A Machine Learning Model for Risk Stratification of Postdiagnosis Diabetic Ketoacidosis Hospitalization in Pediatric Type 1 Diabetes: Retrospective Study.

Q2 Medicine JMIR Diabetes Pub Date : 2024-08-07 DOI:10.2196/53338
Devika Subramanian, Rona Sonabend, Ila Singh
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引用次数: 0

Abstract

Background: Diabetic ketoacidosis (DKA) is the leading cause of morbidity and mortality in pediatric type 1 diabetes (T1D), occurring in approximately 20% of patients, with an economic cost of $5.1 billion/year in the United States. Despite multiple risk factors for postdiagnosis DKA, there is still a need for explainable, clinic-ready models that accurately predict DKA hospitalization in established patients with pediatric T1D.

Objective: We aimed to develop an interpretable machine learning model to predict the risk of postdiagnosis DKA hospitalization in children with T1D using routinely collected time-series of electronic health record (EHR) data.

Methods: We conducted a retrospective case-control study using EHR data from 1787 patients from among 3794 patients with T1D treated at a large tertiary care US pediatric health system from January 2010 to June 2018. We trained a state-of-the-art; explainable, gradient-boosted ensemble (XGBoost) of decision trees with 44 regularly collected EHR features to predict postdiagnosis DKA. We measured the model's predictive performance using the area under the receiver operating characteristic curve-weighted F1-score, weighted precision, and recall, in a 5-fold cross-validation setting. We analyzed Shapley values to interpret the learned model and gain insight into its predictions.

Results: Our model distinguished the cohort that develops DKA postdiagnosis from the one that does not (P<.001). It predicted postdiagnosis DKA risk with an area under the receiver operating characteristic curve of 0.80 (SD 0.04), a weighted F1-score of 0.78 (SD 0.04), and a weighted precision and recall of 0.83 (SD 0.03) and 0.76 (SD 0.05) respectively, using a relatively short history of data from routine clinic follow-ups post diagnosis. On analyzing Shapley values of the model output, we identified key risk factors predicting postdiagnosis DKA both at the cohort and individual levels. We observed sharp changes in postdiagnosis DKA risk with respect to 2 key features (diabetes age and glycated hemoglobin at 12 months), yielding time intervals and glycated hemoglobin cutoffs for potential intervention. By clustering model-generated Shapley values, we automatically stratified the cohort into 3 groups with 5%, 20%, and 48% risk of postdiagnosis DKA.

Conclusions: We have built an explainable, predictive, machine learning model with potential for integration into clinical workflow. The model risk-stratifies patients with pediatric T1D and identifies patients with the highest postdiagnosis DKA risk using limited follow-up data starting from the time of diagnosis. The model identifies key time points and risk factors to direct clinical interventions at both the individual and cohort levels. Further research with data from multiple hospital systems can help us assess how well our model generalizes to other populations. The clinical importance of our work is that the model can predict patients most at risk for postdiagnosis DKA and identify preventive interventions based on mitigation of individualized risk factors.

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儿科 1 型糖尿病患者诊断后糖尿病酮症酸中毒住院风险分层的机器学习模型:回顾性研究
背景:糖尿病酮症酸中毒(DKA)是小儿 1 型糖尿病(T1D)发病率和死亡率的主要原因,约 20% 的患者会发生 DKA,在美国造成的经济损失高达 51 亿美元/年。尽管诊断后 DKA 有多种风险因素,但仍需要可解释的、可用于临床的模型,以准确预测已确诊的儿科 T1D 患者的 DKA 住院情况:我们旨在开发一种可解释的机器学习模型,利用日常收集的电子健康记录(EHR)数据时间序列来预测 T1D 儿童确诊后 DKA 的住院风险:我们利用 2010 年 1 月至 2018 年 6 月期间在美国一家大型三级医疗儿科医疗系统接受治疗的 3794 名 T1D 患者中的 1787 名患者的电子病历数据,开展了一项回顾性病例对照研究。我们利用 44 个定期收集的 EHR 特征训练了最先进的可解释梯度提升决策树集合 (XGBoost),以预测诊断后 DKA。我们在 5 倍交叉验证设置中使用接收者操作特征曲线下面积-加权 F1 分数、加权精确度和召回率来衡量模型的预测性能。我们分析了 Shapley 值,以解释所学模型并深入了解其预测结果:我们的模型利用相对较短的诊断后常规临床随访数据,区分了诊断后发生 DKA 的人群和未发生 DKA 的人群(P1 分数为 0.78(SD 0.04),加权精确度和召回率分别为 0.83(SD 0.03)和 0.76(SD 0.05))。通过分析模型输出的夏普利值,我们确定了在队列和个体层面预测诊断后 DKA 的关键风险因素。我们观察到诊断后 DKA 风险随两个关键特征(糖尿病年龄和 12 个月时的糖化血红蛋白)的急剧变化,从而得出可能进行干预的时间间隔和糖化血红蛋白临界值。通过对模型生成的 Shapley 值进行聚类,我们自动将队列分为 3 组,诊断后 DKA 风险分别为 5%、20% 和 48%:我们建立了一个可解释、可预测的机器学习模型,有望整合到临床工作流程中。该模型对小儿 T1D 患者进行了风险分级,并利用从诊断开始的有限随访数据确定了诊断后 DKA 风险最高的患者。该模型确定了关键的时间点和风险因素,以指导个体和群体层面的临床干预。通过对多个医院系统的数据进行进一步研究,可以帮助我们评估我们的模型在其他人群中的推广效果。我们工作的临床重要性在于,该模型可以预测诊断后 DKA 风险最高的患者,并根据个体化风险因素的缓解情况确定预防性干预措施。
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来源期刊
JMIR Diabetes
JMIR Diabetes Computer Science-Computer Science Applications
CiteScore
4.00
自引率
0.00%
发文量
35
审稿时长
16 weeks
期刊最新文献
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