Al-Taani Ghaith M, Al-Azzam Sayer I, Alzoubi Karem H, Darwish Elhajji Feras W, Scott Michael G, Alfahel Hamzah, Aldeyab Mamoon A
Department of Pharmacy Practice, Faculty of Pharmacy, Yarmouk University.
Department of Clinical Pharmacy, Faculty of Pharmacy, Jordan University of Science and Technology, Irbid.
Drug Healthc Patient Saf. 2017 Jul 28;9:65-70. doi: 10.2147/DHPS.S125114. eCollection 2017.
Drug-related problems (DRPs) are considered a serious, expensive, and important undesirable complication of health care. However, as current health care resources are limited, pharmacist DRP services cannot be provided to all patients. Using a modeling approach, we aimed to identify risk factors for DRPs so that patients for DRP-reduction services can be better identified.
Patients with diabetes from outpatient clinics from five key university-affiliated and public hospitals in Jordan were assessed for DRPs (drug without an indication, untreated indication, and drug efficacy problems). Potential risk factors for DRPs were assessed. A logistic regression model was used to identify risk factors using a randomly selected, independent, nonoverlapping development (75%) subsample from full dataset. The remaining validation subsample (25%) was reserved to assess the discriminative ability of the model.
A total of 1,494 patients were recruited. Of them, 81.2% had at least one DRP. Using the development subsample (n=1,085), independent risk factors for DRPs identified were male gender, number of medications, prescribed gastrointestinal medication, and nonadherence to self-care and non-pharmacological recommendations. Validation results (n=403) showed an area under the receiver operating characteristic curve of 0.679 (95% confidence interval=0.629-0.720); the model sensitivity and specificity values were 65.4% and 63.0%, respectively.
Within the outpatient setting, the results of this study predicted DRPs with acceptable accuracy and validity. Such an approach will help in identifying patients needing pharmacist DRP services, which is an important first step in appropriate intervention to address DRPs.
药物相关问题(DRP)被认为是医疗保健中一种严重、昂贵且重要的不良并发症。然而,由于当前医疗保健资源有限,无法为所有患者提供药师DRP服务。我们旨在通过建模方法识别DRP的风险因素,以便更好地确定需要减少DRP服务的患者。
对约旦五家主要大学附属医院和公立医院门诊的糖尿病患者进行DRP评估(无适应证用药、未治疗的适应证和药物疗效问题)。评估DRP的潜在风险因素。使用逻辑回归模型,从完整数据集中随机选择一个独立、不重叠的开发子样本(75%)来识别风险因素。其余验证子样本(25%)用于评估模型的判别能力。
共招募了1494名患者。其中,81.2%至少有一个DRP。使用开发子样本(n = 1085),确定的DRP独立风险因素为男性、用药数量、开具的胃肠道药物以及不遵守自我护理和非药物治疗建议。验证结果(n = 403)显示,受试者工作特征曲线下面积为0.679(95%置信区间 = 0.629 - 0.720);模型的敏感性和特异性值分别为65.4%和63.0%。
在门诊环境中,本研究结果对DRP的预测具有可接受的准确性和有效性。这种方法将有助于识别需要药师DRP服务的患者,这是对DRP进行适当干预的重要第一步。