Department of Pathology, Feinberg School of Medicine, Northwestern University, Chicago, Illinois.
Department of Pathology, Beaumont Hospital, Royal Oak, Michigan.
J Mol Diagn. 2022 Aug;24(8):924-934. doi: 10.1016/j.jmoldx.2022.04.009. Epub 2022 May 21.
The 2021 WHO Classification of Tumors of the Central Nervous System includes several tumor types and subtypes for which the diagnosis is at least partially reliant on utilization of whole genome methylation profiling. The current approach to array DNA methylation profiling utilizes a reference library of tumor DNA methylation data, and a machine learning-based tumor classifier. This approach was pioneered and popularized by the German Cancer Research Network (DKFZ) and University Hospital Heidelberg. This research group has kindly made their classifier for central nervous system tumors freely available as a research tool via a web-based portal. However, their classifier is not maintained in a clinical testing environment. Therefore, the Northwestern Medicine (NM) classifier was developed and validated. The NM classifier was validated using the same training and validation data sets as the DKFZ group. Using the DKFZ validation data set, the NM classifier's performance showed high concordance (92%) and comparable accuracy (specificity 94.0% versus 84.9% for DKFZ, sensitivity 88.6% versus 94.7% for DKFZ). Receiver-operator characteristic curves showed areas under the curve of 0.964 versus 0.966 for NM and DKFZ classifiers, respectively. In addition, in-house validation was performed and performance was compared using both classifiers. The NM classifier performed comparably well and is currently offered for clinical testing.
2021 年世界卫生组织中枢神经系统肿瘤分类包括几种肿瘤类型和亚型,其诊断至少部分依赖于全基因组甲基化谱分析的应用。目前,用于 DNA 甲基化谱分析的阵列方法利用肿瘤 DNA 甲基化数据的参考库和基于机器学习的肿瘤分类器。这种方法是由德国癌症研究中心(DKFZ)和海德堡大学医院开创并推广的。该研究小组通过基于网络的门户,将其用于中枢神经系统肿瘤的分类器作为研究工具免费提供。然而,他们的分类器未在临床检测环境中维护。因此,开发并验证了西北医学(NM)分类器。NM 分类器使用与 DKFZ 小组相同的训练和验证数据集进行验证。使用 DKFZ 验证数据集,NM 分类器的性能显示出高度一致性(92%)和可比的准确性(特异性:DKFZ 为 94.0%,NM 为 94.7%;敏感性:DKFZ 为 88.6%,NM 为 88.6%)。受试者工作特征曲线显示 NM 分类器和 DKFZ 分类器的曲线下面积分别为 0.964 和 0.966。此外,还进行了内部验证,并使用两个分类器进行了性能比较。NM 分类器的性能相当好,目前可用于临床检测。