| Literature DB >> 24367065 |
Lamberto Manzoli1, Maria Elena Flacco2, Corrado De Vito3, Silvia Arcà4, Flavia Carle4, Lorenzo Capasso2, Carolina Marzuillo3, Angelo Muraglia5, Fabio Samani6, Paolo Villari3.
Abstract
BACKGROUND: Outside the USA, Agency for Healthcare Research and Quality (AHRQ) prevention quality indicators (PQIs) have been used to compare the quality of primary care services only at a national or regional level. However, in several national health systems, primary care is not directly managed by the regions but is in charge of smaller territorial entities. We evaluated whether PQIs might be used to compare the performance of local providers such as Italian local health authorities (LHAs) and health districts.Entities:
Mesh:
Year: 2013 PMID: 24367065 PMCID: PMC4168043 DOI: 10.1093/eurpub/ckt203
Source DB: PubMed Journal: Eur J Public Health ISSN: 1101-1262 Impact factor: 3.367
PQIs: hospital admission rates in Italy (2008–10) and the USA (2008–09)
| Indicators (admission rates × 100 000) | Italy | Δ % | USA | Comparison USA vs. Italy, % | USA | Comparison USA vs. Italy, % | ||
|---|---|---|---|---|---|---|---|---|
| 2008 | 2009 | 2010 | 2008–10 | 2008 | 2008 | 2009 | 2009 | |
| PQI 1—Diabetes short-term complications | 12 | 10 | 10 | −16.7 | 62 | +416.7 | 62 | +520.0 |
| PQI 2—Perforated appendix (%) | 29 | 30 | 31 | +8.1 | 28 | −3.4 | 29 | −3.3 |
| PQI 3—Diabetes long-term complications | 76 | 57 | 69 | −9.2 | 129 | +69.7 | 118 | +107.0 |
| PQI 5—Chronic obstructive pulmonary disease or asthma in older adults | 188 | 159 | 154 | −18.1 | 578 | +207.4 | 559 | +251.6 |
| PQI 7—Hypertension | 36 | 39 | 46 | +27.8 | 62 | +72.2 | 63 | +61.5 |
| PQI 8—Congestive heart failure | 336 | 301 | 399 | +18.8 | 400 | +19.0 | 381 | +26.6 |
| PQI 10—Dehydration | 27 | 23 | 28 | +3.7 | 176 | +551.9 | 139 | +504.3 |
| PQI 11—Bacterial pneumonia | 181 | 183 | 205 | +13.3 | 362 | +100.0 | 336 | +83.6 |
| PQI 12—Urinary tract infection | 59 | 59 | 65 | +10.2 | 206 | +249.2 | 197 | +233.9 |
| PQI 13—Angina without procedures | 114 | 98 | 104 | −8.8 | 25 | −78.1 | 23 | −76.5 |
| PQI 14—Uncontrolled diabetes | 51 | 41 | 45 | −11.8 | 23 | −54.9 | 22 | −46.3 |
| PQI 15—Asthma in younger adults | 48 | 30 | 41 | −14.6 | 60 | +25.0 | 63 | +110.0 |
| PQI 16—Rate of lower-extremity amputation among diabetics | 7 | 7 | 7 | 0.0 | 18 | +157.1 | 17 | +142.9 |
| PQI 90—Overall PQI composite | 1012 | 889 | 988 | −2.4 | 1825 | +80.3 | 1714 | +92.8 |
| PQI 91—Acute PQI composite | 250 | 268 | 282 | +12.2 | 744 | +197.6 | 672 | +150.7 |
| PQI 92—Chronic PQI composite | 761 | 640 | 705 | −7.4 | 1081 | +42.0 | 1042 | +62.8 |
a: Abruzzo, Lazio, Emilia-Romagna, Lombardy and the city of Trieste.
Figure 1PQIs: PQI 90—overall hospitalization rates for ambulatory care sensitive conditions in 44 LHAs from five Italian regions (Abruzzo: LHAs 201–204; Emilia-Romagna: E101–E113; Lazio: 101–112; Lombardy: 301–315; Trieste: T01); years 2008–10. Data of the local health units 101–105 of the Lazio region (City of Rome) for the year 2009 were not available
Figure 2PQIs: PQI 90—overall hospitalization rates for ambulatory care sensitive conditions in 11 health districts from three Italian LHAs (LHA of Pescara: Pe01–Pe06; LHA of Lanciano-Vasto-Chieti: district of Francavilla; LHA of Trieste: Tr01-Tr04); years 2008–10
Potential predictors of the rate of hospitalization for an ambulatory care sensitive condition (PQIs 90, 91 and 92) in the years 2008–10
| Variables | PQI 90 (overall) | PQI 91 (acute) | PQI 92 (chronic) | |||
|---|---|---|---|---|---|---|
| Coeff. | ( | Coeff. | ( | Coeff. | ( | |
| Rate of all hospitalizations excluding PQI conditions (10 × 1000), 10-unit increase | 0.27 | (0.020) | 0.16 | (0.036) | 0.15 | (0.029) |
| Total population, 1000-resident increase | −0.10 | (0.2) | −0.08 | (0.051) | −0.02 | (0.8) |
| Year, 1-year increase | 10.1 | (0.3) | 27.3 | (0.001) | −15.0 | (0.011) |
Coeff. = regression coefficient.
Random-effects linear regression with one level of cluster (LHA) and 124 observations. The analysis was repeated using a random-effects multilevel model with three levels of cluster (year, region and LHA), with similar results for the remaining covariates (hospitalization rate and total population).
The unit of analysis was the LHA.