首页> 外文期刊>Oral oncology >Moderate predictive value of demographic and behavioral characteristics for a diagnosis of HPV16-positive and HPV16-negative head and neck cancer.
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Moderate predictive value of demographic and behavioral characteristics for a diagnosis of HPV16-positive and HPV16-negative head and neck cancer.

机译:人口统计学和行为特征的中等预测价值对HPV16阳性和HPV16阴性的头颈癌的诊断。

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摘要

Patients with HPV-positive and HPV-negative head and neck squamous cell carcinoma (HNSCC) are significantly different with regard to sociodemographic and behavioral characteristics that clinicians may use to assume tumor HPV status. Machine learning methods were used to evaluate the predictive value of patient characteristics and laboratory biomarkers of HPV exposure for a diagnosis of HPV16-positive HNSCC compared to in situ hybridization, the current gold-standard. Models that used a combination of demographic characteristics such as age, tobacco use, gender, and race had only moderate predictive value for tumor HPV status among all patients with HNSCC (positive predictive value [PPV]=75%, negative predictive value [NPV]=68%) or when limited to oropharynx cancer patients (PPV=55%, NPV=65%) and thus included a sizeable number of false positive and false negative predictions. Prediction was not improved by the addition of other demographic or behavioral factors (sexual behavior, income, education) or biomarkers of HPV16 exposure (L1, E6/7 antibodies or DNA in oral exfoliated cells). Patient demographic and behavioral characteristics as well as HPV biomarkers are not an accurate substitute for clinical testing of tumor HPV status.
机译:HPV阳性和HPV阴性的头颈部鳞状细胞癌(HNSCC)患者在社会人口统计学和行为特征方面存在显着差异,临床医生可将其用于假设肿瘤HPV状态。与目前的金标准原位杂交相比,机器学习方法用于评估患者特征的预测价值和HPV暴露的实验室生物标记物对HPV16阳性HNSCC的诊断。在所有HNSCC患者中,结合人口统计学特征(例如年龄,吸烟习惯,性别和种族)的模型对肿瘤HPV状态仅具有中等预测值(阳性预测值[PPV] = 75%,阴性预测值[NPV] = 68%)或仅限于口咽癌患者(PPV = 55%,NPV = 65%),因此包括相当数量的假阳性和假阴性预测。通过添加其他人口统计学或行为因素(性行为,收入,学历)或HPV16暴露生物标志物(口腔脱落细胞中的L1,E6 / 7抗体或DNA),无法改善预测。患者的人口统计和行为特征以及HPV生物标志物不能准确替代肿瘤HPV状态的临床检测。

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