Scientific Reports (Jul 2023)

Effectiveness of deep learning classifiers in histopathological diagnosis of oral squamous cell carcinoma by pathologists

  • Shintaro Sukegawa,
  • Sawako Ono,
  • Futa Tanaka,
  • Yuta Inoue,
  • Takeshi Hara,
  • Kazumasa Yoshii,
  • Keisuke Nakano,
  • Kiyofumi Takabatake,
  • Hotaka Kawai,
  • Shimada Katsumitsu,
  • Fumi Nakai,
  • Yasuhiro Nakai,
  • Ryo Miyazaki,
  • Satoshi Murakami,
  • Hitoshi Nagatsuka,
  • Minoru Miyake

DOI
https://doi.org/10.1038/s41598-023-38343-y
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 9

Abstract

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Abstract The study aims to identify histological classifiers from histopathological images of oral squamous cell carcinoma using convolutional neural network (CNN) deep learning models and shows how the results can improve diagnosis. Histopathological samples of oral squamous cell carcinoma were prepared by oral pathologists. Images were divided into tiles on a virtual slide, and labels (squamous cell carcinoma, normal, and others) were applied. VGG16 and ResNet50 with the optimizers stochastic gradient descent with momentum and spectral angle mapper (SAM) were used, with and without a learning rate scheduler. The conditions for achieving good CNN performances were identified by examining performance metrics. We used ROCAUC to statistically evaluate diagnostic performance improvement of six oral pathologists using the results from the selected CNN model for assisted diagnosis. VGG16 with SAM showed the best performance, with accuracy = 0.8622 and AUC = 0.9602. The diagnostic performances of the oral pathologists statistically significantly improved when the diagnostic results of the deep learning model were used as supplementary diagnoses (p-value = 0.031). By considering the learning results of deep learning model classifiers, the diagnostic accuracy of pathologists can be improved. This study contributes to the application of highly reliable deep learning models for oral pathological diagnosis.