Metabolic syndrome and its components with neuron-specific enolase: A cross-sectional study in large health check-up population in China

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Abstract

Objective This study was aimed at investigating the relationship between neuron-specific enolase (NSE) and components of metabolic syndrome (MS). Design Cross-sectional study. Setting Chinese health check-up population. Participants 40 684 health check-up people were enrolled in this study from year 2014 to 2016. Main outcome measures OR and coefficient for MS. Results The percentage of abnormal NSE and MS was 26.85% and 8.85%, respectively. There were significant differences in sex, body mass index, drinking habit, triglycerides (TGs), high-density lipoprotein cholesterol (HDL-C), blood pressure and MS between low-NSE and high-NSE groups. In logistic regression analysis, elevated NSE was present in MS, higher body mass index, hypertriglyceridaemia, hypertension and low-HDL groups. Stepwise linear analysis showed a negative correlation between NSE and fasting blood glucose (FBG) (<6.0 mmol/L), and a positive correlation between NSE and TGs (<20 mmol/L), systolic blood pressure (75-200 mm Hg), HDL-C (0.75-2.50 mmol/L), diastolic blood pressure (<70 mm Hg) and FBG (6.00-20.00 mmol/L). Furthermore, MS was positively correlated with NSE within the range of 2.00-7.50 ng/mL, but had a negative correlation with NSE within the range of 7.50-23.00 ng/mL. Conclusion There are associations between NSE with MS and its components. The result suggests that NSE may be a potential predictor of MS. Further research could be conducted in discussing the potential mechanism involved.

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Wang, S. Y., Zha, X. J., Zhu, X. Y., Li, W. B., Ma, J., Wu, Z. W., … Wen, Y. F. (2018). Metabolic syndrome and its components with neuron-specific enolase: A cross-sectional study in large health check-up population in China. BMJ Open, 8(4). https://doi.org/10.1136/bmjopen-2017-020899

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