论文标题
与PCR诊断相关的纵向实验室测试在Covid-19患者中揭示了独特的凝血病特征的时间演变
Longitudinal laboratory testing tied to PCR diagnostics in COVID-19 patients reveals temporal evolution of distinctive coagulopathy signatures
论文作者
论文摘要
实验室测试结果的时间推断及其三角剖分与临床结果的三角剖分,如电子健康记录(EHR)中提供者注意的相关的非结构化文本所述,这对于推进精密医学是不可或缺的。在这里,我们研究了181名Covidpos和7,775例Covidneg患者,在194个测定期间进行了130万例实验室测试,这两个月的观察期围绕其SARS-COV-2 PCR测试日期。我们发现,与在临床表现和诊断测试时Covidneg相比,Covidpos患者倾向于具有较高的血浆纤维蛋白原水平,并且血小板计数类似,并且两个同类群中约有25%的患者均显示出彻底的血栓细胞增多症。但是,随着感染的发展,这些措施的纵向趋势相反,与Covidneg队列相比,纤维蛋白原和血小板计数的下降和较高和更高的水平增加。我们的EHR增强策划工作表明,少数患者在PCR测试日期后出现血栓栓塞事件,包括罕见的患有散布的血管内凝血病(DIC)的病例,大多数患者缺乏通常在消费性凝血病中观察到的血小板减少。这些时间趋势首次通过数字框架与结构化的药物数据和神经网络驱动结果合成纵向实验室的测量结果,首次通过数字框架来综合了纵向实验室的测量结果,这是COVID-19相关凝血病(CAC)的细粒度分辨率。这项研究表明,精密医学平台如何帮助将每个患者随时间推移特定的特定凝血素材背景下背景,以便为血栓预防方案更好地个性化。
Temporal inference from laboratory testing results and their triangulation with clinical outcomes as described in the associated unstructured text from the providers notes in the Electronic Health Record (EHR) is integral to advancing precision medicine. Here, we studied 181 COVIDpos and 7,775 COVIDneg patients subjected to 1.3 million laboratory tests across 194 assays during a two-month observation period centered around their SARS-CoV-2 PCR testing dates. We found that compared to COVIDneg at the time of clinical presentation and diagnostic testing, COVIDpos patients tended to have higher plasma fibrinogen levels and similarly low platelet counts, with approximately 25% of patients in both cohorts showing outright thrombocytopenia. However, these measures show opposite longitudinal trends as the infection evolves, with declining fibrinogen and increasing platelet counts to levels that are lower and higher compared to the COVIDneg cohort, respectively. Our EHR augmented curation efforts suggest a minority of patients develop thromboembolic events after the PCR testing date, including rare cases with disseminated intravascular coagulopathy (DIC), with most patients lacking the platelet reductions typically observed in consumptive coagulopathies. These temporal trends present, for the first time, fine-grained resolution of COVID-19 associated coagulopathy (CAC), via a digital framework that synthesizes longitudinal lab measurements with structured medication data and neural network-powered extraction of outcomes from the unstructured EHR. This study demonstrates how a precision medicine platform can help contextualize each patients specific coagulation profile over time, towards the goal of informing better personalization of thromboprophylaxis regimen.