Suppr超能文献

决策树和自动学习在现实世界医疗决策中的局限性。

The limitations of decision trees and automatic learning in real world medical decision making.

作者信息

Zorman M, Stiglic M M, Kokol P, Malcić I

机构信息

Faculty of Electrical Engineering and Computer Science, Maribor, Slovenia.

出版信息

J Med Syst. 1997 Dec;21(6):403-15. doi: 10.1023/a:1022876330390.

Abstract

The decision tree approach is one of the most common approaches in automatic learning and decision making. The automatic learning of decision trees and their use usually show very good results in various "theoretical" environments. But in real life it is often impossible to find the desired number of representative training objects for various reasons. The lack of possibilities to measure attribute values, high cost and complexity of such measurements, and unavailability of all attributes at the same time are the typical representatives. For this reason we decided to use the decision trees not for their primary task--the decision making--but for outlining the most important attributes. This was possible by using a well-known property of the decision trees--their knowledge representation, which can be easily understood by humans. In a delicate field of medical decision making, we cannot allow ourselves to make any inaccurate decisions and the "tips," provided by the decision trees, can be of a great assistance. Our main interest was to discover a predisposition to two forms of acidosis: the metabolic acidosis and respiratory acidosis, which can both have serious effects on child's health. We decided to construct different decision trees from a set of training objects. Instead of using a test set for evaluation of a decision tree, we asked medical experts to take a closer look at the generated trees. They examined and evaluated the decision trees branch by branch. Their comments show that trees generated from the available training set mainly have surprisingly good branches, but on the other hand, for some, no medical explanation could be found.

摘要

决策树方法是自动学习和决策中最常用的方法之一。决策树的自动学习及其应用在各种“理论”环境中通常都能取得很好的效果。但在现实生活中,由于各种原因,往往无法找到所需数量的具有代表性的训练对象。缺乏测量属性值的可能性、此类测量的高成本和复杂性以及所有属性不能同时获取是典型的代表原因。因此,我们决定不将决策树用于其主要任务——决策,而是用于勾勒出最重要的属性。这可以通过利用决策树的一个众所周知的特性——它们的知识表示来实现,这种知识表示很容易被人类理解。在医学决策这个微妙的领域,我们不能允许自己做出任何不准确的决策,而决策树提供的“提示”会有很大帮助。我们主要感兴趣的是发现两种酸中毒形式的易感性:代谢性酸中毒和呼吸性酸中毒,这两种酸中毒都可能对儿童健康产生严重影响。我们决定从一组训练对象构建不同的决策树。我们没有使用测试集来评估决策树,而是请医学专家仔细查看生成的树。他们逐分支地检查和评估决策树。他们的评论表明,从可用训练集生成的树主要有出奇好的分支,但另一方面,有些分支找不到医学解释。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验