Abstract

Simple SummaryAn established dataset of histopathology images obtained by biopsy and reviewed by two pathologists is used to create a two-stage oral squamous cell carcinoma diagnostic AI-based system. In the first stage, automated multiclass grading of OSCC is performed to improve the objectivity and reproducibility of histopathological examination. Furthermore, in the second stage, semantic segmentation of OSCC on epithelial and stromal tissue is performed in order to assist the clinician in discovering new informative features. Proposed AI-system based on deep convolutional neural networks and preprocessing methods achieved satisfactory results in terms of multiclass grading and segmenting. This research is the first step in analysing the tumor microenvironment, i.e., tumor-stroma ratio and segmentation of the microenvironment cells.Oral squamous cell carcinoma is most frequent histological neoplasm of head and neck cancers, and although it is localized in a region that is accessible to see and can be detected very early, this usually does not occur. The standard procedure for the diagnosis of oral cancer is based on histopathological examination, however, the main problem in this kind of procedure is tumor heterogeneity where a subjective component of the examination could directly impact patient-specific treatment intervention. For this reason, artificial intelligence (AI) algorithms are widely used as computational aid in the diagnosis for classification and segmentation of tumors, in order to reduce inter- and intra-observer variability. In this research, a two-stage AI-based system for automatic multiclass grading (the first stage) and segmentation of the epithelial and stromal tissue (the second stage) from oral histopathological images is proposed in order to assist the clinician in oral squamous cell carcinoma diagnosis. The integration of Xception and SWT resulted in the highest classification value of 0.963 (σ = 0.042) AUCmacro and 0.966 (σ = 0.027) AUCmicro while using DeepLabv3+ along with Xception_65 as backbone and data preprocessing, semantic segmentation prediction resulted in 0.878 (σ = 0.027) mIOU and 0.955 (σ = 0.014) F1 score. Obtained results reveal that the proposed AI-based system has great potential in the diagnosis of OSCC.

Highlights

  • Cancer is a major public health problem and the second leading cause of death in the developed world

  • The first experimental results are achieved with Xception, ResNet50, ResNet101, and MobileNetv2 architectures which are pre-trained on ImageNet

  • stationary wavelet transform (SWT) decomposition of an image at level one using Haar wavelet is shown in According to the results presented in Table 5, Xception_65 was used as DeepLabv3+

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Summary

Introduction

Cancer is a major public health problem and the second leading cause of death in the developed world. The tumornode-metastasis (TNM) staging is widely used in the prognosis, treatment plan, and prediction outcomes of oral cancer in patients with OSCC. The main problem in using histopathological examination for tumor differentiation, and like prognostic factor, is the subjective component of the examination, respectively inter- and intra-observer variability [9]. Respectively reducing inter- and intra-observer variability using Artificial Intelligence (AI) algorithms could directly impact patient-specific treatment intervention by identifying patients’ outcomes. It could assist the pathologist in terms of reducing the load of manual inspections as well as making fast decisions with higher precision

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