Akhlaghi A, Hosseini M, Mahmoodi M, Shamsipour M, Najafi E. A Comparison Between Weibull, Gama, Log -Normal and Log -Logistic Mixture Cure Models in Survival Analysis of Patients Undergoing (Continuous Ambulatory Peritoneal Dialysis) CAPD. irje 2012; 8 (2) :29-38
URL:
http://irje.tums.ac.ir/article-1-6-en.html
1- , mhossein110@yahoo.com
Abstract: (16890 Views)
Background & Objectives: Peritoneal
dialysis is one of the most common types of dialysis in patients with renal
failure. However multivariate analysis such as log- rank test and Cox have
usually used to evaluate association of risk factors in survival of this group
of patients, the aim of this study was to perform of Weibull, Gamma, Lognormal and
Logistic Mixture cure models in survival analysis of these patients.
Methods: Data
of 433 patients undergoing CAPD who registered in two centers in Tehran, Iran
between 1997 to 2009 were used in this analysis. We investigated center,
gender, age, cholesterol, Low Density Lipoprotein (LDL), High density
lipoprotein (HDL), triglyceride, albumin, hemoglobin, creatinine, Fasting Blood
Sugar (FBS), calcium and phosphorous as variables effect with Kaplan-Meier and
cure model. CUREREGR module was used for survival analysis.
Results: Comparison
of AIC (Akaike Information Criterion) of Weibull, Gama, Lognormal and Logistic
Mixture cure models showed that Weibull distribution AIC is lower for almost
all variables than other distributions. Weibull distribution has better fitness
for data than others. In the multivariate Weibull model, age and albumin
variables had significant effect on long-term survival of patients (P<0.01).
Triglycerides effect on long-term survival had borderline (P = 0.065). Also
HDL, FBS and calcium were significant on short term survival (P<0.01) but
significance of LDL was borderline (P=0.088).
Conclusion: Cure models have the ability to analyze
dialysis patients' survival data and can differentiate long-term survival from short-
term survival. The interpretation of survival data with these statistical
models could be more accurate and would help to make better prediction for
patients by health care professionals.
Type of Study:
Research |
Subject:
General Received: 2011/08/21 | Accepted: 2011/10/29 | Published: 2013/08/18
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