Department of Pharmaceutical and Pharmacological Sciences, KU Leuven, Leuven, Belgium.
Pharmacy Department, University Hospitals Leuven, Leuven, Belgium.
Eur Geriatr Med. 2022 Jun;13(3):567-577. doi: 10.1007/s41999-022-00623-7. Epub 2022 Mar 21.
Drug-related admissions (DRAs) are an important cause of preventable harm in older adults. Multiple algorithms exist to assess causality of adverse drug reactions, including the Naranjo algorithm and an adjusted version of the Kramer algorithm. The performance of these tools in assessing DRA causality has not been robustly shown. This study aimed to evaluate the ability of the adjusted Kramer algorithm to adjudicate DRA causality in geriatric inpatients.
DRAs were assessed in a convenience sample of patients admitted to the acute geriatric wards of an academic hospital. DRAs were identified by expert consensus and causality was evaluated using the Naranjo and the adjusted Kramer algorithms. Positive agreement with expert consensus was calculated for both algorithms. A multivariable logistic regression analysis was performed to explore determinants for a DRA.
A total of 218 geriatric inpatients was included of whom 65 (29.8%) experienced a DRA. Positive agreement was 72.3% (95% confidence interval (CI), 59.6-82.3%) and 100% (95% CI, 93.0-100%) for the Naranjo and the adjusted Kramer algorithm, respectively. Diuretics were the main culprits and most DRAs were attributed to a fall (n = 18; 27.7%). A fall-related principal diagnosis was independently associated with a DRA (odds ratio 20.11; 95% CI, 5.60-72.24).
The adjusted Kramer algorithm demonstrated a higher positive agreement with expert consensus in assessing DRA causality in geriatric inpatients compared to the Naranjo algorithm. Our results further support implementation of the adjusted Kramer algorithm as part of a standardized DRA assessment in older adults.
药物相关入院(DRAs)是导致老年人可预防伤害的一个重要原因。目前存在多种评估药物不良反应因果关系的算法,包括 Naranjo 算法和经过调整的 Kramer 算法。这些工具在评估 DRA 因果关系方面的性能尚未得到稳健证实。本研究旨在评估调整后的 Kramer 算法在评估老年住院患者 DRA 因果关系方面的能力。
通过专家共识评估便利样本中入住学术医院急性老年病房的患者的 DRA。使用 Naranjo 和调整后的 Kramer 算法评估 DRA 的因果关系。计算两种算法与专家共识的阳性一致率。进行多变量逻辑回归分析以探讨 DRA 的决定因素。
共纳入 218 名老年住院患者,其中 65 名(29.8%)发生了 DRA。Naranjo 算法和调整后的 Kramer 算法的阳性一致率分别为 72.3%(95%置信区间(CI),59.6-82.3%)和 100%(95%CI,93.0-100%)。利尿剂是主要的罪魁祸首,大多数 DRA 归因于跌倒(n=18;27.7%)。与跌倒相关的主要诊断与 DRA 独立相关(优势比 20.11;95%CI,5.60-72.24)。
与 Naranjo 算法相比,调整后的 Kramer 算法在评估老年住院患者 DRA 因果关系方面与专家共识的阳性一致率更高。我们的研究结果进一步支持将调整后的 Kramer 算法作为老年人标准化 DRA 评估的一部分实施。