Literature DB >> 29991633

Use of age-specific hospital catchment populations to investigate geographical variation in inpatient admissions for children and young people in England: retrospective, cross-sectional study.

Sandeepa Arora1,2, C Ronny Cheung3,4, Christopher Sherlaw-Johnson1, Dougal S Hargreaves1,5.   

Abstract

OBJECTIVES: To develop a method for calculating age-specific hospital catchment populations (HCPs) for children and young people (CYP) in England. To show how these methods allow geographical variation in hospital activity to be investigated and addressed more effectively.
DESIGN: Retrospective, secondary analysis of existing national datasets.
SETTING: Inpatient care of CYP (0-18 years) in England. PARTICIPANTS: Hospital Episode Statistics (HES) data were accessed for all inpatient admissions (elective and emergency) for CYP from birth to 18 years, 364 days, for 2011/2012-2014/2015. In 2014/2015, 857 112 admissions were analysed, from an eligible population of approximately 11.9 million CYP. OUTCOME MEASURES: For each hospital Trust, the catchment population of CYP was calculated; Trust-level admission rates per thousand per year were then calculated for admissions due to (1) any diagnostic code, (2) primary diagnosis of epilepsy and (3) epilepsy listed as primary diagnosis or comorbidity.
RESULTS: Estimated 2014/2015 HCPs for CYP ranged from 268 558 for Barts Health NHS Trust to around 30 000 for the smallest acute general paediatric services and below 10 000 for many Trusts providing specialist services. As expected, the composition of HCPs was fairly consistent for age breakdown but levels of deprivation varied widely. After standardising for population characteristics, admission rates with a primary diagnosis of epilepsy ranged from 14.3 to 157.7 per 100 000 per year (11.0-fold variation) for Trusts providing acute general paediatric services. All-cause admission rates showed less variation, ranging from 4033 to 11 681 per 100 000 per year (2.9-fold variation).
CONCLUSIONS: Use of age-specific catchment populations allows variation in hospital activity to be linked to specific teams and care pathways. This provides an evidence base for initiatives to tackle unwarranted variation in healthcare activity and health outcomes. © Article author(s) (or their employer(s) unless otherwise stated in the text of the article) 2018. All rights reserved. No commercial use is permitted unless otherwise expressly granted.

Entities:  

Keywords:  children and young people; health services research; hospital catchment population; paediatrics; variation

Mesh:

Year:  2018        PMID: 29991633      PMCID: PMC6082474          DOI: 10.1136/bmjopen-2018-022339

Source DB:  PubMed          Journal:  BMJ Open        ISSN: 2044-6055            Impact factor:   2.692


We adapt methodology for estimating hospital catchment populations, which has been validated and used extensively by Public Health England for adult and all-age populations. A strength of this study is the use of Hospital Episode Statistics, which contain high-quality data on the vast majority of hospital care for children and young people in England. Another strength is the ability to standardise for population differences, including age, sex and deprivation, so that fair comparisons can be made between services. Although there were very low levels of missing postcode overall (1.2%), a small number of Trusts reported missing postcode data on over 5% of patients, meaning that the catchment populations for these Trusts should be interpreted with caution.

Background

In 2012, the Chief Medical Officer expressed concern about the poor health outcomes experienced by children and young people (CYP) in England compared with other West European countries. She argued that one key route to improving these outcomes would be through understanding and addressing the wide geographical variation in health services and outcomes within England.1 More recent evidence shows that this variation persists—for example, the rates of hospital admission for elective tonsillectomy in CYP by Clinical Commissioning Groups (CCGs) ranged from 84 to 485 per 100 000 population (5.7-fold variation) while asthma admission rates varied from 60 to 639 per 100 000 population (10.6-fold variation).2 However, with some exceptions, greater awareness has not resulted in effective action to tackle geographical variation, and there has been limited research to understand the causes of variation. One important limitation of previous work has been that geographical analysis of healthcare activity has been restricted to CCGs or Local Authority areas. These geographical areas are defined by their responsibility for commissioning services within their designated population, whereas provision of most health services is by individual NHS Trust. Each area is often served by many different NHS Trusts, preventing variation being attributed to specific hospital services. A second important limitation has often been the inability of policy makers and researchers to adjust for population risk (ie, to understand the proportion of variation that can be accounted for by population differences). In the USA, hospital service areas allow analysis of health outcomes in the population served by specific hospital or networks.3 In the UK, a number of different methods have been used to calculate hospital catchment populations (HCPs) for adults,4 of which the most widely used is the proportionate flow method used by Public Health England (PHE).5 6 However, the marked differences in referral pathways, clinical networks and hospital activity between paediatric and adult services limits the application of published catchment populations to study variation in CYP. This article describes how we adapted the use of PHE methods to calculate age-specific HCPs for paediatric services, both unadjusted and adjusted for population characteristics (sex, age, deprivation). These represent estimates of the number of CYP who would have been admitted to each Trust had they needed hospital care, disaggregated by age, sex and deprivation. We analyse data on epilepsy admissions as a practical example to illustrate how these methods may be useful to guide commissioning, operational and policy decisions. Potential application of these methods to other conditions is also discussed.

Methods

Data

Hospital Episode Statistics (HES) data7 were accessed for all inpatient admissions (elective and emergency) for CYP from birth to 18 years, 364 days, for 2011/2012–2014/2015. For each admission, we analysed: geographic data on the admitting NHS Trust and the lower layer super output area (LSOA).8 These are the smallest geographical unit for which Census data are available and can be derived from the patient’s postcode; sociodemographic data on sex, age (by single year). Adjustment for these variables is needed as inpatient activity during childhood is known to vary markedly with age and between males and females9; ICD10 codes of the primary diagnosis and any secondary diagnoses. For the second set of analyses, we focused on admissions for epilepsy (ICD10 codes G40, G41). HES data were then linked to Office of National Statistics (ONS) data on Index of Multiple Deprivation (IMD) and the CYP population within each LSOA,10 disaggregated by single year of age and sex (based on ONS 2012 mid-year estimates by age, sex). Note that the term ‘HCP’ refers to the catchment population of an NHS Trust–an administrative unit that may include more than one hospital site. We retained the term HCP as the term NHS Trust is not widely understood, especially by readers who are not familiar with the English NHS.

Derivation of hospital catchment populations

Derivation involved five steps as described below. 1. HES data were used to count the number of patients in each age and sex group admitted from each LSOA to Any provider (NHS Trust). Each individual provider. HESIDs (unique patient identifiers within the HES data) were used to ensure that each patient was only counted once; if a patient had multiple admissions while living at the same address, we selected only the first admission. 2. Within each age and sex group, we calculated the proportion of patients from each LSOA that was admitted by each provider, as a proportion of patients who used any provider. For band i (age and sex), LSOA j, the number admitted to provider a is denoted by m. The total number admitted by LSOA and band i for each year is denoted by then, where represents the proportion of patients that went to each provider. 3. For each LSOA, this proportion was multiplied by the LSOA resident population in that age-sex group  to give the LSOA catchment population for each provider . The catchment population of provider a for band i (age and sex) is then: 4. The provider-specific catchment populations for each LSOA were summed to give the total catchment population for that provider. Thus, the total catchment population C for provider a, band i (age and sex): 5. Adding in information on IMD decile, the total catchment population for provider a, band I (age and sex), IMD D is: where Notes: We excluded patients with missing or invalid age at start of episodes (<0.1%) or with no valid English LSOA (1.2% of episodes; median proportion of episodes at Trust level=0.6%). Nine Trusts (6.2%) had missing LSOA data on >5% of episodes (range 5.1%– 26.1%), reflecting either a high proportion of patients who live in Wales or incomplete coding. These Trusts are identified in tables 1 and 2 and their estimated HCPs should be interpreted with caution. See online supplementary appendix table A1 for further details. Paediatric hospital catchment populations in London by year, standardised for age, sex and deprivation 1. Hospital catchment populations are estimated based on the proportion of children and young people (≤18 years) from each LSOA who attend each NHS Trust in any given year for planned or unplanned care. See Methods section for full details. 2. Although all Trust are presented for completeness, the catchment population is more meaningful and useful when applied to Trusts that provide general paediatric services than to specialist Trusts (for example, Moorfields Eye Hospital, Great Ormond Street Hospital, The Royal Marsden Hospital, The Royal National Orthopaedic Hospital). 3. Where large changes occur between years, this typically reflects mergers or reconfiguration. For example, during the study period, Barnet and Chase Farm Hospitals NHS Trust merged with Royal Free Hampstead NHS Trust and there was extensive reconfiguration of services in North West London (North-West London Hospitals NHS Trust, Ealing Hospital NHS Trust and London North West Healthcare NHS Trust). 4. *Denotes Trusts where LSOA data are missing on ≥5.0% of hospital admissions (meaning that the catchment populations should be interpreted with more caution). The exact proportion of admissions with missing LSOA data in each Trust are presented in online supplementary appendix table A5. LSOA, lower layer super output area. Some patients moved residence during the analysis period and had admissions to the same Trust from different postcodes of residence. We counted these patients once in each LSOA. Significant numbers of patients are treated in a region other than their region of residence and catchment areas of Trusts therefore cross regional boundaries.

Use of hospital catchment populations to investigate variation in epilepsy admission rates for CYP

In order to illustrate the use of HCPs, we calculated unadjusted and adjusted admission rates for all-cause and epilepsy admissions per thousand CYP. The median, IQR, range and ratio of highest: lowest Trust-level admission rates were calculated. Following previous studies,2 we then recalculated the range and ratio of highest:lowest admission rates excluding the five highest and five lowest Trusts. This is a form of sensitivity analyses that is recommended in order to minimise distortion from a small number of outliers in the reliability of diagnostic coding. Next, the ratio of observed versus expected admissions was calculated for each Trust. To do this, the expected admission rates for each Trust (unadjusted) were calculated by multiplying the national epilepsy admission rate per thousand CYP by the total catchment population for that Trust. The adjusted values for expected admission rates used a similar approach, based on the national epilepsy admission rate per thousand and the Trust catchment population within each age-sex-IMD group. The expected total number of admissions for each Trust was the sum of expected admissions within each age-sex-IMD group. In each case, we then derived the ratio of observed versus expected epilepsy admissions, highlighting those Trusts with admission rates that differed by more than 2 or 3 SD from the expected rate for the population served. All analyses were performed using SAS. No ethical permission was needed for these secondary analyses of anonymised, routinely collected data.

Patient involvement

Concerns about geographical variation in the quality, accessibility and capacity of NHS services for CYP have been raised repeatedly in consultations in CYP and families.1 No patients or families were directly involved in designing or performing these analyses.

Results

In 2014/2015, 857 112 admissions were analysed, from an eligible population of approximately 11.9 million CYP. The Trust serving the largest number of CYP was Barts Health NHS Trust, with an estimated paediatric HCP of 268 558, compared with the national median HCP of 71 379. Sixteen Trusts had estimated catchment populations of <10 000. This may reflect the fact that they provide specialist services (eg, Great Ormond Street Hospital, Papworth Hospital NHS Foundation Trust) or that only specific groups of CYP are admitted (eg, inpatient care for new born babies) or young people (usually aged 16 or over) who were admitted under the care of adult specialists (eg, Birmingham Women’s NHS Foundation Trust, Liverpool Women’s Hospital NHS Trust). The smallest catchment populations for Trusts providing acute general paediatric services were around 30 000 (eg, Northern Devon Healthcare NHS Trust=34 821 Sheffield Teaching Hospitals NHS Foundation Trust=27 899). Table 1 presents the standardised HCPs for each NHS Trust in London where CYP were admitted. These data illustrate the impact of reconfiguration and mergers of Trusts during the period 2011/2012–2014/2015 on the HCP for each Trust. For example, London North West Healthcare NHS Trust was newly formed in 2014 and took on the workload of North West London Hospitals NHS Trust. Similarly, Barnet and Chase Farm Hospitals NHS Trust merged with the Royal Free Hospital in 2014, with the result that much of Barnet’s HCP was transferred across to the HCP of Royal Free Hospital. Standardised HCPs for all NHS Trusts in England are shown in online supplementary appendix table A2.
Table 1

Paediatric hospital catchment populations in London by year, standardised for age, sex and deprivation

Trust codeOrganisation name2011/122012/132013/142014/15
R1HBarts Health NHS Trust12668267307270243268558
RF4Barking, Havering and Redbridge University Hospitals NHS Trust197275149765149133145366
RVLBarnet and Chase Farm Hospitals NHS Trust127294127254113094
RQMChelsea and Westminster Hospital NHS Foundation Trust90449933558886586439
RJ6Croydon Health Services NHS Trust*81355780157809077160
RC3Ealing Hospital NHS Trust580775377552820
RVREpsom and St Helier University Hospitals NHS Trust87348837318116285745
RP4Great Ormond Street Hospital NHS Trust*444181778974566236
RJ1Guy’s and St Thomas' NHS Foundation Trust85083697537157164902
RQXHomerton University Hospital NHS Foundation Trust89851529515257849332
RYJImperial College Healthcare NHS Trust*72424675717451075876
RJZKing’s College Hospital NHS Foundation Trust8860286947148099150224
RAXKingston Hospital NHS Trust75380687166958370421
R1KLondon North West Healthcare NHS Trust486166660
RP6Moorfields Eye Hospital NHS Foundation Trust1824916916843
RAPNorth Middlesex University Hospital NHS Trust69610599567457096137
RV8North West London Hospitals NHS Trust124936122553120266
RT3Royal Brompton and Harefield NHS Foundation Trust5283436138253899
RALRoyal Free Hampstead NHS Trust524435006848224155113
RYQSouth London Healthcare NHS Trust13903214796839830
RJ7St George’s Healthcare NHS Trust103559109089113127118041
RASThe Hillingdon Hospital NHS Trust65107610126119865195
RJ2The Lewisham Healthcare NHS Trust6263761055103280151669
RPYThe Royal Marsden NHS Foundation Trust382216348104
RANThe Royal National Orthopaedic Hospital NHS Trust973529289409
RRVUniversity College London Hospitals NHS Foundation Trust52193398544278042106
RFWWest Middlesex University NHS Trust59734654286743063584
RKEWhittington Hospital NHS Trust53355508115131150647

1. Hospital catchment populations are estimated based on the proportion of children and young people (≤18 years) from each LSOA who attend each NHS Trust in any given year for planned or unplanned care. See Methods section for full details.

2. Although all Trust are presented for completeness, the catchment population is more meaningful and useful when applied to Trusts that provide general paediatric services than to specialist Trusts (for example, Moorfields Eye Hospital, Great Ormond Street Hospital, The Royal Marsden Hospital, The Royal National Orthopaedic Hospital).

3. Where large changes occur between years, this typically reflects mergers or reconfiguration. For example, during the study period, Barnet and Chase Farm Hospitals NHS Trust merged with Royal Free Hampstead NHS Trust and there was extensive reconfiguration of services in North West London (North-West London Hospitals NHS Trust, Ealing Hospital NHS Trust and London North West Healthcare NHS Trust).

4. *Denotes Trusts where LSOA data are missing on ≥5.0% of hospital admissions (meaning that the catchment populations should be interpreted with more caution). The exact proportion of admissions with missing LSOA data in each Trust are presented in online supplementary appendix table A5.

LSOA, lower layer super output area.

Online supplementary appendix table A3 presents the HCPs for each Trust in England where CYP were admitted in 2013/2014, disaggregated by IMD quintile. In four cases, greater than 60% of the CYP population served by a Trust lived in the most deprived quintile of areas (Homerton University Hospital NHS Foundation Trust (77.4%); Sandwell and West Birmingham Hospitals NHS Trust (65.0%), Royal Liverpool Broadgreen Hospitals NHS Trust (62.7%), Barts Health NHS Trust (60.4%)). In contrast, two Trusts served a population where more than 60% lived in the least deprived quintile: Frimley Park Hospital NHS Trust (61.1%), Royal Surrey County NHS Foundation Trust (60.3%). The age breakdown varied much less between Trusts. The proportion of all 0–18 s who were in the 0–3 age band varied from 27.9% in Chelsea & Westminster Hospital NHS Foundation Trust, to 19.2% at the Robert Jones and Agnes Hunt Orthopaedic Trust (see online supplementary appendix table A4). Table 2 presents admission rates by Trust for primary diagnosis of epilepsy, any diagnosis of epilepsy, and all-cause admissions per 100 000 CYP in 2014/15. Excluding Trusts that do not provide acute general paediatrics services (see explanation above), standardised admission rates with a primary diagnosis of epilepsy ranged from 14.3 to 157.7 per 100 000 per year (11.0-fold variation). The median value was 71.3 per 100 000, with an IQR from 55.8 to 90.3. Excluding the five Trusts with the highest and lowest admission rates, the range reduced to 30.9 to 124.9 vs 30.9 per 100 000 per year (4.0-fold variation). All-cause admission rates showed much less variation, with all-cause admissions in Trusts providing acute paediatric services ranging from 4033 to 11 681 per 100 000 per year (2.9-fold variation), with a median of 7130 and an IQR from to 5890 to 8390 per 10 000 per year. Excluding the highest and lowest five, the range was from 4439 to 10 200 to 4439 per 10 000 per year (2.3-fold variation). Moderate agreement was observed between all-cause and epilepsy-specific admission rates (r2=0.25). In figure 1, unadjusted and adjusted admission rates for primary diagnosis of epilepsy byTrust are presented. This figure illustrates, first, that relatively little of the observed variation can be explained by random chance among relatively small units; second, it shows that only a small degree of the observed variation can be explained by differences in the age, sex and deprivation of the population served by each Trust.
Figure 1

Funnel plot showing ratio of observed: expected paediatric epilepsy admissions in English Hospital Trusts, 2014/2015.

Funnel plot showing ratio of observed: expected paediatric epilepsy admissions in English Hospital Trusts, 2014/2015.

Discussion

This study demonstrates the feasibility of estimating age-specific catchment populations for Trusts within the English NHS. We then show two ways in which these findings may be applied to inform planning of health services and support quality improvement activities and research. First, we illustrate how catchment populations in London have changed following recent mergers and other service reconfigurations. Second, we use the catchment populations to calculate admission rates per 100 000 CYP for each NHS Trust. These data show that admission rates vary 11-fold between Trusts providing acute general paediatric services for epilepsy admissions (4-fold when excluding extremes) and 2.9-fold (2.3-fold) for all-cause admissions in this age group. Strengths of this study are the use of robust methodology for estimating HCPs, which has been validated and used extensively by PHE for adult and all-age populations. Another strength of the study is the quality and completeness of HES, which are subject to extensive cleaning and quality assurance processes and cover 98%–99% all hospital care in England.11 12 This includes the vast majority of healthcare provided for CYP resident in the UK, making HES data the largest unified dataset of its kind in the world. These data may be particularly useful in performing national-level analyses of variation, where chance findings of very high or low admission rates due to small numbers of patients with a particular condition attending a specific hospital are likely to even out. Another strength is the ability to adjust or standardise for population differences, including age, sex and deprivation, so that fair comparisons can be made between services. One important limitation of this study is that in order to maximise data in each LSOA (median CYP population is approximately 300), all inpatient activity within this age group is included. Our model does not account of the fact that parents or CYP who live a similar distance from two hospitals might, for example, choose to attend Hospital A if their child needed elective surgery by an Ear, Nose and Throat surgeon but attend Hospital B for acute abdominal pain. In adult populations, there is some evidence that patients are willing to travel further to access elective care compared with emergency care.13 As noted above, caution must be used in interpreting results for any specific hospital, especially when looking at single conditions affecting a relatively small number of patients. Another caveat is that these data will be most useful in comparing like with like—for example, all District General Hospitals providing acute general paediatric care or all tertiary children’s hospitals. As illustrated in table 2 and online supplementary appendix table A4, calculated admission rates for specialist hospitals, or those only providing care for neonates or CYP over the age of 16, may be very high or very low compared with those of general hospitals. Finally, for the small number of hospitals where postcode information is less than 95% complete, the HCPs and admission rates should be interpreted with caution (see Methods section and online supplementary appendix table A5 for further details).
Table 2

Paediatric admission rates by Trust for primary diagnosis epilepsy, any diagnosis epilepsy, all-cause admissions, per 100 000, 2014/2015, England

Primary diagnosis epilepsyAny epilepsy diagnosisAll-cause admission
The Walton Centre NHS Foundation Trust*355.71067.112 094
Great Ormond Street Hospital NHS Trust*256.6513.19813.4
Royal Wolverhampton Hospital NHS Trust157.7305.310141.8
Newcastle Upon Tyne Hospitals NHS Foundation Trust152.1379.911426.3
Milton Keynes Hospital NHS Foundation Trust144328.89422.8
Burton Hospitals NHS Foundation Trust1432557519.6
Birmingham Children’s Hospital NHS Foundation Trust129.63258589.4
Medway NHS Trust124.9266.28812.1
East Cheshire NHS Trust122.52848843.7
North Lincolnshire and Goole Hosps NHS Foundation Trust114.42316257.7
East Sussex Hospitals NHS Trust113.1182.58106.3
South Tees Hospitals NHS Foundation Trust112297.410096.1
Guy’s and St Thomas’ NHS Foundation Trust109.4218.86577.6
Hereford Hospitals NHS Trust*107.3199.38188.1
Kettering General Hospital NHS Foundation Trust106.8195.77749.6
Hull and East Yorkshire Hospitals NHS Trust105.4216.46017.1
Blackpool Fylde and Wyre NHS Foundation Trust104.3258.310 864.7
York Hospitals NHS Trust102.6179.37404.7
Isle of Wight NHS Trust100.3183.28031.5
University Hospital Birmingham NHS Foundation Trust100.2264.26959
Northampton General Hospital NHS Trust99.8261.99309.2
The Mid Cheshire Hospitals NHS Trust98.8259.37949
Barnsley Dist Gen Hosp NHS Foundation Trust98.2196.48854.7
Basingstoke and North Hampshire Hospitals NHS Foundation Trust97.61806316.6
Queen Elizabeth Hospital Kings Lynn NHS Foundation Trust96.4251.19249.2
Southampton University Hospitals NHS Trust96.2190.78404.6
Wrightington, Wigan and Leigh NHS Foundation Trust95.2209.86028.8
Colchester Hospital University NHS Foundation Trust94.6269.29264.7
University Hospitals Coventry and Warwickshire NHS Trust94182.66563.3
University Hospitals Of Morecambe Bay NHS Foundation Trust93.4246.69887.3
University Hospital Of North Staffordshire Hospital NHS Trust93.3252.410355.7
Stockport NHS Foundation Trust92.8174.68713
Chesterfield Royal Hospital NHS Foundation Trust91.9187.37895.4
County Durham and Darlington NHS Foundation Trust91.8221.210262.4
Salford Royal NHS Foundation Trust91.5142.98400.8
North Cumbria University Hospitals NHS Trust91.4173.88744.8
Royal Berkshire Hospital NHS Foundation Trust91.3164.75453
Tameside Hospital NHS Foundation Trust90.3199.19045.9
Calderdale and Huddersfield NHS Foundation Trust88.81867870.2
East and North Hertfordshire NHS Trust88.5147.56795.2
Royal Devon and Exeter NHS Foundation Trust86.8190.27764.1
Royal Cornwall Hospitals NHS Trust86.2183.27558.5
Central Manchester University Hospitals NHS Foundation Trust85.6256.110 200.2
Homerton University Hospital NHS Foundation Trust85.1137.85221.7
South Warwickshire NHS Foundation Trust*83.6173.77465.3
Norfolk and Norwich University Hospitals NHS Foundation Trust83.6213.77320.5
Portsmouth Hospitals NHS Trust83.6167.25949.4
King’s College Hospital NHS Foundation Trust83.2132.55246.2
Plymouth Hospitals NHS Trust83.1174.87607.1
West Suffolk Hospital NHS Trust82.5173.97037.4
Northumbria Healthcare NHS Foundation Trust82.5165.18390.3
Luton and Dunstable Hospital NHS Foundation Trust82195.28913.8
Taunton and Somerset NHS Foundation Trust81.7202.77129.9
Warrington and Halton Hospitals NHS Foundation Trust81.4131.98218.6
Peterborough and Stamford Hospitals NHS Foundation Trust80.7225.68728.8
Pennine Acute Hospitals NHS Trust80.5196.210147.4
North Tees and Hartlepool NHS Foundation Trust80.2217.88251.5
Walsall Hospitals NHS Trust78.8152.35444.2
North Middlesex University Hospital NHS Trust78145.67918.9
City Hospitals Sunderland NHS Foundation Trust77191.78367.6
The Hillingdon Hospital NHS Trust76.7162.66857.8
Frimley Park Hospital NHS Trust75.8158.46851.2
South Devon Health Care NHS Trust75.1181.95448
East Kent Hospitals University NHS Foundation Trust74.7166.27619.1
East Lancashire Hospitals NHS Trust74.2277.911681.2
Bradford Teaching Hospitals NHS Foundation Trust73.9222.56588.3
Nottingham University Hospitals NHS Trust73159.45107.2
Doncaster and Bassetlaw Hospitals NHS Foundation Trust72.8142.79385.1
Basildon and Thurrock University Hospitals NHS Foundation Trust72.3117.44185.1
Sandwell and West Birmingham Hospitals NHS Trust71.9160.78798.9
Bedford Hospital NHS Trust71.8168.35739.2
Sheffield Children’s NHS Foundation Trust71.4203.56942.5
Airedale NHS Foundation Trust71.3329.19150.7
Western Sussex Hospitals NHS Trust71.2176.57923.9
Imperial College Healthcare NHS Trust*71.2146.34707.7
Birmingham Heartlands and Solihull Trust70.5140.57708
Mid Yorkshire Hospitals NHS Trust70.2155.47419.2
Royal Bolton Hospital NHS Foundation Trust70179.18819.4
Dartford and Gravesham NHS Trust69.4149.27885
Barts Health NHS Trust69.3149.35890
Southport and Ormskirk Hospital NHS Trust69.2132.78094
Weston Area Health NHS Trust69122.76479.8
Poole Hospital NHS Foundation Trust68.8256.68106
Royal United Hospital Bath NHS Trust68.5193.46530.5
Wirral University Teaching Hospital NHS Foundation Trust67.9239.87375.9
University Hospitals Of Bristol NHS Foundation Trust67.1148.15637.4
Ashford and St Peter’s Hospitals NHS Foundation Trust67.1107.45105.2
Shrewsbury and Telford Hospital NHS Trust*66.4162.27580.5
James Paget University Hospitals NHS Foundation Trust66.1116.36048.3
The Lewisham Healthcare NHS Trust65.9136.57769.5
Lancashire Teaching Hospitals NHS Trust63.8171.910193.4
Epsom and St Helier University Hospitals NHS Trust63178.45285.4
St George’s Healthcare NHS Trust62.7127.15969.1
Cambridgeshire Community Services NHS Trust62.51859188.9
Royal Free Hampstead NHS Trust62.51365601.1
University Hospitals Of Leicester NHS Trust62.41444944.3
Cambridge University Hospitals NHS Foundation Trust61.3197.65058.8
Maidstone and Tunbridge Wells NHS Trust61.393.84536.7
Worcestershire Acute Hospitals NHS Trust60.6144.56155
Ipswich Hospital NHS Trust60.2176.56566.3
Leeds Teaching Hospitals NHS Trust60.1165.86160.5
Hinchingbrooke Healthcare NHS Trust59.4896738
Oxford Radcliffe Hospital NHS Trust58.51566662.5
Countess Of Chester Hospital NHS Foundation Trust*57.9157.49156.6
Dorset County Hospital NHS Foundation Trust56.8144.56294.7
The Dudley Group Of Hospitals NHS Foundation Trust56.4143.68559.8
Gloucestershire Hospitals NHS Foundation Trust56.1164.86854.3
London North West Healthcare NHS Trust55.8124.85098.4
Whittington Hospital NHS Trust55.3116.56677.6
The Rotherham NHS Foundation Trust55.2154.17337.8
Royal Surrey County NHS Foundation Trust54.7106.45398.3
Derby Hospitals NHS Foundation Trust54.11154096
West Hertfordshire Hospitals NHS Trust53.5114.35621.5
United Lincolnshire Hospitals NHS Trust53.4182.46992.8
Buckinghamshire Healthcare NHS Trust53.2137.67632.4
Croydon Health Services NHS Trust*53.173.95373.3
Yeovil District Hospital NHS Foundation Trust52.9136.46074.1
West Middlesex University NHS Trust51.9166.74872.3
University Hospital Of South Manchester NHS Foundation Trust51.81268586.4
South Tyneside NHS Foundation Trust50.888.96751.4
Royal Bournemouth and Christchurch Trust*49.999.97041.3
Great Western Hospitals NHS Foundation Trust49.9141.27058.8
Barking, Havering and Redbridge University Hospitals NHS Trust46.893.64662
Mid Staffordshire NHS Foundation Trust45.799.19815.2
Alder Hey Children’s NHS Foundation Trust45.4188.47766.6
Princess Alexandra Hospital NHS Trust45.285.64438.7
Gateshead Health NHS Foundation Trust43.581.58388.4
Surrey and Sussex Healthcare NHS Trust43.1108.84767.3
St Helens and Knowsley Hospitals NHS Trust41.2126.59790.2
Northern Devon Healthcare NHS Trust40.21587260
Southend University Hospitals NHS Foundation Trust37.9116.64292.9
Brighton and Sussex University Hospitals NHS Trust37115.95926
Kingston Hospital NHS Trust36.9985332.2
Mid Essex Hospital Services NHS Trust36.886.65326.2
Sherwood Forest Hospitals NHS Foundation Trust36.7138.56892.1
Salisbury NHS Foundation Trust35.7109.14912
Chelsea and Westminster Hospital NHS Foundation Trust34.765.94932.9
North Bristol NHS Trust30.987.55016.8
Harrogate and District NHS Foundation Trust29.696.27761.3
University College London Hospitals NHS Foundation Trust28.554.64032.6
Aintree University Hospitals NHS Foundation Trust27.773.76240.5
Royal Liverpool Broadgreen Hospitals NHS Trust24.874.35871.3
Sheffield Teaching Hospitals NHS Foundation Trust14.328.74752.9
George Eliot Hospital NHS Trust5.220.65717
The Royal Marsden NHS Foundation Trust0963.5104056.3
Liverpool Heart and Chest NHS Foundation Trust0029608.9
Christie Hospital NHS Trust0026449.3
Papworth Hospital NHS Foundation Trust01444.521666.9
Clatterbridge Centre For Oncology NHS Foundation Trust0015534.8
The Royal National Orthopaedic Hospital NHS Trust0489.411500.7
Royal Brompton and Harefield NHS Foundation Trust0153.98131
Liverpool Women’s Hospital NHS Trust006464.3
Royal Orthopaedic Hospital NHS Foundation Trust0246.86170.2
Moorfields Eye Hospital NHS Foundation Trust005217.1
Birmingham Women’s NHS Foundation Trust004659.7
Robert Jones and Agnes Hunt Orthopaedic NHS Trust004316.4
Queen Victoria Hospital NHS Foundation Trust024.34251.8

*Denotes Trusts where LSOA data are missing on ≥5.0% of hospital admissions (meaning that the catchment populations and admission rates should be interpreted with more caution). The exact proportion of admissions with missing LSOA data by Trust are presented in online supplementary appendix table A5.

LSOA, lower layer super output area.

Paediatric admission rates by Trust for primary diagnosis epilepsy, any diagnosis epilepsy, all-cause admissions, per 100 000, 2014/2015, England *Denotes Trusts where LSOA data are missing on ≥5.0% of hospital admissions (meaning that the catchment populations and admission rates should be interpreted with more caution). The exact proportion of admissions with missing LSOA data by Trust are presented in online supplementary appendix table A5. LSOA, lower layer super output area. To our knowledge, this study is the first to report HCPs for paediatric care in England. Previous studies in adult populations and other countries have described a range of methods for estimating catchment populations, including proportionate flow or Norris-Bailey methods (as used in this study),6 k-means clustering of multivariate data,14 kernel analyses15 and ‘de facto service areas’ in which the population of each LSOA is allocated to the catchment population of a single hospital using a Bayesian approach.4 Advanced versions of these techniques are being increasingly used to study variation in preventable hospitalisations.16 17 Further research using different methodological approaches to calculate HCPs for CYP would be a useful way to investigate the robustness of our model and may allow clearer ways of presenting maps of HCPs. The most useful approaches to do this are likely to be based on further analyses of HES data. Compared with HCPs based on survey data (as reported in early studies of geographical variation),18 use of HES data has the advantage of being efficient (as it is based on existing, routinely collected data that have already been extensively cleaned and quality assured), robust (as it uses data collected at the time of use, rather than being based on retrospective patient/family recall or on hypothetical questions about where care would be accessed if needed in the future) and has high levels of completeness (as it is not limited by survey response rate). As in adult populations, we believe that age-specific HCPs for CYP will provide a useful evidence base to support operational decisions, quality improvement work and future research related to hospital services.19 For example, data used to calculate each catchment population can be used to create a detailed map (eg, a chloropleth map) of all CYP served by any hospital. As well as tracking changes in the HCP following reconfiguration (as shown in table 1), in the future HCP mapping, data could be used to model the impact of service reconfiguration and merger plans, so reducing the uncertainty and disruption to services that often occurs at present. Regarding quality improvement projects, existing indicators are often published at Local Authority level, across a population that may be served by many different hospitals. Previous research has shown that indicators mapped directly to specific clinical teams promote clinical engagement and accountability.20 Further, they can identify specific strengths or weaknesses of individual services and so inform tailored quality improvement initiatives. Last, HCPs have potential to open up exciting new avenues of research within paediatric services. For example, the national clinical audit for paediatric epilepsy (Epilepsy12) has collected detailed information on paediatric epilepsy services in England since 2011, but to date it has not been possible to link these data to admission rates, due to lack of an appropriate denominator. Such linkage would allow robust investigation of the impact on improving performance in different aspects of epilepsy care on unit-level admission rates (ie, the degree to which performance in the Epilepsy12 audit accounts for the unexplained variation shown in figure 1). Similarly, attempts to study and reduce geographical variation by specialist networks such as those for paediatric surgery or gastroenterology services have been limited by lack of appropriate denominator data. HCPs will allow admission and activity rates to be compared between areas and facilitate study of unmet need and/or overuse of admissions or procedures.

Conclusion

This paper presents a method for calculating HCPs for the care of CYP in the English NHS. We then show how this method allows comparison of paediatric admission rates between hospitals, adjusting for population characteristics including sex, age and deprivation. Last, we illustrate how these adjusted admission rates may be useful for the purposes of commissioning and improving services as well as for quality improvement and research activities.
  8 in total

1.  Identification of hospital catchment areas using clustering: an example from the NHS.

Authors:  Stuart John Gilmour
Journal:  Health Serv Res       Date:  2009-12-30       Impact factor: 3.402

2.  Time to tackle unwarranted variations in practice.

Authors:  John E Wennberg
Journal:  BMJ       Date:  2011-03-17

3.  Hospital characteristics affecting potentially avoidable emergency admissions: national ecological study.

Authors:  A O'Cathain; E Knowles; R Maheswaran; J Turner; E Hirst; S Goodacre; T Pearson; J Nicholl
Journal:  Health Serv Manage Res       Date:  2014-02-27

4.  Defining GP practice areas based on true service utilisation.

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Journal:  Health Place       Date:  2012-09-13       Impact factor: 4.078

5.  Impact of patients' socioeconomic status on the distance travelled for hospital admission in the English National Health Service.

Authors:  Carol Propper; Michael Damiani; George Leckie; Jennifer Dixon
Journal:  J Health Serv Res Policy       Date:  2007-07

6.  Adolescent inpatient activity 1999-2010: analysis of English Hospital Episode Statistics data.

Authors:  Dougal S Hargreaves; Russell M Viner
Journal:  Arch Dis Child       Date:  2014-05-01       Impact factor: 3.791

7.  Data Resource Profile: Hospital Episode Statistics Admitted Patient Care (HES APC).

Authors:  Annie Herbert; Linda Wijlaars; Ania Zylbersztejn; David Cromwell; Pia Hardelid
Journal:  Int J Epidemiol       Date:  2017-08-01       Impact factor: 7.196

8.  Using Weighted Hospital Service Area Networks to Explore Variation in Preventable Hospitalization.

Authors:  Michael O Falster; Louisa R Jorm; Alastair H Leyland
Journal:  Health Serv Res       Date:  2017-09-22       Impact factor: 3.402

  8 in total
  1 in total

1.  A picture of health: determining the core population served by an urban NHS hospital trust and understanding the key health needs.

Authors:  Thomas Beaney; Jonathan M Clarke; Emily Grundy; Sophie Coronini-Cronberg
Journal:  BMC Public Health       Date:  2022-01-12       Impact factor: 3.295

  1 in total

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