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Does size really matter--using a decision tree approach for comparison of three different databases from the medical field of acute appendicitis.

机译:大小真的重要吗-使用决策树方法比较急性阑尾炎医学领域的三个不同数据库。

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摘要

Decision trees have been successfully used for years in many medical decision making applications. Transparent representation of acquired knowledge and fast algorithms made decision trees one of the most often used symbolic machine learning approaches. This paper concentrates on the problem of separating acute appendicitis, which is a special problem of acute abdominal pain, from other diseases that cause acute abdominal pain by use of an decision tree approach. Early and accurate diagnosing of acute appendicitis is still a difficult and challenging problem in everyday clinical routine. An important factor in the error rate is poor discrimination between acute appendicitis and other diseases that cause acute abdominal pain. This error rate is still high, despite considerable improvements in history-taking and clinical examination, computer-aided decision-support, and special investigation such as ultrasound. We investigated three databases of different size with cases of acute abdominal pain to complete this task as successful as possible. The results show that the size of the database does not necessary directly influence the success of the decision tree built on it. Surprisingly we got the best results from the decision trees built on the smallest and the biggest database, where the database with medium size (relative to the other two) was not so successful. Despite this we were able to produce decision tree classifiers that were capable of producing correct decisions on test data sets with accuracy up to 84%, sensitivity to acute appendicitis up to 90%, and specificity up to 80% on the same test set.
机译:决策树已在许多医疗决策应用程序中成功使用了多年。所获得知识的透明表示和快速算法使决策树成为最常用的符号机器学习方法之一。本文着重于通过决策树方法将急性阑尾炎与其他引起急性腹痛的疾病分开,该问题是急性腹痛的一个特殊问题。在日常临床常规中,急性阑尾炎的早期准确诊断仍然是一个难题。错误率的重要因素是急性阑尾炎与其他引起急性腹痛的疾病之间的区别。尽管在历史记录和临床检查,计算机辅助决策支持以及超声等特殊检查方面有了很大的改进,但错误率仍然很高。我们调查了三个不同大小的数据库,并伴有急性腹痛病例,以尽可能成功地完成此任务。结果表明,数据库的大小并不一定直接影响建立在其上的决策树的成功。令人惊讶的是,在最小和最大的数据库上建立的决策树获得了最佳结果,而中等大小(相对于其他两个)的数据库却没有那么成功。尽管如此,我们仍然能够产生决策树分类器,这些分类器能够对测试数据集做出正确的决策,其准确度高达84%,对急性阑尾炎的敏感性高达90%,而同一测试集的特异性高达80%。

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