Frailty Clinical Trial
Official title:
Development and Evaluation of the Electronic Frailty Index+ (eFI+) Tool: Integrated Prognostic-decision Modelling to Target Interventions for Older People With Moderate or Severe Frailty
Research questions
i) How should electronic frailty index (eFI) components be combined with additional routine
primary care data to develop prognostic models for predicting key outcomes of requirement for
home care, falls/fractures, nursing home admission and mortality in older people with
moderate or severe frailty?
ii) Can model predictive performance be improved through addition of data from measures that
are practical for primary care use, but not available in routine data?
iii) How should risk predictions from the prognostic models be translated into a decision
analytic model (DAM) to guide clinical management?
iv) What is the potential cost-effectiveness of implementing interventions targeted at
subgroups of older people with frailty in routine NHS care?
Background
Lead applicant Clegg led the eFI development, validation and national implementation. This
has been translated into major UK health policy change through inclusion in the 2017/18 GP
contract, which supports frailty stratification using the eFI, and UK National Health Service
Long Term Plan.
Aim
To develop and evaluate the eFI+, a prognostic tool supplementing the original eFI including
4 integrated prognostic-decision models. The eFI+ will stratify older people with moderate or
severe frailty into subgroups most likely to benefit from key interventions (community
rehabilitation; falls prevention; comprehensive geriatric assessment; advance care planning).
Methods
Design
Prognostic model development, internal validation and external validation using large
datasets (ResearchOne, SAIL databank, Leeds Data Model) and cohort study data (CARE75+), with
linked DAM and health economic analysis.
Population
Patients ≥65 with moderate or severe frailty, defined by the existing eFI.
Key outcomes
12-month outcomes for prognostic models:
- New/increased home care package
- Emergency Department (ED) attendance/hospitalisation with fall/fracture
- Nursing home admission
- All-cause mortality
Statistical methods
i) Prognostic modelling
The investigators will build 4 separate prognostic models for our 4 key outcomes by combining
the eFI with additional individual-level routine data, informed by reviews to identify
prognostic factors. Each model will be developed and internally validated in one large
dataset, to adjust for potential overfitting, with subsequent external validation of
predictive performance in a second large dataset.
Separately, the investigators will use CARE75+ (n≈1,200) to investigate additional predictive
value of clinical measures practical for primary care (e.g. gait speed, activities of daily
living, loneliness).
ii) Decision analytic model (DAM)
The investigators will translate the prognostic models into a framework to support clinical
decision-making, in co-production with stakeholders/PPI. The investigators will integrate
prognostic models with effect size estimates from systematic reviews/meta-analyses to
identify relevant thresholds of predicted risk, above which implementation of our key
interventions would be warranted.
iii) Health economic evaluation
12-month and long-term cost effectiveness models will be developed, informed by the DAM.
Health technologies being assessed
The eFI+ will be developed using components of the original eFI, supplemented with additional
routine primary care EHR data, and guidance on the added benefits of implementing simple
clinical measures in routine primary care practice. The eFI+ will be suitable for rapid
implementation in UK primary care EHR systems, building on existing close links with system
suppliers (SystmOne/EMISWeb/Vision/Microtest).
The investigators will develop, then internally and externally validate the eFI+ using the
Secure Anonymised Information Linkage (SAIL) databank, the ResearchOne database, and the
Leeds Data Model (LDM).
In addition, the investigators will analyse Community Ageing Research 75+ (CARE75+) cohort
study data (CI Clegg, n≈1,200) as the only national cohort study to include eFI scores, to
investigate how simple measures that can be assessed in primary care, but are not available
in routine EHR data (e.g. gait speed, timed-up-and-go test; activities of daily living;
loneliness) may improve prediction.
Study design
Prognostic model development, internal validation and external validation using routine
primary care research data (ResearchOne), linked datasets (SAIL databank and LDM) and cohort
study data (CARE75+), with integrated Decision Analytic Modelling, including health economic
analysis.
Databases
1. Secure Anonymised Information Linkage (SAIL) databank
Anonymised records from around 5 million people in Wales, with linked primary care, ED
attendance, hospital admissions, outpatient data, social care, Welsh Care Homes Dataset,
and ONS mortality data. SAIL includes eFI summary scores and individual components.
2. ResearchOne
Nationally representative, de-identified data from around 6 million UK primary care
electronic health records on the TPP SystmOne clinical system. ResearchOne includes eFI
summary scores and individual components.
3. Leeds Data Model (LDM)
Anonymised, linked primary, secondary, community and social care data from 810,000
patients across 108 practices in Leeds, including eFI summary scores and individual
components.
4. Community Ageing Research 75+ (CARE75+) cohort
National prospective cohort study (n≈1,200) collecting detailed sociodemographic information,
frailty measures (including eFI scores), simple instruments suitable for use in primary care
(e.g. gait speed, timed-up-and-go test; activities of daily living; informal care;
loneliness), and key outcomes at six, 12, 24 and 48 months. CARE75+ is a very rich dataset
that provides a highly efficient method to investigate how simple instruments might augment
eFI performance.
Eligible population
Patients ≥65 years with moderate frailty (eFI score 0.24 to 0.36) or severe frailty (eFI
score >0.36) and registered with a ResearchOne, SAIL or LDM practice on 1st April 2018.
All CARE75+ participants with moderate frailty (eFI score 0.24 to 0.36) or severe frailty
(eFI score >0.36) will be eligible.
Outcomes for risk prediction (all 12 months)
- New or increased home care package
- ED attendance/hospitalisation with fall or fracture
- Nursing home admission
- All-cause mortality
Predictors
Components of the eFI, supplemented with variables available within routine primary care EHR
data and clinical assessment measures practical for use in primary care.
Prognostic models
Each prognostic model will be developed and internally validated in just one of the
databases, and then externally validated in a second database
Sample size for prognostic model development
SAIL and ResearchOne extracts will each include ≈600,000 patients aged 65 or over, with an
estimated 72,000 having moderate frailty, and 24,000 severe frailty. LDM extract will include
≈150,000 patients aged 65 or over, with an estimated 18,000 having moderate frailty and 6,000
severe frailty.
For model development, a key indicator of the effective sample size is the number of outcome
events. Previous research into the outcomes of interest, and feasibility estimates using
CARE75+, ResearchOne and SAIL, inform estimates for anticipated number of events within 12
months.
- New or increased home care package: Anticipated 15,864 events in SAIL, based on 14.9% 12
month incidence in moderate frailty group (10,080 events), and 24.1% 12 month incidence
in severe frailty group (5,784 events).
- ED attendance/hospitalisation with fall or fracture: Anticipated 8,064 events in SAIL,
based on 7.4% 12 month incidence in moderate frailty group (5,328 events) and 11.4%
incidence in severe frailty (2,736 events).
- Nursing home admission: Anticipated 2,160 events in ResearchOne, based on 2.0% 12 month
incidence in moderate frailty group (1,440 events) and 3.8% 12 month incidence in severe
frailty group (720 events).
- All-cause mortality: Anticipated 12,216 events in ResearchOne, based on 10.6% 12 month
incidence in moderate frailty group (7,632 events) and 19.1% 12 month incidence severe
frailty group (4,584 events).
Therefore, even when taking the lowest estimate of incident events by 12 months (for nursing
home admission), for each outcome the investigators would expect at least 2,160 events in
each of ResearchOne or SAIL. This enables us to robustly estimate a prognostic model for each
outcome even with up to 108 predictor parameters, corresponding to 20 events per potential
predictor parameter (2160/20). This exceeds 'rule-of-thumb' recommendations of 10 or 15
events per predictor parameter.
Furthermore, conservatively assuming the new models will have a Nagelkerke R-squared of 15%,
Riley's sample size formula suggests that at least 7.5 events for each predictor parameter
will ensure overfitting and optimism are minimized, when the outcome proportion is 3%. When
increasing outcome proportion to 20% (home care package), 9% (fall/fracture), or 15%
(mortality), the minimum sample size required is 18, 11.5 and 15 events per predictor
parameter, respectively. The investigators exceed all these, due to the large datasets
available.
Sample size for external validation
Current recommendations are that at least 100 events and 100 non-events (ideally 200) are
required for prognostic model external validation. Our estimates indicate considerably more
than this, such as 2160 events for the least prevalent outcome of care home admission in SAIL
and ResearchOne, and 540 in LDM (which will only be used for external validation of models).
Missing data
Handled using multiple imputation and Rubin's rules, under a missing at random assumption,
including outcome in the imputation model, accounting for practice clustering.
Analysis plan
i) Prognostic modelling
The investigators will build 4 separate prognostic models within the development datasets to
predict risk of our 4 key stated outcomes in individuals with moderate or severe frailty as
the startpoint.
For each outcome, for those with moderate frailty (eFI score 0.24 to 0.36) or severe frailty
(eFI score >0.36) the investigators will develop and internally validate a prognostic model
containing just eFI (as a whole as it currently stands) and then containing components of eFI
(included as predictors) along with additional routine primary care EHR data. The regression
model will be logistic regression or flexible parametric survival, for binary or
time-to-event outcomes (as appropriate when the investigators observe the database coding and
censoring etc.), to produce outcome risks by 12 months.
Due to the large sample size, overfitting is expected to be small, but the investigators will
adjust for it using penalisation via a global shrinkage factor estimated via bootstrapping.
Where variable selection is considered important for parsimony, the investigators will rather
use penalisation via elastic net. Internal validation will use bootstrapping of the entire
development dataset, and optimism-adjusted estimates of predictive performance produced for
calibration (e.g. calibration-in-the-large, calibration slope, Observed/Expected),
discrimination (e.g. C-statistic) and overall (e.g. Nagelkerke R2) performance of predicted
risks. Continuous variables will not be categorised and potential non-linear effects examined
using splines or fractional polynomials. Non-proportional hazards for predictors will also be
examined with interaction terms with time.
All models will be externally validated in a different database. Predictive performance
statistics will be derived as described above (e.g. C-statistic, calibration slope),
alongside calibration plots showing agreement between observed and predicted risks, across
the spectrum of predicted risks, using a loess non-parameter smoother.
Separately, the investigators will use the CARE75+ dataset to investigate the additional
predictive power of clinical assessment measures of prognostic factors identified from the
reviews that are practical for use in routine primary care.
ii) Decision modelling
Prognostic models will be translated into a framework to guide clinical decision making by
identifying relevant thresholds of predicted risk, above which implementation of our stated
interventions is warranted. This will allow us to generate a decision analytic model (DAM),
which will be examined using decision curves and net benefit in the external validation
datasets.
iii) Health economic evaluation
The health economic evaluation will be conducted in two stages. The objective of the first
stage is to provide a short-term, 12-month comparison of the cost-effectiveness of the
scenarios identified by the DAM. For the second stage, the investigators will extend our
analysis to a long-term cost-effectiveness evaluation of these scenarios.
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