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Using Secondary Knowledge to Support Decision Tree Classification of RetrospectiveClinical Data

机译:使用辅助知识支持回顾性临床数据的决策树分类

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Retrospective clinical data presents many challenges for data mining and machine learning. The transcription of patient records from paper charts and subsequent manipulation of data often results in high volumes of noise as well as a loss of other important information. In addition, such datasets often fail to represent expert medical knowledge and reasoning in any explicit manner. In this research we describe applying data mining methods to retrospective clinical data to build a prediction model for asthma exacerbation severity for pediatric patients in the emergency department. Difficulties in building such a model forced us to investigate alternative strategies for analyzing and processing retrospective data. This paper describes this process together with an approach to mining retrospective clinical data by incorporating formalized external expert knowledge (secondary knowledge sources) into the classification task. This knowledge is used to partition the data into a number of coherent sets, where each set is explicitly described in terms of the secondary knowledge source. Instances from each set are then classified in a manner appropriate for the characteristics of the particular set. We present our methodology and outline a set of experiential results that demonstrate some advantages and some limitations of our approach.
机译:回顾性临床数据为数据挖掘和机器学习提出了许多挑战。从纸质图表抄录患者病历并随后对数据进行处理通常会导致大量噪音以及其他重要信息的丢失。此外,此类数据集通常无法以任何明确的方式来表示专家的医学知识和推理。在这项研究中,我们描述了将数据挖掘方法应用于回顾性临床数据,以建立急诊科儿科患者哮喘加重严重程度的预测模型。建立这样一个模型的困难迫使我们研究分析和处理追溯数据的替代策略。本文介绍了此过程以及通过将形式化的外部专家知识(次要知识来源)纳入分类任务来挖掘回顾性临床数据的方法。该知识用于将数据划分为多个连贯的集合,其中每个集合均根据辅助知识源进行了明确描述。然后按照适合特定集合特征的方式对每个集合中的实例进行分类。我们介绍了我们的方法并概述了一组实验结果,这些结果证明了我们方法的某些优点和局限性。

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