Leveraging informative missing data to learn about acute respiratory distress syndrome and mortality in long-term hospitalized COVID-19 patients throughout the years of the pandemic.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Emily Getzen, Amelia Lm Tan, Gabriel Brat, Gilbert S Omenn, Zachary Strasser, Qi Long, John H Holmes, Danielle Mowery
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Abstract

Electronic health records (EHRs) contain a wealth of information that can be used to further precision health. One particular data element in EHRs that is not only under-utilized but oftentimes unaccounted for is missing data. However, missingness can provide valuable information about comorbidities and best practices for monitoring patients, which could save lives and reduce burden on the healthcare system. We characterize patterns of missing data in laboratory measurements collected at the University of Pennsylvania Hospital System from long-term COVID-19 patients and focus on the changes in these patterns between 2020 and 2021. We investigate how these patterns are associated with comorbidities such as acute respiratory distress syndrome (ARDS), and 90-day mortality in ARDS patients. This work displays how knowledge and experience can change the way clinicians and hospitals manage a novel disease. It can also provide insight into best practices when it comes to patient monitoring to improve outcomes.

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利用信息缺失数据,了解 COVID-19 大流行期间长期住院病人的急性呼吸窘迫综合征和死亡率。
电子健康记录(EHR)包含大量信息,可用于促进精准健康。电子病历中的一个特殊数据元素不仅未得到充分利用,而且经常被忽略,那就是缺失数据。然而,缺失数据可以提供有关合并症和监测患者最佳实践的宝贵信息,从而挽救生命并减轻医疗系统的负担。我们描述了宾夕法尼亚大学医院系统收集的 COVID-19 长期患者实验室测量数据的缺失模式,并重点研究了这些模式在 2020 年至 2021 年间的变化。我们研究了这些模式与急性呼吸窘迫综合征(ARDS)等合并症以及 ARDS 患者 90 天死亡率之间的关联。这项工作展示了知识和经验如何改变临床医生和医院管理新型疾病的方式。它还能为患者监测方面的最佳实践提供见解,从而改善预后。
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