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Data Mining Techniques in Health Informatics: A Case Study from Breast Cancer Research

机译:卫生信息学的数据挖掘技术 - 以乳腺癌研究为例

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This paper presents a case study of using data mining techniques in the analysis of diagnosis and treatment events related to Breast Cancer disease. Data from over 16,000 patients has been pre-processed and several data mining techniques have been implemented by using Weka (Waikato Environment for Knowledge Analysis). In particular, Generalized Sequential Patterns mining has been used to discover frequent patterns from disease event sequence profiles based on groups of living and deceased patients. Furthermore, five models have been evaluated in Classification with the objective to classify the patients based on selected attributes. This research showcases the data mining process and techniques to transform large amounts of patient data into useful information and potentially valuable patterns to help understand cancer outcomes.
机译:本文介绍了利用数据挖掘技术在分析与乳​​腺癌疾病相关的诊断和治疗事件中的案例研究。来自超过16,000名患者的数据已预处理,并通过使用Weka(Waikato环境进行知识分析)实施了几种数据挖掘技术。特别地,广义连续模式采矿已经用于发现基于生物和已故患者组的疾病事件序列谱的频繁模式。此外,已经在分类中评估了五种模型,目的是根据所选属性对患者进行分类。本研究展示了数据挖掘过程和技术,使大量患者数据转化为有用的信息和潜在的有价值的模式,以帮助理解癌症结果。

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