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Subgroup Discovery for Test Selection: A Novel Approach and Its Application to Breast Cancer Diagnosis

机译:测试选择的亚组发现:一种新的方法及其在乳腺癌诊断中的应用

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We propose a new approach to test selection based on the discovery of subgroups of patients sharing the same optimal test, and present its application to breast cancer diagnosis. Subgroups are defined in terms of background information about the patient. We automatically determine the best t subgroups a patient belongs to, and decide for the test proposed by their majority. We introduce the concept of prediction quality to measure how accurate the test outcome is regarding the disease status. The quality of a subgroup is then the best mean prediction quality of its members (choosing the same test for all). Incorporating the quality computation in the search heuristic enables a significant reduction of the search space. In experiments on breast cancer diagnosis data we showed that it is faster than the baseline algorithm APRIORI-SD while preserving its accuracy.
机译:我们提出了一种基于分享相同最佳试验的患者的亚组的测试选择的新方法,并呈现其在乳腺癌诊断中的应用。亚组在关于患者的背景信息方面定义。我们自动确定患者所属的最佳T子组,并决定其大多数人提出的测试。我们介绍了预测质量的概念,以测量测试结果对疾病状况的准确程度。子组的质量是其成员的最佳平均预测质量(为所有人选择相同的测试)。在搜索启发式中包含质量计算可以显着减少搜索空间。在乳腺癌诊断数据的实验中,我们表明它比基线算法Apriori-SD更快,同时保留其精度。

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