Title: Evaluating neurorehabilitation: lessons from routine data collection
1Evaluating neuro-rehabilitation lessons from
routine data collection
- J A Freeman
- (1) Faculty of Health and Social Work, School of
Health Professions, University of Plymouth (2)
Institute of Neurology, Queen Square, London
2Background Clinical Databases
- Enable standardised clinical information to be
collected - Allow care to be examined as it occurs in routine
practice rather than in controlled circumstances - Have potential value for informing clinical
practice, management of services and research - Are being increasingly used within the UK to
assess outcomes of healthcare services
3In the UK..
- Few units have a structured way of collecting,
- storing, analysing or systematically
- interpreting and disseminating the information
- collected
Wastes resources
4Aim of this presentation
- Describe the
- Introduction, development routine use of a
clinical outcome database - Clinical characteristics and outcome of a
structured multidisciplinary inpatient
neuro-rehabilitation programme - Lessons learnt
5Methods1. The Rehabilitation Unit Programme
- The Rehabilitation Unit
- 18 bedded specialist neurological inpatient unit,
National Hospital for Neurology and Neurosurgery,
London - Specific admission criteria
- The programme
- Individually tailored, intensive, goal oriented
programme - Multidisciplinary input
- Goals broad ranging
- Process supported and monitored by an integrated
care pathway
6Methods2. Process of data collection
- Clinical data
- Diagnostic information, gender, age, length of
stay, admission discharge destination - Outcome measures
- Impairments (EDDS)
- Functional activity limitations (Barthel Index
FIM) - Restriction in participations (London Handicap
Scale) - Visual analogue scale (patient rated main problem
/ benefit gained) - Measurable short and long term goals
- Scored by consensus following observation of the
patient by - the multidisciplinary team
7Methods3. The database
- Custom designed
- Microsoft Access package
- Free text data minimised
- Database stores
- Basic demographic data
- Diagnosis coded according to five groups (stroke,
spinal cord syndrome, MS, neuromuscular, other
brain pathology) supplemented by free text - Outcomes data (length of stay, total and item
scores for all measures)
8Methods4. The study sample
- All patients admitted to the Unit between May
1993 - and December 2002 whose length of stay gt 10 days
9Analyses
- Quality control of data
- Review of all diagnostic codes
- Missing data and out-of-range values checked
- Consistency of data checked
- Analyses
- Description of sample- descriptive statistics
- Determining effectiveness of programme
- Effect sizes calculated
- Investigation of potential predictors of outcome
- General linear model analysis
10Results
- Of the 1463 consecutive patients admitted over
nine year period, 1413 patients had length of
stay gt 10 days. - Complete diagnostic and demographic information
available for 100 of these patients - Functional limitations data available for 96 of
these patients
11Results 1. Diagnosis (n 1413)
12Results 2. Barthel Index (n 1413)
13Results 3. General linear model analysis
Barthel Index Scores R2 44
14Discussion 1. Feasibility and validity
- Largest reported data set of inpatient
neurological rehabilitation patients in the UK - Demonstrates that systematic collection, analysis
and interpretation of standardised clinical
outcomes data can be successfully incorporated
into routine clinical practice - Methods robust and reproducible
- Data valid
- Could act as a model, thereby facilitating
sharing of data at a national level
15Discussion 2. The clinical benefits of using
the database
- Provides a focus for careful recording and
monitoring of caseload and educational needs - Systematic accrual of information over longer
periods about range of conditions - Facilitates a more performance oriented and
accountable system of rehabilitation - Provides supporting evidence to complement
results of clinical trials
16Discussion 2. The research benefits of the
database
- Provides objective data for determining sample
size calculations for clinical trials - Quick and accurate method for assessing
feasibility of patient recruitment for clinical
trials - Adds to evidence base by complementing data from
clinical trials - Provides information to help aid in selection of
outcome measurement instruments
17Lessons learnt
- Key-workers are important to constantly monitor
data collection - Validated measures should be used, keeping the
process simple, quick relevant - Regular training in use of measures and feedback
about data is essential - A person with dedicated time is needed to manage
the database - Clear, dynamic leadership must be integral to the
process