从糖尿病患者病历中提取关联规则

K. S. Lakshmi, G. Santhosh Kumar
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引用次数: 19

摘要

医学数据库是医学有效诊断的丰富知识来源。最近医疗技术的进步和电子病历系统的广泛使用,有助于医院和其他卫生机构大量生产医疗文本数据。大多数包含有价值信息的文本数据只是归档,并没有充分利用。对医学信息的正确利用可以给医学领域带来巨大的变化。提出了一种从医学记录中发现有效关联规则的新方法。提取的规则描述了疾病与其他疾病的关联、特定疾病的症状、用于治疗疾病的药物、患特定疾病的最突出的患者年龄组。将NLP(自然语言处理)工具与数据挖掘算法(Apriori算法和FP-Growth算法)相结合,提取规则。使用相关度量lift选择有趣的规则。
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Association rule extraction from medical transcripts of diabetic patients
Medical databases serve as rich knowledge sources for effective medical diagnosis. Recent advances in medical technology and extensive usage of electronic medical record systems, helps in massive production of medical text data in hospitals and other health institutions. Most of this text data that contain valuable information are just filed and not utilized to the full extent. Proper usage of medical information can bring about tremendous changes in medical field. This paper present a new method of uncovering valid association rules from medical transcripts. The extracted rules describes association of disease with other diseases, symptoms of a particular disease, medications used for treating diseases, the most prominent age group of patients for developing a particular disease. NLP (Natural Language Processing) tools were combined with data mining algorithms (Apriori algorithm and FP-Growth algorithm) for the extraction of rules. Interesting rules were selected using the correlation measure, lift.
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