Predictive Medicine for Salivary Gland Tumours Identification Through Deep Learning.

Journal: IEEE journal of biomedical and health informatics
Published Date:

Abstract

Nowadays, predictive medicine begins to become a reality thanks to Artificial Intelligence (AI) which allows, through the processing of huge amounts of data, to identify correlations not perceptible to the human brain. The application of AI in predictive diagnostics is increasingly pervasive; through the use and interpretation of data, the first signs of some diseases (i.e. tumours) can be detected to help physicians make more accurate diagnoses to reduce the errors and develop methods for individualized medical treatment. In this perspective, salivary gland tumours (SGTs) are rare cancers with variable malignancy representing less than 1% of all cancer diagnoses and about 5% of head and neck cancers. The clinical management of SGTs is complicated by a high rate of preclinical diagnostic errors. Today, fine needle aspiration cytology (FNAC) represents the primary diagnostic tool in the hands of clinicians. However, it provides information that about 25% of cases are dubious or inconclusive, complicating therapeutic choices. Thus, finding new tools supporting clinicians to make the right choices in doubtful cases is necessary. This research work presents and discusses a Deep Learning-based framework for automatic segmentation and classification of salivary gland tumours. Furthermore, we propose an explainable segmentation learning approach supporting the effectiveness of the proposed framework through a per-epoch learning process analysis and the attention map mechanism. The proposed framework was evaluated with a collected CT dataset of patients with salivary gland tumours. Experimental results show that our methodology achieves significant scores on both segmentation and classification tasks.

Authors

  • Edoardo Prezioso
    Department of Mathematics and Applications "R. Caccioppoli", University of Naples Federico II, 80126, Naples, Italy.
  • Stefano Izzo
  • Fabio Giampaolo
  • Francesco Piccialli
    Department of Mathematics and Applications "R. Caccioppoli", University of Naples Federico II, 80126, Naples, Italy. francesco.piccialli@unina.it.
  • Giovanni Dell'Aversana Orabona
  • Renato Cuocolo
    Department of Medicine, Surgery and Dentistry, University of Salerno, Baronissi, Italy.
  • Vincenzo Abbate
    Department of Analytical, Environmental and Forensic Sciences, King's College London London UK giuseppe.floresta@kcl.ac.uk vincenzo.abbate@kcl.ac.uk.
  • Lorenzo Ugga
    Department of Advanced Biomedical Sciences, University of Naples "Federico II", Via S. Pansini, 5, 80131, Naples, Italy.
  • Luigi Califano