Title :
Development and testing of prediction models for end stage kidney disease patient nonadherence to renal replacement treatment regimens utilizing big data and healthcare informatics
Author :
Yue Jiao;Dan Geary;Sheetal Chaudhuri;Mahathi Mothali;Terry Ketchersid;Dugan Maddux;John Larkin;Scott Ash;Len Usvyat;Franklin Maddux;Peter Kotanko
Author_Institution :
Fresenius Medical Care North America, Waltham, United States
Abstract :
In patients with end stage kidney disease (ESKD), renal replacement therapy assumes some functions of the diseased kidney and is required to sustain life. Hemodialysis (HD) is the primary modality for treatment of ESKD and includes treatments to filter the body´s toxins from the blood three times per week. It has been shown that nonadherence with dialysis treatment regimens is associated with increased morbidity and mortality, even with missing one routine session of HD [1][2]. We aimed to utilize clinical and nonclinical data sources to develop predictive models (PMs) that identify patients with a high probability of not attending their HD treatments within the following week.
Keywords :
"Atmospheric modeling","Predictive models","High definition video","Atmospheric measurements","Analytical models","Meteorology","Sensitivity"
Conference_Titel :
Bioinformatics and Biomedicine (BIBM), 2015 IEEE International Conference on
DOI :
10.1109/BIBM.2015.7359939