The receiver operating characteristic (ROC) curve is a powerful statistical tool and has been widely applied in medical research. In the ROC curve estimation, a commonly used assumption is that larger the biomarker value, greater severity the disease. In this paper, we mathematically interpret ``greater severity of the disease" as ``larger probability of being diseased". This in turn is equivalent to assume the likelihood ratio ordering of the biomarker between the diseased and healthy individuals. With this assumption, we first propose a Bernstein polynomial method to model the distributions of both samples; we then estimate the distributions by the maximum empirical likelihood principle. The ROC curve estimate and the associated summary statistics are obtained subsequently. Theoretically, we establish the asymptotic consistency of our estimators. Via extensive numerical studies, we compare the performance of our method with competitive methods. The application of our method is illustrated by a real-data example.
翻译:接收器操作特征(ROC)曲线是一个强大的统计工具,在医学研究中广泛应用。在ROC曲线估计中,一个常用的假设是,生物标记值越大,该疾病的严重程度就越严重。在本文中,我们用数学将“疾病越严重”解释为“疾病发病可能性越大”。这反过来相当于假设疾病与健康个人之间生物标记的排序概率比。根据这一假设,我们首先建议采用伯尔尼斯坦多元性方法来模拟两种样品的分布;然后我们根据最高经验概率原则估计其分布情况。ROC曲线估计和相关摘要统计随后获得。理论上,我们建立了我们估计器的无症状一致性。通过广泛的数字研究,我们将我们方法的性能与竞争性方法进行比较。我们方法的应用用一个真实数据示例来说明。