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://www.cdc.gov/nchs/index.htm ). This study followed the Reporting of Observational Studies in Epidemiology (STROBE) reporting guidelines for cross-sectional studies. Study population The NHANES datasets were utilized for this investigation from 1999 to 2020. To ensure the
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DM patient sample. Materials and methods Population and study design This was a retrospective cross-sectional study analysis conducted at Beijing Tongren Hospital. Patients were recruited from June 2015 to January 2017 from the hospital
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Institute of Applied Health Research, College of Medical and Dental Sciences, University of Birmingham, Birmingham, UK
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Queen Elizabeth Hospital, University Hospitals Birmingham NHS Foundation Trust, Birmingham, UK
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were satisfied with video content and user-friendliness. Liu et al. ( 28 ) Objective: Determine factors associated with older adults' understanding of diabetes. Method: Cross-sectional study. The videos were rated helpful and easy
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Department of Endocrinology, Quanzhou First Hospital Affiliated to Fujian Medical University, Quanzhou, China
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glomerular filtration rate, indicating that TMAO might be a biomarker of renal function or as a risk factor for macro- and microvascular complications, especially impaired renal function. Another cross-sectional survey study showed that elevated plasma TMAO
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. Methods Study design and patient recruitment The present study is a part of the Diabetes Clinical Research Center Project that authorized and funded by the Nantong Science and Technology Bureau. We used a cross-sectional observational design to
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, and establish possible associations of skin disorders with anthropometric and metabolic data. Study design and participants The study was planned as a prospective, monocentric and observational cross-sectional study of a defined
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investigate the accumulation and distribution of IMAT in the lower extremities by MRI and to further evaluate its relationship with glucose metabolism in patients with obesity. Materials and methods Subjects This cross-sectional study recruited 120
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T2DM. Methods Study design and participants The data of this study were obtained from a cross-sectional study, the METAL study (Environmental Pollutant Exposure and Metabolic Diseases in Shanghai, www.chictr.org.cn , ChiCTR1800017573
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Global Health Research Institute, School of Human Development and Health, University of Southampton, Southampton, UK
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anthropometric determinants of adiponectin have not previously been analysed. Materials and methods Study design and participants’ characteristics The Black urban African women in this cross-sectional study were participants in the Study of Women
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to overcome these obstacles and elucidate the issue, we carried out a large cross-sectional study of glycemic status in 1614 PCOS women and 362 normally ovulating, non-hyperandrogenic women, who served as controls. To the best of our knowledge, this