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An analysis of hospital coding in Portugal: Detection of patterns, errors and outliers in female breast cancer episodes

机译:葡萄牙医院代码分析:女性乳腺癌发作中的模式,错误和异常值检测

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Many studies use coded clinical data as a source to investigate some diseases and its demographic impact. In Portugal, according to the National Statistics Institute, 1,635 deaths due to female breast cancer occurred in the year 2009, accounting for near 4,900 new cases by year. This study aimed to describe and analyze data from hospital female breast cancer episodes, coded in Portuguese hospital databases. Specifically, it aimed to profile data quality and to identify inconsistencies, errors and outliers. The database used includes inpatient and outpatient episodes from all mainland acute care public hospitals of the Portuguese National Health Service, within years 2000 to 2008, corresponding to more than 10 million records. Empirical data analyses were performed to understand the data distribution and the profile of possible outliers. Many problems and inconsistencies were found as, for instance, the existence of 40% of female breast cancer episodes with a secondary diagnosis of “admission for radiotherapy and chemotherapy” and, also, 783 records with the variable gender filled with “male”. Systematic audits to the data and to the information produced, performed by competent agencies, can minimize some of the found problems. In fact, the knowledge of anomalous situations should allow, when feasible, an immediate improvement in the quality of healthcare data.
机译:许多研究使用编码的临床数据作为调查某些疾病及其人口统计学影响的来源。根据国家统计局的数据,在葡萄牙,2009年有1,635例女性乳腺癌死亡,每年约有4,900例新病例死亡。这项研究旨在描述和分析来自葡萄牙医院数据库中编码的医院女性乳腺癌发作的数据。具体而言,其目的是剖析数据质量并识别不一致,错误和离群值。使用的数据库包括2000年至2008年期间葡萄牙国家卫生局所有大陆急诊公立医院的住院和门诊病例,对应于超过1000万条记录。进行了经验数据分析,以了解数据分布和可能的异常值的概况。发现了许多问题和不一致之处,例如,女性乳腺癌发作的发生率为40%,其次要诊断为“放射疗法和化学疗法的允许”,还有783条记录的性别变量中充满了“男性”。由主管机构对数据和产生的信息进行系统的审核,可以最大程度地减少发现的问题。实际上,在可行的情况下,了解异常情况应该可以立即改善医疗保健数据的质量。

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