- Factors Associated for Mild Cognitive Impairment in Older Korean Adults with Type 2 Diabetes Mellitus
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Yun Jeong Lee, Hye Mi Kang, Na Kyung Kim, Ju Yeon Yang, Jung Hyun Noh, Kyung Soo Ko, Byoung Doo Rhee, Dong-Jun Kim
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Diabetes Metab J. 2014;38(2):150-157. Published online April 18, 2014
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DOI: https://doi.org/10.4093/dmj.2014.38.2.150
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- Background
The aim of this study was to identify factors associated with mild cognitive impairment (MCI) in older Korean adults with type 2 diabetes mellitus. MethodsA total of 226 older (age ≥65 years) adults without a history of cerebrovascular disease or dementia participated in this study. Cognitive function was assessed with the Montreal Cognitive Assessment-Korean version (MoCA-K). A MoCA-K score <23 was defined as MCI. ResultsThe prevalence of MCI was 32.7%. In a logistic regression analysis, age (≥74 years old vs. 65-68 years old; odds ratio [OR], 3.69; 95% confidence interval [CI], 1.55 to 8.82; P=0.003), educational background (college graduation vs. no school or elementary school graduation; OR, 0.16; 95% CI, 0.05 to 0.46; P=0.001), and systolic blood pressure (≥135 mm Hg vs. ≤120 mm Hg; OR, 3.25; 95% CI, 1.29 to 8.17; P=0.012) were associated with MCI. ConclusionMore concentrated efforts focused on early detection and appropriate management of MCI may be required in older Korean adults with type 2 diabetes mellitus.
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- The Association of Self-Reported Coronary Heart Disease with Diabetes Duration in Korea
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Hye Mi Kang, Yun Jeong Lee, Dong-Jun Kim
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Diabetes Metab J. 2012;36(5):350-356. Published online October 18, 2012
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DOI: https://doi.org/10.4093/dmj.2012.36.5.350
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This study aimed to investigate the association of diabetes duration with self-reported coronary heart disease (CHD) in Korea. MethodsAmong data from 34,145 persons compiled in the third Korean National Health and Nutrition Examination Survey in 2005, laboratory test and nutritional survey data from 5,531 persons were examined. The participants were asked to recall a physician's diagnosis of CHD (angina or myocardial infarction). ResultsAge- and sex-adjusted relative risk for CHD was 1.51 (95% confidence interval [CI], 0.64 to 3.59; not significant) for diabetes with duration of <1 year, 2.27 (95% CI, 1.14 to 4.54; P=0.020) for diabetes with a duration of 1 to 5 years, and 3.29 (95% CI, 1.78 to 6.08; P<0.001) for diabetes with a duration >5 years, compared with non-diabetes as a control. Even after adjusting for age, sex, current smoking status, waist circumference, hypertension, triglycerides, high density lipoprotein cholesterol, and fasting plasma glucose, relative risk for CHD was 2.87 (95% CI, 1.01 to 8.11; P=0.047) in diabetes with a duration of 6 to 10 years and 4.07 (95% CI, 1.73 to 9.63; P=0.001) in diabetes with duration of >10 years with non-diabetes as a control. ConclusionCHD prevalence increased with an increase in diabetes duration in Korean men and women. Recently detected diabetes (duration <1 year) was not significantly associated with CHD prevalence compared to non-diabetes. However, diabetes of a duration of >5 years was associated with an increase in CHD compared to non-diabetics after adjusting for several CHD risk factors.
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- Predictive nomogram for coronary heart disease in patients with type 2 diabetes mellitus
Shucai Xiao, Youzheng Dong, Bin Huang, Xinghua Jiang Frontiers in Cardiovascular Medicine.2022;[Epub] CrossRef - Elevated lipoprotein(a) levels predict cardiovascular disease in type 2 diabetes mellitus: a 10-year prospective cohort study
Tae-Seok Lim, Jae-Seung Yun, Seon-Ah Cha, Ki-Ho Song, Ki-Dong Yoo, Yu-Bae Ahn, Yong-Moon Park, Seung-Hyun Ko The Korean Journal of Internal Medicine.2016; 31(6): 1110. CrossRef - Clinical Marker of Platelet Hyperreactivity in Diabetes Mellitus
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- Total Energy Intake May Be More Associated with Glycemic Control Compared to Each Proportion of Macronutrients in the Korean Diabetic Population
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Hye Mi Kang, Dong-Jun Kim
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Diabetes Metab J. 2012;36(4):300-306. Published online August 20, 2012
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DOI: https://doi.org/10.4093/dmj.2012.36.4.300
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4,262
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Major macronutrients for energy intake vary among countries and cultures. Carbohydrates, including rice, are the major component of daily energy intake in Korea. The aim of this study was to examine the association of daily energy intake or each proportion of macronutrients, especially carbohydrates, with glycemic control in diabetic Koreans. MethodsA total of 334 individuals with diabetes (175 men, age 57.4±0.8 years; 159 women, age 60.9±0.9 years) who participated in the 2005 Korean National Health and Nutrition Examination Survey were examined. Glycemic control was categorized based on concentration of glycated hemoglobin (HbA1c; HbA1c ≤6.5%; 6.6% to 8.0%; ≥8.1%). Dietary intake was assessed by using a 24-recall item questionnaire. ResultsHigh total energy intake was associated with poor glycemic control (HbA1c ≤6.5%, 1,824±75 kcal; 6.6% to 8.0%, 1,990±57 kcal; ≥8.1%, 2,144±73 kcal; P value for trend=0.002). Each proportion of protein, fat, or carbohydrate was not associated with glycemic control. Even after adjusting for several parameters, the association of daily energy intake with glycemic control still persisted. ConclusionTotal energy intake may be more closely related to glycemic control than each proportionof macronutrients in Korean diabetics.
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Shakil Ahmed, Md Sajjadul Haque Ripon, Mohammad Farhan Islam, Ahmad Ullah, Safayet Sultan, Mohammad Sajid, Tanjina Rahman Endocrine and Metabolic Science.2024; 14: 100156. CrossRef - The effect of mindful eating on dietary behaviour and fasting blood glucose in type 2 diabetes mellitus patients
Rizki Andriani, Aghnia Kamila, Roofi Asma Putri, Arif Fadhillah, Sabrina Helmi, Delia Septiani Healthcare in Low-resource Settings.2024;[Epub] CrossRef - The association between multiple trajectories of macronutrient intake and the risk of new‐onset diabetes in Chinese adults
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Fuyuko Takahashi, Yoshitaka Hashimoto, Ayumi Kaji, Ryosuke Sakai, Yuka Kawate, Yuriko Kondo, Takuro Okamura, Naoko Nakanishi, Saori Majima, Takafumi Osaka, Hiroshi Okada, Takafumi Senmaru, Emi Ushigome, Mai Asano, Masahide Hamaguchi, Masahiro Yamazaki, Ei Endocrine Journal.2024; 71(6): 583. CrossRef - A Nutritional Strategy Based on Multiple Components for Glycemic Control in Type 2 Diabetes: A Multicenter Randomized Controlled Clinical Trial
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- Metabolic Syndrome versus Framingham Risk Score for Association of Self-Reported Coronary Heart Disease: The 2005 Korean Health and Nutrition Examination Survey
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Hye Mi Kang, Dong-Jun Kim
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Diabetes Metab J. 2012;36(3):237-244. Published online June 14, 2012
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DOI: https://doi.org/10.4093/dmj.2012.36.3.237
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Several studies in Western populations have indicated that metabolic syndrome (MetS) is inferior to the Framingham risk score (FRS) in predicting coronary heart disease (CHD). However there has been no study about the predictability of MetS vs. FRS for CHD in Korea. MethodsAmong the 43,145 persons from the third Korea National Health and Nutrition Examination Survey in 2005, laboratory test and nutritional survey data from 5,271 persons were examined. Participants were also asked to recall a physician's diagnosis of CHD. ResultsThe median age was 46 (range, 20 to 78) in men (n=2,257) and 44 (range, 20 to 78) years in women (n=3,014). Prevalence of self-reported CHD was 1.7% in men and 2.1% in women. Receiver operating characteristic curves and their respective area under the curve (AUC) were used to compare the ability of the FRS and the number of components of MetS to predict self-reported CHD in each sex. In men, AUC of FRS was significantly larger than that of MetS (0.767 [0.708 to 0.819] vs. 0.677 [0.541 to 0.713], P<0.01). In women, AUC of FRS was comparable to that of MetS (0.777 [0.728 to 0.826] vs. 0.733 [0.673 to 0.795]), and was not significant. ConclusionThe data suggested that FRS was more closely associated with CHD compared to MetS in Korean men.
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