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Analysis of medical and healthcare data based on positive and negative association rules

机译:基于正面和负面关联规则的医疗数据分析

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Researchers pointed out that the integrated health care system has gradually become an important part of modern health care information system. This is similar to the enterprise information system, mainly for the needs of the medical industry sector. The medical and healthcare data contains a lot of rich information, yet it is generally considered as being poor. However, there is no effective way to analyze and model, and you can draw hidden relationships and patterns from these information. Data mining technology in the commercial, scientific and other fields applied to many practical applications. Thus, the importance of data in the medical and healthcare data (human genetic code, medical records and prescriptions, hospital management information, pathogenic factors, etc.) more and more attentions which makes the association rules mining in medical applications more and more widely. To date, association rules mining has been widely used in people's social life, including transportation, health care, education, etc. most applications focus on positive association rules, neglecting negative effects among various diagnosis processes (e.g. a specific symptom wo't occur when some symptoms occur). Hence, negative association rules are sometimes much more informative than the positive ones. Due to that, this paper aims to analyze medical and healthcare data comprehensively from both positive and negative association rules. The analysis was performed on the medical and healthcare data collected from a Person's Hospital. Using medical profiles such as age, sex, medication records and disease to predict the possibility of a patient or some disease. It can be significant information, such as patterns, and the relationship between disease-related medical and physiological indicators. These association rules build bridges among different diseases and medicines and provide significant information for doctors and social organizations. The association rules we found can provide important reference value for medical and healthcare research and development, like potential complications, preventive medicine, disease diagnosis and disease prevention.
机译:研究人员指出,综合医疗保健系统已逐渐成为现代医疗保健信息系统的重要组成部分。这类似于企业信息系统,主要用于医疗行业。医疗和保健数据包含许多丰富的信息,但是通常认为它很差。但是,没有有效的方法来进行分析和建模,您可以从这些信息中绘制隐藏的关系和模式。数据挖掘技术在商业,科学等领域得到了广泛的应用。因此,数据在医学和保健数据中的重要性(人类遗传密码,病历和处方,医院管理信息,致病因素等)越来越受到关注,这使得关联规则在医学应用中的挖掘越来越广泛。迄今为止,关联规则挖掘已广泛应用于人们的社会生活中,包括交通,医疗保健,教育等。大多数应用程序都着眼于积极的关联规则,而忽略了各种诊断过程中的负面影响(例如,在以下情况下不会出现特定症状)出现某些症状)。因此,消极关联规则有时比积极关联规则提供更多信息。因此,本文旨在从正面和负面关联规则全面分析医疗数据。分析是根据从人民医院收集的医疗和保健数据进行的。使用年龄,性别,用药记录和疾病等医学资料来预测患者或某些疾病的可能性。它可以是重要的信息,例如模式,以及与疾病相关的医学和生理指标之间的关系。这些关联规则在不同疾病和药物之间架起了桥梁,并为医生和社会组织提供了重要信息。我们发现的关联规则可以为医学和保健研究和开发提供重要的参考价值,例如潜在的并发症,预防医学,疾病诊断和疾病预防。

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