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Application of Bayesian Logistic Regression to Mining Biomedical Data

机译:贝叶斯逻辑回归在生物医学数据挖掘中的应用

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摘要

Mining high dimensional biomedical data with existing classifiers is challenging and the predictions are often inaccurate. We investigated the use of Bayesian Logistic Regression (B-LR) for mining such data to predict and classify various disease conditions. The analysis was done on twelve biomedical datasets with binary class variables and the performance of B-LR was compared to those from other popular classifiers on these datasets with 10-fold cross validation using the WEKA data mining toolkit. The statistical significance of the results was analyzed by paired two tailed t-tests and non-parametric Wilcoxon signed-rank tests. We observed overall that B-LR with non-informative Gaussian priors performed on par with other classifiers in terms of accuracy, balanced accuracy and AUC. These results suggest that it is worthwhile to explore the application of B-LR to predictive modeling tasks in bioinformatics using informative biological prior probabilities. With informative prior probabilities, we conjecture that the performance of B-LR will improve.
机译:使用现有的分类器来挖掘高维生物医学数据具有挑战性,并且预测往往不准确。我们调查了使用贝叶斯逻辑回归(B-LR)来挖掘此类数据以预测和分类各种疾病的情况。该分析是在具有二进制分类变量的十二个生物医学数据集上进行的,使用WEKA数据挖掘工具包将B-LR的性能与这些数据集上其他流行分类器的性能进行了十倍交叉验证。通过配对的两个尾部t检验和非参数Wilcoxon符号秩检验,分析了结果的统计显着性。我们总体上观察到,在准确性,平衡准确性和AUC方面,具有非信息性高斯先验的B-LR在性能上与其他分类器相当。这些结果表明,有必要探索B-LR在使用信息性先验概率的生物信息学中的预测建模任务中的应用。有了先验的概率,我们推测B-LR的性能将会提高。

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