Lepper Tatiana Wannmacher, Amaral Luara Nascimento do, Espinosa Ana Laura Ferrares, Guedes Igor Cavalcante, Rönnau Maikel Maciel, Daroit Natália Batista, Haas Alex Nogueira, Visioli Fernanda, Oliveira Neto Manuel Menezes de, Rados Pantelis Varvaki
Universidade Federal do Rio Grande do Sul - UFRGS, School of Dentistry, Department of Oral Pathology, Porto Alegre, RS, Brazil.
Universidade Federal do Rio Grande do Sul - UFRGS, Informatics Institute, Porto Alegre, RS, Brazil.
Braz Oral Res. 2025 May 12;39:e056. doi: 10.1590/1807-3107bor-2025.vol39.056. eCollection 2025.
Oral squamous cell carcinoma (OSCC) remains the most prevalent neoplasm of the head and neck. In recent decades, the incidence and prevalence of OSCC have not significantly changed, highlighting the critical need to develop and implement new risk assessment measures. The present study aimed to define argyrophilic proteins of the nucleolar organizer region (AgNOR) cut-off risk points by oral exfoliative cytological smears comparing specialized humans with a convolutional neural network (CNN) system AgNOR Slide-Image Examiner. This study included four experimental groups: control, exposure to carcinogens (alcohol and tobacco), oral potentially malignant disorders, and OSCC. In the first phase, 50 cells were used for AgNOR quantification. In the second phase, AgNOR quantification was established in an automated manner using an AgNOR System - Slide Examiner (captured - bounding-boxed - CNN analysis). In phase 1, the cut-off point for considering a smear as suspicious was established at 3.69 AgNORs/nucleus with sensitivity of 86%, specificity of 93%, and accuracy of 90%. In phase 2, the analysis of the intraclass correlation coefficient of AgNORs attributed to the system and human was 0.896 (95% confidence interval = 0.875-0.915; p < 0.0001), and this quantification with the CNN was 20 min compared to 67 h, considering human analysis. The AgNOR Slide-Image Examiner successfully differentiated the nuclei and accurately quantified the number of NORs in oral cytological smears. The cut-off risk point of 3.69 AgNOR/nucleus indicates a suspicious sample may contribute to improvements in oral cancer screening.
口腔鳞状细胞癌(OSCC)仍然是头颈部最常见的肿瘤。近几十年来,OSCC的发病率和患病率没有显著变化,这凸显了开发和实施新的风险评估措施的迫切需求。本研究旨在通过口腔脱落细胞学涂片,利用卷积神经网络(CNN)系统AgNOR幻灯片图像检查仪,定义核仁组织区嗜银蛋白(AgNOR)的临界风险点。本研究包括四个实验组:对照组、接触致癌物(酒精和烟草)组、口腔潜在恶性疾病组和OSCC组。在第一阶段,使用50个细胞进行AgNOR定量。在第二阶段,使用AgNOR系统-幻灯片检查仪以自动化方式进行AgNOR定量(捕获-边界框定-CNN分析)。在第一阶段,将涂片视为可疑的临界点设定为3.69个AgNOR/细胞核,灵敏度为86%,特异性为93%,准确率为90%。在第二阶段,系统和人工对AgNOR的组内相关系数分析为0.896(95%置信区间=0.875-0.915;p<0.0001),与人工分析相比,CNN进行这种定量分析需要20分钟,而人工分析需要67小时。AgNOR幻灯片图像检查仪成功地区分了细胞核,并准确地定量了口腔细胞学涂片中NOR的数量。3.69个AgNOR/细胞核的临界风险点表明可疑样本可能有助于改善口腔癌筛查。