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Deep Learning-Based Image Classification and Segmentation on Digital Histopathology for Oral Squamous Cell Carcinoma: A Systematic Review and Meta-Analysis Publisher Pubmed



Pirayesh Z1, 2 ; Mohammadrahimi H2 ; Ghasemi N1 ; Motamedian SR2, 3 ; Sadeghi TS3 ; Koohi H3 ; Rokhshad R2 ; Lotfi SM3 ; Najafi A4 ; Alajaji SA5, 6, 7 ; Khoury ZH8 ; Jessri M9, 10 ; Sultan AS5, 7, 11
Authors
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Authors Affiliations
  1. 1. Department of Orthodontics and Dentofacial Orthopedics, School of Dentistry, Zanjan University of Medical Sciences, Zanjan, Iran
  2. 2. Topic Group Dental Diagnostics and Digital Dentistry, ITU/WHO Focus Group AI on Health, Berlin, Germany
  3. 3. Dentofacial Deformities Research Center, Research Institute of Dental Sciences, Shahid Beheshti University of Medical Sciences, Tehran, Iran
  4. 4. School of Medicine, Tehran University of Medical Sciences, MD-MPH, Tehran, Iran
  5. 5. Department of Oncology and Diagnostic Sciences, School of Dentistry, University of Maryland, Baltimore, MD, United States
  6. 6. Department of Oral Medicine and Diagnostic Sciences, College of Dentistry, King Saud University, Riyadh, Saudi Arabia
  7. 7. Division of Artificial Intelligence Research, University of Maryland School of Dentistry, Baltimore, MD, United States
  8. 8. Department of Oral Diagnostic Sciences and Research, School of Dentistry, Meharry Medical College, Nashville, TN, United States
  9. 9. Oral Medicine and Pathology Department, School of Dentistry, University of Queensland, Herston, QLD, Australia
  10. 10. Oral Medicine Department, Metro North Hospital and Health Services, Queensland Health, Brisbane, QLD, Australia
  11. 11. University of Maryland Marlene and Stewart Greenebaum Comprehensive Cancer Center, Baltimore, MD, United States

Source: Journal of Oral Pathology and Medicine Published:2024


Abstract

Background: Artificial intelligence (AI)-based tools have shown promise in histopathology image analysis in improving the accuracy of oral squamous cell carcinoma (OSCC) detection with intent to reduce human error. Objectives: This systematic review and meta-analysis evaluated deep learning (DL) models for OSCC detection on histopathology images by assessing common diagnostic performance evaluation metrics for AI-based medical image analysis studies. Methods: Diagnostic accuracy studies that used DL models for the analysis of histopathological images of OSCC compared to the reference standard were analyzed. Six databases (PubMed, Google Scholar, Scopus, Embase, ArXiv, and IEEE) were screened for publications without any time limitation. The QUADAS-2 tool was utilized to assess quality. The meta-analyses included only studies that reported true positives (TP), true negatives (TN), false positives (FP), and false negatives (FN) in their test sets. Results: Of 1267 screened studies, 17 studies met the final inclusion criteria. DL methods such as image classification (n = 11) and segmentation (n = 3) were used, and some studies used combined methods (n = 3). On QUADAS-2 assessment, only three studies had a low risk of bias across all applicability domains. For segmentation studies, 0.97 was reported for accuracy, 0.97 for sensitivity, 0.98 for specificity, and 0.92 for Dice. For classification studies, accuracy was reported as 0.99, sensitivity 0.99, specificity 1.0, Dice 0.95, F1 score 0.98, and AUC 0.99. Meta-analysis showed pooled estimates of 0.98 sensitivity and 0.93 specificity. Conclusion: Application of AI-based classification and segmentation methods on image analysis represents a fundamental shift in digital pathology. DL approaches demonstrated significantly high accuracy for OSCC detection on histopathology, comparable to that of human experts in some studies. Although AI-based models cannot replace a well-trained pathologist, they can assist through improving the objectivity and repeatability of the diagnosis while reducing variability and human error as a consequence of pathologist burnout. © 2024 John Wiley & Sons A/S. Published by John Wiley & Sons Ltd.