首页> 外文会议>2012 IEEE international conference on computational intelligence for measurement systems and applications >Analysis of how the choice of Machine Learning algorithms affects the prediction of a clinical outcome prior to minimally invasive treatments for Benign Pro Static Hyperplasia BPH
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Analysis of how the choice of Machine Learning algorithms affects the prediction of a clinical outcome prior to minimally invasive treatments for Benign Pro Static Hyperplasia BPH

机译:在进行良性前列腺增生BPH微创治疗之前,机器学习算法的选择如何影响临床结果的预测分析

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Benign Pro Static Hyperplasia (BPH) is estimated to effect 50% of men by the age of 50, and 75% by the age of 80. Predicting a clinical outcome prior to minimally invasive treatments for BPH would be very useful, but has not been reliable in spite of multiple assessment parameters such as symptom indices and flow rates. I our prior work we have shown the effect of greater impact feature selection has on prediction of the BPH clinical outcomes. In this work we take an in depth look at how changes to the Artificial Intelligence and Machine Learning methods can have an affect on how well the process does at predicting the outcome of the patients in the testing group. The affect of which classifier is used, to predict BPH surgical outcomes, is investigated to see if certain classifiers perform better with the data. The affect of which metric is selected for analyzing the performance of the classifier prediction is also observed. The affect of which features and how many are selected to train and predict the data is observed. Finally, the affect of using the original, unchanged, date versus a discretized version of the data is also observed. The objective in this paper is to determine, in this case, which of the above-mentioned factors affect the outcome of the predictive models, to allow the best factor selection in each case so that the best predictive method of NPH for this data, can be determined. In particular, the data is analyzed to determine if some of these factors have a larger effect on the outcome than others. Through experimental results we show which and how some factors are found to have no real influence on clinical outcome prediction, and show how in some other cases there are a few equally good choices. Here four machine learning algorithms, namely Decision Tree, Naïve Bayse, LDA, and ADABoost are selected and used in the comparison. For prediction performance metrics comparison we use the Area Under the Curve (AUC), Accuracy (ACC), and the Mat- hew Correlation Coefficient (MCC). Both internal cross-validation and external validation are used to analyze the performance and results of the predictive models considered.
机译:据估计,良性前列腺增生症(BPH)可以在50岁时影响50%的男性,在80岁时影响75%的男性。在对BPH进行微创治疗之前预测临床结局将非常有用,但尚未成功尽管有多种评估参数,例如症状指标和流速,但仍可靠。在我们先前的工作中,我们已经显示出更多的特征选择对BPH临床结局的预测具有影响。在这项工作中,我们将深入研究人工智能和机器学习方法的变化如何影响该过程在预测测试组患者预后方面的效果。研究了使用哪个分类器来预测BPH手术结果的影响,以查看某些分类器是否在数据方面表现更好。还观察到选择了哪个度量来分析分类器预测性能的影响。观察哪些特征以及选择哪些特征来训练和预测数据的影响。最后,还观察到使用原始的,未更改的日期与离散版本的数据的影响。本文的目的是在这种情况下,确定上述因素中的哪些因素会影响预测模型的结果,以便在每种情况下都能选择最佳因素,以便能够针对该数据使用NPH的最佳预测方法被确定。特别是,分析数据以确定这些因素中的某些因素是否对结果影响更大。通过实验结果,我们表明发现哪些因素以及如何发现这些因素对临床结果预测没有真正的影响,并表明在其他一些情况下如何有一些同样好的选择。在这里,选择了四种机器学习算法,即决策树,朴素贝叶斯,LDA和ADABoost,并在比较中使用。对于预测性能指标比较,我们使用曲线下面积(AUC),准确性(ACC)和Mathew相关系数(MCC)。内部交叉验证和外部验证均用于分析所考虑的预测模型的性能和结果。

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