Burckhardt Philipp, Nagin Daniel, Vijayasarathy Vijaya Priya Rama, Padman Rema
Department of Statistics & Data Science, Carnegie Mellon University, Pittsburgh, PA, USA.
The H. John Heinz III College of Information Systems and Public Policy.
AMIA Annu Symp Proc. 2018 Dec 5;2018:1196-1205. eCollection 2018.
Risk-stratifying chronic disease patients in real time has the potential to facilitate targeted interventions and improve disease management and outcomes. We apply group-based multi-trajectory modeling to risk stratify patients with chronic kidney disease (CKD) and its major complications into distinct trajectories of disease development and predict acute kidney injury (AKI), a serious, under-diagnosed outcome of CKD that is both preventable and treatable with early detection. Utilizing Electronic Health Record data of 1,947 patients, we identify eight risk groups with distinct trajectories and profiles. We observe that a higher estimated probability of AKI generally coincides with a higher risk group. Overall, at least 75% of patients stabilize into their final groups within less than two years from diagnosis of CKD Stage 3. Model calibration confirms that the estimated outcome probabilities are highly correlated with AKI incidence, providing group-specific and individual level predictions to improve clinical management of AKI in CKD patients.
实时对慢性病患者进行风险分层有可能促进有针对性的干预措施,并改善疾病管理和治疗效果。我们应用基于群组的多轨迹模型对慢性肾脏病(CKD)患者及其主要并发症进行风险分层,将其分为不同的疾病发展轨迹,并预测急性肾损伤(AKI),这是CKD一种严重且诊断不足的后果,早期检测可预防和治疗。利用1947名患者的电子健康记录数据,我们识别出八个具有不同轨迹和特征的风险组。我们观察到,AKI的估计概率越高,通常与风险组越高相关。总体而言,至少75%的患者在CKD 3期诊断后的不到两年内稳定进入其最终分组。模型校准证实,估计的结果概率与AKI发病率高度相关,提供特定组和个体水平的预测,以改善CKD患者AKI的临床管理。