首页> 外文会议>2011 IEEE International Conference on Fuzzy Systems >Predicting septic shock outcomes in a database with missing data using fuzzy modeling: Influence of pre-processing techniques on real-world data-based classification
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Predicting septic shock outcomes in a database with missing data using fuzzy modeling: Influence of pre-processing techniques on real-world data-based classification

机译:使用模糊建模预测缺少数据的数据库中的败血性休克结果:预处理技术对基于实际数据的分类的影响

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Real-world databases often contain missing data and existing correction algorithms deliver varying performance. Also, most modeling techniques are not suitable to deal with them automatically. In this study we examine different approaches to predicting septic shock in the presence of missing data. Some preprocessing techniques for managing missing data include disregarding data, or replacing it with information that by design introduces bias. In this study, we show that predictive performance improves by employing a minimum pre-processing technique, the Zero-Order-Hold (ZOH) method, by applying a Fuzzy C-Means clustering technique based on the partial distance calculation strategy (FCM-PDS) and by computing the final classification regarding the samples from each patient. Performance improvements continue to occur where up to approximately 60% of the data is missing, though for higher percentage the classification performance still is statistically improved. We further validate this approach by making comparisons with previous studies.
机译:现实世界中的数据库通常包含丢失的数据,而现有的校正算法可提供不同的性能。而且,大多数建模技术都不适合自动处理。在这项研究中,我们研究了在缺少数据的情况下预测败血性休克的不同方法。一些用于管理丢失数据的预处理技术包括忽略数据,或将其替换为设计会引入偏差的信息。在这项研究中,我们表明通过采用最小预处理技术零阶保持(ZOH)方法,通过基于部分距离计算策略(FCM-PDS)的模糊C均值聚类技术,可以提高预测性能),并通过计算有关每个患者样本的最终分类。在丢失多达大约60%的数据的情况下,性能仍会继续提高,尽管对于更高的百分比,分类性能仍在统计学上有所提高。通过与以前的研究进行比较,我们进一步验证了这种方法。

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