| Literature DB >> 23110102 |
Louis S Levene1, John Bankart, Kamlesh Khunti, Richard Baker.
Abstract
BACKGROUND: Wide variations in mortality rates persist between different areas in England, despite an overall steady decline. To evaluate a conceptual model that might explain how population and service characteristics influence population mortality variations, an overall null hypothesis was tested: variations in primary healthcare service do not predict variations in mortality at population level, after adjusting for population characteristics. METHODOLOGY/PRINCIPALEntities:
Mesh:
Year: 2012 PMID: 23110102 PMCID: PMC3480536 DOI: 10.1371/journal.pone.0047800
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Conceptual model for healthcare and mortality.
A proportion of the healthy or morbid population will die each year. This may be predicted by relevant population characteristics; however, appropriate health care may alter this predictive effect, either directly on the progression from 1 or more of these diseases to death or indirectly by affecting a “modifiable” population factor (e.g. detecting and treating blood pressure, detecting obesity, delivering smoking cessation or weight reduction care). In addition to primary healthcare, other factors may affect the progression to mortality, including secondary healthcare and non-healthcare led interventions, such as in education, employment and housing.
Annual mortality rates and counts in primary care trusts.
| Mortality groupvariable and year | Mean mortalityrates per 1,000population | Minimum mortalityrates per 1,000population | Maximum mortalityrates per 1,000population | 95% confidenceintervals for meanper 1,000 population(lower, higher) | Counts Median(Q1, Q3) |
| All Cause 2009 | 8.718 | 4.278 | 13.160 | (8.421, 9.014) | 2402 (1640, 3701) |
| All Cause 2008 | 9.107 | 4.161 | 13.471 | (8.804, 9.410) | 2498 (1744, 3835) |
| Coronary Heart Disease 2009 | 1.288 | 0.521 | 2.146 | (1.240, 1.336) | 355 (241, 550) |
| Coronary Heart Disease 2008 | 1.385 | 0.629 | 2.253 | (1.336, 1.435) | 384 (270, 576) |
| Stroke 2009 | 0.763 | 0.261 | 1.429 | (0.728, 0.798) | 202 (140, 333) |
| Stroke 2008 | 0.815 | 0.268 | 1.351 | (0.779, 0.851) | 215 (148, 353) |
| Cancer 2009 | 2.466 | 1.323 | 3.899 | (2.382, 2.550) | 673 (450, 1002) |
| Cancer 2008 | 2.485 | 1.188 | 3.704 | (2.399, 2.571) | 668 (466, 1020) |
| Chronic Obstructive PulmonaryDisease 2009 | 0.429 | 0.132 | 0.750 | (0.409, 0.449) | 120 (82, 181) |
| Chronic Obstructive PulmonaryDisease 2008 | 0.467 | 0.164 | 0.822 | (0.445, 0.489) | 132 (89, 194) |
Data available for all 152 primary care trusts in England. These rates are per 1000 population and are not age-standardized (please see text in Methods section). The counts do not have a normal distribution.
Characteristics of the explanatory variables.
| Variable | 2008 | 2009 |
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| Deprivation indices 2007 | 23.7 (9.1) | 23.7 (9.1) |
| % of GP list on diabetes register | 5 (0.7) | 5 (0.8) |
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| % White ethnicity | 87 (74, 93) | 87 (74, 93) |
| % of adults who were smokers in 2006–8 | 22 (19, 27) | 22 (19, 27) |
| % of adults who were obese in 2006–8 | 24 (22, 26) | 24 (22, 26) |
| % of population aged 65 or more years | 16 (13, 19) | 16 (13, 18) |
| % of population who are male | 49 (48, 50) | 49 (48, 50) |
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| % of GP registered list on hypertension register | 13 (2) | 13 (2) |
| % Patients with recalled perception of being able to seepreferred GP | 62 (5) | 62 (4) |
| % Response to GP Patient Survey | 39 (7) | 40 (7) |
| % of over 65 s given influenza immunisation | 74 (2) | 72 (2) |
| % of NHS smoking cessation clinic attenders self-reportingstopped at 4 weeks | 50 (8) | 50 (8) |
| % of CHD patients on aspirin | 94 (0.8) | 94 (0.9) |
| % of stroke patients on aspirin | 94 (0·7) | 94 (0.8) |
| % of CHD patients with last cholesterol <5 mmol/L | 82 (2) | 82 (2) |
| % of stroke patients with last cholesterol <5 mmol/L | 77 (3) | 77 (2) |
| % of COPD patients given influenza immunisation | 92 (1) | 93 (1) |
152 Primary Care Trusts in England.
Negative binomial regression results for mortality groups in 2008–2009.
| Explanatory variable | All-cause mortalityIRR (95% CI)P value | All cancersmortalityIRR (95% CI)P value | Coronary HeartDisease mortalityIRR (95% CI)P value | Stroke mortalityIRR (95% CI)P value | Chronic ObstructivePulmonary Diseasemortality IRR(95% CI) P value |
| Year of mortality counts | 1.07 (1.05, 1.09) <0.0001 | 1.02 (1.0, 1.03) 0.001 | 1.12 (1.1, 1.2) <0.0001 | 1.1 (1.07, 1.12) <0.0001 | 1.07 (1.04, 1.1) <0.0001 |
| Deprivation indices 2007 |
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| White ethnicity |
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| % of adults who were smokers in 2006–8 | 1.003 (0.99, 1.01) 0.25 | 1.001 (0.997, 1.01) 0.55 | 1.004 (0.99, 1.01) 0.15 | 0.99 (0.98, 1.01) 0.07 | 1.008 (1.001, 1.02) 0.06 |
| % of adults who were obese in 2006–8 | 1.004 (0.99, 1.01) 0·13 |
| 0.998 (0.99, 1·01) 0.53 |
| 1.008 (0.99, 1.02) 0.·08 |
| % of population who are male | 0.99 (0.96, 1.01) 0.16 | 0.99 (0.97, 1.01) 0.12 | 0.98 (0.94, 1.01) 0.10 | 1.02 (0.98, 1.07) 0.21 |
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| % of population aged 65 or more years |
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| % of GP registered list on diabetes register |
| 1.01 (0.99, 1.03) 0.19 |
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| Not used |
| % of GP registered list on hypertension register | 0.99 (0.97, 1.01) 0.14 | Not used |
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| Not used |
| % of over 65 s given influenza immunisation | 0.997 (0.994, 1.01)0.18 | Not used | Not used | Not used | Not used |
| % of NHS smoking cessation clinic attenders self-reporting stopped at 4 weeks | 0.999 (0.998, 1.01)0.30 | 0.999 (0.995, 0.999) 0.19 | Not used | 0.999 (0.996, 1.001)0.19 | 0.998 (0.995, 1.01) 0.17 |
| % of patients with recalled perception of being able to see preferred GP | 0.999 (0.·997, 1.01)0.92 |
| 0.999 (0.995, 1.01) 0.77 | 1.0002 (0.99, 1.01) 0.93 |
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| % of CHD patients on aspirin | Not used | Not used | 0.99 (0.97, 1.01) 0.22 | Not used | Not used |
| % of stroke patients on aspirin | Not used | Not used | Not used | 0.99 (0.96, 1.02) 0.38 | Not used |
| % of CHD patients with last cholesterol <5 mmol/L | Not used | Not used | 0.996 (0.98, 1.01) 0.32 | Not used | Not used |
| % of stroke patients with last cholesterol <5 mmol/L | Not used | Not used | Not used | 0.999 (0.992, 1.01) 0.99 | Not used |
| % of COPD patients giveninfluenza immunisation | Not used | Not used | Not used | Not used | 0.993 (0.98, 1.01) 0.36 |
Significant predictors in bold.
Columns = mortality groups, Rows = explanatory variables.
In each cell, where there are figures:
In order, the first figures are incident rate ratios (IRR); followed by 95% confidence intervals in parentheses; followed by significance levels.
Statistical model: negative binomial regression, using the log of the primary care trust size as an offset.
GP = general practitioner.
Effect on variations in mortality of a unit increase in the value of predictors.
| Explanatory variable (unit) | All causemortality | All cancersmortality | Coronary Heart Diseasemortality | Strokemortality | Chronic ObstructivePulmonaryDisease mortality |
| Deprivation indices 2007 (1 unit on scale) | +0.5% | +0.6% | +0.4% | +0.6% | +1.4% |
| White ethnicity (1%) | +0.7% | +0.8% | +1.0% | +0.9% | +1.2% |
| %of adults who were obese in 2006–8 (1%) | NS | +0.5% | NS | +1.0% | NS |
| % of population who are male (1%) | NS | NS | NS | NS | −6.0% |
| % of population aged 65 or more years (1%) | +4.0% | +4.0% | +3.0% | +8.0% | +1.0% |
| % of GP registered list on diabetes register (1%) | +4.0% | NS | +14.0% | +8.0% | Not used |
| % of GP registered list onhypertension register (1%) | NS | Not used | −3.0% | −6.0% | Not used |
| % patients with recalled perceptionof being able to see preferred GP (1%) | NS | −0.3% | NS | NS | −0.7% |
NS = not significant.
For every 1 unit increase in the predictor, the predicted count changes by (the coefficient minus 1) times 100%.
So, for % of GP registered list on hypertension register in coronary heart disease mortality, for every 1% increase in the register, the predicted count changes by (0.97−1)×100 = −0.03×100 = −3% (a decrease of 3%), and for % of patients with recalled perception of being able to see preferred GP in cancer mortality, for every 1% increase in being able to see preferred GP, the predicted count decreases by (0.997−1)×100 = −0.3% (a decrease of 0.3%).
Interpretation of associations between primary care predictors and mortality rates for combined model using a generalized estimating equations approach.
| Mortality group | Predictor | Interpretation of IRR |
| CHD | % GP registered list on hypertensionregister | After adjusting for other predictors, the CHD mortality rate was predicted to be 22% lower in the PCT with the highest % of this predictor than in the PCT with the lowest % of this predictor. |
| Stroke | % GP registered list on hypertensionregister | After adjusting for other predictors, the stroke mortality rate was predicted to be 39% lower in the PCT with the highest % of this predictor than in the PCT with the lowest % of this predictor. |
| Cancer | % patients with recalled perceptionof being able to see preferred GP | After adjusting for other predictors, the cancer mortality rate was predicted to be 1.2% lower in the PCT with the highest % of this predictor than in the PCT with the lowest % of this predictor. |
| COPD | % patients with recalled perceptionof being able to see preferred GP | After adjusting for other predictors, the COPD mortality rate was predicted to be 2.8% lower in the PCT with the highest % of this predictor than in the PCT with the lowest % of this predictor. |