Title: Introduction to Control Charts
1Introduction to Control Charts
- By Farrokh Alemi Ph.D.
- Sandy Amin
Based in part on Amin S. Control charts 101 a
guide to health care applications. Qual Manag
Health Care 2001 Spring9(3)1-27
2Purpose
- Provide an overview of control chart applications
for common healthcare data. - We assume
- User has a basic understanding of process
variation - User has knowledge of simple statistics (i.e.
measures of central tendency). - This lecture should help the user select the
appropriate type of chart and understand the
common rules of interpretation.
3What is a control chart?
- A graphical display of data over time that can
differentiate common cause variation from special
cause variation - In the late 1920s, Walter Shewhart, a
statistician at the ATT Bell Laboratories,
developed the control chart and its associated
rules of interpretation.
4Components of Control Chart
5Interpretation of Control Charts
- Points between control limits are due to random
chance variation - One or more data points above an UCL or below a
LCL mark statistically significant changes in the
process
6Suggested Number of Data Points
- More data points means more delay
- Fewer data points means less precision, wider
limits - A tradeoff needs to be made between more delay
and less precision - Generally 25 data points judged sufficient
- Use smaller time periods to have more data points
- Fewer cases may be used as approximation
The idea is to improve not to prove a point
7Freezing revising control limits
8Selecting Appropriate Chart
- XmR
- X-bar
- Tukey
- Time-in-between
- P-chart
- Risk adjusted P-chart
- Risk adjusted X-bar chart
9Examples of Measures
Continuous variables
Rates and discrete events
- Length of stay
- Average length of stay
- Average age of a specific patient population
- Process turn around time
- Staff salaries
- Severity of medication errors
- Individual patients weights, blood sugars,
cholesterol levels, temperatures, or blood
pressures over time - Patient Satisfaction Average Scores
- Infectious waste poundage generated
- Electrical usage
- Wait times
- Accounts receivable balances
- Time in restraints
- Time before hanging up the phone
- SF 36 scores
- Number of employee accidents
- Number of patient falls
- Nosocomial infection rates
- Percent of patients in restraints
- Medication error rate
- Adverse event rate
- C-Section rates
- Number of dietary tray errors
- Numbers of delinquent medical records
- Percent of patients with insurance
- Percent of patients who rated the facility as
excellent - Telephone abandonment rates
- Pressure ulcer rates
- Employee injuries rates
- Percent of records that contains appropriate
documentation
10Which Chart is Right?
- If continuous variable
- If one data point per time period
- If outliers likely Tukey chart
- If outliers not likely XmR chart
- If multiple data points per time period Xbar
chart - If discrete event
- If event is rare Time-in-between chart
- If event is not rare P-chart
If case mix changes over time, use risk adjusted
control charts
11Risk Adjustment
- When case mix changes over time, use risk
adjusted control charts - Instead of comparing to historical patterns, new
observations are compared to expectations - Risk adjusted control charts are calculated by
applying the formulas for control limits to the
difference of observed and expected values