Department of Surgical Oncology, John P. Murtha Cancer Center, Walter Reed National Military Medical Center, Bethesda, MD, USA.
Department of Biostatistics, The George Washington University, Washington, DC, USA.
Cancer Med. 2018 Aug;7(8):3611-3621. doi: 10.1002/cam4.1629. Epub 2018 Jul 2.
Integrating additional prognostic factors into the tumor, lymph node, metastasis staging system improves the relative stratification of cancer patients and enhances the accuracy in planning their treatment options and predicting clinical outcomes. We describe a novel approach to build prognostic systems for cancer patients that can admit any number of prognostic factors. In the approach, an unsupervised learning algorithm was used to create dendrograms and the C-index was used to cut dendrograms to generate prognostic groups. Breast cancer data from the Surveillance, Epidemiology, and End Results Program of the National Cancer Institute were used for demonstration. Two relative prognostic systems were created for breast cancer. One system (7 prognostic groups with C-index = 0.7295) was based on tumor size, regional lymph nodes, and no distant metastasis. The other system (7 prognostic groups with C-index = 0.7458) was based on tumor size, regional lymph nodes, no distant metastasis, grade, estrogen receptor, progesterone receptor, and age. The dendrograms showed a relationship between survival and prognostic factors. The proposed approach is able to create prognostic systems that have a good accuracy in survival prediction and provide a manageable number of prognostic groups. The prognostic systems have the potential to permit a thorough database analysis of all information relevant to decision-making in patient management and prognosis.
将额外的预后因素纳入肿瘤、淋巴结、转移分期系统可以改善癌症患者的相对分层,并提高治疗方案规划和临床结果预测的准确性。我们描述了一种构建癌症患者预后系统的新方法,该方法可以接受任意数量的预后因素。在该方法中,使用无监督学习算法创建树状图,并使用 C 指数来切割树状图以生成预后组。使用美国国家癌症研究所监测、流行病学和最终结果计划的乳腺癌数据进行演示。为乳腺癌创建了两个相对预后系统。一个系统(7 个预后组,C 指数=0.7295)基于肿瘤大小、区域淋巴结和无远处转移。另一个系统(7 个预后组,C 指数=0.7458)基于肿瘤大小、区域淋巴结、无远处转移、分级、雌激素受体、孕激素受体和年龄。树状图显示了生存与预后因素之间的关系。所提出的方法能够创建具有良好生存预测准确性的预后系统,并提供可管理数量的预后组。这些预后系统有可能允许对与患者管理和预后决策相关的所有信息进行全面的数据库分析。