debbie moosa thistle qa. quality management involves philosophy, principles, methodology,...
Post on 28-Dec-2015
218 Views
Preview:
TRANSCRIPT
Debbie Moosa Thistle QA
Quality Management involves philosophy, principles, methodology, techniques, tools and metrics.
Six Sigma can be considered as an umbrella that covers all of these, but it also refers to new features and metrics.
This is in fact, a new marketing approach for TQM.
Champions, Master Black belts, Black belts, and Green belts describe the training and implementation structure.
However the emphasis on Six Sigma is also truly a more quantitative science.
Measure of quality that strives for near perfection
Disciplined, data-driven approach for eliminating defects
Statistical representation describes quantitatively how a process is performing
To achieve a Six Sigma, a process must not produce more than 3.4 DPM opportunities
The roots of Six Sigma can be traced back to Carl Frederick Gauss (1777-1855) who introduced the concept of the normal curve
Six Sigma as a measurement standard can be traced back to the 1920’s when Walter Shewhart showed that 3 Sigma from the mean is the point where a process requires correction
In 1984 Bill Smith a Motorola engineer coined the term “Six Sigma” (Six Sigma is a federally registered trademark of Motorola)
In the early and mid 1980’s, Motorola engineers decided that measuring defects in thousands of opportunities was not good enough, instead they wanted to measure the defects per million opportunities
Motorola developed this new standard and created the methodology
As a result of Six Sigma efforts they documented more than $16 Billion in savings over the last 11 years
Since then hundreds of companies around the world have adopted Six Sigma as a way of doing business
Requires that “tolerance limits” be defined in order to describe good quality and identify poor quality or defects
Provides a standard scale – the Sigma scale - for measuring the quality of any process
Identifies the goal for how good quality should be – Six Sigma for “world class quality”
With Six Sigma, quality becomes measurable and manageable in a quantitative and objective way
Point A: Where You Are NowPoint A: Where You Are Now
Point B: Where You Want To BePoint B: Where You Want To Be
START
FINISH
Plan what you want to do
Do it right
Check the data
Act on the results
START
FINISH
Point A: Where You Are NowPoint A: Where You Are Now
Point B: Where You Want To BePoint B: Where You Want To Be
Define or Design - Understand the process to be improved and set a goal
Measure – Measure the current state
Analyse – Develop cause and effect theories; search for the real cause and scientifically prove it
Improve – Take action
Control – Measure to verify improvement has taken place and take actions to sustain the gains
Point A: Where You Are NowPoint A: Where You Are Now
Point B: Where You Want To BePoint B: Where You Want To Be
Finish
START
FINISH
Six Sigma’s DMAIC methodology is nothing but a search for the real causes of problems.
There are two methods and both are useful in the lab
Measure Outcome Measure Variation
Inspect outcomes and count defects
Measure variation of process
Calculate DPM
Convert DPM to sigma metric
Control process outcome
Calculate s, bias and sigma metric
Measure outcome is useful for pre-analytical processes e.g. specimen ID and labelling or post analytical processes e.g. TAT and error reports
You monitor the output of the process, keep count of the defects, calculate DPM, then convert to a Sigma metric using a standard table
Measure variation is useful for the analytical process where you evaluate the imprecision (SD, CV) and inaccuracy (bias) of the measurement procedure, calculate a Sigma metric, then establish proper QC to monitor the process
The performance goal for any production process should be Six Sigma which means that Six Sigma’s or SDs of process variation should fit within the tolerance limits or quality requirement for the process
For analytical testing process, the precision is expressed as a SD (s) of the measurement procedure and that is the “sigma” of interest
The ideal is to have a small enough SD such that 6 times s will fit within the target plus or minus the tolerance limit
Assuming a Gaussian distribution for the variation of a process, the area in the tails of the distribution can be used to estimate the expected defects.
For example, if the product specifications enclose 2SDs, the area in the tails would correspond to a 4.5% defect rate or 45400 defects per million (DPM).
The 4.5% figure doesn’t sound too bad, but the 45400 DPM doesn’t sound very good.
For 3SDs the defect rate would be less than 0.27% or 2700 DPM; for 4SDs the defect rate would be 0.0063% or 63 DPM; for 5SDs the defect rate would only be 0.57DPM and with a 6 SD the defect rate would only be 0.002 DPM.
There would seem to be little to be gained from improving process performance beyond 5 Sigma
The advantage is that small shifts in the process mean can actually be tolerated without increasing the defect rate significantly
A shift or bias of 1.5 sigma would hardly cause any defects in a Six Sigma process
Since shifts or biases equivalent to 1.5s are difficult to detect by statistical QC, a Six Sigma process provides a better guarantee that products will be produced within the desired specifications and with a low defect rate
Another way to look at this is that a Six Sigma process can be monitored with any QC procedure e.g. with 3SD limits and low N any important errors or problems will be detected and can be corrected
As process capability decreases to 5 Sigma to 4 Sigma to 3 Sigma, the choice of QC procedure becomes more and more important in order to detect important problems.
Processes with lower capability may not even be controllable to a defined level of quality
CLIA has defined the acceptability criteria for performance in proficiency testing surveys for approximately 80 regulated analytes.
These criteria are often thought to be “loose” and not very demanding for analytical performance, but that conclusion is based on a goal of 2-3 sigma processes.
If the goal were to establish 5-6 sigma processes, improvements in precision would be needed for many tests today.
Example: Cholesterol has a 10% tolerance specification as set out by the CLIA criterion for the acceptable performance in PT events.
A 5 sigma process should have a CV of 2.0% and a 6 sigma should have a CV of 1.7%.
The following table shows the CLIA criteria and corresponding precision that would be needed to establish 5 and 6 sigma processes for chloride and calcium.
Analyte CLIA Acceptable Performan
ce
5 Sigma-Precision
6 Sigma-Precision
Chloride 5% 1% 0.83%
Calcium 1.0 mg/dl 0.2 mg/dl 0.17 mg/dl
These figures should be useful for evaluating the current performance of lab methods
Six Sigma Quality Management sets demanding standards of performance for laboratory testing processes
To determine the Sigma metrics for processes in your laboratory, the following information is needed:
The quality required for the test e.g. CLIA allowable total error for acceptability in PT
The imprecision of the method e.g. the SD or CV
The inaccuracy of the method e.g. bias
Six Sigma = TV-bias Precision
TV = target performance, acceptable values?
Bias = how far (%) the value is from the mean
Precision = your lab’s precision on EQA
For Cholesterol, the CLIA allowable total error is 10%
A method with a CV of 2% and a bias of 2% would give a Sigma metric of 4 [(10-2)/2]
A method with a 2% CV and no bias would be a 5 sigma process [(10/2)]
It would take a CV of 1.7% and no bias to achieve 6 sigma performance [10/6]
In spite of all the quality management, QA, quality assessments and quality improvement programmes in place today, no one knows the quality of healthcare because we haven’t defined standards for acceptable quality and assessed the level of defective results and outcomes
Six Sigma offers the methodology and metrics to make quality measurable and understandable
I hope you’ll agree that the answer is “YES”
Six Sigma is worth learning about – it will improve laboratories and healthcare if implemented properly
It’s easy to do for labs and testing processes because it’s a logical data-driven technique
Not only is it worth learning about, it’s worth doing well.
Six Sigma Quality Design & Control, 2nd edition, James O. WestgardSix Sigma Basics: DMAIC Like Normal Problem Solving, Chew Jian ChiehA review on Six Sigma in laboratories, Gras and PhillippeSix Sigma Quality Management and Desirable Laboratory Precision, James O. Westgard
top related