| Literature DB >> 28410648 |
Blake Lerner1, Sean Desrochers1, Navdeep Tangri2.
Abstract
Chronic kidney disease (CKD) currently affects 20 million Americans and is associated with increased morbidity and mortality. Resource-efficient and appropriate treatment of CKD benefits the patient and provides improved resource allocation for the health care system. Prediction models can be useful in efficiently allocating resources, and currently are being used at the bedside for several important clinical decisions. There is a paucity of prediction models in use in nephrology, but one such model, the Kidney Failure Risk Equation, uses routinely collected laboratory values and can inform clinical decisions related to the following: (1) triage of nephrology referrals, (2) evaluating the need for more intensive interdisciplinary clinic care, (3) determining the timing of modality education, and (4) dialysis access planning. The development of new models that predict survival and quality of life on dialysis, success on home modalities, failure of arteriovenous fistulas, and risk of cardiovascular disease in patients with CKD is needed.Entities:
Keywords: Risk prediction models; chronic kidney disease; dialysis
Mesh:
Year: 2017 PMID: 28410648 DOI: 10.1016/j.semnephrol.2016.12.004
Source DB: PubMed Journal: Semin Nephrol ISSN: 0270-9295 Impact factor: 5.299