TY - JOUR T1 - Socioeconomic deprivation and accident and emergency attendances: cross-sectional analysis of general practices in England JF - British Journal of General Practice JO - Br J Gen Pract SP - e649 LP - e654 DO - 10.3399/bjgp15X686893 VL - 65 IS - 639 AU - Rachel Scantlebury AU - Gillian Rowlands AU - Stevo Durbaba AU - Peter Schofield AU - Kalwant Sidhu AU - Mark Ashworth Y1 - 2015/10/01 UR - http://bjgp.org/content/65/639/e649.abstract N2 - Background Demand for England’s accident and emergency (A&E) services is increasing and is particularly concentrated in areas of high deprivation. The extent to which primary care services, relative to population characteristics, can impact on A&E is not fully understood.Aim To conduct a detailed analysis to identify population and primary care characteristics associated with A&E attendance rates, particularly those that may be amenable to change by primary care services.Design and setting This study used a cross-sectional population-based design. The setting was general practices in England, in the year 2011–2012.Method Multivariate linear regression analysis was used to create a model to explain the variability in practice A&E attendance rates. Predictor variables included population demographics, practice characteristics, and measures of patient experiences of primary care.Results The strongest predictor of general practice A&E attendance rates was social deprivation: the Index of Multiple Deprivation (IMD-2010) (β = 0.3. B = 1.4 [95% CI =1.3 to 1.6]), followed by population morbidity (GPPS responders reporting a long-standing health condition) (β = 0.2, B = 231.5 [95% CI = 202.1 to 260.8]), and knowledge of how to contact an out-of-hours GP (GPPS question 36) (β = −0.2, B = −128.7 [95% CI =149.3 to −108.2]). Other significant predictors included the practice list size (β = −0.1, B = −0.002 [95% CI = −0.003 to −0.002]) and the proportion of patients aged 0–4 years (β = 0.1, B = 547.3 [95% CI = 418.6 to 676.0]). The final model explained 34.4% of the variation in A&E attendance rates, mostly due to factors that could not be modified by primary care services.Conclusion Demographic characteristics were the strongest predictors of A&E attendance rates. Primary care variables that may be amenable to change only made a small contribution to higher A&E attendance rates. ER -