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Challenges of Using Probabilistic Linkage Methodology to Characterize Post-Cardiac Arrest Care in Michigan

机译:利用概率联系方法挑战在密歇根州表征心脏骤停护理

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Background: To improve survival of patients resuscitated from out of hospital cardiac arrest (OCHA), data is needed to assess and improve inpatient post-resuscitation care. Our objective was to apply probabilistic linkage methodology to link EMS and inpatient databases and evaluate whether it may be used to describe post-arrest care in Michigan. Methods: We performed a retrospective study to describe post-cardiac arrest care in adult OHCA patients who were transported to Michigan hospitals from July 1, 2010, to June 30, 2013. Using probabilistic linkage methodology we linked two databases, the Michigan EMS Information System (MI_EMSIS) and the Michigan Inpatient Database (MIDB), which describes inpatient care and outcome of all admissions. Rates of case incidence and survival were compared to published literature. We compared the linked dataset to existing cardiac arrest databases from three counties to evaluate the quality of this linkage. Results: Multiple iterations of match strategies were used to create a linked EMS-inpatient dataset. There were 12,838 MI_EMSIS cardiac arrest records of which 1,977 were matched with MIDB records, identifying them as surviving to hospital admission. Of these 590 (30.0%) survived to hospital discharge. The annual survival incidence/100,000 population to admission was 6.93/100,000 and survival incidence to discharge was 2.1/100,000. The matched dataset was compared to county databases identified a limited sensitivity [48.2%, 95% CI 42.1%-55.3%)] and positive predictive value [64.4%, 95% CI 56.8%-71.3%)]. Conclusion: Use of the MI_EMSISEMS database and the Michigan Inpatient database was feasible and produced rates of cardiac arrest admission and survival rates similar to published literature. This process yielded a limited match compared to existing county cardiac arrest databases. We conclude that such a linked dataset is useful for descriptive purposes but not as a population based dataset to evaluate statewide post-cardiac arrest care.
机译:背景:为了改善从医院心脏骤停(OCHA)中复苏的患者的存活,需要评估和改善住院后复苏后护理的数据。我们的目标是申请概率联系方法,以将EMS和住院性数据库联系起来,并评估它是否可用于描述密歇根州的逮捕后护理。方法:我们进行了回顾性研究,以描述2010年7月1日至2013年6月30日往2013年7月1日的密歇根州医院的成人OHCA患者的心脏病患者。使用概率联系方法我们联系了两个数据库,密歇根EMS信息系统(MI_EMSIS)和密歇根住院生数据库(MIDB),描述了所有入学的住院护理和结果。将病例发病率和存活率与发表的文献进行了比较。我们将链接的数据集与三个县的现有心脏骤停数据库进行比较,以评估这种联动的质量。结果:使用匹配策略的多次迭代来创建链接的EMS-Inpatient数据集。有12,838个MI_EMSIS心脏骤停记录,其中1,977次与稻草记录相匹配,将其识别为入院入院。这些590(30.0%)存活到医院排放。每年存活发生率/ 100,000人入院人口为6.93 / 100,000人,收购的生存发病率为2.1 / 100,000。将匹配的数据集与县数据库进行比较,确定了有限的灵敏度[48.2%,95%CI 42.1%-55.3%)]和阳性预测值[64.4%,95%CI 56.8%-71.3%)]。结论:使用MI_EMSISEMS数据库和密歇根住院后数据库是可行的,并产生了类似于发表文献的心脏骤停入入境和生存率。与现有县心脏骤停数据库相比,该过程产生了有限的比赛。我们得出结论,这种联系数据集可用于描述性目的,但不是作为基于人口的数据集,以评估心脏病骤停滞的全州。

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