Type 2 diabetes has become alarmingly prevalent among youth in recent years. However, simple questionnaire-based screening tools to reliably identify diabetes risk and prevent the adverse effects of this serious disease are only available for adults, not for youth. As a first step in developing such a tool, we used a large-scale dataset from the National Health and Nutritional Examination Survey (NHANES), to examine the performance of a well-known adult diabetes risk self-assessment screener and published pediatric clinical screening guidelines in identifying youth with pre-diabetes/diabetes (pre-DM/DM) based on American Diabetes Association diagnostic biomarkers. We assessed the agreement between the adult screener/pediatric screening guidelines and biomarker diagnostic criteria by conducting comparisons using the overall data set and sub-datasets stratified by sex, race/ethnicity, and age. While the pediatric guidelines performed better than the adult screener in identifying youth with pre-DM/DM (sensitivity 43.1% vs 7.2%), both are inadequate for general deployment among youth. There were also notable differences in the performance of the pediatric guidelines across subgroups based on age, sex and race/ethnicity. In an effort to improve pre-DM/DM screening, we also evaluated data-driven machine learning-based classification algorithms, several of which performed slightly but statistically significantly better than the pediatric screening guidelines.