Prediction of Type 2 Diabetes Using Simple Measures of Insulin ResistanceCombined Results From the San Antonio Heart Study the Mexico City Diabetes Study and the Insulin Resistance Atherosclerosis Study
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首席医学网
2004年11月01日 09:44:09 Monday
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作者:Anthony J.G. Hanley Ken Williams Clicerio Gonzalez Ralph B. D’Agostino, Jr Lynne E. Wagenknecht Michael P. Stern and Steven M. Haffner
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【关键词】 Prediction,
1 Division of Clinical Epidemiology, University of Texas Health Sciences Center, San Antonio, Texas
2 Leadership Sinai Centre for Diabetes, Mt. Sinai Hospital, Toronto, Ontario, Canada
3 Centro de Estudios en Diabetes, American British Coudray Hospital, Endocrinology and Metabolism Service, Division of Internal Medicine, Mexican Social Security Institute, Mexico City, Mexico
4 Department of Public Health Sciences, Wake Forest University School of Medicine, Winston Salem, North Carolina
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| TOP ABSTRACT RESEARCH DESIGN AND METHODS RESULTS DISCUSSION REFERENCES |
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To determine and formally compare the ability of simple indexes of insulin resistance (IR) to predict type 2 diabetes, we used combined prospective data from the San Antonio Heart Study, the Mexico City Diabetes Study, and the Insulin Resistance Atherosclerosis Study, which include well-characterized cohorts of non-Hispanic white, African-American, Hispanic American, and Mexican subjects with 5 8 years of follow-up. Poisson regression was used to assess the ability of each candidate index to predict incident diabetes at the follow-up examination (343 of 3,574 subjects developed diabetes). The areas under the receiver operator characteristic (AROC) curves for each index were calculated and statistically compared. In pooled analysis, Gutt et al.’s insulin sensitivity index at 0 and 120 min (ISI0,120) displayed the largest AROC (78.5%). This index was significantly more predictive (P < 0.0001) than a large group of indexes (including those by Belfiore, Avignon, Katz, and Stumvoll) that had AROC curves between 66 and 74%. These findings were essentially similar both after adjustment for covariates and when analyses were conducted separately by glucose tolerance status and ethnicity/study subgroups. In conclusion, we found substantial differences between published IR indexes in the prediction of diabetes, with ISI0,120 consistently showing the strongest prediction. This index may reflect other aspects of diabetes pathogenesis in addition to IR, which might explain its strong predictive abilities despite its moderate correlation with direct measures of IR.
Insulin resistance (IR) is a central feature in the natural history of type 2 diabetes (1,2). In addition, there is increasing evidence suggesting that IR or related pathophysiological mechanisms may be involved in the etiology of cardiovascular disease (3,4). The ability to accurately measure IR is therefore of substantial importance for chronic disease researchers. IR can be quantified using detailed physiological protocols, such as the euglycemic-hyperinsulinemic clamp technique and the frequently sampled intravenous glucose tolerance test (FSIGT) (1). These methods, however, are excessively complex, invasive, and costly for use in large observational epidemiological studies. Consequently, a number of simple (surrogate) indexes have been proposed for projects that require the estimation of IR in large numbers of subjects (5

