Discipline of Social and Administrative Pharmacy, School of Pharmaceutical Sciences, Universiti Sains Malaysia, 11800 Minden, Penang, Malaysia.
Clinical Research Center (CRC) Hospital Pulau Pinang, Institute For Clinical Research, Ministry of Health Malaysia (MOH), Penang, Malaysia.
BMC Pharmacol Toxicol. 2019 Jul 8;20(1):41. doi: 10.1186/s40360-019-0318-6.
Chronic kidney disease (CKD) is a significant health burden that increases the risk of adverse events. Currently, there is no validated models to predict risk of mortality among CKD patients experienced adverse drug reactions (ADRs) during hospitalization. This study aimed to develop a mortality risk prediction model among hospitalized CKD patients whom experienced ADRs.
Patients data with CKD stages 3-5 admitted at various wards were included in the model development. The data collected included demographic characteristics, comorbid conditions, laboratory tests and types of medicines taken. Sequential series of logistic regression models using mortality as the dependent variable were developed. Bootstrapping method was used to evaluate the model's internal validation. Variables odd ratio (OR) of the best model were used to calculate the predictive capacity of the risk scores using the area under the curve (AUC).
The best prediction model included comorbidities heart disease, dyslipidaemia and electrolyte imbalance; psychotic agents; creatinine kinase; number of total medication use; and conservative management (Hosmer and Lemeshow test =0.643). Model performance was relatively modest (R square = 0.399) and AUC which determines the risk score's ability to predict mortality associated with ADRs was 0.789 (95% CI, 0.700-0.878). Creatinine kinase, followed by psychotic agents and electrolyte disorder, was most strongly associated with mortality after ADRs during hospitalization. This model correctly predicts 71.4% of all mortality pertaining to ADRs (sensitivity) and with specificity of 77.3%.
Mortality prediction model among hospitalized stages 3 to 5 CKD patients experienced ADR was developed in this study. This prediction model adds new knowledge to the healthcare system despite its modest performance coupled with its high sensitivity and specificity. This tool is clinically useful and effective in identifying potential CKD patients at high risk of ADR-related mortality during hospitalization using routinely performed clinical data.
慢性肾脏病(CKD)是一种重大的健康负担,会增加不良事件的风险。目前,尚无经过验证的模型可预测住院期间发生药物不良反应(ADR)的 CKD 患者的死亡风险。本研究旨在为住院 CKD 患者中发生 ADR 的患者建立死亡率预测模型。
将 CKD 3-5 期患者的数据纳入模型开发中,这些患者在各个病房接受治疗。收集的数据包括人口统计学特征、合并症、实验室检查和服用的药物类型。使用死亡作为因变量的连续系列逻辑回归模型进行开发。使用 bootstrap 方法评估模型的内部验证。使用最佳模型的变量比值比(OR)计算风险评分的预测能力,使用曲线下面积(AUC)进行评估。
最佳预测模型包括合并症心脏病、血脂异常和电解质失衡;精神药物;肌酸激酶;总用药数量;以及保守治疗(Hosmer 和 Lemeshow 检验=0.643)。模型性能相对较差(R 平方=0.399),AUC 用于确定风险评分预测与 ADR 相关的死亡率的能力,为 0.789(95%CI,0.700-0.878)。肌酸激酶、其次是精神药物和电解质紊乱,与住院期间发生 ADR 后死亡率的相关性最强。该模型正确预测了所有与 ADR 相关的死亡率的 71.4%(敏感性),特异性为 77.3%。
本研究建立了预测住院期间发生 ADR 的 3-5 期 CKD 患者死亡率的预测模型。尽管该模型性能欠佳,但具有较高的敏感性和特异性,为医疗保健系统增加了新知识。该工具使用常规进行的临床数据,可有效识别住院期间发生 ADR 相关死亡风险较高的潜在 CKD 患者,具有临床应用价值。