). This dataset is a useful asset for developing and evaluating AI-based classification techniques. In addition, our proposed approach employs the Deep InfoMax (DIM) model to extract meaningful global and local features from the imaging data with a self-supervised method. These features are then used as input for an RF classifier, which effectively distinguishes between healthy and sinonasal pathological cases. The combination of both DIM and RF provides efficient feature learning and powerful classification of sinus cases. Our preliminary results demonstrate the efficiency of the proposed approach, which achieves a mean classification accuracy of 92.62%. These findings highlight the potential of our AI-based approach in improving sinonasal pathology diagnosis.

Authors

  • Nesrine Atitallah
    Faculty of Computer Studies, Arab Open University, Riyadh 11681, Saudi Arabia.
  • Safa Ben Atitallah
    Robotics and Internet of Things Laboratory, Prince Sultan University, Riyadh, 12435, Saudi Arabia; RIADI Laboratory, National School of Computer Science, University of Manouba, Manouba, 2010, Tunisia. Electronic address: satitallah@psu.edu.sa.
  • Maha Driss
    Security Engineering Lab, Prince Sultan University, Riyadh 12435, Saudi Arabia.
  • Khalid M O Nahar
    Computer Science Department, Faculty of Information Technology and Computer Sciences, Yarmouk University, Irbid 21163, Jordan.