基于SEER数据库的乳腺癌生存预测模型验证

Yu-Chieh Chen, H. Lai, Wen-Ching Wang, Y. Kuo
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引用次数: 3

摘要

目的:准确估计乳腺癌术后患者的预后是个体化治疗、决策和患者咨询过程的重要组成部分。乳腺癌患者的疾病结局和预后可能因地理和种族因素而异。为了阐明这一主题,我们基于临床和病理变量创建了一个新的乳腺癌患者预后和预测模型。研究设计和背景:收集1587例接受手术干预的乳腺癌患者的临床和病理资料。生存预测模型用于分析变量的最佳组合。应用于独立验证数据集的受试者工作特征(ROC)曲线下的面积作为准确性的度量。将ROC曲线下面积与SEER数据库进行比较,评估结果。结果:我们的生存预测模型预测了个体乳腺癌患者的疾病结局。我们的预测模型与SEER数据库的比较表明,我们的模型低估了SEER队列的结果,而SEER模型高估了乳腺癌患者的结果。结论:我们的模型可能为乳腺癌患者提供一种个性化的预后工具。关于生存预测的决定应该考虑到区域和种族因素。
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Validation of Breast Cancer Survival Prediction Model with SEER Database
Objective: The accurate estimation of outcome in postoperative breast cancer patients is an essential component of the individualized treatment, decision-making, and patient counseling processes. The disease outcome and prognosis of breast cancer patients may vary according to geographic and ethnic factors. To clarify this topic, we created a new prognostic and predictive model for breast cancer patients, based on clinical and pathological variables. Study design and setting: Clinical and pathological data were collected from 1587 patients with breast cancer who underwent surgical intervention. A survival prediction model was used to allow the analysis of the optimal combination of variables. The area under the receiver operating characteristic (ROC) curve, as applied to an independent validation data set, was used as the measure of accuracy. Results were assessed by comparing the area under the ROC curve with the SEER database. Results: Our predictive model of survival predicted disease outcome for individual patients with breast cancer. The comparison between our predictive model and SEER databases showed that our model underestimated outcome in the SEER cohort and that the SEER model overestimated outcome in our breast cancer patients. Conclusion: Our model may present an alternative as personalized prognostic tool for breast cancer patients. Decision regarding the survival prediction should take every consideration about regional and racial factors into account.
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