Title: Using Primary Care Data for Quality Improvement
1Using Primary Care Data for Quality Improvement
- Dr John Derry
- Primary Care Medical Adviser Thames Valley SHA
2Preview
- Examples of clinical audit data
- Similar to QMAS data
- Understanding variation
- The role of SPC
- Using SPC methods to interpret clinical audit data
3CHD Audit Resultsage sex standardised
prevalence of CVD
4CHD Audit Resultsblood pressure recording
control
5So what now?
- See variation
- What is significant?
- Is it OK to be near average?
- When should we act?
- How should we act?
- Which data can we use?
6Use of SPC
- Statistical Process Control
- Methods developed by Shewhart and Deming (1930s
- 1990s) - Cornerstone of quality improvement
- Two different kinds of variation can affect any
process - Distinguish by statistical methods
7Statistical Process Control
- First and foremost, a way of thinking with some
tools attached - About the continual improvement of processes and
outcomes - About getting the most from your processes
- Quotes from Don Wheeler in Understanding
Variation SPC Press, 2000
8Two types of variation
- How long does it normally take you to get to
work? - Why does it vary?
- How do you use this understanding to plan your
journey? - When to leave the house
- Which route to take
- When to make a change
9Understanding variation
- Routine
- common causes
- many factors, some unknowable
- noise in the system
- affects process most of the time
- part of the process
- variation is predictable
- Exceptional
- special causes
- assignable causes
- usually few, not many
- can usually be identified
- not part of the process
- intermittently apparent
- unpredictable variation
10What to do about variation
- Exceptional
- investigate each point outside the limits
- look for the special cause and do something about
it - almost always something to find
- opportunities to learn
- Routine
- dont react to individual results
- look at the average and process limits
- improve the whole process if these not acceptable
- or continuously improve quality!
11Two kinds of mistake
- Mistake 1
- Act as if there is a special cause when there is
only routine variation - Might make things worse
- Wasted effort anyway
- Mistake 2
- Fail to spot a special cause assume there is
just routine variation present - Missed opportunity
- reduce variation
- improve quality
- learn something
12Control charts
- Graphical method developed by Shewhart to help
distinguish these two kinds of variation - routine and exceptional
- predictable and unpredictable
- common and special cause
- Process behaviour charts(Don Wheeler)
13An example control chart
routinevariation
14Another type of control chart
Control Chart of Clinical Audit Data
25
20
15
SqRt number with criterion
Routine variation
10
5
0
0.00
20.00
40.00
60.00
80.00
100.00
SqRt number without criterion
15How to interpret the chart
Control Chart of Clinical Audit Data
25
20
15
Practices here cannot be distinguished from
average
SqRt number with criterion
10
5
0
0.00
20.00
40.00
60.00
80.00
100.00
SqRt number without criterion
16Double square-root chart
- Described recently by Mohammed et al. (Lancet
2001 357 463-67) - Originally developed by Fisher, Tukey Mosteller
in 1940s - Enable analysis of variation in cross-sectional
data - Based on binomial probability distribution for
calculating SD
17Types of control chart
- For measurement (variable) data
- Single observations
- Limits based on average moving range
- Average /- (3/bias correction factor d2) x
average MR - Subgroups of observations
- Limits based on std deviation of subgroup
- Correction factor depends on number in each
subgroup
18Types of control chart
- Count (attribute) data
- Yes/no, with/without data
- P-chart
- Limits based on Binomial conditions
- Average p /- 3 x sqrt (p(1-p)/n)
- event data count (needlestick injuries)
- U or C chart (denominator varies or constant)
- Limits based on Poisson conditions
19Some real examples
- Using clinical audit data
20Standardised CVD Prevalence
Average 4.6 /- 3SD Range 3.6-5.7
25.00
20.00
434
413
416
407
15.00
409
420
SqRt number with CVD
424
10.00
406
405
417
5.00
429
0.00
0.00
20.00
40.00
60.00
80.00
100.00
SqRt number without CVD
21CHD Audit Resultsage sex standardised
prevalence of CVD
22BP recorded
23CHD Audit Resultsblood pressure recording
control
24Audit ResultsCardiovascular Disease Prevalence
25Audit ResultsCVD Patients with cholesterol record
26Audit ResultsCholesterol levels in CVD Patients
27Audit ResultsStatin Rx for CVD Patients
28Control charts for clinical audit
- To answer the question
- What do we do now weve got the results?
- To identify where to target efforts
- To know when to act
- To know what kind of action to take
29Issues to consider
- Using the right kind of chart for the data
- Time-series data is generally better
- Limitations of binomial charts
- Binomial conditions (are they met?)
- Probability of single item possessing the
attribute is constant - Each item is independent of others
30Recommended Reading
- Improving Healthcare with Control Charts Basic
and Advanced SPC Methods and Case Studies - by Raymond G. Carey
- ISBN 0-87389-562-2
- American Society for Quality
- Quality Press, 2003
- www.asq.org Available at Amazon!