Outliers in diagnosis ratios: A clue toward possibly absent data.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Dmitry Morozyuk, Mark G Weiner
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Abstract

The evaluation of completeness of real-world data is a particularly challenging component of data quality assessment because the degree of truly versus erroneously absent data is unknown. Among inpatient data sets, while absolute counts of admissions having specific categories of diagnoses in the principal or any position may vary depending on hospital size, we hypothesized that the ratio of these parameters will be preserved across sites, with outliers suggesting the potential for erroneously absent data. For several categories of clinical conditions assigned to inpatient admissions, we analyzed the ratio of their recording as the principal diagnosis versus any diagnosis across several hospitals and compared the ratios against a national benchmark. Our analysis showed ratios that matched clinical expectations, with reasonable preservation of ratios across sites. However, some conditions exhibited more variability in the ratios and some sites had many outliers possibly reflecting data quality issues that warrant further attention.

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诊断比率中的异常值:可能缺失数据的线索
对真实世界数据完整性的评估是数据质量评估中特别具有挑战性的部分,因为真正缺失与错误缺失数据的程度是未知的。在住院患者数据集中,虽然在主要位置或任何位置有特定类别诊断的入院患者的绝对数量可能因医院规模而异,但我们假设这些参数的比例在不同地点会保持不变,而异常值则表明可能存在错误缺失的数据。对于分配给住院病人的几类临床病症,我们分析了几家医院将其记录为主要诊断与任何诊断的比率,并与全国基准进行了比较。我们的分析表明,比例符合临床预期,各医院的比例保持合理。不过,有些病症的比率变化较大,有些医院有许多异常值,这可能反映了数据质量问题,值得进一步关注。
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