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多重疾病聚类分析工具:使用记录级计算分析识别多种慢性病的组合与排列

The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis.

作者信息

Nicholson Kathryn, Bauer Michael, Terry Amanda, Fortin Martin, Williamson Tyler, Thind Amardeep

机构信息

Western University.

Department of Computer Science, Western University.

出版信息

J Innov Health Inform. 2017 Dec 13;24(4):962. doi: 10.14236/jhi.v24i4.962.

DOI:10.14236/jhi.v24i4.962
PMID:29334352
Abstract

Multimorbidity, or the co-occurrence of multiple chronic health conditions within an individual, is an increasingly dominant presence and burden in modern health care systems.  To fully capture its complexity, further research is needed to uncover the patterns and consequences of these co-occurring health states.  As such, the Multimorbidity Cluster Analysis Tool and the accompanying Multimorbidity Cluster Analysis Toolkit have been created to allow researchers to identify distinct clusters that exist within a sample of participants or patients living with multimorbidity. Development: The Tool and Toolkit were developed at Western University in London, Ontario, Canada.  This open-access computational program (JAVA code and executable file) was developed and tested to support an analysis of thousands of individual records and up to 100 disease diagnoses or categories. APPLICATION: The computational program can be adapted to the methodological elements of a research project, including type of data, type of chronic disease reporting, measurement of multimorbidity, sample size and research setting.  The computational program will identify all existing, and mutually exclusive, combinations and permutations within the dataset.  An application of this computational program is provided as an example, in which more than 75,000 individual records and 20 chronic disease categories resulted in the detection of 10,411 unique combinations and 24,647 unique permutations among female and male patients. DISCUSSION: The Tool and Toolkit are now available for use by researchers interested in exploring the complexities of multimorbidity.  Its careful use, and the comparison between results, will be valuable additions to the nuanced understanding of multimorbidity.

摘要

多重疾病,即个体同时存在多种慢性健康状况,在现代医疗系统中日益成为主要问题并带来沉重负担。为全面了解其复杂性,需要进一步开展研究以揭示这些并存健康状况的模式和后果。因此,创建了多重疾病聚类分析工具及配套的多重疾病聚类分析工具包,以便研究人员识别存在于患有多重疾病的参与者或患者样本中的不同聚类。

开发

该工具和工具包由加拿大安大略省伦敦市的韦仕敦大学开发。这个开放获取的计算程序(JAVA代码和可执行文件)经过开发和测试,以支持对数千条个人记录以及多达100种疾病诊断或类别进行分析。

应用

该计算程序可根据研究项目的方法要素进行调整,包括数据类型、慢性病报告类型、多重疾病的测量、样本量和研究环境。该计算程序将识别数据集中所有现有的且相互排斥的组合和排列。文中提供了一个该计算程序的应用示例,在该示例中,超过75000条个人记录和20种慢性病类别在女性和男性患者中检测出10411种独特组合和24647种独特排列。

讨论

该工具和工具包现已可供有兴趣探索多重疾病复杂性的研究人员使用。谨慎使用该工具并比较结果,将有助于更细致入微地理解多重疾病。

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The Multimorbidity Cluster Analysis Tool: Identifying Combinations and Permutations of Multiple Chronic Diseases Using a Record-Level Computational Analysis.多重疾病聚类分析工具:使用记录级计算分析识别多种慢性病的组合与排列
J Innov Health Inform. 2017 Dec 13;24(4):962. doi: 10.14236/jhi.v24i4.962.
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Front Public Health. 2022 Nov 18;10:953886. doi: 10.3389/fpubh.2022.953886. eCollection 2022.
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J Multimorb Comorb. 2022 Jun 1;12:26335565221105431. doi: 10.1177/26335565221105431. eCollection 2022 Jan-Dec.
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Comorbidity Patterns of Older Lung Cancer Patients in Northeast China: An Association Rules Analysis Based on Electronic Medical Records.
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The multimorbidity dead end: how we got here and possible ways out.多重疾病的死胡同:我们如何走到这一步以及可能的出路。
Br J Gen Pract. 2020 Nov 26;70(701):607-608. doi: 10.3399/bjgp20X713825. Print 2020 Dec.
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Multiple chronic conditions at a major urban health system: a retrospective cross-sectional analysis of frequencies, costs and comorbidity patterns.一家大型城市医疗系统中的多种慢性病:频率、成本及共病模式的回顾性横断面分析
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