INTRODUCTION: Increasing continuity of care has been identified as a strategy to improve patient outcomes, but previous studies of integrated care have tended to focus on pilot areas, which limit their generalisability and the ability to determine in which contexts integrated care was most successful. OBJECTIVE: This study protocol describes a quantitative evaluation of a reform in England that introduced named, accountable general practitioners for all National Health Service (NHS) patients aged 75 years or over. The national contract for general practice services required that named general practitioners offer longitudinal continuity of care within the general practice and be accountable for coordinating care to meet the patient's healthcare needs. METHODS: This study will apply a regression discontinuity design to pseudonymised electronic medical records from a sample of general practices in England. We will compare outcomes for patients aged just below and above the age of 75 to estimate the effect of named general practitioners and relate these estimated treatment effects to the characteristics of general practices. Outcomes will include a metric relating to continuity of care, namely the Usual Provider of Care Index, and numbers of general practitioner contacts, referrals to specialist care and diagnostic tests. DISCUSSION: The study illustrates an approach to evaluate national changes aimed at more integrated care using electronic records, which will complement in-depth examination in pilot sites.
INTRODUCTION: Increasing continuity of care has been identified as a strategy to improve patient outcomes, but previous studies of integrated care have tended to focus on pilot areas, which limit their generalisability and the ability to determine in which contexts integrated care was most successful. OBJECTIVE: This study protocol describes a quantitative evaluation of a reform in England that introduced named, accountable general practitioners for all National Health Service (NHS) patients aged 75 years or over. The national contract for general practice services required that named general practitioners offer longitudinal continuity of care within the general practice and be accountable for coordinating care to meet the patient's healthcare needs. METHODS: This study will apply a regression discontinuity design to pseudonymised electronic medical records from a sample of general practices in England. We will compare outcomes for patients aged just below and above the age of 75 to estimate the effect of named general practitioners and relate these estimated treatment effects to the characteristics of general practices. Outcomes will include a metric relating to continuity of care, namely the Usual Provider of Care Index, and numbers of general practitioner contacts, referrals to specialist care and diagnostic tests. DISCUSSION: The study illustrates an approach to evaluate national changes aimed at more integrated care using electronic records, which will complement in-depth examination in pilot sites.
Entities:
Keywords:
Usual Provider of Care index; continuity of care; electronic health records; regression discontinuity
There has been a concerted effort in recent years to promote more integrated care in
England [123]. Integrated care is a term
often used to describe services that are coordinated around the patient and based
around their needs [12]. Continuity of care is an important part of this vision, and
patient satisfaction is strongly linked to the ability to see a doctor with whom the
patient has a personal relationship [4].
However, due to increased specialisation within primary care and the end of
‘personal registration’ with a particular general practitioner in the
last 10 years, there is concern that it is becoming more difficult for patients to
see their preferred general practitioner [56]. In England, 54% of patients
have a general practitioner they preferred to see, and this proportion is higher
among patients aged 75 and over, at 75% [78]. However, among adults with a
preferred general practitioner, 31% saw them only some of the time and 8% never or
almost never saw them in 2013/14 [9].The term continuity of care has been used in a variety of ways and can encompass many
different ideas [1011121314].
One model distinguishes between three related but distinct concepts: longitudinal
continuity of care with as few doctors or healthcare professionals as possible;
coordinated care, with good communication between professionals and a consistent
approach to the management of health needs; and the subjective experience of a
caring relationship [12]. There is evidence
that the various aspects are associated with positive effects on a range of
outcomes, including more appropriate prescribing and higher quality of life [14]. In particular, longitudinal continuity may
be an important element in interventions to reduce emergency department visits and
unscheduled hospital admissions [141516].
Subjective continuity of care is strongly linked to patient satisfaction [41017], which in turn may be a predictor of
compliance with following recommended treatments [1418]. Although one study
reported that patients with a personal relationship with their general practitioner
experienced fewer referrals to specialist care than other patients [19], a retrospective cohort study suggested
more complex associations between longitudinal continuity and time to referrals and
diagnoses for certain cancers [20].Many evaluative studies of the effect of interventions aimed at greater continuity of
care have been conducted within specific localities, which can limit the
generalizability of study findings [41617212223]. However, in 2014,
the Department of Health reformed the contract for general practices in England to
require that all patients aged 75 or over be appointed a named general practitioner
with specific responsibilities for care coordination [24]. This policy provides an opportunity to evaluate the effect
of a national initiative on continuity of care and so relates variation in
effectiveness to differences in the local context [25]. Although a recurrent concern with ‘top-down’ reforms is
that changes might not have the active buy-in of local practitioners [26], with few exceptions [27] these are seldom evaluated. This is an important gap in the
literature as contractual reform is one of the few policy-making levers that promise
direct impact.Estimating the effect of interventions aimed at providing more integrated or
continuous care is often challenging because studies are typically not randomised
[2128]. Thus, intervention and control groups might differ at baseline and,
unless outcomes are accurately adjusted for these differences, inferences can be
biased [29]. Studies often use regression
adjustment or propensity score matching, but these methods assume that all relevant
baseline characteristics have been observed, which may be implausible [30]. Regression discontinuity methods avoid
having to make this assumption and are appropriate where eligibility for an
intervention changes sharply at a predefined threshold [31]. The key insight is that patients just above and below the
threshold should have similar baseline characteristics. Therefore, any discontinuity
in the outcome variable at the threshold can be attributed to differences in the
treatments received. Regression discontinuity designs have been shown to replicate
the results of randomised controlled trials [32] and, although underutilised in health services research, are well
established in the economics literature [313334].The article describes the design of a regression discontinuity study to assess
whether the national policy to introduce named accountable general practitioners led
to changes in the longitudinal continuity of care and to relate these to the
characteristics of general practices.
Methods
Reform to the general medical services contract in England
The 2014/15 General Medical Services contract introduced a requirement for
general practices in England to offer patients aged 75 or over a named
accountable general practitioner, who should provide longitudinal continuity of
care within the general practice and be accountable for coordinating care to
meet the patient’s health and social care needs. In particular, the named
accountable general practitioner should ensure that patients receive all
appropriate services and work with relevant associated healthcare and social
care professionals to deliver a multidisciplinary care package [2435]. The contract requires that the practice notify the patient of their
named accountable general practitioner, usually by letter, and make a reasonable
effort to accommodate patient preferences about the choice of general
practitioner. However, patients are not prevented from seeing any other general
practitioner in the practice [36]. The
2014/15 GMS contract changes led to a step change (discontinuity) in the
percentage of patients receiving a named accountable general practitioner, which
increases from around 5% to around 80% near age 75 (Table 1).
Table 1
Preliminary analysis of data from Clinical Practice Research Datalink
showing that the requisite discontinuity exists in the data.
Patients aged 70–74 (%)
Patients aged 75–79(%)
Notified of named accountable general
practitioner
5420 (5%)
67,770 (80%)
Not notified of named accountable general
practitioner
99,830 (95%)
17,161 (20%)
Total
105,250
84,931
Note: Based on preliminary analysis of Clinical
Practice Research Datalink data. Figures are illustrative as this
analysis was based on 2014 data and not all exclusion criteria were
applied.
Preliminary analysis of data from Clinical Practice Research Datalink
showing that the requisite discontinuity exists in the data.Note: Based on preliminary analysis of Clinical
Practice Research Datalink data. Figures are illustrative as this
analysis was based on 2014 data and not all exclusion criteria were
applied.
Study design
Within a regression discontinuity design (illustrated in Figure 1), a step change in outcome at the threshold
is attributed to a difference in the treatments received on either side of the
threshold. The regression discontinuity design requires much weaker (and hence
more plausible) assumptions than other methods, such as regression adjustment,
which require that confounders are observed [3137]. An important
assumption underlying all regression discontinuity designs is that, in the
absence of an intervention, outcomes will vary smoothly with the running (or
treatment determining) variable [31].
Thus, although older people might see their general practitioner more often than
younger people, contact rates should not be discontinuous at age 75 in the
absence of the introduction of named accountable general practitioners. The
assumption seems reasonable and can be validated, for example by ensuring that
there are no discontinuities in other covariates at age 75. The standard
regression discontinuity design estimates a ‘local treatment
effect’, which in our case will apply to patients aged 75. However,
preliminary analysis shows that, contrary to the eligibility rules, some
patients aged below 75 received a named accountable general practitioner, while
some older patients might not (Table 1).
As a result, we will apply a ‘fuzzy’ regression discontinuity
design, so our treatment effects will additionally apply only to patients who
are compliers, i.e. to patients who would receive a named accountable general
practitioner if eligible for one, but not otherwise.
Figure 1
Illustration of regression discontinuity design.
Note: Hypothetical data to show the principles of the regression
discontinuity design.
Illustration of regression discontinuity design.Note: Hypothetical data to show the principles of the regression
discontinuity design.
Study cohorts
All general practices in England were mandated to participate in the policy. We
will examine data from the electronic medical record of a national sample of
general practices that participate in the UK-wide Clinical Practice Research
Datalink. This is a validated and widely used research database that contains
anonymised, person-level clinical data for all registered patients, linkable to
other data sources, such as death records from the Office for National
Statistics and Hospital Episode Statistics administrative data [38].We will study all English general practices that have submitted data to Clinical
Practice Research Datalink for the full 2014/15 financial year, excluding
practices for which data are identified by Clinical Practice Research Datalink
as not being up to research standard or that did not give permission for data
linkage. This is expected to result in approximately 200 practices. Within these
practices, we will study registered patients born between 1929 and 1949, and
thus aged between 65 and 85 in 2014. Patients will be excluded if they have
missing year of birth or gender, deregistered within the study period or were
identified as at high risk and started admission avoidance care, as part of the
Avoiding Unplanned Admissions Enhanced Service. All patients on the Service
received named accountable general practitioners irrespective of their age,
meaning that a regression discontinuity design is not appropriate for these
patients.
Exposure variable and index dates
For reasons of patient confidentiality, Clinical Practice Research Datalink
contains year of birth rather than full date of birth. Therefore, age will be
calculated by subtracting the year of birth from 2014, and we will compare
patients whose age was in a small bandwidth (interval) above and below 75 years.
This bandwidth will be selected using standard cross-validation methods [31].We will report the proportion of patients in each age group who received the
intended treatments. Since the policy ensures that the vast majority of patients
who are eligible for a named accountable general practitioner within 2014/15
will have received one by September 2014, treatment receipt will be based on the
presence of a recorded named accountable general practitioner within a 6-month
period (April 2014 to September 2014), using the Read code prescribed by the
General Medical Services contract (67DJ). Patients without a recorded named
accountable general practitioner by September 2014 will be regarded as untreated
patients, even if they received a named accountable general practitioner
subsequently.All patients will be assigned an index date for the purposes of calculating
endpoints and covariates. For patients who are assigned a named accountable
general practitioner between April and September 2014, this will be the date at
which this was recorded. Patients who are not assigned a named accountable
general practitioner during this period will be randomly assigned an index date,
such that the distribution of index dates across months is the same as for those
patients who did receive one. Thus, all patients will have at least 6 months
follow-up within 2014/15, before the policy was extended to all patients
irrespective of age [39].
Study endpoints and covariates
Our primary endpoint will be the number of general practitioner contacts per head
over 6 months; this will include all appointment types (e.g. both surgery visits
and telephone calls). Secondary endpoints, also calculated over 6 months, will
be a measure of longitudinal continuity of care; the number of contacts with
general practitioners or practice nurses; numbers of referrals to specialist
care; and number of common diagnostic tests (e.g. blood pressure). There are
several measures of longitudinal continuity of care, which focus on the
concentration, dispersion, distribution or sequence of consultations [1217]. The Usual Provider of Care index measures the proportion of
contacts with the general practitioner who is most commonly seen [17]. The Usual Provider of Care index is
widely used [11] and is more easily
interpreted than some of the other measures [12]. The Usual Provider of Care index was not chosen as the primary
endpoint, as this measure is only defined for the subgroup of study participants
with at least two general practitioner contacts during the study period. The
theory behind the intervention is such that a change to the number of general
practitioner contacts, referrals to specialist care or numbers of diagnostic
tests is more likely following an improvement to continuity of care. However, we
will analyse these endpoints regardless of the findings for the Usual Provider
of Care index, since it is theoretically possible that, for example, the letters
led to an increase in enquiries from patients without improvements to
continuity.The following covariates will be calculated for all patients, using data recorded
prior to the index date: gender; ethnicity; socioeconomic score (attributed to
the patient according to their area of residence, and measured by deciles of the
Index of Multiple Deprivation 2010) [40];
number of long-term health conditions recorded prior to the index date; and
numbers of general practice contacts, referrals to specialist care, diagnostic
tests and hospital discharges in the 6 months prior to the index date. Long-term
conditions will be defined in accordance with the Quality and Out-comes
Framework. The data quality for the Quality and Outcomes Framework indicators is
enhanced as a result of these conditions forming part of the pay-for-performance
scheme for general practice [41].
Statistical methods
Our initial analysis (Table 1) suggests that
the proportion of patients receiving a named accountable general practitioner is
discontinuous at the threshold, but this will be confirmed on receipt of the data.
We will also confirm that, although we would expect a trend in certain covariates
across age, there are no discontinuities in these covariates at age 75. This
comparison will be done graphically and include all patients, regardless of actual
treatment assignment. We do not expect such discontinuities to occur, but if they do
exist, this would lead us to question the validity of our study design.As mentioned previously, the proportion of patients receiving a named accountable
general practitioner is unlikely to jump from 0 to 100% at age 75. It will therefore
be appropriate to apply a fuzzy regression discontinuity design [31], by fitting four regression models. Two
models will relate the outcome to a polynomial function of age: one model will be
fitted for people whose age lies within the bandwidth below the threshold and the
other model for people within the bandwidth above the threshold. The final two
models have treatment assignment as their dependent variable rather than outcome.
All models will use ordinary least squares regression and include patients
irrespective of their actual treatment assignment. We will calculate the estimated
treatment effect as the difference between the predictions of the two outcome models
at age 75, divided by the difference between the predictions of the two treatment
models at age 75.The analysis will have regard to the rounded nature of the running variable (i.e.
age), resulting from the use of year of birth rather than full date of birth. This
will exclude the use of very small bandwidths, and so we will use a larger interval
spanning several years and model any trend in the endpoints by age using parametric
approaches based on polynomial functions [4243]. In the absence of
information on full date of birth, it will not be possible to establish for a given
patient born in 1939 what date they turned 75, and therefore which side of the
threshold the patient is at the index date. We will remove the risk of
misclassification by excluding all patients born in 1939 when fitting the regression
models and making a small extrapolation around age 75 [42]. A final consideration is that, when the running variable
is only observed at discrete points, discretisation bias can occur because a change
in slope close to the cut-off might be mistaken for a treatment effect when in fact
it is due to the ‘natural’ change in outcomes with age. We will correct
for this bias using a method that is based on the moments of the age distribution
[42].We will conduct a series of additional specification tests to check the validity of
the study design [31]. First, we will repeat
the estimation procedure at non-discontinuity points, to confirm a treatment effect
of zero. Second, we will confirm that the estimated treatment effect is not
sensitive to the choice of bandwidth or order of polynomial. Third, we will repeat
the analysis when including covariates in the regression models. Although it is not
necessary to include covariates in regression discontinuity analyses, including them
may improve precision [3742].
Subgroup analyses
We expect that general practices will implement named accountable general
practitioners in various ways and that the effectiveness of the intervention may
depend on factors related to the local context in which the general practices
operate [25]. Therefore, we will
characterise general practices according to: setting (urban/rural, based on the
RUC2011 classification at small area level) [44], average socioeconomic deprivation score of their patients,
number of general practitioners within the practice and practice list size. We
will also include the average number of patients per full-time equivalent
general practitioner. We will estimate treatment effects separately for each
general practice and then test the relationship between these treatment effects
and general practice characteristics using a practice-level, linear regression
model [45].
Required sample size
We believe that a 5% change in the number of general practice contacts would
represent a meaningful difference to general practice workload, since this
represents approximately one extra appointment per working day for an average
general practitioner [46]. Assuming an
average of 5 general practitioner contacts per 6-month period in the absence of
a named accountable general practitioner [47], and a standard deviation of 6 contacts [4748], we will need
24,212 patients in each treatment group, at 90% power and two-sided p-value of
0.05. Although the precise statistical power of the study will depend on the
bandwidth, the Clinical Practice Research Datalink database will provide more
than the required number of patients (Table 1) [37].
Discussion
Contribution of the study
Both policy-makers and patients believe that general practitioners are best
placed to coordinate their care [132449], but many patients cannot see their preferred doctor [9]. The current study will evaluate the
introduction of a named accountable general practitioner for each patient aged
75 or older and the requirement to communicate to patients their specific
responsibilities for coordinating health and social care. As well as assessing
impacts on various metrics relating to continuity of care, including the Usual
Provider of Care index, we will investigate the variability in the effectiveness
of the policy between general practices with different characteristics.
Strengths and limitations
Four characteristics of this study distinguish it from existing work in this
area. First, this study will examine a national policy intervention to integrate
care, as opposed to particular local initiatives to encourage more integrated
services. The nature of national initiatives means that the prescribed
intervention might not suit all local contexts and there may be limited local
buy-in to change, potentially limiting effectiveness. However, contracts are a
potentially important method of encouraging more continuity of care, and we are
not aware of previous studies that have investigated the effectiveness of such
an approach.Second, previous studies have examined integrated care within pilot areas [21], but the current study will use a large
database to examine a national sample of general practices, increasing the
generalisability of its results. The Clinical Practice Research Datalink
database is broadly representative of the UK population [41], though our sample will be limited to those that have
consented to participate in the Clinical Practice Research Datalink linkage
scheme and in addition have submitted data to Clinical Practice Research
Datalink in a timely fashion. While it will not be possible for us to document
the intervention as closely as pilot studies, we will investigate whether the
effectiveness of the policy varies according to local characteristics. If some
areas perform better than others, then future studies could use qualitative
methods to construct theories for why these areas saw more promising results
[50]. The current study is an example
of a relatively new approach that applies surveillance methods to national
databases to identify areas of good practice, rather than starting with
prospective studies of a small number of selected pilots, which may not show the
anticipated returns [51].Third, the large sample size means that we will have statistical power to detect
small effects, such as a 5% change in the number of general practitioner
contacts. This is important because many previous studies of out-of-hospital
interventions have assumed relatively large effect sizes when estimating the
required sample size, for example that emergency hospital admissions could be
reduced by 15% within 12 months [5253]. Where such studies fail to detect
changes, it is unclear whether this is due to an ineffective intervention or
simply that the study was underpowered to detect small yet meaningful effects.
Moreover, where interventions are implemented haphazardly or with limited
fidelity to the intervention design, this might reduce the power of the study,
underscoring the need to assume conservative effect sizes when estimating the
required sample size.Finally, many previous studies of integrated care interventions have used study
designs that are susceptible to con-founding arising from differences in
unobserved or observed patient characteristics [2128]. In the current study,
the use of a regression discontinuity design will largely avoid these
concerns.One limitation of this study is that the lack of full information on date of
birth means that our estimates are dependent on model specification [33], though we will test the sensitivity of
our findings. Also, the estimated treatment effects will only apply to
individuals aged close to 75 years, while younger or older groups might see
larger or smaller treatment effects. Our findings will also apply to the subset
of patients who are compliers and are not in the top 2% risk category. By
excluding the 2% of the population most at risk, we are omitting some of the
patients most in need of integrated care. However, a more intensive intervention
is currently being targeted at this group [54], and this intervention needs to be evaluated as a separate
study, something we might do at a later stage.This study will examine four endpoints that could plausibly be affected by named
accountable general practitioners, namely general practitioner contact rates,
longitudinal continuity of care, referrals to specialist care and numbers of
diagnostic tests. It is possible that improvements in these endpoints may take
longer than 6 months to materialise but, to the extent that this is due to poor
implementation, the subgroup analysis may be informative. Moreover, while the
study will examine longitudinal continuity of care, it will not examine other
aspects of continuity, such as informational or management continuity [1213], nor the patient experience of care.We cannot determine whether the particular general practitioner contacts,
diagnostic tests and referrals to specialist care were appropriate. Although
continuity of care indices have been successfully applied to Clinical Practice
Research Datalink data in the past [20],
difficulties in analysing longitudinal data have been highlighted [12]. For example, although a staff
identifier is entered onto the computer system, practices may use shared login
details, particularly for locum doctors, which would affect the Usual Provider
of Care index.We will not examine impacts on hospital admissions or disease control beyond the
frequency of diagnostic tests, as these are unlikely to be affected by the
policy within 6 months. Our endpoints are likely to be on the causal pathway for
better disease control and reduced admissions, and so our findings will indicate
whether investigation of additional metrics is warranted. The limitations of the
data mean that it is not possible to examine impacts on social care utilisation
or access to primary care.
Conclusions
This study will analyse a national policy initiative aimed at promoting integrated
care through increasing the continuity of care and prompting communication about
accountability for care coordination with patients. It will use surveillance of
national data to identify sites demonstrating promising outcomes associated with a
particular integrated care initiative. This study could complement existing
approaches aimed at in-depth examination of particular pilot sites, while removing
the threats to confounding from treatment selection associated with many cohort
studies.
Research governance
The Independent Scientific Advisory Committee for MHRA Database Research has
approved this study (reference: 15_070R). Ethical review was not required as
this is a retrospective study of pseudonymised, routinely collected data.
Competing Interests
The authors declare that they have no competing interests.
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