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Association rule discovery with the train and test approach for heart disease prediction

机译:关联规则发现与用于心脏病预测的训练和测试方法

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Association rules represent a promising technique to improve heart disease prediction. Unfortunately, when association rules are applied on a medical data set, they produce an extremely large number of rules. Most of such rules are medically irrelevant and the time required to find them can be impractical. A more important issue is that, in general, association rules are mined on the entire data set without validation on an independent sample. To solve these limitations, we introduce an algorithm that uses search constraints to reduce the number of rules, searches for association rules on a training set, and finally validates them on an independent test set. The medical significance of discovered rules is evaluated with support, confidence, and lift. Association rules are applied on a real data set containing medical records of patients with heart disease. In medical terms, association rules relate heart perfusion measurements and risk factors to the degree of disease in four specific arteries. Search constraints and test set validation significantly reduce the number of association rules and produce a set of rules with high predictive accuracy. We exhibit important rules with high confidence, high lift, or both, that remain valid on the test set on several runs. These rules represent valuable medical knowledge.
机译:关联规则代表了改善心脏病预测的一项有前途的技术。不幸的是,将关联规则应用于医疗数据集时,它们会产生大量规则。大多数此类规则在医学上都不相关,因此找到它们所需的时间可能不切实际。一个更重要的问题是,通常在不对独立样本进行验证的情况下,在整个数据集上挖掘关联规则。为了解决这些限制,我们引入了一种算法,该算法使用搜索约束来减少规则数量,在训练集上搜索关联规则,最后在独立的测试集上对其进行验证。已发现规则的医学意义通过支持,信心和提升来评估。关联规则应用于包含心脏病患者病历的真实数据集。用医学术语来说,关联规则将心脏灌注测量和危险因素与四个特定动脉的疾病程度相关联。搜索约束和测试集验证显着减少了关联规则的数量,并产生了具有较高预测准确性的规则集。我们展示出具有高置信度和/或高升力的重要规则,这些规则在多次运行的测试集中仍然有效。这些规则代表了宝贵的医学知识。

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