Department of Medicine, University of British Columbia, Vancouver, British Columbia, Canada.
Department of Medicine, University of Calgary, Calgary, Alberta, Canada.
Am J Hypertens. 2022 Apr 2;35(4):365-373. doi: 10.1093/ajh/hpab195.
Targeted treatment of primary aldosteronism (PA) is informed by adrenal vein sampling (AVS), which remains limited to specialized centers. Clinical prediction models have been developed to help select patients who would most likely benefit from AVS. Our aim was to assess the performance of these models for PA subtyping.
This external validation study evaluated consecutive patients referred for PA who underwent AVS at a tertiary care referral center in Alberta, Canada during 2006-2018. In alignment with the original study designs and intended uses of the clinical prediction models, the primary outcome was the presence of lateralization on AVS. Model discrimination was evaluated using the C-statistic. Model calibration was assessed by comparing the observed vs. predicted probability of lateralization in the external validation cohort.
The validation cohort included 342 PA patients who underwent AVS (mean age, 52.1 years [SD, 11.5]; 201 [58.8%] male; 186 [54.4%] with lateralization). Six published models were assessed. All models demonstrated low-to-moderate discrimination in the validation set (C-statistics; range, 0.60-0.72), representing a marked decrease compared with the derivation sets (range, 0.80-0.87). Comparison of observed and predicted probabilities of unilateral PA revealed significant miscalibration. Calibration-in-the-large for every model was >0 (range, 0.35-1.67), signifying systematic underprediction of lateralizing disease. Calibration slopes were consistently <1 (range, 0.35-0.87), indicating poor performance at the extremes of risk.
Overall, clinical prediction models did not accurately predict AVS lateralization in this large cohort. These models cannot be reliably used to inform the decision to pursue AVS for most patients.
通过肾上腺静脉取样 (AVS) 对原发性醛固酮增多症 (PA) 进行靶向治疗,该方法仍然仅限于专业中心。已经开发了临床预测模型来帮助选择最有可能从 AVS 中受益的患者。我们的目的是评估这些模型在 PA 亚型分类中的表现。
这项外部验证研究评估了 2006 年至 2018 年期间在加拿大艾伯塔省的一家三级转诊中心因 PA 接受 AVS 的连续患者。根据原始研究设计和临床预测模型的预期用途,主要结局是 AVS 上的侧化存在。使用 C 统计量评估模型区分度。通过比较外部验证队列中观察到的与预测的侧化概率来评估模型校准。
验证队列包括 342 名接受 AVS 的 PA 患者(平均年龄 52.1 岁 [标准差 11.5];201 名 [58.8%] 男性;186 名 [54.4%] 有侧化)。评估了 6 个已发表的模型。所有模型在验证集中的区分度均较低(C 统计量;范围为 0.60-0.72),与推导集相比明显降低(范围为 0.80-0.87)。单侧 PA 的观察概率与预测概率的比较显示存在明显的校准不良。每个模型的大校准均大于 0(范围为 0.35-1.67),表示疾病侧化的系统低估。校准斜率始终小于 1(范围为 0.35-0.87),表明在风险极端处表现不佳。
总体而言,这些临床预测模型在这个大队列中无法准确预测 AVS 的侧化。对于大多数患者,这些模型不能可靠地用于告知进行 AVS 的决策。