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首页> 外文期刊>Advances in Breast Cancer Research >Survival Analysis for a Breast Cancer Data Set
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Survival Analysis for a Breast Cancer Data Set

机译:乳腺癌数据集的生存分析

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A survival analysis on a data set of 295 early breast cancer patients is performed in this study. A new proportional hazards model, hypertabastic model was applied in the survival analysis. We assume a proportional hazards model, and select two sets of risk factors for death and metastasis for breast cancer patients respectively by using standard variable selection methods. To evaluate the performance of the new model and compare it with other popular distributions, Cox, Weibull and log-logistic models were fitted to the data besides the hypertabastic model. Result shows that the hypertabastic proportional hazards model outperformed all the comparison models and provided the best fit for the breast cancer data. In addition, we observed that the gene expression variable, wound response signature, combined with other clinical variables, can provide an effective model to predict the overall survival and hazard rate for breast cancer patients.
机译:在这项研究中,对295名早期乳腺癌患者的数据集进行了生存分析。在生存分析中采用了一种新的比例风险模型,即超灾变模型。我们假设一个比例风险模型,并使用标准变量选择方法分别选择两组乳腺癌患者死亡和转移的危险因素。为了评估新模型的性能并将其与其他流行的发行版进行比较,除了超重模型之外,还对数据进行了Cox,Weibull和log-logistic模型的拟合。结果表明,超灾变比例风险模型优于所有比较模型,并最适合乳腺癌数据。此外,我们观察到基因表达变量,伤口反应特征以及其他临床变量可以为预测乳腺癌患者的整体生存率和危险率提供有效的模型。

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