A Simple Risk Score for Identifying Individuals with Impaired Fasting Glucose in the Southern Chinese Population
Abstract
:1. Introduction
2. Methods
2.1. Population for Establishing the Risk Scores
2.2. Population for Validating the Risk Scores
2.3. Data Collection
2.4. Diagnostic Criteria for Impaired Fasting Glucose (IFG)
2.5. Statistical Analysis
3. Results
3.1. Characteristics of the Study Populations
Variable or Statistic | Derivation Sample | Validation Sample 1 | Validation Sample 2 | Validation Sample 3 | P a Value |
---|---|---|---|---|---|
N (% of men) | 6033 (32.0) | 1186 (37.8) | 3162 (28.4) | 1289 (28.4) | -- |
Mean age (year) | 51.6 ± 12.7 | 49.4 ± 13.2 | 57.5 ± 5.2 | 43.6 ± 14.3 | <0.001 |
BMI(kg/m2) | 23.5 ± 3.4 | 23.0 ± 3.3 | 23.3 ± 3.2 | 24.2 ± 4.0 | 0.04 |
Waist circumference(cm) | 79.1 ± 9.4 | 77.7 ± 9.3 | 82.4 ± 9.1 | 82.4 ± 12.1 | <0.001 |
Systolic blood pressure (mmHg) | 123.4 ± 19.7 | 128.6 ± 20.8 | 123.6 ± 17.7 | 120.5 ± 22.9 | 0.002 |
Diastolic blood pressure (mmHg) | 79.1 ± 10.6 | 81.6 ± 10.3 | 78.2 ± 10.7 | 82.4 ± 14.0 | 0.01 |
Fast blood glucose (mmol/L) | 5.54 ± 1.49 | 5.63 ± 1.52 | 4.77 ± 1.46 | 4.92 ± 1.35 | 0.03 |
Number of patients with IFG | 384 | 106 | 95 | 37 | -- |
IFG (%) | 6.2 | 8.9 | 3.0 | 2.9 | 0.02 |
Obesity (%) b | 9.0 | 6.9 | 7.1 | 16.9 | 0.01 |
Central obesity (%) c | 32.4 | 34.6 | 41.6 | 45.5 | 0.02 |
Hypertension (%) | 32.8 | 33.7 | 34.3 | 30.3 | 0.33 |
Family history of diabetes (%) | 17.6 | 6.1 | 16.3 | 2.2 | <0.001 |
3.2. Development of the Risk Scores
Variable or Statistic | Men | Women | ||||
---|---|---|---|---|---|---|
β Coefficient | OR (95% CI) | Score | β Coefficient | OR (95% CI) | Score | |
Age(years): 20–39 | -- | 1.00 | 0 | -- | 1.00 | 0 |
40–49 | 1.77 | 5.85 (1.68–20.34) | 18 | 1.10 | 3.00 (1.53–5.90) | 11 |
50–59 | 1.95 | 6.99 (2.12–23.03) | 19 | 1.53 | 4.59 (2.42–8.72) | 15 |
Over 60 | 2.04 | 7.69 (2.33–25.40) | 20 | 1.95 | 7.03 (3.68–13.41) | 20 |
Waist circumference(cm): men <90,women <80 | -- | 1.00 | 0 | -- | 1.00 | 0 |
men ≥90,women ≥80 | −0.12 | 0.89 (0.55–1.43) | −1 | 0.54 | 1.72 (1.20–2.48) | 5 |
Family history of diabetes: | ||||||
No | -- | 1.00 | 0 | -- | 1.00 | 0 |
Yes | 0.16 | 1.18 (0.69–2.01) | 2 | 0.46 | 1.58 (1.12–2.22) | 5 |
BMI: BMI < 24 | -- | 1.00 | 0 | -- | 1.00 | 0 |
24 ≤ BMI < 28 | 0.44 | 1.56 (0.93–2.61) | 4 | 0.09 | 1.09 (0.76–1.58) | 1 |
BMI ≥ 28 | 0.93 | 2.54 (1.33–4.86) | 9 | 0.49 | 1.63 (1.00–2.64) | 5 |
Hypertension: No | -- | 1.00 | 0 | -- | -- | -- |
Yes | 0.78 | 2.19 (1.43–3.35) | 8 | -- | -- | -- |
Maximum score | 38 | 35 |
3.3. Internal and External Validation of the Risk Scores
Validation | Model for Men | Model for Women |
---|---|---|
Internal validation studies in the derivation sample | ||
Goodness of fit(P value) | 0.40 | 0.38 |
ROC c-statistic(95% CI) | 0.70 (0.65–0.74) | 0.70 (0.67–0.73) |
External validation studies in the validation sample 1 | ||
Goodness of fit(P value) | 0.59 | 0.96 |
ROC c-statistic(95% CI) | 0.75 (0.67–0.83) | 0.77 (0.71–0.83) |
External validation studies in the validation sample 2 | ||
Goodness of fit(P value) | 0.78 | 0.56 |
ROC c-statistic(95% CI) | 0.74 (0.61–0.86) | 0.72 (0.65–0.78) |
External validation studies in the validation sample 3 | ||
Goodness of fit(P value) | 0.49 | 0.54 |
ROC c-statistic(95% CI) | 0.31 (0.20–0.43) | 0.50 (0.38–0.61) |
Total Score | Number (%) | Sensitivity(%) | Specificity (%) | PPV (%) | NPV (%) |
---|---|---|---|---|---|
Derivation sample | |||||
Model for men | |||||
≥23 | 747 (50.5) | 75.5 | 51.4 | 12 | 97 |
Model for women | |||||
≥16 | 1755 (52.1) | 77.5 | 49.8 | 10 | 97 |
Validation sample 1 | |||||
Men (≥23) | 136 (41.5) | 73.3 | 64.1 | 13 | 97 |
Women (≥16) | 255 (44.4) | 81.0 | 59.7 | 19 | 96 |
Validation sample 2 | |||||
Men (≥23) | 430 (51.7) | 78.9 | 51.0 | 6 | 99 |
Women (≥16) | 1254 (58.1) | 89.3 | 41.8 | 5 | 99 |
Validation sample 3 | |||||
Men (≥23) | 160 (41.1) | 30.8 | 48.8 | 2 | 96 |
Women (≥16) | 362 (40.5) | 41.7 | 59.0 | 4 | 96 |
3.4. Comparison of the Current Risk Scores with Other Existing Scores for Pre-Diabetes
Derivation Population (Publication Year) | Predictors Involved | Optimal Cut-Off Value (Range) | Area under the (95%CI) | Sensitivity at the Optimal Cut-Off Value (%) | Specificity at the Optimal Cut-off Value (%) | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
In Original Population | In the Population of This Study | p Value * | In Original Population | In the Population of This Study | In Original Population | In the Population of This Study | ||||||
USA (2008) | Age, sex, BMI, hypertension, family history of diabetes, resting heart rate | 5 (0–16) | 0.74 | 0.66 (0.63–0.68) | 0.04 | 87.0 | 92.0 | 43.3 | 26.4 | |||
Shanghai, China (2009) | Age, waist circumference, family history of diabetes, systolic blood pressure | 5 (4–11.7) | 0.70 | 0.67 (0.64–0.70) | 0.06 | 68.2 | 68.5 | 61.7 | 54.9 | |||
Chengdu, China (2010) | Age, occupational physical activity, family history of diabetes, BMI, central obesity, hypertension, leisure physical activity, gestational diabetes, number of deliveries | Men: 5 (0–18) | Men: 0.72 (0.69–0.74) | Men: 0.66 (0.61–0.72) | 0.06 | Men: 74.1 | Men: 73.3 | Men: 58.4 | Men: 54.2 | |||
Women: 6 (0–22) | Women: 0.73 (0.71–0.75) | Women: 0.67 (0.63–0.71) | Women: 75.6 | Women: 44.5 | Women: 65.6 | Women: 76.1 |
4. Discussion
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Wang, H.; Liu, T.; Qiu, Q.; Ding, P.; He, Y.-H.; Chen, W.-Q. A Simple Risk Score for Identifying Individuals with Impaired Fasting Glucose in the Southern Chinese Population. Int. J. Environ. Res. Public Health 2015, 12, 1237-1252. https://doi.org/10.3390/ijerph120201237
Wang H, Liu T, Qiu Q, Ding P, He Y-H, Chen W-Q. A Simple Risk Score for Identifying Individuals with Impaired Fasting Glucose in the Southern Chinese Population. International Journal of Environmental Research and Public Health. 2015; 12(2):1237-1252. https://doi.org/10.3390/ijerph120201237
Chicago/Turabian StyleWang, Hui, Tao Liu, Quan Qiu, Peng Ding, Yan-Hui He, and Wei-Qing Chen. 2015. "A Simple Risk Score for Identifying Individuals with Impaired Fasting Glucose in the Southern Chinese Population" International Journal of Environmental Research and Public Health 12, no. 2: 1237-1252. https://doi.org/10.3390/ijerph120201237
APA StyleWang, H., Liu, T., Qiu, Q., Ding, P., He, Y. -H., & Chen, W. -Q. (2015). A Simple Risk Score for Identifying Individuals with Impaired Fasting Glucose in the Southern Chinese Population. International Journal of Environmental Research and Public Health, 12(2), 1237-1252. https://doi.org/10.3390/ijerph120201237