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Diagnosic system for predicting bladder cancer recurrence using association rules

机译:使用关联规则预测膀胱癌复发的诊断系统

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In this work we present a method based on association rules for the prediction of bladder cancer recurrence. Our objective is to provide a system which is on one hand comprehensible and on the other hand with a high sensitivity. Since data are not equitably distributed among the classes and since errors costs are asymmetric, we propose to handle separately the cases of recurrence and those of no-recurrence. Association rules are generated from each training set, using CBA algorithm, an associative classification approach. To represent the rules uncertainty, each rule is accompanied by a confidence degree estimated during the generation phase. Several symptoms of low intensity can be complementary and mutually reinforcing. This phenomenon is taken into account thanks to aggregate functions which strengthen the confidence degrees of the fired rules. The experimental results are very satisfactory and the sensibility rates are improved in comparison with some other approaches. In addition, interesting extracted knowledge was provided to oncologists.
机译:在这项工作中,我们提出了一种基于膀胱癌复发预测的关联规则的方法。我们的目标是提供一种系统,一方面是可理解的,另一方面具有高灵敏度。由于数据不可公平地分布在类中并且由于错误成本不对称,因此我们建议分别处理复发和无复发的案例。协会规则是从每个训练集生成的,使用CBA算法,联想分类方法。要代表规则不确定性,每条规则都伴随着在一起期间估计的置信度。低强度的几种症状可以是互补的和相互加强的。由于汇总函数,这一现象被考虑到加强燃烧规则的置信度。实验结果非常令人满意,与其他一些方法相比,敏感性率得到改善。此外,有趣的提取知识被提供给肿瘤学家。

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