| Literature DB >> 26268576 |
John Busby1, Sarah Purdy2, William Hollingworth3.
Abstract
BACKGROUND: Unplanned hospital admissions place a large and increasing strain on healthcare budgets worldwide. Many admissions for ambulatory care sensitive conditions (ACSCs) are thought to be preventable, a belief supported by significant geographic variations in admission rates. We conducted a systematic review of the evidence on the magnitude and correlates of geographic variation in ACSC admission rates and length of stay (LOS).Entities:
Mesh:
Year: 2015 PMID: 26268576 PMCID: PMC4535775 DOI: 10.1186/s12913-015-0964-3
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Fig 1Study flow diagram
Study details, admission rates
| Paper ID | Condition | Number of Admissions | Geographical Units (N) a | Mean Age (SD)b | Covariate Adjustmentc | Statistical Methods | Tested Cause | Untested Cause |
|---|---|---|---|---|---|---|---|---|
| Australia | ||||||||
| Ansari 2005 [ | Diabetes | 38,900 | Primary Care Partnerhips (32) | N/A | A,S | Raw Data | None | Case Mix |
| Graphs | SC Access | |||||||
| SC Quality | ||||||||
| Clinical Guidelines | ||||||||
| Coding Quality | ||||||||
| Tennant 2000 [ | Dental | 3,754 | Health service region (32) | <18 (100 %) | A | Raw Data | None | None |
| Graphs | ||||||||
| Canada | ||||||||
| Crighton 2007 [ | Influenza | 241,803 | County (49) | N/A | A,S | Raw Data | None | Case Mix |
| Pneumonia | Maps | SC Access | ||||||
| Spatial Analysis | PC Quality | |||||||
| Range Analysis | Clinical Guidelines | |||||||
| COV | ||||||||
| Crighton 2008 [ | Influenza | 241,803 | County (49) | N/A | A,S | Raw Data | None | Case Mix |
| Maps | ||||||||
| Coding Quality | ||||||||
| Pneumonia | ||||||||
| Spatial Analysis | ||||||||
| Curtis 2002 [ | Diabetes | 15,872 | District Health Board (16) | <18 (100 %) | A,S | Raw Data | None | Case Mix |
| Maps | ||||||||
| PC Quality | ||||||||
| Extremal Quotient | ||||||||
| Jin 2003 [ | Pneumonia | 36,516 | Health Region (17) | 18-44 (18 %) | A,S | Raw Data | SC Access | Case Mix |
| 46-64 (19 %) | Graphs | |||||||
| 65-74 (20 %) | ||||||||
| 75-84 (26 %) | ||||||||
| 85+ (16 %) | ||||||||
| To 1996 [ | Gastroenteritis | 10,105 | County (41) | <1 (25.3 %) | A,S | Range | Case Mix | Coding Quality |
| 1 (25.7 %) | COV | SC Access | ||||||
| 2 (14.5 %) | SCV | |||||||
| 3-5 (17.3 %) | Extremal Quotient | |||||||
| 6-8 (7.0 %) | ||||||||
| 9-14 (4.4 %) | ||||||||
| 12-14 (2.9 %) | ||||||||
| 15-17 (2.8 %) | ||||||||
| New Zealand | ||||||||
| Bandaranayake 2011 [ | Influenza | 1,743 | District Health Board (20) | N/A | None | Raw Data | None | Case Mix |
| Graphs | ||||||||
| Barnett 2010 [ | ACSCs | 24,894 | GP Practice (102) | N/A | None | Raw Data | Case Mix | None |
| Graphs | PC Quality | |||||||
| PC Access | ||||||||
| Practice Size | ||||||||
| Dharmalingam 2004 [ | ACSCs | N/A | Modified District Health Board (29) | N/A | A | Raw Data | Case Mix | None |
| Tables | ||||||||
| Ellison-Loschmann 2004 [ | Asthma | 25,865 | Territorial Authority (74) | N/A | None | Raw Data | None | Case Mix |
| Maps | ||||||||
| Spain | ||||||||
| Magan 2008 [ | ACSCs | 64,409 | Health District (34) | 78.9 | A,S | Raw Data | Case Mix | PC Quality |
| Cardiovascular Disease | Maps | Clinical Guidelines | ||||||
| Heart Failure | Tables | Staffing Levels | ||||||
| Pneumonia | Range | |||||||
| COV | ||||||||
| SCV | ||||||||
| UK | ||||||||
| Downing 2007 [ | Asthma | 2,271 | GP Practice (94) | <65 (84.8 %) | A,S,O | Hierarchical Model | Case Mix | None |
| Cardiovascular Disease | >65 (15.2 %) | Variance Estimates | PC Quality | |||||
| COPD | ||||||||
| Diabetes | ||||||||
| Stroke | ||||||||
| Giuffrida 1999 [ | Asthma | N/A | Health Authority (90) | N/A | None | Range | Case Mix | Clinical Guidelines |
| Diabetes | SC Access | |||||||
| Staffing Levels | ||||||||
| Starr 1996 [ | Stroke | N/A | Local government districts (22) | 40-59 (100 %) | None | Raw Data | Case Mix | SC Access |
| Tables | ||||||||
| US | ||||||||
| Adams 1993 [ | Alcohol Abuse | 87,147 | State (50) | >65 (100 %) | A,S,O | Raw Data | Case Mix | Coding Quality |
| Maps | ||||||||
| Casper 2010 [ | Heart Failure | N/A | County (3,187) | >65 (100 %) | A | Raw Data | None | Coding Quality |
| Maps | PC Access | |||||||
| Chen 2011 [ | Heart Failure | 55,097,390 | State (52) | 79.0 (7.7) | A,S,C,O | Raw Data | None | None |
| Maps | ||||||||
| Gorton 2006 [ | Pneumonia | 4,948 | County (67) | 59.6 mo | A,S,O | Raw Data | None | Case Mix |
| Maps | SC Access | |||||||
| Holt 2011 [ | COPD | 3,786,908 | State (50) | >65 (100 %) | None | Raw Data | None | Case Mix |
| Hospital Referral Region (949) | Maps | |||||||
| Spatial Analysis | ||||||||
| Laditka 1999 [ | ACSCs | 21,923 | Hospital Market Area (24) | >65 (100 %) | A,S | Raw Data | None | Case Mix |
| Tables | PC Access | |||||||
| Lanska 1994 [ | Stroke | 318,000 | State (49) | >65 (100 %) | A,S,O | Raw Data | None | Case Mix |
| Maps | SC Access | |||||||
| Spatial Analysis | SC Access | |||||||
| Clinical Guidelines | ||||||||
| Procedure/Drug | ||||||||
| Availability | ||||||||
| High readmission rates | ||||||||
| Maliszewski 2011 [ | Influenza | 2,010 | County (58) | <18 (24.4 %) | A,S,O | Raw Data | Case Mix | None |
| >65 (12.4 %) | Maps | |||||||
| Spatial Analysis | ||||||||
| Morris 1994 [ | Asthma | N/A | County (3,079) | >65 (100 %) | A,S,O | Raw Data | Case Mix | Coding Quality |
| COPD | Maps | SC Access | ||||||
| Pneumonia | Spatial Analysis | Staffing Levels | ||||||
| Ogunniyi 2012 [ | Heart Failure | 845,421 | County (1,014) | 65-75 (30.8 %) | A | Raw Data | None | Case Mix |
| State (10) | 75-84 (41.3 %) | Tables | SC Access | |||||
| >85 (27.9 %) | Maps | PC Access | ||||||
| Spatial Analysis | ||||||||
aNumber of geographical units
bMean age and standard deviation when available. Other counts represent percentage of patients in each age band
cA: Age, S: Sex, C: Case-Mix, O: Other
dPrimary Care
eSecondary Care
Study details, length of stay
| Paper ID | Condition | Number of Admissions | Geographical Units (N)a | Mean Age (SD)b | Covariate Adjustmentc | Statistical Methods | Tested Cause | Untested Cause |
|---|---|---|---|---|---|---|---|---|
| Belgium | ||||||||
| Claeys 2013 [ | MI | 2,079 | Hospital (33) | 62 (13) | None | Raw Data | Case Mix | Discharge Planning |
| Graphs | ||||||||
| Canada | ||||||||
| Feagan 2000 [ | Pneumonia | 858 | Hospital (20) | 69.4 (17.7) | A,S,C,O | Raw Data | Case Mix | Clinical Guidelines |
| Tables | Hospital Type | PC Access | ||||||
| % Variation Explained | Procedure/Drug Availability | |||||||
| Denmark | ||||||||
| Klausen 2012 [ | Pneumonia | 12,753 | Hospital (22) | 65-74 (32.5 %) | A,S,C | Raw Data | Case Mix | Clinical Guidelines |
| 75-84 (40.6 %) | Graphs | Hospital Size | PC Quality | |||||
| >85 (26.9 %) | P-Values (Cox Regression) | Condition Volume | ||||||
| Spain | ||||||||
| Cabre 2004 [ | Pneumonia | 1,769 | Hospital (27) | 66.4 (18.1) | A,S,C | Hierarchical Model Variance Estimates | Case Mix | SC Access |
| SC Quality | ||||||||
| Clinical Guidelines | ||||||||
| PC Quality | ||||||||
| Garau 2008 [ | Pneumonia | 3,233 | Hospital (10) | 66 (18.5) | A,SC,O | Raw Data | Case Mix | None |
| Tables | ||||||||
| P-Values (Cox Regression) | ||||||||
| Pozo-Rodriguez 2012 [ | COPD | 5,178 | Hospital (129) | 75 (IQR: 68–80) | None | IQR | None | None |
| UK | ||||||||
| Hosker 2007 [ | COPD | 8,013 | Hospital (233) | 71 (IQR: 71–74) | None | IQR | None | None |
| Price 2006 [ | COPD | 910 | Hospital (234) | N/A | A,S,C | IQR | SC Quality | None |
| ICC | Clinical Guidelines | |||||||
| Hospital Size | ||||||||
| Roberts 2002 [ | COPD | 1,400 | Hospital (38) | 72 | None | Range | Case Mix | SC Quality |
| IQR | ||||||||
| Rudd 2001 [ | Stroke | 6,894 | Health Region (10) | 75 (12) | A,O | Raw Data | Case Mix | None |
| Tables | SC Quality | |||||||
| P-Values (Kruskal-Wallis) | ||||||||
| US | ||||||||
| Brogan 2012 [ | Pneumonia | 43,819 | Hospital (29) | 3 (IQR: 1–6) | None | Raw Data | Procedure/Drug Availability | None |
| Graphs | ||||||||
| Range | ||||||||
| Conway 2009 [ | UTI | 20,892 | Hospital (25) | 1-2 mo (16.7 %) | None | Raw Data | Case Mix | Coding Quality |
| 2-6 mo (29.9 %) | Graphs | Clinical Guidelines | ||||||
| 6-24 mo | Condition Volume | |||||||
| (19.1 %) | ||||||||
| 2-12 y (34.3 %) | ||||||||
| Drye 2012 [ | Heart Failure | 718,508 | Hospital (3,135) | >65 (100 %) | None | Raw Data | None | None |
| Graphs | ||||||||
| MI | ||||||||
| Range | ||||||||
| Pneumonia | ||||||||
| Krumholz 1999 [ | Heart Failure | 905 | Hospital (49) | <65 (42 %) | A,S,C,O | Raw Data | Case Mix | SC Quality |
| >65 (58 %) | Graphs | |||||||
| % Variation Explained |
aNumber of geographical units
bMean age and standard deviation when available. Other counts represent percentage of patients in each age band
cA: Age, S: Sex, C: Case-Mix, O: Other
dPrimary Care
eSecondary Care
Authors conclusions on variation, admission rates
| Paper ID | Author Conclusions |
|---|---|
| Significant Variation | |
| Australia | |
| Ansari 2005 | “There was a wide variation (almost fivefold) in admission rates” |
| Tennant 2000 | “[8 of 32 regions] had significantly less episodes of hospitalization…than the State average” |
| Canada | |
| Crighton 2007 | “Marked differences in rates between counties…large variability in county rates” |
| Crighton 2008 | “The heterogeneity in…hospitalization rates and significant spatial clustering” |
| New Zealand | |
| Barnett 2010 | “Substantial variation in admission rates” |
| Dharmalingam 2004 | “Substantial geographical variation in the level of avoidable hospitalisation” |
| Spain | |
| Magan 2008 | “Considerable variability in these rates” |
| UK | |
| Giuffrida 1999 | “Clear variation…in crude admission rates” |
| Starr 1996 | “There was considerable variation…between districts” |
| US | |
| Adams 1993 | “There was considerable geographic variation” |
| Casper 2010 | “Magnitude of geographic disparity was substantial between the high- and low-rate counties” |
| Chen 2011 | “Rates in 1998 and 2008 varied significantly by state” |
| Gorton 2006 | “Rates vary widely” |
| Holt 2011 | “Substantial geographic variations in COPD hospitalization risk among states and HSAs” |
| Laditka 1999 | “Significant variation in preventable hospitalization” |
| Morris 1994 | “The geographic distribution in hospital admission rates is unequivocally heterogeneous” |
| Variation Exists | |
| Canada | |
| Curtis 2002 | “Differences observed for DKA are clinically important” |
| Jin 2003 | “The incidence of…hospitalization varies” |
| To 1996 | “Variation among the counties…was moderately large” |
| New Zealand | |
| Bandaranayake 2011 | “We observed a heterogeneous distribution” |
| US | |
| Maliszewski 2011 | “Hospitalization rates were dependent upon neighbouring county hospitalization rates” |
| Insignificant Variation | |
| UK | |
| Downing 2007 | “Generally the variances were small meaning there was little unexplained variation” |
| US | |
| Lanska 1994 | “Hospitalization rates show relatively little small-scale variation” |
| No Conclusion | |
| New Zealand | |
| Ellison-Loschmann 2004 | No conclusions |
| US | |
| Ogunniyi 2012 | No conclusions |
Authors conclusions on variation, length of stay
| Paper ID | Author Conclusions |
|---|---|
| Significant Variation | |
| Belgium | |
| Claeys 2013 | “Large inter-hospital variations” |
| Canada | |
| Feagan 2000 | “Considerable heterogeneity in LOSwas noted among the hospitals” |
| Denmark | |
| Klausen 2012 | “We show significant regional differences” |
| Spain | |
| Cabre 2004 | “Significant variations…among the 27 community hospitals” |
| Garau 2008 | “Length of stay varied markedly among centres” |
| UK | |
| Hosker 2007 | “Wide variability between hospitals” |
| Price 2006 | “The wide variation between hospital units…is probably unacceptable” |
| Roberts 2002 | “The variation between hospitals…was very wide” |
| US | |
| Conway 2009 | “We found high variability in outcomes” |
| Krumholz 1999 | “Significant inter hospital differences in the unadjusted length of stay” |
| Variation Exists | |
| UK | |
| Rudd 2001 | “[Length of stay] varied by a mean of eight days between region” |
| US | |
| Brogan 2012 | “LOS differed across hospitals” |
| Drye 2012 | “Mean patient LOS at the hospital level varied for each condition” |
| No Conclusion | |
| Spain | |
| Pozo-Rodriguez 2012 | No conclusions |