PT - JOURNAL ARTICLE AU - Melody S. Goodman AU - Richard T. Griffey AU - Christopher R. Carpenter AU - Melvin Blanchard AU - Kimberly A. Kaphingst TI - Do Subjective Measures Improve the Ability to Identify Limited Health Literacy in a Clinical Setting? AID - 10.3122/jabfm.2015.05.150037 DP - 2015 Sep 01 TA - The Journal of the American Board of Family Medicine PG - 584--594 VI - 28 IP - 5 4099 - http://www.jabfm.org/content/28/5/584.short 4100 - http://www.jabfm.org/content/28/5/584.full SO - J Am Board Fam Med2015 Sep 01; 28 AB - Background: Existing health literacy assessments developed for research purposes have constraints that limit their utility for clinical practice, including time requirements and administration protocols. The Brief Health Literacy Screen (BHLS) consists of 3 self-administered Single-Item Literacy Screener (SILS) questions and obviates these clinical barriers. We assessed whether the addition of SILS items or the BHLS to patient demographics readily available in ambulatory clinical settings reaching underserved patients improves the ability to identify limited health literacy.Methods: We analyzed data from 2 cross-sectional convenience samples of patients from an urban academic emergency department (n = 425) and a primary care clinic (n = 486) in St. Louis, Missouri. Across samples, health literacy was assessed using the Rapid Estimate of Adult Literacy in Medicine-Revised (REALM-R), Newest Vital Sign (NVS), and the BHLS. Our analytic sample consisted of 911 adult patients, who were primarily female (62%), black (66%), and had at least a high school education (82%); 456 were randomly assigned to the estimation sample and 455 to the validation sample.Results: The analysis showed that the best REALM-R estimation model contained age, sex, education, race, and 1 SILS item (difficulty understanding written information). In validation analysis this model had a sensitivity of 62%, specificity of 81%, a positive likelihood ratio (LR+) of 3.26, and a negative likelihood ratio (LR−) of 0.47; there was a 28% misclassification rate. The best NVS estimation model contained the BHLS, age, sex, education and race; this model had a sensitivity of 77%, specificity of 72%, LR+ of 2.75, LR− of 0.32, and a misclassification rate of 25%.Conclusions: Findings suggest that the BHLS and SILS items improve the ability to identify patients with limited health literacy compared with demographic predictors alone. However, despite being easier to administer in clinical settings, subjective estimates of health literacy have misclassification rates >20% and do not replace objective measures; universal precautions should be used with all patients.