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Quantitative Risk Stratification of Oral Leukoplakia with Exfoliative Cytology

机译:脱落细胞学定量分析口腔白斑的量化风险分层

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摘要

Exfoliative cytology has been widely used for early diagnosis of oral squamous cell carcinoma (OSCC). Test outcome is reported as “negative”, “atypical” (defined as abnormal epithelial changes of uncertain diagnostic significance), and “positive” (defined as definitive cellular evidence of epithelial dysplasia or carcinoma). The major challenge is how to properly manage the “atypical” patients in order to diagnose OSCC early and prevent OSCC. In this study, we collected exfoliative cytology data, histopathology data, and clinical data of normal subjects (n=102), oral leukoplakia (OLK) patients (n=82), and OSCC patients (n=93), and developed a data analysis procedure for quantitative risk stratification of OLK patients. This procedure involving a step called expert-guided data transformation and reconstruction (EdTAR) which allows automatic data processing and reconstruction and reveals informative signals for subsequent risk stratification. Modern machine learning techniques were utilized to build statistical prediction models on the reconstructed data. Among the several models tested using resampling methods for parameter pruning and performance evaluation, Support Vector Machine (SVM) was found to be optimal with a high sensitivity (median>0.98) and specificity (median>0.99). With the SVM model, we constructed an oral cancer risk index (OCRI) which may potentially guide clinical follow-up of OLK patients. One OLK patient with an initial OCRI of 0.88 developed OSCC after 40 months of follow-up. In conclusion, we have developed a statistical method for qualitative risk stratification of OLK patients. This method may potentially improve cost-effectiveness of clinical follow-up of OLK patients, and help design clinical chemoprevention trial for high-risk populations.
机译:脱落细胞学已广泛用于口腔鳞状细胞癌(OSCC)的早期诊断。测试结果报告为“阴性”,“非典型”(定义为具有不确定诊断意义的异常上皮改变)和“阳性”(定义为上皮发育不良或癌的确定性细胞证据)。主要挑战是如何正确管理“非典型”患者,以便及早诊断OSCC和预防OSCC。在这项研究中,我们收集了正常受试者(n = 102),口腔白斑(OLK)患者(n = 82)和OSCC患者(n = 93)的脱落细胞学数据,组织病理学数据和临床数据,并开发了数据OLK患者定量风险分层的分析程序。此过程涉及一个称为专家指导的数据转换和重建(EdTAR)的步骤,该步骤允许自动进行数据处理和重建,并为后续的风险分层提供有用的信号。现代机器学习技术被用来在重建数据上建立统计预测模型。在使用重采样方法进行参数修剪和性能评估的多个模型中,支持向量机(SVM)被认为是最佳的,具有高灵敏度(中位数> 0.98)和特异性(中位数> 0.99)。利用SVM模型,我们构建了口腔癌风险指数(OCRI),该指数可能会指导OLK患者的临床随访。一名OCK初始OCRI为0.88的OLK患者在随访40个月后发展为OSCC。总之,我们已经开发了一种用于OLK患者的定性风险分层的统计方法。这种方法可能会提高OLK患者临床随访的成本效益,并有助于设计针对高危人群的临床化学预防试验。

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