Comparing Prescribing and Dispensing Data of the PCORnet Common Data Model Within PCORnet Antibiotics and Childhood Growth Study.

Pi-I D Lin, Matthew F Daley, Janne Boone-Heinonen, Sheryl L Rifas-Shiman, L Charles Bailey, Christopher B Forrest, Casie E Horgan, Jessica L Sturtevant, Sengwee Toh, Jessica G Young, Jason P Block
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引用次数: 9

Abstract

Researchers often use prescribing data from electronic health records (EHR) or dispensing data from medication or medical claims to determine medication utilization. However, neither source has complete information on medication use. We compared antibiotic prescribing and dispensing records for 200,395 patients in the National Patient-Centered Clinical Research Network (PCORnet) Antibiotics and Childhood Growth Study. We stratified analyses by delivery system type [closed integrated (cIDS) and non-cIDS]; 90.5 percent and 39.4 percent of prescribing records had matching dispensing records, and 92.7 percent and 64.0 percent of dispensing records had matching prescribing records at cIDS and non-cIDS, respectively. Most of the dispensings without a matching prescription did not have same-day encounters in the EHR, suggesting they were medications given outside the institution providing data, such as those from urgent care or retail clinics. The sensitivity of prescriptions in the EHR, using dispensings as a gold standard, was 99.1 percent and 89.9 percent for cIDS and non-cIDS, respectively. Only 0.7 percent and 6.1 percent of patients at cIDS and non-cIDS, respectively, were classified as false-negative, i.e. entirely unexposed to antibiotics when they in fact had dispensings. These patients were more likely to have a complex chronic condition or asthma. Overall, prescription records worked well to identify exposure to antibiotics. EHR data, such as the data available in PCORnet, is a unique and vital resource for clinical research. Closing data gaps by understanding why prescriptions may not be captured can improve this type of data, making it more robust for observational research.

Abstract Image

PCORnet通用数据模型在PCORnet抗生素与儿童生长研究中的处方与调剂数据比较。
研究人员经常使用来自电子健康记录(EHR)的处方数据或来自药物或医疗索赔的分配数据来确定药物的使用情况。然而,这两个来源都没有关于药物使用的完整信息。我们比较了国家以患者为中心的临床研究网络(PCORnet)抗生素和儿童生长研究中200,395名患者的抗生素处方和配药记录。我们按输送系统类型进行分层分析[封闭集成(cIDS)和非cIDS];90.5%和39.4%的处方记录具有匹配的调剂记录,92.7%和64.0%的调剂记录在cIDS和非cIDS分别具有匹配的处方记录。大多数没有匹配处方的配药没有在电子病历中进行同日接触,这表明它们是在提供数据的机构之外给予的药物,例如来自紧急护理或零售诊所的药物。以配剂为金标准,电子病历中处方的敏感性在cIDS和非cIDS中分别为99.1%和89.9%。分别只有0.7%和6.1%的cIDS患者和非cIDS患者被归类为假阴性,即当他们实际上有配药时完全没有接触抗生素。这些患者更有可能患有复杂的慢性疾病或哮喘。总的来说,处方记录很好地识别了抗生素暴露情况。电子病历数据,如PCORnet中提供的数据,是临床研究的独特和重要资源。通过了解为什么处方可能无法被记录,从而缩小数据差距,可以改善这类数据,使其更可靠地用于观察性研究。
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