基于中国病例研究的癌症住院患者共病负担评估框架。

IF 4 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Jiamin Wang, Wenjing Zhang, Kexin Sun, Mingzhu Su, Yuqing Zhang, Jun Su, Xiaojie Sun
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引用次数: 0

摘要

住院癌症患者往往背负着癌症本身和合并症的双重负担,这被认为是需要解决的最紧迫的全球公共卫生问题之一。本研究以山东省某三级医院为研究对象,构建了医院信息系统数据提取、基本合并症特征识别、合并症负担估算、合并症模式与预后指标相关性分析的框架。在案例研究中,通过严格的纳入和排除程序,从医院信息系统中提取人口统计数据、诊断数据、用药数据和成本数据,并由训练有素的编码器使用第十版国际疾病分类(ICD-10)对诊断数据进行编码。本研究中的合并症采用NCI合并症指数进行评估,该指数可识别多种合并症。住院癌症患者合并症的发生率、数量、类型和严重程度共同构成合并症的特征。该队列的所有流行疾病均纳入聚类分析。描述了每个合并症群的患者特征。确定了住院癌症患者的不同合并症模式,并检查了合并症模式与结果测量之间的关系。该框架可用于指导患者护理、医院管理和医疗资源分配,并有可能应用于地方、区域、国家和国际各级的各种医疗保健环境,以培养对癌症及其相关疾病的复杂性更敏感的医疗保健环境。该框架的应用需要优化,以克服数据采集、数据集成、不同阶段的治疗优先级以及道德和隐私问题等方面的一些限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a framework for estimating comorbidity burden of inpatient cancer patients based on a case study in China.

Inpatient cancer patients often carry the dual burden of the cancer itself and comorbidities, which were recognized as one of the most urgent global public health issues to be addressed. Based on a case study conducted in a tertiary hospital in Shandong Province, this study developed a framework for the extraction of hospital information system data, identification of basic comorbidity characteristics, estimation of the comorbidity burden, and examination of the associations between comorbidity patterns and outcome measures. In the case study, demographic data, diagnostic data, medication data and cost data were extracted from the hospital information system under a stringent inclusion and exclusion process, and the diagnostic data were coded by trained coders with the 10th revision of the International Classification of Diseases (ICD-10). Comorbidities in this study was assessed using the NCI Comorbidity Index, which identifies multiple comorbidities. Rates, numbers, types and severity of comorbidity for inpatient cancer patients together form the characterization of comorbidities. All prevalent conditions in this cohort were included in the cluster analysis. Patient characteristics of each comorbidity cluster were described. Different comorbidity patterns of inpatient cancer patients were identified, and the associations between comorbidity patterns and outcome measures were examined. This framework can be adopted to guide the patient care, hospital administration and medical resource allocation, and has the potential to be applied in various healthcare settings at local, regional, national, and international levels to foster a healthcare environment that is more responsive to the complexities of cancer and its associated conditions. The application of this framework needs to be optimized to overcome a few limitations in data acquisition, data integration, treatment priorities that vary by stage, and ethics and privacy issues.

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来源期刊
Global Health Research and Policy
Global Health Research and Policy Social Sciences-Health (social science)
CiteScore
12.00
自引率
1.10%
发文量
43
审稿时长
5 weeks
期刊介绍: Global Health Research and Policy, an open-access, multidisciplinary journal, publishes research on various aspects of global health, addressing topics like health equity, health systems and policy, social determinants of health, disease burden, population health, and other urgent global health issues. It serves as a forum for high-quality research focused on regional and global health improvement, emphasizing solutions for health equity.
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