Deep learning approach to detect high-risk oral epithelial dysplasia: A step towards computer-assisted dysplasia grading

IF 0.4 Q4 BIOLOGY Advances in Human Biology Pub Date : 2023-01-01 DOI:10.4103/aihb.aihb_30_22
C. Nandini, S. Basha, Aarchi Agarawal, R. Neelampari, KrishnaP Miyapuram, R. Nileshwariba
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Abstract

Introduction: Oral epithelial dysplasia (OED) is associated with high interobserver and intraobserver disagreement. With the exponential increase in the applicability of artificial intelligence tools such as deep learning (DL) in pathology, it would now be possible to achieve high accuracy and objectivity in grading of OED. In this research work, we have proposed a DL approach to epithelial dysplasia grading by creating a convolutional neural network (CNN) model from scratch. Materials and Methods: The dataset includes 445 high-resolution ×400 photomicrographs captured from histopathologically diagnosed cases of high-risk dysplasia (HR) and normal buccal mucosa (NBM) that were used to train, validate and test the two-dimensional CNN (2DCNN) model. Results: The whole dataset was divided into 60% training set, 20% validation set and 20% test set. The model achieved training accuracy of 97.21%, validation accuracy of 90% and test accuracy of 91.30%. Conclusion: The DL model was able to distinguish between normal epithelium and HR epithelial dysplasia with high grades of accuracy. These results are encouraging for researchers to formulate DL models to grade and classify OED using various grading systems.
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检测高危口腔上皮发育不良的深度学习方法:迈向计算机辅助发育不良分级的一步
引言:口腔上皮发育不良(OED)与观察者之间和观察者内部的高度分歧有关。随着深度学习(DL)等人工智能工具在病理学中的适用性呈指数级增长,现在有可能实现OED评分的高准确性和客观性。在这项研究工作中,我们通过从头开始创建卷积神经网络(CNN)模型,提出了一种上皮发育不良分级的DL方法。材料和方法:数据集包括445张高分辨率×400的显微照片,这些照片来自组织病理学诊断的高危发育不良(HR)和正常颊粘膜(NBM)病例,用于训练、验证和测试二维CNN(2DCNN)模型。结果:整个数据集分为60%的训练集、20%的验证集和20%的测试集。该模型的训练准确率为97.21%,验证准确率为90%,测试准确率为91.30%。这些结果鼓励研究人员制定DL模型,使用各种评分系统对OED进行评分和分类。
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审稿时长
11 weeks
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