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用于早期检测乳腺癌辅助内分泌治疗依从性的关联电子健康记录药房数据的完整性和及时性测量。

Measurement of Completeness and Timeliness of Linked Electronic Health Record Pharmacy Data for Early Detection of Nonadherence to Breast Cancer Adjuvant Endocrine Therapy.

作者信息

McPeek Chelsea, Paul Shirlene, Lieberenz Jordan, Levy Mia

机构信息

RUSH University Cancer Center, Chicago, IL.

Division of Hematology, Oncology and Stem Cell Transplant, Department of Medicine, RUSH University Medical Center, Chicago, IL.

出版信息

JCO Clin Cancer Inform. 2024 Dec;8:e2400115. doi: 10.1200/CCI.24.00115. Epub 2024 Dec 12.

Abstract

PURPOSE

This retrospective cohort study evaluated whether linked electronic health record (EHR) pharmacy data were adequately complete and timely to detect primary nonadherence to breast cancer adjuvant endocrine therapy (AET).

MATERIALS AND METHODS

Linked EHR pharmacy data were extracted from the EHR for patients with stage 0 to III breast cancer who had their first prescription order for AET between 2016 and 2021. Patients with the first dispense event within 90 days of the prescription were classified as having sufficient or insufficient data available for early detection of primary adherence.

RESULTS

A total of 1,446 eligible patients had a first AET prescription order between 2016 and 2021; these orders were routed to 871 unique pharmacies, of which 856 (98.2%) were contracted with the linked EHR pharmacy database and 15 (1.8%) were not contracted. Among the 1,428 patients with a first prescription sent to a contract pharmacy, 164 (13%) had incomplete linked EHR pharmacy data refresh events to assess primary adherence. Among the 1,244 patients with at least 1 refresh event after their first prescription, 82% occurred within 90 days and were sufficiently timely for early detection of primary adherence. Overall, 32% of patients would benefit from an intervention to verify or improve primary adherence to AET.

CONCLUSION

Although linked EHR pharmacy data have adequate completeness of contract pharmacy data, local configurations of data refresh events tailored to medication reconciliation workflows are incomplete (13%) and insufficiently timely (32%) to fully support clinical decision support (CDS) for early detection of primary medication nonadherence. Prospective CDS interventions using linked EHR pharmacy data are possible with enhancements to the frequency and timeliness of refresh events.

摘要

目的

这项回顾性队列研究评估了关联电子健康记录(EHR)药房数据是否足够完整和及时,以检测乳腺癌辅助内分泌治疗(AET)的原发性不依从情况。

材料与方法

从EHR中提取2016年至2021年间首次开具AET处方的0至III期乳腺癌患者的关联EHR药房数据。在处方开具后90天内发生首次配药事件的患者被分类为有足够或不足的数据用于早期检测原发性依从性。

结果

共有1446名符合条件的患者在2016年至2021年间有首个AET处方;这些处方被发送到871家不同的药房,其中856家(98.2%)与关联的EHR药房数据库签约,15家(1.8%)未签约。在1428名首次处方发送到签约药房的患者中,164名(13%)的关联EHR药房数据更新事件不完整,无法评估原发性依从性。在1244名首次处方后至少有1次更新事件的患者中,82%的更新事件发生在90天内,并且足够及时以早期检测原发性依从性。总体而言,32%的患者将受益于验证或改善AET原发性依从性的干预措施。

结论

尽管关联EHR药房数据在签约药房数据方面具有足够的完整性,但针对药物调和工作流程量身定制的数据更新事件的本地配置不完整(13%)且不够及时(32%),无法完全支持用于早期检测原发性药物不依从性的临床决策支持(CDS)。通过提高更新事件的频率和及时性,使用关联EHR药房数据进行前瞻性CDS干预是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f5d/11658023/d94503da1132/cci-8-e2400115-g001.jpg

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