Title: Hospital Quality Indicators in Iowa Rural Hospitals
1Hospital Quality Indicators in Iowa Rural
Hospitals
- Pengxiang (Alex) Li, Marcia M. Ward, Paul James,
John E. Schneider - 2008 AHRQ Annual Meeting
- Bethesda, Maryland
- Support grant Agency for Healthcare Research and
Quality Grant HS015009
2Background
- Hospital quality indicators were used to provide
a perspective on hospital quality of care - AHRQ Inpatient Quality Indicators (IQIs)
- AHRQ Patient Safety Indicators (PSIs)
- Our analyses focus on
- Acute Myocardial Infarction (AMI) in-hospital
mortality (IQI-15) - Four PSIs (PSI-5, PSI-6, PSI-7, and PSI-15)
3Outline
- Comparison of Iowa urban and rural hospitals on
AMI in-hospital mortality - James PA, Li P, Ward MM. Myocardial infarction
mortality in rural and urban hospitals
Rethinking measures of quality of care. Annals of
Family Medicine, 5105-111, 2007 - Association between Critical Access Hospital
(CAH) conversion and patient safety indicator
performance - Li, P., Schneider, J. E. Ward, M. M., (2007)
Effect of Critical Access Hospital Conversion on
Patient Safety. Health Services Research, 42 (6)
2089-2108 - Exploration of a potential reason of patient
safety change associated with CAH conversion - Li, P., Schneider, J. E. Ward, M. M., Effects
of Critical Access Hospital Conversion on the
Financial Performance of Rural Hospitals Inquiry
(in press)
4How do Iowa urban and rural hospitals compare on
AMI in-hospital mortality?
- James PA, Li P, Ward MM. Myocardial infarction
mortality in rural and urban hospitals
Rethinking measures of quality of care. Annals of
Family Medicine, 5105-111, 2007
5Introduction
- Observational studies find that the quality of
care for myocardial infarction (MI) patients
admitted to rural hospitals is substandard
(Sheikh 2001, Baldwin 2004) - Lower volumes of MI patients in rural hospitals
- Lacking cardiologists
- Lacking support services
6Introduction
- Validity of these observational studies has been
questioned - Unbalanced comparison groups
- Patients admitted to rural hospitals tend to be
older, poorer, in poorer health, and have greater
number of comorbidities (Baldwin 2004, Chen 2000,
Frances 2000) - Referral patterns of rural provider
- Empirical study showed that less severe patients
were referred to urban hospitals (Metha 1999) - Unmeasured confounding may account for
differences in patient outcomes
7Objectives of the study
- To compare characteristics of MI patients
admitted to rural and urban hospitals - To examine in-hospital mortality between rural
and urban hospitals among MI patients - Using traditional risk adjustment techniques
(Logistic regression) - Using instrumental variable methods (IV)
8Methods Data
- Discharge data from Iowa State Inpatient Dataset
(2002 2003) - Inclusion criteria
- A principal diagnosis of MI (ICD-9-CM
410.01-410.91) - Eighteen years or older
- Exclusion criteria
- The hospital identification number was missing
(n9) - Patients whose home county was not in Iowa
(n1,248) - Patients zip code was missing (n14)
- Patients sex was missing (n1)
- Our primary analyses also excluded patients
discharged or transferred to another short term
general hospital for inpatient care (n1,618) - Most of our analyses are based on 12,191 MI
patients
9Methods Variables
- Dependent variable
- In-hospital mortality
- Independent variables
- Urban vs Rural hospitals that patients admitted
to - Urban 27 hospitals
- Rural 89 hospitals
- Payer e.g. Medicare, private insurance, self-pay
- Admission type e.g. emergency
- Race
- Risk adjustment index
- Charlson comorbidity index
- All Patient Refined DRGs (APR-DRGs) risk index
10Methods Traditional Analytic Approach (Logistic
Regression)
- Univariate analyses of group comparisons
- Chi-square tests for dichotomous data
- ANOVAs for continuous data
- Logistic regressions for multiple regression
analyses
11Methods Pitfalls with Logistic Regression
- Using administrative inpatient data, one cannot
control all patients risk factors (e.g. severity
of illness) - If unmeasured variables are related to selection
of the hospital, the estimates of the
hospital-specific contribution to mortality will
be biased. - For example, elderly MI patients with severe
comorbid conditions, which are unmeasured in
administrative data, might prefer to remain in
the rural hospitals. - As a result, a higher risk-adjusted mortality
rate in rural hospitals might simply be due to
more severe patients in rural hospitals.
12Approaches to Minimize Bias
- Collect all the relevant patient-level variables
very costly - Randomized controlled trial
- Not feasible to this study
- Instrumental variable (IV) estimation
- An econometric technique which enables us to
obtain unbiased estimates of treatment effects in
observational studies - An example Wehby (2006) found that using the
logistic regression model, early initiation of
prenatal care is associated with a higher
probability of low birth weight (LBW) - Unmeasured confounders women at a higher risk
demand more (or early) prenatal care compared to
those at lower risk. - IV estimations showed that early time to prenatal
care initiation is associated with a lower
probability of LBW.
13The Instrumental Variable (IV) estimation
- IVs are used to achieve a pseudo-randomization
- The instrumental variable technique can extract
variation in the focal variable (rural hospital
selection) that is unrelated to unmeasured
confounders, and employ this variation to
estimate the causal effect on an outcome - Assumptions for IV(s)
- IV(s) should correlate with treatment variable
(choice of rural hospital) - IV(s) should not be correlated with the
unmeasured confounders
14Methods Instrumental Variable Technique
- Instrumental Variable Patients distance to
the nearest urban hospital - The distances between each patients home and all
urban hospitals in Iowa were obtained by
calculating the distances between the centroids
of each patients resident zip code and all urban
hospitals zip codes. - Similar to Brooks (2003) approach, instrumental
variables in the study are dummy variables that
group patients based on the their distance to the
nearest urban hospital.
15Methods IV Technique First assumption
- Patients who live closer to an urban hospital are
more likely to choose an urban hospital than
those who live farther away. - Partial F-statistics for the IVs in the first
stage regression - Small values of first-stage F-statistics imply
failure of assumption 1 - Rule of thumb Fgt10 indicates good association
(Staiger 1997)
16Methods IV Technique Second Assumption
- Distance to the nearest urban hospital is not
associated with the severity or pre-morbid risks
of patients with MI - Descriptive comparison between two groups of
patients classified by IV - If the instrument is independent of the
unmeasured confounders, it should also be
independent of observed risk factors (e.g. age,
and comorbidity index). - Over-identifying restrictions tests
- The null hypothesis is that the IV is not
correlated with unmeasured confounders
17Methods IV Technique
- To examine the robustness of our findings
- We used a range of patients groups for the
instrumental variable (2, 4, 8, and 12 groups). - We varied the independent variables.
- The syslin two-stage least squares (2SLS)
procedure in SAS 9.1 was used to do IV estimation.
18Results Table 1 Baseline characteristics of MI
patients admitted to rural and urban hospitals
Variables Rural (N 1,426) Urban (N 10,765) p-value
Age 82.35 68.89 lt.0001
Male () 45.02 59.76 lt.0001
Black () 0.14 1.13 0.0004
Number of secondary diagnoses 5.66 5.61 0.43
Charlson comorbidity index 0.96 0.69 lt.0001
APR-DRG risk index 0.09 0.06 lt.0001
In-hospital Mortality 0.14 0.06 lt.0001
Excluding patients discharged or transferred to
another short term general hospital for inpatient
care.
19Results Table 2 Baseline characteristics of MI
patients transferred out of rural hospitals or
staying in rural hospitals
Variables Stay in rural hospitals (N1,426) Transfer out of rural hospitals (N730) p-value
Age 82.35 71.46 lt.0001
Male () 45.02 56.71 lt.0001
Black () 0.14 0.14 0.99
Number of secondary diagnoses 5.66 4.24 lt.0001
Charlson comorbidity index 0.96 0.67 lt.0001
APR-DRG risk index 0.09 0.04 lt.0001
Patients discharged or transferred to another
acute care hospital for inpatient care
20Results Table 3 Odds ratios of in-hospital
mortality among MI patients admitted to urban
hospitals or to rural hospitals, using logistic
regression models (n12,191)
Model components Odds ratio (Urban vs Rural) 95 CI p-value c-statistic
Unadjusted 0.42 0.36-0.50 lt.0001 0.56
Adjusted for demographic variables (age, sex, race, admission type and source of payment) 0.70 0.59-0.84 lt.0001 0.71
Adjusted for demographic variables and Charlson comorbidity index 0.70 0.59-0.84 0.0001 0.71
Adjusted for demographic variables and APR-DRG risk index 0.68 0.56-0.82 lt.0001 0.86
Excluding patients discharged or transferred to
another short term general hospital for inpatient
care
21Results Table 4 Characteristics among MI
patients grouped by distance to the nearest urban
hospital
Variables Distance to nearest urban hospital lt14.08 miles (N 6,097) Distance to nearest urban hospital gt14.08 miles (N 6,104) p-value
Mean Distance to the nearest urban hospital (miles) 4.94 34.20 lt0.0001
Percent of patients admitted to urban hospitals () 99.54 77.07 lt0.0001
Age 68.89 72.02 lt0.0001
Male () 58.65 57.45 0.18
Black () 1.95 0.08 lt0.0001
Number of secondary diagnoses 5.72 5.53 lt0.0001
Charlson comorbidity index 0.72 0.72 0.67
APR-DRG risk index 0.07 0.07 0.48
In-hospital mortality rate () 7.07 7.52 0.34
14.08 miles is the median distance from
patients home to the nearest urban hospital
22Results Table 5 Instrumental variable
estimates of the difference of in-patient
mortality between urban and rural hospitals
IV models (n12,191)Â Â Number of groups for instrumental variable Tests for instrumental variables Tests for instrumental variables IV estimates of mortality difference IV estimates of mortality difference
IV models (n12,191)Â Â Number of groups for instrumental variable Instrument P-value for overidentifying restrictions tests Coefficients P-value
IV models (n12,191)Â Â Number of groups for instrumental variable F-statistic P-value for overidentifying restrictions tests Coefficients P-value
Unadjusted 2 1540.16 - -0.0199 0.34
Unadjusted 4 642.65 0.65 -0.0269 0.16
Unadjusted 12 184.31 0.13 -0.0288 0.13
Adjusted for demographic variables 2 1568.24 - 0.0127 0.58
Adjusted for demographic variables 4 652.86 0.80 0.0081 0.69
Adjusted for demographic variables 12 187.14 0.10 0.0065 0.75
Adjusted for demographic variables and Charlson comorbidity index 2 1539.9 - 0.0090 0.69
Adjusted for demographic variables and Charlson comorbidity index 4 642.51 0.92 0.0053 0.80
Adjusted for demographic variables and Charlson comorbidity index 12 184.29 0.12 0.0040 0.84
Adjusted for demographic variables and APR-DRG risk index 2 1694.27 - -0.0034 0.87
Adjusted for demographic variables and APR-DRG risk index 4 640.61 0.92 -0.0069 0.72
Adjusted for demographic variables and APR-DRG risk index 12 202.50 0.01 -0.0063 0.74
If a F-statistic is less than 10, the
instrumental variables are weak. If p-value
is less than 0.05, one of the instrumental
variables correlated with unmeasured confounders
23Results Sensitivity analyses
- Repeat analyses in different samples
- Excluding transferred in MI patients
- Three-year state inpatient datasets (2001 to
2003) - Different IV estimation method
- Two-stage residual inclusion method to account
for the endogeneity in nonlinear (logistic) model
- Bivariate Probit model (using Stata 9.0)
- The results are consistent with IV estimation in
Table 5
24Discussion
- This study confirms earlier studies
- MI patients admitted to rural hospitals were
older and sicker than their urban counterparts - Traditional models all indicate significantly
higher in-hospital mortality for those admitted
to rural hospitals
25Discussion
- Our findings suggest that the traditional
logistic regression models are biased - Admissions to rural or urban hospitals are likely
to be confounded by unmeasured patient variables - Referral patterns in rural hospitals
- Younger and less sick patients are transferred to
urban hospitals - The clinical judgment about transfer of rural
senior patients with MI may rely on different
criteria
26Discussion
- Patient preferences are likely to play a
significant role in transfer decisions for older
MI patients - May reflect personal choice or existing serious
comorbidities - Serious cases may choose to remain close to home
- The transfer patterns may reflect rural doctors
respecting their patients wishes - Using in-hospital MI mortality to measure quality
of care in rural hospitals is problematic.
27Limitations of the study
- The results of the IV estimation can only be
generalized to patients for whom distance affects
their choice - The conclusion cannot be applied to MI patients
bypassing rural hospitals and seeking care in
urban hospitals - The findings for hospitals in one state may not
generalize to other states . - Analyses of in-hospital mortality rates may not
generalize to mortality rates after
hospitalization.
28Conclusions
- Mortality from MI in rural Iowa hospitals is not
higher when controlled for unmeasured
confounders. - Current risk-adjustment models may not be
sufficient when assessing hospitals that perform
different functions within the healthcare system.
- Unmeasured confounding is a significant concern
when comparing heterogeneous and undifferentiated
populations.
29Did conversion to Critical Access Hospital (CAH)
status affect patient safety indicator
performance?
- Li, P., Schneider, J. E. Ward, M. M., (2007)
Effect of Critical Access Hospital Conversion on
Patient Safety. Health Services Research, 42 (6)
2089-2108
30Background
- In order to protect small, financially vulnerable
rural hospitals, the Medicare Rural Hospital
Flexibility Program of the 1997 Balanced Budget
Act allowed hospitals meeting certain criteria to
convert to critical access hospitals (CAH) - This changed their Medicare reimbursement
mechanism from prospective (PPS) to cost-based - One objective of the policy was to increase the
quality of care in these hospitals
31Timeframe for Conversion to CAH
32Patient Safety
334 PSIs and Composite
- AHRQ recommends suppressing the estimates if
fewer than 30 cases are in the denominator - Only five patient safety indicators are able to
provide PSI measures for all rural Iowa hospitals
- PSI-5 foreign body left during procedure
- PSI-6 iatrogenic pneumothorax
- PSI-7 selected infections due to medical care
- PSI-15 accidental puncture or laceration
- PSI-16 transfusion reaction
- Too rare to provide variability to differentiate
hospitals in Iowa - A composite patient safety variable was created
by summing the four PSIs (PSI-5, PSI-6, PSI-7,
and PSI-15).
34Number of Hospitals Having Better or Worse
Performance after CAH Conversion
35Cross-sectional Analyses
- Cross-sectional comparisons showed that CAHs had
better performance than rural PPS hospitals on 4
of the 5 PSI measures. - However, the difference in patient safety
indicators might be due to differences in patient
mix, hospital characteristics besides CAH
conversion, and differences in markets and
environment.
36Multivariable Analyses
- We used multivariable Generalized Estimating
Equations (GEE) models and sensitivity analyses
to control for the impact of patient case mix,
market variables, and time trend. - GEE models showed that CAH conversion was
associated with significant better performance in
PSI-6, PSI-7, PSI-15 and composite PSI. - Findings were robust among sensitivity analyses
using different samples and different methods
37Conclusions
- CAH conversion in rural hospitals resulted in
enhanced performance in PSIs - We speculate that the likely mechanism involved
an increase in financial resources following CAH
conversion to cost-based reimbursement for
Medicare patients
38How did Critical Access Hospital conversion
affect rural hospital financial condition?
- Li, P., Schneider, J. E. Ward, M. M., Effects
of Critical Access Hospital Conversion on the
Financial Performance of Rural Hospitals Inquiry
(in press)
39Objectives
- To study the effects of CAH conversion on Iowa
rural hospitals operating revenue, cost, and
profit margin
40Study Sample and Study design
- Sample
- Eight year (1997-2004) panel data for 89 Iowa
rural hospitals (rural PPS hospitals and CAHs) - Unit of analysis is hospital-year
- Study design
- Quasi-experimental designs that use both control
groups and pretests - Panel data regression with fixed hospital effects
41Models
- Ad hoc models
- Revenueitf(CAHit,Pjt,Yit,Xit)
- Costitf(CAHit,Wjt,Yit,Xit)
- Marginitf(CAHit,Wjt, Pjt,Yit, Xit)
- Variables
- CAHit hospital status (CAH or rural PPS) for ith
hospital in year t - Pit output prices for ith hospital in year t
- Wit input prices for ith hospital in year t
- Yit output volume for ith hospital in year t
- Xit other variables for ith hospital in year t
that empirically affect dependent variables
42CAH variables
- One dummy variable
- CAH1, if the hospital is in CAH status
- Three dummy variables
- CAH1it1, if the hospital is in the first year of
CAH status, otherwise CAH1it0 - CAH2it1, if the hospital is in the second year
of CAH status, otherwise CAH2it0 - CAH3it1, if the hospital is in CAH status for
more than 2 years, otherwise CAH3it0 - Comparison group Rural PPS
43Other covariates
- Pit output prices for ith hospital in year t
- Medicare Part A (hospital) adjusted average per
capita cost (AAPCC) as proxy of hospital output
price (county level) - Wit input prices for ith hospital in year t
- Hourly wages for registered nurses (county level)
- Yit output volume for ith hospital in year t
- Total number of acute discharges, total number of
outpatient visits, and average length of stay of
acute discharges - The squared and cubed output measures and
interaction terms will be included
44Others
- Xit other variables for ith hospital in year t
that empirically affect dependent variables - Hospital size (number of beds)
- Hospital case-mix
- Hospital mean DRG weight, percent of emergency
visits, and percent of Medicare and Medicaid days
among acute inpatient days - Variables reflecting the hospital market (we
assumed the county to be the relevant geographic
market of hospital services.) - Herfindahl-Hirschman Index (HHI), per capita
income, and population density in the county in
which the hospital is located - Year dummy variables which will adjust the
effects of unmeasured, time-specific factors - Revenue and expense functions were log
transformed
45Data Sources
- Iowa Hospital Association Profiles
- Iowa State Inpatient datasets
- Area Resource File
- Centers for Medicare and Medicaid Services
- American Hospital Association Annual Survey
Database - Bureau of Labor Statistics
46ResultTable 1 Changes in rural hospital
patient care revenue, expense, and operating
margin associated with CAH conversion, 1998-2004
P-valuelt 0.1 P-valuelt 0.05
47Table 2 Changes in rural hospital patient care
revenue, expense, and operating margin during the
first, second and third plus years of CAH
conversion, 1998-2004
P-valuelt 0.1 P-valuelt 0.05
48Results
- Operating revenue
- No change in the first year of conversion (paid
an interim rate) - Significant increases since the second year of
CAH conversion - Operating expenses
- CAH conversion is associated with significant
increase in hospital operating expenses - Hospitals increase expenses in the first year of
conversion - Operating Margin
- Significant drop in the first year of conversion
- Significant increase since the second year of
conversion - Sensitivity analyses showed similar results
49Conclusions
- CAH conversion in rural hospitals resulted in
better patient safety. - Rural hospital CAH conversion was associated with
significant increases in hospital operating
revenues, expenses and margins
50Summary Limitations of measures
- In-hospital mortality
- Substantial unmeasured confounders
- Patient Safety Indicators
- Only small number of indicators can be applied to
rural hospitals - Changes of indicators might reflect changes in
coding or reporting in administrative data - We need hospital quality indicators specifically
for rural hospitals
51- Thank you
- Questions?
- Contact information
- Pengxiang (Alex) Li
- University of Pennsylvania
- penli_at_mail.med.upenn.edu