Musulin Jelena, Štifanić Daniel, Zulijani Ana, Ćabov Tomislav, Dekanić Andrea, Car Zlatan
Faculty of Engineering, University of Rijeka, Vukovarska 58, 51000 Rijeka, Croatia.
Department of Oral Surgery, Clinical Hospital Center Rijeka, Krešimirova Ul. 40, 51000 Rijeka, Croatia.
Cancers (Basel). 2021 Apr 8;13(8):1784. doi: 10.3390/cancers13081784.
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.
口腔鳞状细胞癌是头颈癌中最常见的组织学肿瘤,尽管它位于易于观察且能很早被检测到的区域,但这种情况通常并未发生。口腔癌诊断的标准程序基于组织病理学检查,然而,这类程序的主要问题是肿瘤异质性,检查中的主观因素可能直接影响针对患者的治疗干预。因此,人工智能(AI)算法被广泛用作肿瘤诊断分类和分割的计算辅助工具,以减少观察者间和观察者内的变异性。在本研究中,提出了一种基于AI的两阶段系统,用于从口腔组织病理学图像中自动进行多类分级(第一阶段)以及上皮和基质组织的分割(第二阶段),以协助临床医生进行口腔鳞状细胞癌的诊断。Xception和SWT的集成在使用DeepLabv3 +以及Xception_65作为主干并进行数据预处理时,得到了最高分类值,AUCmacro为0.963(σ = 0.042),AUCmicro为0.966(σ = 0.027),语义分割预测的mIOU为0.878(σ = 0.027),F1得分为0.955(σ = 0.014)。获得的结果表明,所提出的基于AI的系统在口腔鳞状细胞癌的诊断中具有巨大潜力。