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Showing 3 results for Metabolic Disease

Farhad Daryanoosh , Hossein Jafari , Eskandar Rahimi , Davood Mehrbani , Firouz Soltani ,
Volume 71, Issue 9 (12-2013)
Abstract

Background: Adipokines are peptides secreted by adipose tissue that affect whole-body energy metabolism. Exercise training exerts beneficial effects on adipose tissue. However, less is known regarding visfatin’s, IL-6 & TNF-α response to an interval acute training. Therefore, we investigated the effects of acute interval exercise on plasma visfatin, TNF-α and IL-6 levels, in healthy female rats. Furthermore, correlate between changes probably these factors were also assessed.
Methods: This study was conducted experimentally. Forty five female sprague dawley rat were randomly divided into three groups: pre test (n= 15), treadmill exercise (n= 15) and sedentary controls (n= 15). The acute alternative exercise consisted of treadmill running: 3 session/ week for 8 week. The changes of plasma IL-6, TNF-α and Visfatin levels were measured by ELISA analysis. Data were analyzed using analysis of variance with measures (ANOVA) and post hoc Tukey test.
Results: Acute interval treadmill exercise led to significant decreases in visfatin (P= 0/036), IL-6 (P= 0/009) and TNF-α (P= 0/022) plasma levels between the groups. Also, this study no significant correlations between the changes in adipokines were observed.
Conclusion: Decreased levels of TNF-α and IL-6 correlated with intensity and duration exercise. Furthermore, probably there were some factors except weight decreasing that affects on visfatin decrease. Therefore, the reduction of this factor may cause in preventing metabolic disease.

Maryam Asgari, Masoud Mohammadi,
Volume 75, Issue 11 (2-2018)
Abstract


Hossein Tireh , Mohammad Taghi Shakeri , Sadegh Rasoulinezhad , Habibollah Esmaily , Razieh Yousefi ,
Volume 77, Issue 5 (8-2019)
Abstract

Background: Diabetes mellitus as a chronic disease is the most common disease caused by metabolic disorders and it is one of the most important health issues all around the world. Nowadays, data mining methods are applied in different fields of sciences due to data mining methods capability. Therefore, in this study, we compared the efficiency of data mining methods in predicting type 2 diabetes.
Methods: In this cross-sectional study, the data of 7,000 participants in the Diabetes Screening Project in Samen, Mashhad City, Iran, were considered in 2016. There were 540 untreated diabetic patients. The Samen Project was included in the routine examinations of diabetes patients like blood glucose, eyes health, nephropathy, and legs health. So, in order to maintain balance, 600 healthy individuals were selected in a proportional volume sampling in this study. Therefore, the total sample size was 1140 people. In this study, people with diabetes aged over 30 years old were enrolled and participants with the previous history of type 2 diabetes, with normal blood glucose due to drug use or other issues at the time of the study, were excluded.
Results: All three models (Logistic regression, simple Bayesian and support vector machine models) had the same test accuracy (86%), however, in terms of area under the receiver operating characteristic (ROC) curve (AUC), logistic regression and simple Bayesian models had better performance (AUC=90% against AUC=88%). In the simple Bayesian model and logistic regression, body mass index (BMI) and age variables were the most important variables, while BMI and blood pressure variables were the most important factors in the support vector machine model.
Conclusion: According to the results, all three models had the same accuracy. In terms of area under the curve (AUC), logistic and simple Bayes models had better performance than the support vector machine model. Totally all three models had almost the same performance. Based on all three models, BMI was the most important variable.


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