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首页> 外文期刊>The Journal of extra-corporeal technology >Perfusion Downunder Collaboration Database--data quality assurance: towards a high quality clinical database.
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Perfusion Downunder Collaboration Database--data quality assurance: towards a high quality clinical database.

机译:Perfusion Downunder协作数据库-数据质量保证:建立高质量的临床数据库。

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Maintaining a high quality clinical database is critical to obtain reliable information upon which to base clinical and institutional decisions, and to preserve the public and the user's confidence in the quality of the data. The success of the Perfusion Downunder Collaboration (PDUC) Database, a dataset for cardiopulmonary bypass procedures, can only be guaranteed through the assurance of the quality of its data. This paper presents the evaluation of the data quality in the PDUC Database. Three participating centers located in Adelaide, Australia were audited: Flinders Private Hospital (FPH), Flinders Medical Center (FMC), and Ashford Hospital (AH). Ten perCent of the cases submitted from the first year of data harvest were audited (2008: FPH and FMC, 2009: AH). A total of 57 variables were reviewed and rates of discrepancies (inaccurate, missing, not entered, cannot be validated) categorized as 0-25%, 25-50%, 51-75%, and 75-100% of cases (% = cases with discrepancy/total cases audited) evaluated. Sixty randomly selected cases were audited, comprising of 13 cases from FPH, 31 cases from FMC, and 16 cases from AH. Of a total of 3420 data points evaluated, 6.9% were found to be inaccurate and 3.2% were missing. For each participating center, the great majority of variables have discrepancies in few (0-25%) of the cases audited. The discrepancies found can be attributed to systematic errors (e.g., error in date difference calculation for length of stays, data transformation error for postoperative dialysis) and random errors (e.g., use of incorrect unit for creatinine, transcription error for discharge date). The PDUC Database is currently reasonably accurate and complete. This evaluation is part of a complex system of data quality assurance, and when conducted routinely, could provide a continuous feedback loop towards a high quality PDUC Database.
机译:维护高质量的临床数据库对于获得可靠的信息至关重要,这些信息是临床和机构决策所依据的,并维护了公众和用户对数据质量的信心。只有通过保证数据质量,才能确保灌注下呼吸合作(PDUC)数据库(用于体外循环手术的数据集)的成功。本文介绍了PDUC数据库中数据质量的评估。审核了位于澳大利亚阿德莱德的三个参与中心:弗林德斯私立医院(FPH),弗林德斯医学中心(FMC)和阿什福德医院(AH)。从数据收集的第一年起提交的案例中,有10%进行了审核(2008年:FPH和FMC,2009年:AH)。总共审查了57个变量,并将差异率(不准确,丢失,未输入,无法验证)分类为0-25%,25-50%,51-75%和75-100%的案例(%=评估有差异的案例/审核的总案例数)。审核了60例随机选择的病例,包括FPH的13例,FMC的31例和AH的16例。在评估的3420个数据点中,有6.9%不正确,而有3.2%缺失。对于每个参与中心,在大多数(0-25%)被审计案件中,绝大多数变量存在差异。发现的差异可归因于系统性错误(例如,住院天数的日期差计算中的错误,术后透析的数据转换错误)和随机性错误(例如,肌酐使用的单位不正确,出院日期的转录错误)。 PDUC数据库目前相当准确且完整。此评估是复杂的数据质量保证系统的一部分,当按常规进行时,可以为高质量PDUC数据库提供连续的反馈回路。

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