Klamrowski Martin M, Klein Ran, McCudden Christopher, Green James R, Rashidi Babak, White Christine A, Oliver Matthew J, Molnar Amber O, Edwards Cedric, Ramsay Tim, Akbari Ayub, Hundemer Gregory L
Department of Systems and Computer Engineering, Carleton University, Ottawa, Ontario, Canada.
Division of Nuclear Medicine, Department of Medicine, University of Ottawa, Ottawa, Ontario, Canada.
Clin J Am Soc Nephrol. 2024 Sep 1;19(9):1098-1108. doi: 10.2215/CJN.0000000000000489. Epub 2024 May 24.
Nearly half of all patients with CKD who progress to kidney failure initiate dialysis in an unplanned fashion, which is associated with poor outcomes. Machine learning models using routinely collected data can accurately predict 6- to 12-month kidney failure risk among the population with advanced CKD. These machine learning models retrospectively deliver advanced warning on a substantial proportion of unplanned dialysis events.
Approximately half of all patients with advanced CKD who progress to kidney failure initiate dialysis in an unplanned fashion, which is associated with high morbidity, mortality, and health care costs. A novel prediction model designed to identify patients with advanced CKD who are at high risk for developing kidney failure over short time frames (6–12 months) may help reduce the rates of unplanned dialysis and improve the quality of transitions from CKD to kidney failure.
We performed a retrospective study using machine learning random forest algorithms incorporating routinely collected age and sex data along with time-varying trends in laboratory measurements to derive and validate 6- and 12-month kidney failure risk prediction models in the population with advanced CKD. The models were comprehensively characterized in three independent cohorts in Ontario, Canada—derived in a cohort of 1849 consecutive patients with advanced CKD (mean [SD] age 66 [15] years, eGFR 19 [7] ml/min per 1.73 m) and validated in two external advanced CKD cohorts (=1356; age 69 [14] years, eGFR 22 [7] ml/min per 1.73 m).
Across all cohorts, 55% of patients experienced kidney failure, of whom 35% involved unplanned dialysis. The 6- and 12-month models demonstrated excellent discrimination with area under the receiver operating characteristic curve of 0.88 (95% confidence interval [CI], 0.87 to 0.89) and 0.87 (95% CI, 0.86 to 0.87) along with high probabilistic accuracy with the Brier scores of 0.10 (95% CI, 0.09 to 0.10) and 0.14 (95% CI, 0.13 to 0.14), respectively. The models were also well calibrated and delivered timely alerts on a significant number of patients who ultimately initiated dialysis in an unplanned fashion. Similar results were found upon external validation testing.
These machine learning models using routinely collected patient data accurately predict near-future kidney failure risk among the population with advanced CKD and retrospectively deliver advanced warning on a substantial proportion of unplanned dialysis events. Optimal implementation strategies still need to be elucidated.
进展为肾衰竭的慢性肾脏病(CKD)患者中,近一半以非计划的方式开始透析,这与不良预后相关。使用常规收集数据的机器学习模型能够准确预测晚期CKD人群在6至12个月内发生肾衰竭的风险。这些机器学习模型可对相当一部分非计划透析事件进行回顾性提前预警。
进展为肾衰竭的晚期CKD患者中,约一半以非计划的方式开始透析,这与高发病率、死亡率及医疗费用相关。一种旨在识别晚期CKD患者中在短时间内(6 - 12个月)有高肾衰竭风险的新型预测模型,可能有助于降低非计划透析率,并改善从CKD到肾衰竭的过渡质量。
我们进行了一项回顾性研究,使用机器学习随机森林算法,纳入常规收集的年龄和性别数据以及实验室测量的随时间变化趋势,以推导和验证晚期CKD人群6个月和12个月的肾衰竭风险预测模型。这些模型在加拿大安大略省的三个独立队列中进行了全面特征分析——在一个由1849例连续的晚期CKD患者组成的队列中推导得出(平均[标准差]年龄66[15]岁,估算肾小球滤过率[eGFR]为19[7]ml/(min·1.73m²)),并在两个外部晚期CKD队列中进行验证(=1356;年龄69[14]岁,eGFR 22[7]ml/(min·1.73m²))。
在所有队列中,55%的患者发生了肾衰竭,其中35%涉及非计划透析。6个月和12个月的模型显示出优异的辨别能力,受试者操作特征曲线下面积分别为0.88(95%置信区间[CI],0.87至0.89)和0.87(95%CI,0.86至0.87),同时具有较高的概率准确性,Brier评分分别为0.10(95%CI,0.09至0.10)和0.14(95%CI,0.