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临床决策支持系统生成的 STOPP/START 信号在住院老年多病共患患者中的频率和接受度。

Frequency and Acceptance of Clinical Decision Support System-Generated STOPP/START Signals for Hospitalised Older Patients with Polypharmacy and Multimorbidity.

机构信息

Department of Clinical Pharmacy, University Medical Center Utrecht, Utrecht University, Heidelberglaan 100, 3584 CX, Utrecht, The Netherlands.

Department of Geriatric Medicine and Expertise Centre Pharmacotherapy in Old Persons, University Medical Center Utrecht, Utrecht University, Utrecht, The Netherlands.

出版信息

Drugs Aging. 2022 Jan;39(1):59-73. doi: 10.1007/s40266-021-00904-z. Epub 2021 Dec 8.

Abstract

BACKGROUND

The Screening Tool of Older Persons' Prescriptions (STOPP)/Screening Tool to Alert to Right Treatment (START) instrument is used to evaluate the appropriateness of medication in older people. STOPP/START criteria have been converted into software algorithms and implemented in a clinical decision support system (CDSS) to facilitate their use in clinical practice.

OBJECTIVE

Our objective was to determine the frequency of CDSS-generated STOPP/START signals and their subsequent acceptance by a pharmacotherapy team in a hospital setting.

DESIGN AND METHODS

Hospitalised older patients with polypharmacy and multimorbidity allocated to the intervention arm of the OPERAM (OPtimising thERapy to prevent Avoidable hospital admissions in the Multimorbid elderly) trial underwent a CDSS-assisted structured medication review in four European hospitals. We evaluated the frequency of CDSS-generated STOPP/START signals and the subsequent acceptance of these signals by a trained pharmacotherapy team consisting of a physician and pharmacist after evaluation of clinical applicability to the individual patient, prior to discussing pharmacotherapy optimisation recommendations with the patient and attending physicians. Multivariate linear regression analysis was used to investigate potential patient-related (e.g. age, number of co-morbidities and medications) and setting-related (e.g. ward type, country of inclusion) determinants for acceptance of STOPP and START signals.

RESULTS

In 819/826 (99%) of the patients, at least one STOPP/START signal was generated using a set of 110 algorithms based on STOPP/START v2 criteria. Overall, 39% of the 5080 signals were accepted by the pharmacotherapy team. There was a high variability in the frequency and the subsequent acceptance of the individual STOPP/START criteria. The acceptance ranged from 2.5 to 75.8% for the top ten most frequently generated STOPP and START signals. The signal to stop a drug without a clinical indication was most frequently generated (28%), with more than half of the signals accepted (54%). No difference in mean acceptance of STOPP versus START signals was found. In multivariate analysis, most patient-related determinants did not predict acceptance, although the acceptance of START signals increased in patients with one or more hospital admissions (+ 7.9; 95% confidence interval [CI] 1.6-14.1) or one or more falls in the previous year (+ 7.1; 95% CI 0.7-13.4). A higher number of co-morbidities was associated with lower acceptance of STOPP (- 11.8%; 95% CI - 19.2 to - 4.5) and START (- 11.0%; 95% CI - 19.4 to - 2.6) signals for patients with more than nine and between seven and nine co-morbidities, respectively. For setting-related determinants, the acceptance differed significantly between the participating trial sites. Compared with Switzerland, the acceptance was higher in Ireland (STOPP: + 26.8%; 95% CI 16.8-36.7; START: + 31.1%; 95% CI 18.2-44.0) and in the Netherlands (STOPP: + 14.7%; 95% CI 7.8-21.7). Admission to a surgical ward was positively associated with acceptance of STOPP signals (+ 10.3%; 95% CI 3.8-16.8).

CONCLUSION

The involvement of an expert team in translating population-based CDSS signals to individual patients is essential, as more than half of the signals for potential overuse, underuse, and misuse were not deemed clinically appropriate in a hospital setting. Patient-related potential determinants were poor predictors of acceptance. Future research investigating factors that affect patients' and physicians' agreement with medication changes recommended by expert teams may provide further insight for implementation in clinical practice.

REGISTRATION

ClinicalTrials.gov Identifier: NCT02986425.

摘要

背景

用于评估老年人用药适宜性的 Screening Tool of Older Persons' Prescriptions(STOPP)/Screening Tool to Alert to Right Treatment(START)工具已转换为软件算法,并在临床决策支持系统(CDSS)中实施,以促进其在临床实践中的应用。

目的

我们的目的是确定 CDSS 生成的 STOPP/START 信号的频率及其随后在医院环境中被一个药物治疗团队接受的频率。

设计和方法

在 OPTimising thERapy to prevent Avoidable hospital admissions in the Multimorbid elderly(OPERAM)试验中,将接受药物治疗的患有多种疾病和多种药物的老年住院患者分配到干预组,这些患者接受了 CDSS 辅助的结构化药物审查。我们评估了在对个体患者进行临床适用性评估后,由医生和药剂师组成的经过培训的药物治疗团队接受 CDSS 生成的 STOPP/START 信号的频率,以及接受这些信号的频率,然后再与患者和主治医生讨论药物治疗优化建议。使用多变量线性回归分析来研究潜在的患者相关因素(例如年龄、共病和药物数量)和与设置相关的因素(例如病房类型、纳入国家)对接受 STOPP 和 START 信号的决定因素。

结果

在 819/826(99%)名患者中,至少有一个 STOPP/START 信号是使用基于 STOPP/START v2 标准的 110 个算法集生成的。总体而言,5080 个信号中有 39%被药物治疗团队接受。个别 STOPP/START 标准的频率和随后的接受率存在很大差异。对于前 10 个最常生成的 STOPP 和 START 信号,接受率从 2.5%到 75.8%不等。停止没有临床指征的药物信号的生成频率最高(28%),其中一半以上的信号被接受(54%)。未发现 STOPP 与 START 信号的平均接受率存在差异。在多变量分析中,大多数患者相关的决定因素并不能预测接受率,尽管接受一个或多个住院治疗的患者(+7.9;95%置信区间[CI]1.6-14.1)或前一年有一个或多个跌倒的患者(+7.1;95%CI 0.7-13.4)接受 START 信号的比例有所增加。共病数量越多,接受 STOPP(-11.8%;95%CI-19.2%至-4.5%)和 START(-11.0%;95%CI-19.4%至-2.6%)信号的比例越低,共病数量分别超过 9 种和 7-9 种。对于与设置相关的决定因素,参与试验的地点之间的接受率存在显著差异。与瑞士相比,爱尔兰的接受率更高(STOPP:+26.8%;95%CI 16.8-36.7;START:+31.1%;95%CI 18.2-44.0),荷兰的接受率也更高(STOPP:+14.7%;95%CI 7.8-21.7)。入住外科病房与接受 STOPP 信号的比例呈正相关(+10.3%;95%CI 3.8-16.8)。

结论

涉及一个专家团队将基于人群的 CDSS 信号转化为个体患者的工作是至关重要的,因为在医院环境中,超过一半的潜在过度使用、使用不足和误用的信号被认为是不适当的。患者相关的潜在决定因素并不能很好地预测接受率。未来研究调查影响患者和医生对专家团队推荐的药物治疗改变的共识的因素,可能会为在临床实践中的实施提供进一步的见解。

登记

ClinicalTrials.gov 标识符:NCT02986425。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4f59/8752546/cad941827460/40266_2021_904_Fig1_HTML.jpg

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