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突出急诊科患者的诊断类型和实验室诊断测试之间的规则:使用关联规则挖掘。

Highlighting the rules between diagnosis types and laboratory diagnostic tests for patients of an emergency department: Use of association rule mining.

机构信息

Yaşar University, Turkey.

出版信息

Health Informatics J. 2020 Jun;26(2):1177-1193. doi: 10.1177/1460458219871135. Epub 2019 Sep 30.

Abstract

Diagnostic tests are widely used in emergency departments to make detailed investigations on diagnosis and treat patients correctly. However, since these tests are expensive and time-consuming, ordering correct tests for patients is crucial for efficient use of hospital resources. Thus, understanding the relation between diagnosis and diagnostic test requirement becomes an important issue in emergency departments. Association rule mining was used to extract hidden patterns and relation between diagnosis and diagnostic test requirement in real-life medical data received from an emergency department. Apriori was used as an association rule mining algorithm. Diagnosis was grouped into 21 categories based on International Classification of Disease, and laboratory tests were grouped into four main categories (hemogram, biochemistry, cardiac enzyme, urine and human excrement related). Both positive and negative rules were discovered. Since the nature of the data had the dominance of negative values, higher number of negative rules with higher confidences were discovered compared to positive ones. The extracted rules were validated by emergency department experts and practitioners. It was concluded that understanding the association between patient's diagnosis and diagnostic test requirement can improve decision-making and efficient use of resources in emergency departments. Association rules can also be used for supporting physicians to treat patients.

摘要

诊断测试在急诊科被广泛用于对诊断进行详细调查,以正确治疗患者。然而,由于这些测试昂贵且耗时,因此为患者正确订购测试对于有效利用医院资源至关重要。因此,了解诊断和诊断测试需求之间的关系成为急诊科的一个重要问题。关联规则挖掘用于从急诊科收到的真实医疗数据中提取诊断和诊断测试需求之间隐藏的模式和关系。Apriori 被用作关联规则挖掘算法。根据国际疾病分类,将诊断分为 21 类,实验室测试分为四大类(血常规、生化、心肌酶、尿液和粪便相关)。发现了阳性和阴性规则。由于数据的性质以负值为主,因此与阳性规则相比,发现了更多置信度更高的阴性规则。提取的规则由急诊科专家和从业者进行了验证。得出的结论是,了解患者诊断和诊断测试需求之间的关联可以改善急诊科的决策制定和资源的有效利用。关联规则也可用于支持医生治疗患者。

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