Department of Pharmacy and Therapeutics, University of Pittsburgh, Pittsburgh, Pennsylvania, USA.
Center for Pharmaceutical Policy and Prescribing, University of Pittsburgh, Pittsburgh, Pennsylvania, USA.
Pharmacoepidemiol Drug Saf. 2021 May;30(5):644-651. doi: 10.1002/pds.5206. Epub 2021 Mar 2.
Canagliflozin, a sodium-glucose cotransporter 2 inhibitor indicated for lowering glucose, has been increasingly used in diabetes patients because of its beneficial effects on cardiovascular and renal outcomes. However, clinical trials have documented an increased risk of lower extremity amputations (LEA) associated with canagliflozin. We applied machine learning methods to predict LEA among diabetes patients treated with canagliflozin.
Using claims data from a 5% random sample of Medicare beneficiaries, we identified 13 904 diabetes individuals initiating canagliflozin between April 2013 and December 2016. The samples were randomly and equally split into training and testing sets. We identified 41 predictor candidates using information from the year prior to canagliflozin initiation, and applied four machine learning approaches (elastic net, least absolute shrinkage and selection operator [LASSO], gradient boosting machine and random forests) to predict LEA risk after canagliflozin initiation.
The incidence rate of LEA was 0.57% over a median 1.5 years follow-up. LASSO produced the best prediction, yielding a C-statistic of 0.81 (95% CI: 0.76, 0.86). Among individuals categorized in the top 5% of the risk score, the actual incidence rate of LEA was 3.74%. Among the 16 factors selected by LASSO, history of LEA [adjusted odds ratio (aOR): 33.6 (13.8, 81.9)] and loop diuretic use [aOR: 3.6 (1.8,7.3)] had the strongest associations with LEA incidence.
Our machine learning model efficiently predicted the risk of LEA among diabetes patients undergoing canagliflozin treatment. The risk score may support optimized treatment decisions and thus improve health outcomes of diabetes patients.
卡格列净是一种钠-葡萄糖协同转运蛋白 2 抑制剂,可降低血糖,由于其对心血管和肾脏结局的有益影响,在糖尿病患者中的应用日益增多。然而,临床试验记录了卡格列净相关的下肢截肢(LEA)风险增加。我们应用机器学习方法预测接受卡格列净治疗的糖尿病患者的 LEA。
我们使用来自 Medicare 受益人的 5%随机样本的索赔数据,确定了 13904 名在 2013 年 4 月至 2016 年 12 月期间开始使用卡格列净的糖尿病患者。样本随机且平均分为训练集和测试集。我们使用卡格列净起始前一年的信息确定了 41 个预测因子候选者,并应用了四种机器学习方法(弹性网络、最小绝对值收缩和选择算子 [LASSO]、梯度提升机和随机森林)来预测卡格列净起始后的 LEA 风险。
中位随访 1.5 年后,LEA 的发生率为 0.57%。LASSO 产生了最佳预测,C 统计量为 0.81(95%CI:0.76,0.86)。在风险评分最高的 5%的个体中,LEA 的实际发生率为 3.74%。在 LASSO 选择的 16 个因素中,LEA 史[调整优势比(aOR):33.6(13.8,81.9)]和噻嗪类利尿剂的使用[aOR:3.6(1.8,7.3)]与 LEA 发生率的关联最强。
我们的机器学习模型有效地预测了接受卡格列净治疗的糖尿病患者 LEA 的风险。风险评分可能支持优化治疗决策,从而改善糖尿病患者的健康结局。