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Diagnosis System for Predicting Bladder Cancer Recurrence Using Association Rules and Decision Trees

机译:关联规则和决策树的膀胱癌复发诊断系统

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In this work we present two methods based on Association Rules (ARs) 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. ARs are generated from each training set using an associative classification approach. The rules' uncertainty is represented by a confidence degree. 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 first proposed classification method uses these ARs to predict the bladder cancer recurrence. The second one combines ARs and decision tree: the original base of ARs is enriched by the rules generated from a decision tree. Experimental results are very satisfactory, at least with the AR's method. 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,我们提出了两种基于关联规则(ARs)的膀胱癌复发预测方法。我们的目标是提供一种一方面易于理解,另一方面又具有高灵敏度的系统。由于数据在各个类之间分布不均,并且错误成本是不对称的,因此我们建议分别处理重复发生和不重复发生的情况。使用关联的分类方法从每个训练集中生成AR。规则的不确定性由置信度表示。低强度的几种症状可以相互补充和相辅相成。由于集合函数增强了解雇规则的置信度,因此将这种现象考虑在内。首先提出的分类方法使用这些AR来预测膀胱癌的复发。第二个结合了AR和决策树:从决策树生成的规则丰富了AR的原始基础。至少使用AR方法,实验结果非常令人满意。与其他方法相比,灵敏度提高了。此外,还向肿瘤科医生提供了有趣的提取知识。

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