| Literature DB >> 30815162 |
Philipp Burckhardt1, Daniel Nagin2, Vijaya Priya Rama Vijayasarathy2, Rema Padman2.
Abstract
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.Entities:
Mesh:
Year: 2018 PMID: 30815162 PMCID: PMC6371306
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076