DIABETES, TYPE II

1983 ◽  
Vol 18 (2) ◽  
pp. 36 ◽  
Author(s):  
Elizabeth A. Hamilton
2019 ◽  
Vol 72 (5) ◽  
pp. 1007-1011
Author(s):  
Igor I. Kobza ◽  
Oksana Z. Didenko ◽  
Ostap G. Yavorskyi ◽  
Тaras I. Kobza

Introduction: hypertension and diabetes remain the main risk factors for stroke, which leads to premature disability and mortality. The aim: To study the dynamics of blood pressure (BP) in patients of different age groups with hypertension and diabetes type II before and after carotid endarterectomy. Materials and methods: 90 patients with hypertension and diabetes type II were selected for CE. Patients are divided into two age groups: up to 65 years (group 1) and after 65 years (group 2). We assessed the dynamics of ambulatory blood pressure monitoring (ABPM). The examination was carried out 2 days before and 6 months after surgery. CE was conducted under local anaesthesia. Results: Before operation in patients in group 2, there was a significantly higher level of average systolic BP per 24 hours (p <0.02), per day (p <0.01), per night (p <0.01) and diastolic BP per night (p <0,01). At the preoperative stage, there was a significant increase in the parameters of the variability of BP, but the increase in the variability of BP with age was not fixed. After surgery, patients with Group 1 observed a more significant positive dynamics of ABPM indices than patients in Group 2. In two age groups, the percentage of patients with an insufficient reduction of BP at night was prevalent. Conclusions: Surgical treatment of carotid stenosis is associated with a steady decrease in BP in the distant period after CE. Significant regression of BP is characteristic for patients of the younger age group.


2013 ◽  
Vol 109 (11) ◽  
pp. 2924-2932 ◽  
Author(s):  
P Eijgenraam ◽  
M M Heinen ◽  
B A J Verhage ◽  
Y C Keulemans ◽  
L J Schouten ◽  
...  

Author(s):  
Michael F. Roizen ◽  
Stanley H. Rosenbaum

2020 ◽  
Vol 21 (1) ◽  
Author(s):  
Maryam Sobhani ◽  
Mohammad Amin Tabatabaiefar ◽  
Soudeh Ghafouri-Fard ◽  
Asadollah Rajab ◽  
Asal Hojjat ◽  
...  

Sensors ◽  
2020 ◽  
Vol 20 (9) ◽  
pp. 2734 ◽  
Author(s):  
Ayan Chatterjee ◽  
Martin W. Gerdes ◽  
Santiago G. Martinez

Social determining factors such as the adverse influence of globalization, supermarket growth, fast unplanned urbanization, sedentary lifestyle, economy, and social position slowly develop behavioral risk factors in humans. Behavioral risk factors such as unhealthy habits, improper diet, and physical inactivity lead to physiological risks, and “obesity/overweight” is one of the consequences. “Obesity and overweight” are one of the major lifestyle diseases that leads to other health conditions, such as cardiovascular diseases (CVDs), chronic obstructive pulmonary disease (COPD), cancer, diabetes type II, hypertension, and depression. It is not restricted within the age and socio-economic background of human beings. The “World Health Organization” (WHO) has anticipated that 30% of global death will be caused by lifestyle diseases by 2030 and it can be prevented with the appropriate identification of associated risk factors and behavioral intervention plans. Health behavior change should be given priority to avoid life-threatening damages. The primary purpose of this study is not to present a risk prediction model but to provide a review of various machine learning (ML) methods and their execution using available sample health data in a public repository related to lifestyle diseases, such as obesity, CVDs, and diabetes type II. In this study, we targeted people, both male and female, in the age group of >20 and <60, excluding pregnancy and genetic factors. This paper qualifies as a tutorial article on how to use different ML methods to identify potential risk factors of obesity/overweight. Although institutions such as “Center for Disease Control and Prevention (CDC)” and “National Institute for Clinical Excellence (NICE)” guidelines work to understand the cause and consequences of overweight/obesity, we aimed to utilize the potential of data science to assess the correlated risk factors of obesity/overweight after analyzing the existing datasets available in “Kaggle” and “University of California, Irvine (UCI) database”, and to check how the potential risk factors are changing with the change in body-energy imbalance with data-visualization techniques and regression analysis. Analyzing existing obesity/overweight related data using machine learning algorithms did not produce any brand-new risk factors, but it helped us to understand: (a) how are identified risk factors related to weight change and how do we visualize it? (b) what will be the nature of the data (potential monitorable risk factors) to be collected over time to develop our intended eCoach system for the promotion of a healthy lifestyle targeting “obesity and overweight” as a study case in the future? (c) why have we used the existing “Kaggle” and “UCI” datasets for our preliminary study? (d) which classification and regression models are performing better with a corresponding limited volume of the dataset following performance metrics?


1989 ◽  
Vol 21 (04) ◽  
pp. 222-223 ◽  
Author(s):  
M. Wicklmayr ◽  
K. Rett ◽  
E. Fink ◽  
W. Tschollar ◽  
H. Baldermann ◽  
...  

2019 ◽  
Vol 39 (2) ◽  
pp. 339-346
Author(s):  
Yixuan Han ◽  
Yanying Liu ◽  
Xuejun Liu ◽  
Wenhao Yang ◽  
Ping Yu ◽  
...  

Abstract Objective To explore whether cumulative serum urate (cumSU) is correlated with diabetes type II mellitus incidence. Methods In this study, we recruited individuals participating in all Kailuan health examinations from 2006 to 2013 without stroke, cancer, gestation, myocardial infarction, and diabetes type II diagnosis in the first three examinations. CumSU was calculated by multiplying the average serum urate concentration and the time between the two examinations (umol/L × year). CumSU levels were categorized into five groups: Q1–Q5. The effect of cumSU on diabetes type II incidence was estimated by logistic regression. Results A total of 36,277 individuals (27,077 men and 9200 women) participated in the final analysis. The multivariate logistic regression model showed the odds ratios (95% confidence intervals) of diabetes type II from Q1 to Q5 were 1.00 (reference), 1.25 (1.00 to 1.56), 1.43 (1.15 to 1.79), 1.49 (1.18 to 1.87), and 1.80 (1.40 to 2.32), respectively. Multivariable odds ratios per 1-standard deviation increase in cumSU were 1.26 (1.17 to 1.37) in all populations, 1.20 (1.10 to 1.32) for men, and 1.52 (1.27 to 1.81) for women, respectively. Conclusions CumSU is a significant risk factor for diabetes type II. Individuals with higher cumSU, especially women, are at a higher risk of diabetes type II independent of other known risk factors.Key Points• Cumulative exposure to serum urate is a significant risk factor for diabetes type II.• Individuals with higher cumSU, especially women, are at a higher risk of diabetes type II.


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