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DUAL USE OF VA AND MEDICARE SYSTEMS ASSOCIATED
WITH INCREASED RISK OF DEATH --
Dual use increases
the risk of uncoordinated and poorly managed
care,
which is especially important in the treatment
and
management of older adults with
multiple chronic conditions.

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Research article
Dual use of Medicare and the Veterans Health Administration: are there
adverse health outcomes?
Fredric D Wolinsky1 ,2 ,3 , Thomas R Miller2 ,
Hyonggin An4 , Paul R Brezinski2 ,5 , Thomas E Vaughn1 ,2 and Gary E
Rosenthal1 ,2 ,3
1Center for Research in the Implementation of Innovative Strategies in
Practice (CRIISP), Iowa City Health Care System, 601 Highway 6 West,
Iowa City, IA52246, USA
2Health Management and Policy, College of Public Health, the University
of Iowa, 200 Hawkins Drive, Iowa City, IA52242, USA
3Internal Medicine, Carver College of Medicine, the University of Iowa,
200 Hawkins Drive, Iowa City, IA52242, USA
4Biostatistics, College of Public Health, the University of Iowa, 200
Hawkins Drive, Iowa City, IA52242, USA
5United States Air Force, USA
BMC Health Services Research 2006, 6:131 doi:10.1186/1472-6963-6-131
The electronic version of this article is the complete one and can be
found online at:
http://www.biomedcentral.com/
1472-6963/6/131
Outline Abstract
Background
Millions of veterans are eligible to use the Veterans Health
Administration (VHA) and Medicare because of their military service and
age. This article examines whether an indirect measure of dual use based
on inpatient services is associated with increased mortality risk.
Methods
Data on 1,566 self-responding men (weighted N = 1,522) from the Survey
of Assets and Health Dynamics among the Oldest Old (AHEAD) were linked
to Medicare claims and the National Death Index. Dual use was indirectly
indicated when the self-reported number of hospital episodes in the 12
months prior to baseline was greater than that observed in the Medicare
claims. The independent association of dual use with mortality was
estimated using proportional hazards regression.
Results
96 (11%) of the veterans were classified as dual users. 766 men (50.3%)
had died by December 31, 2002, including 64.9% of the dual users and
49.3% of all others, for an attributable mortality risk of 15.6% (p <
.003). Adjusting for demographics, socioeconomics, comorbidity,
hospitalization status, and selection bias at baseline, as well as
subsequent hospitalization for ambulatory care sensitive conditions, the
independent effect of dual use was a 56.1% increased relative risk of
mortality (AHR = 1.561; p = .009).
Conclusion
An indirect measure of veterans' dual use of the VHA and Medicare
systems, based on inpatient services, was associated with an increased
risk of death. Further examination of dual use, especially in the
outpatient setting, is needed, because dual inpatient and dual
outpatient use may be different phenomena.
Outline Background
There are 9.5 million US veterans aged 65 years old or older [1] who are
eligible to use the Veterans Health Administration (VHA) system due to
their military service, and to use and have their care in the private
health care delivery system paid for by Medicare due to their age [1-6].
The implications of such dual use can be both positive and negative
[7-10]. On the positive side, dual use provides veterans with access to
more sources and sites of health care and to a greater diversity of
health care product lines [4-6]. Those services, however, are received
from multiple health professionals in two distinct and disarticulated
delivery systems. Thus, on the negative side, dual use may decrease the
likelihood that veterans receive continuously coordinated care
[3,10,11].
When older adults with multiple chronic conditions receive services from
several different providers who are not centrally managed and
coordinated, monitoring effectiveness decreases, and the likelihood of
medical errors and contraindicated and competing regimens increases
[12]. Indeed, the absence of "a continuous (and coordinating) healing
relationship" [13] increases the risk of hospitalization for ambulatory
care sensitive conditions (ACSCs). Based on Rutstein et al.'s [14-16]
early studies of preventable hospitalization and enhanced by second
generation studies during the 1990 s, [17-20] hospitalizations for ACSCs
were recently formalized as the most appropriate and policy relevant
community markers of health care quality by the Agency for Healthcare
Research and Quality (AHRQ) [21,22]. The underlying assumption is that
if quality care is received, attendant efforts at comprehensive care
management and primary and secondary prevention can eliminate or at
least delay the need for such hospital episodes. Ultimately, the lack of
continuity of care and hospitalization for ACSCs are thought to increase
the risk of mortality.
It is not clear how many older veterans use both of their health care
entitlements. One GAO report indicated that among Medicare-eligible
veterans who used any health care services in 1990, 81% used Medicare
only, 9% used only the VHA, and 10% used both systems [23]. In contrast,
Fisher and Welch reported that 52% of all VHA patients who were Medicare
eligible filed at least one Medicare benefit claim within a single year,
[2] and another GAO report suggested that 54% of Medicare-eligible
veterans were dual users [24]. VIReC recently concluded that although
90% of older VHA patients were enrolled in Medicare, 22% used only VHA
services, 30% used only Medicare services, and 43% used services from
both sources [25]. Thus, dual use estimates range from 10% to 68%. This
wide range of dual use estimates is understandable, and results from
differences in sample selection and design. The lowest estimated dual
use rate comes from the only population-based study, which includes
veterans who use few, if any, VHA health services. In contrast, the
higher dual use rates are from samples of veterans who were current
users of the VHA.
Like the prevalence of dual use, little is known about its antecedents.
Among the few extant studies, Agha et al. found that veterans who
primarily use VHA facilities had lower education, income, and health
status [26]. Distance to the nearest VHA facility has also been reported
to be predictive of dual use (an inverse relationship) [7,9,27,28]. None
of these studies, however, was comprehensive in its consideration of
potential precursors of dual use, longitudinal by design, or involved a
representative sample of veterans. Thus, a considerable knowledge gap
exists with regard to the potential adverse effects of dual use among
veterans.
In this article, the potential adversity of dual use among older male
veterans is examined using an innovative, secondary analysis of a
comprehensive and publicly available data set. The hypothesis is that
dual use based on inpatient services among older male veterans
ultimately increases their risk of mortality. It is assumed that the
etiological mechanism resides in the lack of continuously coordinated
health care, [12] and its effect on a cascade of subsequent adverse
outcomes including, but not limited to increasing the risk of
hospitalization for ACSCs. As Crossing the Quality Chasm makes clear, a
continuously coordinated health program that spans disparate delivery
systems is essential to providing quality health care and avoiding
premature death [13].
Outline Methods
The AHEAD data set
To evaluate whether dual use based on inpatient services increases the
risk of mortality, data are taken from the Survey on Assets and Health
Dynamics among the Oldest Old (AHEAD). Because over-sampling was used to
increase the number of African Americans, Hispanics, or Floridians in
the AHEAD, the data are weighted to adjust for the unequal probabilities
of selection due either to the multi-stage cluster sampling design
and/or the over-sampling. The AHEAD data set was selected for three
reasons. First, it is a nationally representative probability sample
that includes 2,911 men and 4,536 women who were 70 years old or older
at their baseline interviews in 1993–94. Because only 57 women (1%) were
veterans, these analyses are restricted to men. Among the men, 1,574
(54%) are veterans. This provides a large, nationally representative
sample, evenly distributed between veteran and non-veteran men. Second,
the AHEAD baseline survey data have been linked to Medicare claims from
January 1989 through December 1996. Third, the AHEAD survey and Medicare
claims data have also been linked to the National Death Index (NDI)
through December 2002. This provides a nine-year window for examining
the association of an indirect dual use measure based on inpatient
services with mortality, during which 52% (1,524) of these men died.
The dual use measure
Unfortunately, the AHEAD is not linked to VHA claims. Thus, an indirect
measure of dual use based on inpatient services was constructed. This
was done by building on the extant literature addressing differences
between self-reports and administrative records of health services use.
It has been well established that concordance between the two is not
perfect, and that the discordance is not easily predicted [29-37]. The
magnitude of the discordance is primarily influenced inversely by the
salience of the event, and directly by the length of the recall period
[33-35]. Hospital episodes are considered to be the most salient events,
and for them a 12-month window provides a reasonable balance between
recall abilities and the incidence of hospitalization [29,37].
Discordance has also been shown to be positively associated with the
number of events during the reporting period, and to a lesser extent
with demographic, social, and health factors, although these
associations have not been consistently observed [37]. Elsewhere, we
have shown that in the AHEAD, the concordance of self-reports and
Medicare claims is high for both any (vs. none; κ = .763) and the
precise number of (κ = .663) hospital episodes over a 12-month window
[38].
Building on this literature, the indirect measure of dual use based on
inpatient services was constructed as follows. At baseline, each AHEAD
man was asked whether he was hospitalized overnight during the previous
12 months, and if he had been, how many times this occurred. Using each
AHEAD man's baseline interview date, corresponding data were harvested
from his Medicare claims. The self-reports were then compared to the
claims results. If the AHEAD man reported at least one more hospital
episode than was found in his Medicare claims he was considered an
over-reporter.
Although straightforward, this approach has four limitations that,
although addressable, warrant further mention. First, this approach
ignores any dual use that occurs solely in the outpatient setting. As
indicated above, however, the veridicality of such measures is
substantially less than that obtained by focusing just on the inpatient
setting [29-37]. Indeed, in the AHEAD, we have shown that the
concordance of self-reports and Medicare claims is low for both any (vs.
none; κ = .248) and the precise number of (κ = .347) physician visits
over a 12-month window [38]. Second, this approach ignores the extent of
the over-reporting. In these data, however, 79% of those who
self-reported more hospital episodes than were found in their Medicare
claims over-reported by only one hospital episode. Third, this approach
may confound dual use with the proclivity for hospitalization. That is,
by definition, all dual users have reported that they were hospitalized.
This confound, however, can be addressed by including in the analysis a
binary marker for whether the AHEAD man reported being hospitalized.
Fourth, this approach does not actually identify dual use, because dual
use can only occur among veterans.
Isolation of the dual use effect, however, can be readily achieved by
constructing a set of four dummy variables that reflects the
cross-classification of over-reporting with veteran status. The analyses
reported here include three of these markers – veterans who
over-reported (and thus are considered to be dual users of VHA and
Medicare), veterans who accurately reported, and non-veterans who
over-reported (but could not be dual users of the VHA and Medicare). The
omitted or reference group is that of non-veterans who accurately
reported their number of hospital episodes.
In this approach, the effect of the dummy variable for veterans who
over-reported their number of hospital episodes accurately reflects the
mortality risk of dual use of VHA and Medicare based on inpatient
services. The hypothesis is that this effect will be statistically
significantly greater than unity, reflecting the increased mortality
risk associated with dual use of VHA and Medicare. It is further
hypothesized that the effect of the dummy variable for non-veterans who
over-reported will not be statistically significantly different than
unity, because non-veterans have no access to VHA.
Mortality
Vital status was obtained by linking the AHEAD to the NDI. The NDI files
indicate whether each AHEAD man died, and if so, provide the month and
year of death. Also provided, but not used in these analyses, are
indicators of the probability of the match using standard criteria [39]
developed by the National Center for Health Statistics (NCHS), and
detailed ICD9-CM codes for the cause of death.
Selection bias
Of the 2,911 AHEAD men, the survey data was provided by a
proxy-respondent (usually the spouse) for 391 (13%). Because the
literature [29-38] on reporting discrepancies assumes self-respondents,
analyses were restricted to the 2,520 AHEAD men who were
self-respondents. Linkage to the Medicare claims was not available for
an additional 954 AHEAD men (38%). Of these, 182 refused to consent to
having their Medicare claims accessed, and for the remainder (772 men)
sufficiently accurate information to facilitate the linkage process was
not available. All 954 AHEAD men whose self-reported survey data could
not be linked to their Medicare claims were excluded from the analyses.
Thus, of the 2,911 AHEAD men, the analyses reported here were restricted
to the 1,566 (54%; weighted N = 1,522) who were self-respondents and
whose survey data was linked to their Medicare claims.
The exclusion of so many AHEAD men from these analyses raised the
potential for selection bias. This potential for selection bias was
addressed using propensity score methods. Developed by Rubin, [40]
popularized by Rosenbaum and Rubin, [41] and illustrated by D'Agostino,
[42] propensity scores are traditionally obtained by using multiple
logistic regression to model a binary outcome reflecting group
assignment in observational (vs. randomized controlled trial) studies.
Here, propensity scores were used to model selection bias. To obtain the
selection bias propensity scores, a multivariable logistic regression
was conducted using all appropriate baseline covariates, including
veterans' status, to predict exclusion of self-respondents from the
analytic sample. The fit of the propensity score model was reasonably
robust (C-statistic [43] = .638), and there was no evidence of
heteroscedastic error (Hosmer-Lemeshow statistic [44] p value = .934).
Thus, adding the obtained predicted probabilities of exclusion to the
final analytic model among the restricted sample should be an
appropriate adjustment for potential selection bias (at least in terms
of the data available for analysis). This propensity score regression
approach, however, assumed additive linearity in the relationships of
interest. Therefore, as an added safeguard, the results were replicated
using the more popular stratification approach. In this approach, the
final model (excluding the propensity score) was re-estimated separately
within strata based on the propensity score. If the results were robust
across these strata, greater confidence could be had in the selection
bias adjustment process.
Exploring the etiological mechanism
Although the main focus of this article was whether dual use of the VHA
and Medicare systems, indirectly indexed by veterans' over-reporting
their number of hospital episodes, was associated with mortality, a
secondary interest involved the etiological mechanism through which this
association occurred. It was assumed that (a) dual use decreased the
likelihood of receiving continuously coordinated health care, (b) the
lack of continuously coordinated health care increased the risk of
subsequent hospitalizations for ACSCs, and (c) these three factors (dual
use, the lack of continuously coordinated care, and hospitalization for
ACSCs) increased the risk of mortality. Left unspecified was whether the
effect of dual use was direct, indirect (through its intermediary [e.g.,
falling domino] effects on the lack of continuously coordinated care and
the increased risk of subsequent hospitalization for ACSCs), or a
combination of the two. To begin exploring these issues, a final
adjustment in the modeling process was made for subsequent
hospitalizations for ACSCs. This was done by creating a binary marker
indicating whether the subject had one or more hospitalizations for
ACSCs after their baseline interview but before January 1, 1997. This
marker was coded one for subjects with one or more such hospitalizations
based on AHRQ's computerized criteria, [21,22] and zero otherwise.
Although a measure of continuity of care based on the Medicare Part B
(outpatient) claims has been developed for use in these data, [45] it
could not be incorporated into these analyses. The reason was that this
measure would have yielded biased estimates of continuity of care among
dual users because it would have ignored their VHA outpatient visits, as
those data were not available. Not being able to adjust for continuity
of care severely constrained the ability to further explore the
etiologic mechanism through which dual use was associated with
mortality.
Covariates
In addition to adjusting for potential selection bias, fifteen
covariates were included to ensure that the estimated association of
dual use with mortality was fully independent from other background
factors. These covariates included age, race, education, income, assets,
activities of daily living (ADLs), instrumental ADLs (IADLs), self-rated
health, five chronic diseases, cognitive ability, and depressive
symptoms. Age was measured in years. Race was measured by a set of three
dummy variables for Hispanics, African Americans, and other
non-Caucasians (with Caucasians as the reference group). Education was
measured by a dummy variable contrasting high school graduates (and
above) with those having less education. Income was measured by a binary
marker for having less than $15,000 in annual income. Household wealth
was measured as the sum of all reported assets net of debt, and was
coded by a binary marker for having $19,000 or less in total wealth.
ADLs were measured by a count of the number of five items (e.g.,
bathing) that the subject reported having any difficulty performing.
Similarly, IADLs were measured by a count of the number of five items
(e.g., meal preparation) that the subject reported having any difficulty
performing. Self-rated health was measured by a set of four dummy
variables for excellent, very good, fair, or poor responses to the
standard question asking subjects to rate their health (with a good
response as the reference group). Five binary variables (1 = yes, 0 =
no) were used to indicate whether the subject reported having ever been
told by a physician that he had cancer, diabetes, heart disease, lung
disease, or a stroke. Cognitive ability was measured using the 7-item
version of the Telephone Index of Cognitive Status, which ranged from 0
(worst) to 15 (best) (TICS-7) [46]. Depressive symptoms were measured as
the number of symptoms endorsed using an 8-item version of the CES-D
[47].
Analytic approach
Because the month and year of death are known, proportional hazards
models were the appropriate statistical approach for estimating the
effect of dual use on mortality [48]. A series of proportional hazards
models were estimated that initially assessed the crude effect of the
set of three dummy variables reflecting the cross-classification of
veteran status with over-reporting, and then serially decomposed that
effect. The decomposition approach involved four stages that serially
introduced (a) the binary marker for reporting any hospital episodes in
the year prior to baseline, (b) the binary marker for whether
post-baseline hospitalizations for ACSCs occurred, (c) the fifteen
covariates, and finally, (d) the propensity score adjustment for
potential selection bias. Sensitivity analyses were then conducted in
which the final model, excluding the propensity score adjustment for
selection bias, was re-estimated within each propensity score strata.
Institutional review
Because the research reported here involved the linkage of public use
data files containing the AHEAD survey data with restricted data from
the NDI files and Medicare claims, three layers of institutional review
and approval were obtained. The first involved review and approval of
the research and restricted data protection plans associated with the
main NIH grant (R01 AG022913) by the AHEAD's Data Confidentiality
Committee (DCC). These were approved by the AHEAD DCC on February 20,
2003 (#2003–006). The second layer of review and approval involved the
University of Iowa Institutional Review Board (UI-IRB). The UI-IRB
approved the original protocol on March 24, 2003, and has subsequently
approved the protocol at all annual reviews (including appropriate
modifications to incorporate the second NIH grant – R03 AG027741 – which
specifically focused on dual use). The third layer of review and
approval involved the Centers for Medicare and Medicaid Services (CMS).
CMS approved the Data Use Agreement (DUA 14807) to access the Medicare
claims for this research on March 3, 2005.
Outline Results
Descriptive
The analytic sample consists of the 1,566 AHEAD men (weighted N = 1,522)
who were self-respondents and whose survey data were linked to their
Medicare claims. Table 1 shows the means or percentages for the
variables in the final model separately for each of the four distinct
groups based on the cross-classification of over-reporting and veteran
status. Overall, the mean age of the AHEAD men was 77 years (SD = 6), 7%
were Hispanic, 11% were African American, 1% were of another race other
than Caucasian, and 82% were Caucasian. Forty-five percent had not
graduated from high school, 40% reported $15,000 or less in household
income, and 25% indicated that they had less than $19,000 in wealth. The
mean number of ADLs was 0.3 (SD = 0.7; 86% had none), and the mean
number of IADLs was 0.4 (SD = 0.9; 78% had none). Twelve percent
reported their health as excellent, 22% as very good, 32% as good, 22%
as fair, and 11% as poor. Cancer was reported by 14%, diabetes was
reported by 12%, heart disease was reported by 33%, lung disease was
reported by 11%, and stroke was reported by 10%. The mean cognitive
status score was 12 (SD = 3; 24% had the maximum score), and the mean
number of depressive symptoms was 1.4 (SD = 1.9; 46% had none). Being
hospitalized in the year prior to baseline was reported by 23%. Slightly
more than half (55%) were veterans. Fourteen percent (226) experienced
one or more post-baseline hospitalizations for ACSCs. By December 31,
2002, 817 (52%) of the AHEAD men had died.
Comparisons across columns (within rows) in Table 1 indicated that
veterans had significant mortality risk advantages over non-veterans in
terms of age, majority status, education, income, wealth, self-rated
health, ADLs, IADLs, cognitive status, depressive symptoms, and
subsequent hospitalization for ACSCs. In contrast, veterans had
significant mortality risk disadvantages compared to non-veterans in
terms of cancer and diabetes. Comparisons within veterans or within
non-veterans indicated that those who over-reported their number of
hospital episodes had considerably greater mortality risk due to their
greater morbidity levels, regardless of veteran status.
Over-reporting
As indicated in Table 1, the number of self-reported hospital episodes
exceeded that found in their linked Medicare claims for 96 (10.8%) of
the veterans vs. 60 (9.5%) of the non-veterans. The minimal difference
between these crude over-reporting rates (odds ratio = 1.217; p = .261),
however, is misleading. Adjusting for age, race, and self-rated health
status using multivariable logistic regression revealed that veterans
were 50% more likely than non-veterans to over-report (adjusted odds
ratio = 1.496; p = .046). Moreover, veterans who over-reported their
hospital episodes had the same number of physician visits in their
Medicare claims as veterans who did not (79.9% of veterans who
over-reported had physician visits vs. 80.9% of veterans who did not;
both medians = 5). In contrast, non-veterans who over-reported their
hospital episodes had substantially more physician visits in their
Medicare claims than non-veterans who did not (87.7% of non-veterans who
over-reported had physician visits vs. 84.6% of non-veterans who did
not; medians = 8 and 5, respectively). Finally, among those who reported
hospital episodes, 48.4% of veterans over-reported the number vs. 41.8%
of non-veterans.
Proportional hazards regression
Table 2 contains the adjusted hazards ratios (AHRs) obtained from the
final proportional hazards regression model. Note that these AHRs were
adjusted for the binary marker for reporting any hospital episodes in
the year prior to baseline, the binary marker for whether post-baseline
hospitalizations for ACSCs occurred, the fifteen covariates, and the
propensity score adjustment for potential selection bias. These results
support both study hypotheses. That is, compared to non-veterans who
accurately reported their number of hospital episodes, veterans who
over-reported their number of hospital episodes (i.e., the indirect
measure of dual use of VHA and Medicare, based on inpatient services)
had an increased relative risk of dying (AHR = 1.561; p = .009). But,
non-veterans who over-reported their number of hospital episodes did not
have an increased relative risk of dying (AHR = 0.775; p = .191)
compared to non-veterans who accurately reported their number of
hospital episodes. Similarly, veterans who accurately reported their
number of hospital episodes did not have an increased relative risk of
dying (AHR = 1.168; p = .079) compared to non-veterans who accurately
reported their number of hospital episodes.
The effects of the covariates on mortality in the final model were as
expected. The relative risk of mortality significantly increased with
age (AHR = 1.099 per year; p < .001), IADLs (AHR = 1.110 for each; p =
.019), having poor vs. good self-rated health (AHR = 1.574; p < .001),
and having diabetes (AHR = 1.311; p = .015), heart disease (AHR = 1.197;
p = .025), lung disease (AHR = 1.458; p < .001), or a history of stroke
(AHR = 1.439; p < .001). The relative risk of mortality was
significantly reduced (AHR = 0.752; p = .011) among those having very
good vs. good self-rated health, and among those having better cognitive
status (AHR = 0.945 for each point of improvement on the TICS-7; p <
.001). As expected, men with subsequent hospitalizations for ACSCs had
increased risk of dying (AHR = 1.874; p < .001). The propensity score
adjustment, however, was not associated with mortality (AHR = 0.893; p =
.795).
Sensitivity analysis
Because the propensity score regression adjustment approach assumed
additive linearity in the relationships of interest, sensitivity
analyses were conducted. This involved using the propensity score
stratification approach, in which the final model (excluding the
propensity score) was re-estimated separately within strata based on the
propensity score. Although quintiles are used most often [40-42],
tertiles were used here to balance the distribution of dual users across
strata. Those analyses yielded remarkably consistent AHRs (1.465, 1.515,
and 1.531 for the lowest to highest propensity score tertiles),
indicating that the results shown in Table 2 are not artifacts of the
selection bias propensity score adjustment approach.
Outline Discussion
This article evaluated the association between an indirect measure of
inpatient-based dual use of the Medicare and VHA systems by older male
veterans using a large, nationally representative sample. Among the 864
veterans with linked data, 96 or 11% were classified as dual users. This
dual use rate is remarkably consistent with the 10% estimate reported in
the only other population-based study of dual use among veterans, [23]
and is substantially lower than estimates obtained from studies limited
to veterans who use the VHA system [2,24,25]. By December 31, 2002 there
had been 766 deaths among the AHEAD men (50.3%), including 64.9% of the
dual users and 49.3% of all others, for an attributable mortality risk
of 15.6% (p < .003). After adjusting for prior hospitalization, fifteen
covariates, post-baseline hospitalization for ACSCs, and selection bias,
male veterans who were dual users (based on inpatient services) had a
56.1% greater relative risk (p = .009) of mortality than non-veterans
who accurately reported their number of hospital episodes.
The presumed etiological mechanism that accounts for this observed
association is this: (a) dual use increases the risk of uncoordinated
and poorly managed care; (b) the risk of uncoordinated and poorly
managed care increases the risk of being hospitalized for ACSCs (and
other intermediary problems); and, (c) taken together, these factors
ultimately lead to the increased risk of mortality. Although subsequent
hospitalization for ACSCs substantially increased the risk of mortality
(AHR = 1.874; p < .001), adjusting for it did not appreciably alter the
risk of mortality associated with dual use. In the absence of a marker
for the continuity of care in these data, the precise magnitude of the
direct effect of dual use based on inpatient services on mortality
remains unknown.
Continuity of care has been conceptualized several different ways,
including interpersonal [12,49] (or relational) continuity,
informational continuity, [12] and site/team (or management) continuity
[50]. The common theme is that continuity of care has positive effects
on health outcomes because it (a) builds the practitioner's tacit
knowledge of the patient, and (b) enhances trust between the patient and
practitioner. In their exhaustive review of the literature, Saultz and
Lochner [51] found that interpersonal continuity was associated with
improved delivery of preventive services and lower hospitalization
rates. More specifically, Gill and Mainous have shown that interpersonal
continuity significantly reduces the risk of hospitalization for ACSCs
and for emergency department visits [52-54]. Ettner has shown that
having a usual physician decreases the likelihood of engaging in
substance abuse and increases the probability of having annual
preventive medical visits [55]. Although none of these studies involved
veterans, Wasson and colleagues reported that continuity of care among
male veterans 55 years old or older who used the VHA was associated with
decreased use of the emergency department, shorter lengths of stay, and
less time spent in ICUs [56].
Several important issues, however, have yet to be addressed in the
literature evaluating the association between continuity of care and
improved health outcomes. These include the need to separate the effects
of continuity of care from access to care, [17,57,58] whether access to
a single provider is preferable to an ongoing relationship with a
practice site, [59] and the threshold at which the continuity of the
patient-practitioner relationship manifests an effect [60]. Furthermore,
little is known about whether and how the effect of continuity of care
varies by patient (e.g., general health, specific situations, preferred
involvement in care decisions) and/or by provider characteristics (e.g.,
specialty, interpersonal skills, workload).
Despite its strengths, this study has several important limitations. The
more salient of these are that: (a) condition-specific analyses could
not be performed; (b) provider specialty-mix was not known; (c) VHA
claims (both inpatient and outpatient) were unavailable, and Medicare
outpatient claims were not used; (d) information on local system
characteristics and organizational factors was lacking; (e) dual use was
treated solely as a static (baseline) factor; (f) continuity of care was
unmeasured; and, (g) unobserved confounders remain potential threats to
the internal validity of this observational study. Further research is
needed to address these concerns.
The last concern, the potential for unobserved confounders, is always
present in observational research. Particularly important here, however,
is whether the veterans who over-reported their number of hospital
episodes had more access to non-Medicare health insurance coverage than
the non-veterans who over-reported. This would be especially important
if such access resulted in no claims for a given hospital episode being
submitted to Medicare, which would account for the greater adjusted
likelihood of veterans vs. non-veterans to over-report their number of
hospital episodes (relative to their Medicare claims).
Section 1862(b) of the Social Security Act {42 USC Section 1395y(b)(5)}
indicates that if the older adult has non-Medicare insurance from
certain sources (primarily from employer-based group health plans from
active or spousal-active employment, or from retained work-based health
benefits after retirement; but also due to end-stage renal disease,
black lung, workers compensation, or no-fault accident entitlements),
Medicare becomes the secondary payer. It is likely, however, that the
majority of older adults in our analytic sample who had private
insurance, had it to cover the gaps in Medicare, because it would make
no sense for them to pay for private insurance to cover inpatient
services that Medicare routinely covers. This is especially the case in
light of the fact that all of the older adults in our analytic sample
have Medicare Part A. For patients like these, a claim would still be
submitted to Medicare for most of the elements (charges) associated with
the hospital episode. And as a result, having such additional
non-Medicare coverage would have no bearing on our findings, because the
hospital episodes in question would still be documented in the patients'
Medicare claims. Unfortunately, the insurance data available in the
AHEAD study are not sufficiently granular to determine with certainty
whether non-Medicare insurance coverage is principally Medi-gap
coverage.
We were, however, able to examine the prevalence of employment-based
insurance and that of several types of self-reported non-Medicare health
insurance coverage among veteran and non-veteran over-reporters.
Although data on employment-based insurance were not collected at
baseline, they were obtained at the first (1995) follow-up interviews.
In those data there was no difference (chi-squared test for
cross-classifications; p = .611) in rates of having employment-based
insurance between veterans and non-veterans who over-reported their
hospital episodes.
In terms of other non-Medicare insurance coverage, there were no
significant differences at baseline (1993) in terms of working for pay
(p = .364), having long-term care insurance (p = .156), the number of
health insurance policies (p = .106), having only Medicare Part A (p =
.715), having Medicare Part A and Medicaid (p = .194), having Medicare
Part A and some other insurance (p = .642), and having only Medicare
Parts A and B (p = .231). Indeed, the only significant difference
observed (p = .012) was that 80% of veterans who over-reported had
Medicare Parts A and B and some other health insurance, compared to 62%
of non-veterans who over-reported. That difference, however, is not
sufficient to explain away our findings, because it represents only 17
veterans who over-reported. Moreover, this is precisely the group who
would be most likely to have purchased non-Medicare insurance to cover
the gaps in Medicare coverage. Thus, we did not find any plausible
evidence of this particular form of unobserved confounding.
Accordingly, we believe that these results are sufficiently robust to
have important policy implications – the indirect measure of dual use
based on inpatient services was significantly associated with increased
mortality, and the likely etiological mechanism involves poor
coordination between VHA and Medicare. How can coordination between the
VHA and Medicare be improved? The minimum requirement for better
coordination is information access, particularly access to the medical
record [12,45,51]. In this regard, the VHA has a substantial advantage –
its electronic medical record system can already be shared from one VHA
medical center or community based outpatient center to another and from
one provider to another. Indeed, the VHA's electronic health record
received the 2006 "Innovations in American Government Award" from
Harvard University because not a single medical record of any veteran
residing in the US Gulf Coast area was lost during the catastrophic 2005
hurricane season. And, the medical records for every one of the veterans
in that area who were evacuated and subsequently relocated were
immediately available to the VHA facilities and providers that took over
their treatment and care management.
Unfortunately, the same can not be said for Medicare, or for the private
health care delivery systems that rely on it for their reimbursement.
Despite longstanding calls by the IOM and others [13] to have inpatient
and outpatient electronic medical records universally in place, as well
as a recent but unfunded mandate to achieve this from US President GW
Bush, it has not happened and is not likely to happen anytime soon [61].
Moreover, although most non-VHA hospitals already have an electronic
medical record system, those systems are limited because they typically
only contain information generated locally (i.e., at that particular
facility). Furthermore, given the substantial variations in computer and
software systems, even hospitals in the same service area are not able
to readily share information.
The development of local health information infrastructures is a
promising development that may help to overcome these limitations, and
the Indiana Network for Patient Care (INPC) is an early exemplar of this
approach. INPC shares data from five hospital systems that include 15
separate hospitals, county and state public health department records,
Indiana Medicaid, and pharmaceutical cooperatives [62].
Cross-institutional access to this information via INPC or other local
health information infrastructures is the first step in inter-system
coordination. Although advocates suggest considerable potential for
health information infrastructures to transform health care by improving
quality and lowering costs, [63] cynics counter that the history of
health information technology has been mostly "hope and hype" with
little to show at the moment for the substantial up-front investments
that were required [64]. Nonetheless, facilitating the encouragement and
support of these initiatives appears warranted. Moreover, because the
VHA's electronic medical record system mimics several of those already
involved in health information infrastructures like the INPC, the basic
building blocks for the rapid development of a national infrastructure
may already exist.
Conclusion
Male veterans who were dual users of both VHA and Medicare, based on
over-reporting their number of hospital episodes compared to data from
their Medicare claims, had a 56.1% greater relative risk (p = .009) of
mortality than non-veterans who accurately reported their number of
hospital episodes. This relationship was quite robust, despite
adjustment for hospitalization previous to the study period, numerous
potential confounders, post-baseline hospitalization for ACSCs, and
selection bias. The presumed etiological mechanism is that dual use
increases the risk of uncoordinated and poorly managed care, which is
especially important in the treatment and management of older adults
with multiple chronic conditions.
Competing interests
The author(s) declare that they have no competing interests.
Authors' contributions
FDW conceived of the study, wrote both grant applications, designed the
analyses, interpreted the results, and drafted and revised the
manuscript. TRM cleaned and linked all of the data files, and conducted
all of the statistical analyses. HA assisted in the design and oversight
of the statistical analyses and their interpretation. PRB reviewed and
synthesized the literature on continuity of care, and reviewed
appropriate Medicare reimbursement regulations. TEV reviewed and
synthesized the literature on dual use among older veterans. GER
participated in the conceptualization of the grant applications and the
overall study design, provided clinical expertise at all stages of the
analysis, and assisted in framing the discussion. All authors read and
approved the final manuscript.
Outline Acknowledgements
This research was supported by grants to Dr. Wolinsky from the National
Institute on Aging (R01 AG022913 and R03 AG027741) and by a grant to
Drs. Rosenthal and Wolinsky from the Department of Veterans Affairs,
Veterans Health Administration, Health Services Research and Development
Service (HFP 04–149). Dr. Wolinsky is Associate Director, and Dr.
Rosenthal is Director, of the Center for Research in the Implementation
of Innovative Strategies in Practice (CRIISP), at the VA Iowa City
Health Care System. Dr. Vaughn is a Senior Scientist in CRIISP.
Preliminary versions of the analyses reported here were presented as
part of Dr. Wolinsky's Distinguished Faculty Lecture at the University
of Iowa in August 2005, at a September 2005 festschrift honoring the
contributions of Dr. Frank Sloan at Duke University, at the February
2006 VA HSR&D annual research meeting in Washington DC, and at the June
2006 AcademyHealth annual research meeting in Seattle WA. The views
expressed in this article are those of the authors and do not
necessarily reflect the position or policy of the Department of Veterans
Affairs, the National Institute on Aging, The University of Iowa, or the
United States Air Force. Address correspondence to Fredric D. Wolinsky,
the John W. Colloton Chair, Department of Health Management and Policy,
College of Public Health, University of Iowa, 200 Hawkins Drive, E205
General Hospital, Iowa City, Iowa 52242. Internet:
fredric-wolinsky@uiowa.edu
.
Outline References available at:
http://www.biomedcentral.com/1472-6963/6/131
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Larry Scott
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