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Modified Logistic Regression Models Using Gene Coexpression and Clinical Features to Predict Prostate Cancer Progression

机译:使用基因共表达和临床特征来预测前列腺癌进展的修改逻辑回归模型

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Predicting disease progression is one of the most challenging problems in prostate cancer research. Adding gene expression data to prediction models that are based on clinical features has been proposed to improve accuracy. In the current study, we applied a logistic regression (LR) model combining clinical features and gene co-expression data to improve the accuracy of the prediction of prostate cancer progression. The top-scoring pair (TSP) method was used to select genes for the model. The proposed models not only preserved the basic properties of the TSP algorithm but also incorporated the clinical features into the prognostic models. Based on the statistical inference with the iterative cross validation, we demonstrated that prediction LR models that included genes selected by the TSP method provided better predictions of prostate cancer progression than those using clinical variables only and/or those that included genes selected by the one-gene-at-a-time approach. Thus, we conclude that TSP selection is a useful tool for feature (and/or gene) selection to use in prognostic models and our model also provides an alternative for predicting prostate cancer progression.
机译:预测疾病进展是前列腺癌研究中最具挑战性问题之一。已经提出将基因表达数据添加到基于临床特征的预测模型以提高精度。在目前的研究中,我们应用了临床特征和基因共同表达数据的逻辑回归(LR)模型,提高了前列腺癌进展预测的准确性。级评分对(TSP)方法用于选择模型的基因。所提出的模型不仅保留了TSP算法的基本性质,还包括临床特征进入预后模型。基于迭代交叉验证的统计推断,我们证明包括由TSP方法选择的基因的预测LR模型提供了比使用临床变量的前列腺癌进展的更好预测和/或包括所选择的基因的那些。基因 - at-a-time方法。因此,我们得出结论,TSP选择是用于在预后模型中使用的特征(和/或基因)选择的有用工具,我们的模型还提供了预测前列腺癌进展的替代方案。

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