Title: Tabuk University
1Tabuk University
- Faculty of Applied Medical Sciences
- Department Of Medical Lab. Technology
- 3rd Year Level 5 AY 1434-1435
Hematology 2, MLT 307
2Quality Assurance and Automation in Hematology
- By/
- Dr WalidZAMMITI Phd M.Sc MLT
3Objectives
- Describe the electrical impedance and light
scatter principles for performing cell counts. - Utilize quality control procedures to determine
if patient results are acceptable. - Explain histograms and their indications.
- Concentrate on some parameters and indices.
- Identify the major components of a quality
assurance program. - Be able to distinguish between quality assurance
quality control. - Define and give examples of each of the following
terms Accuracy-Calibration-Control-Standard-Prec
ision. - Understand the concepts of internal external
control.
4Quality system begins and ends with the patient
5Quality Assurance vs. Quality Control
Quality Assurance
Quality Control
An overall management plan to guarantee
the integrity of data (The system)
A series of analytical measurements used to
assess the quality of the analytical data (The
tools)
6Quality Assurance in Hematology
- QA includes all aspects of laboratory activities
that affects the results produced, from the
choice of methods, to the education of personnel,
to the handling of specimens and reporting
results. - The real purpose of QA activities is to determine
how correct or incorrect the results emanating
from the lab are, and to allow those managing the
lab to determine whether or not the lab is
fulfilling its functions satisfactorily.
7QA in Haematology Laboratory
- QA in haematology lab is intended to ensure the
reliability of the lab tests. - The objective is to achieve precision and
accuracy - 4 components of QA programme
- 1 ) Internal Quality Control ( IQC )
- 2 ) External Quality Control ( EQC )
- 3 ) Standardization
- 4 ) Proficiency surveillance
8Accuracy vs. Precision
- Precision
- How well a series of measurements agree with each
other Is the closeness of agreement between
independent test results obtained under
stipulated conditions.
- Accuracy
- How well a easurement agrees with an accepted
value is the closeness of the agreement between
the result of a measurement and a true value of
the measurand.
9Accuracy vs. Precision
10Internal Quality Control
- Internal Quality Control Internal quality control
is set up within a laboratory to monitor and
ensure the reliability of test results from that
laboratory. - The primary tool for internal quality control is
called a control. A control is a specimen with a
predetermined range of result values, called
control values, that is processed in the same
manner as a patient sample. - Control samples are processed with each series or
run of patient samples. - If the result of a test on a control sample is
different from its known value, this indicates a
problem in the equipment or the methods being
used.
11External Quality Control ( EQC )
- is the objective evaluation by an outside agency
of the performance by a number of laboratories on
material which is supplied specially for the
purpose - is usually organized on a national or regional
basis - analysis of performance is retrospective
- the objective is to achieve comparability with
results of other labs.
12Standardization
- Refers to both materials and methods.
- A material standard or reference preparation is
used to calibrate analytic instruments and to
assign a quantitative value to calibrators. - A reference method is an exactly defined
technique which provides sufficiently accurate
and precise data for it to be used to assess the
validity of other methods
13Proficiency surveillance
- Implies critical supervision of all aspects of
laboratory tests collection, labelling,
delivery, storage of specimens before the tests
are preformed and of reading and reporting of
results. - Also includes maintenance and control of
equipment and apparatus.
14Control
 What is a Control? QC programs require the same sample to be tested every day testing is done. This type of sample is called a control. Controls, which are often purchased from manufacturers, use a human base to ensure the analyses being tested parallel human ranges. Manufacturers pool together many human blood samples to create the large volume needed for a lot number of control
15Tools for Validation of QC results Control
Charts A Control Chart depend on the use of IQC
specimens and is developed in the following manner
3 sd
2 sd
1 sd
Target value
-1 sd
-2 sd
-3 sd
Assay Run
16- Control Charts
- Samples of the control specimen are included in
every batch of patients specimens and the
results checked on a control chart - Check precision it is not necessary to know the
exact value of the control specimen - Value has been determined reliably by a reference
method, the same material can be used to check
accuracy or to calibrate an instrument - Controls with high, low and normal values should
be used - Advisable to use at least one control sample per
batch even if the batch is very small - The results obtained with the control samples can
be plotted on a chart
17How to calculate SD
- 1. Get the Mean.
- 2. Get the deviations. (each value minus the
mean) - 3. Square these.
- 4. Add the squares.
- 5. Divide by total numbers less one.
- 6. Square root of result is Standard Deviation
18Types Of Errors
- An error which varies in an unpredictable manner,
in magnitude and sign, when a large number of
measurements of the same quantity are made under
effectively identical conditions.
19Systematic vs.Random Errors
- Systematic Error
- Avoidable error due to controllable variables in
a measurement.
- Random Errors
- Unavoidable errors that are always present in
any measurement. Impossible to eliminate
20Random Error
- Random errors create a characteristic spread of
results for any test method and cannot be
accounted for by applying corrections. Random
errors are difficult to eliminate but repetition
reduces the influences of random errors. - Examples of random errors include errors in
pipetting and changes in incubation period.
Random errors can be minimized by training,
supervision and adherence to standard operating
procedures.
21Random Errors
22Systematic Error
- An error which, in the course of a number of
measurements of the same value of a given
quantity, remains constant when measurements are
made under the same conditions, or varies
according to a definite law when conditions
change. - Systematic errors create a characteristic bias in
the test results and can be accounted for by
applying a correction. - Systematic errors may be induced by factors such
as variations in incubation temperature, blockage
of plate washer, change in the reagent batch or
modifications in testing method.
23Systematic Errors
24- Automation in Haematology
25Automated techniques of blood counting
- Semi-automated instruments
- Require some steps, as dilution of blood samples
- Often measure only a small number of variables
- Fully automated instruments
- Require only that an appropriate blood sample is
presented to the instrument. - They can measure 8-20 variables including some
new parameters which do not have any equivalent
in manual methods.
26- The accuracy of automated counters is less
impressive than their precision. - In general automated differential counters are
favourable to the manual in 2 conditions - Exam of normal blood samples
- Flagging of abnormal samples
27- CBC Complete Blood Count
- The complete blood count is performed as an
automated procedure. A sample of blood is placed
in an analyzer and the cells are sorted by a
laser according to size, granularity, and shape.
28(No Transcript)
29- Parameters
- WBC Total white blood cells
- RBC Red blood cell count
- HGB Hemoglobin concentration
- HCT Hematocrit (PCV)
- MCV Mean Cell Volume
- MCH Mean Cell Hemoglobin
- MCHC Mean Cell Hemoglobin Concentration
- PLT Platelets count
- NEUT Percentage Neutrophil count
- LYMPH Percentage Lymphocyte count
- MONO Percentage Monocyte count
- EO Percentage Eosinophil count
- BASO Percentage Basophil count
- NEUT Absolute Neutrophil Count
- LYMPH Absolute Lymphocyte Count
- MONO Absolute Monocyte Count
- EO Absolute Eosinophil Count
- BASO Absolute Basophil Count
30Examples of Haematology analysers
- AcT 5diff (Beckman Coulter )
- SE 9000, KX21, XE 2100 (Sysmex)
- Advia 60 (Bayer)
- Cell-Dyn 3500 ( Abott)
31When to Calibrate
- You should calibrate your instrument
- At installation.
- After the replacement of any component that
involves dilution characteristics or the primary
measurements (such as the apertures). - When advised to do so by your service
representative.
32Flagging
- Condition flags
- Describes cell population
- normal
- abnormal
- WBC Suspect flags
- Blasts
- Immature Grans/Bands 1
- Immature Grans/Bands 2
- Variant lymphocytes
- Review Slide
33More Flagging
- RBC Suspect flags
- NRBCs
- Macrocytic RBCs
- Dimorphic RBC population
- Micro RBCs/RBC fragments
- RBC agglutination
- Definitive Flagging
- Based on predetermined lab limits
- Provide information for review
34Histograms
- RBC, PLT, and WBC plotted on histogram
- X-Axis
- Cell size in femtoliters (fL)
- Y-Axis
- of cells
35RBC Histogram As A Quality Control Tool
INDICATOR PROBABLE CAUSE COMMENT
Left of curve does not touch baseline Schistocytes and extremely small red cells Review smear CBC and Platelet histogram
Bimodal peak Transfused cells, therapeutic response Review Smear
Right portion of curve extended Red cell autoagglutination Review CBC Smear
Left shift of curve Microcytes Review smear CBC
Right shift of curve Macrocytes Review smear CBC
36Platelet Histogram As A Quality Control Tool
INDICATOR PROBABLE CAUSE COMMENT
Peak or spike at left end of histogram (2-8 fl) Cytoplasmic fragments Review smear
Spike towards right end of histogram Schistocytes, microcytes, giant platelets Review smear CBC (? MCV ? RDW) (? MPV ? PDW)
Bimodal peak Cytoplasmic fragments Review smear
37Histograms - WBCs
- WBC Distribution with three individual peaks and
valleys at specific regions representing the
lymphocytes, monocytes, and granulocytes.
38WBC Histogram As A Quality Control Tool
INDICATOR PROBABLE CAUSE COMMENT
Trail extending downward at extreme left, or lymph peak not starting at baseline NRBC, Plt clumping, unlysed RBC, cryoproteins, parasites Review smear and correct WBC for NRBC
Peak to the left of lymph peak or widening of lymph peak towards left NRBC Review smear correct WBC for NRBC
Widening of lymph peak to right Atypical lymphs, blasts, plasma cells, hairy cells, eosinophilia, basophilia Review smear
Wider mono peak Monocytosis, plasma cells, eosinophilia, basophilia, blasts Review smear
39WBC Histogram As A Quality Control Tool
INDICATOR PROBABLE CAUSE COMMENT
Elevation of left portion of granulocyte Left Shift Review smear
Elevation of right portion of granulocyte peak Neutrophilia Review smear
40RDW-SD
RDW is an actual measurement of the width of the
erythrocyte distribution curve. It is a
measurement of Anisocytosis. May increase before
MCV becomes abnormal Reference values female
36.4 46.3 fL male 35.1 43.9 fL It is
increased in many types of anemias to indicate
the variation in red cell sizes.
41RDW-CV
The coefficient of variation (CV) is defined as
the ratio of the standard deviation (x), to the
mean (µ) Cv x/µ Sometimes known as relative
standard deviation. Reference values female
11.7 14.4 male 11.6 14.4
42MCV MEAN Cell VOLUME
- M.C.V. Hematocrit X 10
- RBC in millions/µl
- Normal values Men women
- 82 97 fl (femtoliters) cubic
microns - Increased Macrocytes
- Decreased Microcytes
43MCH Mean Cell Hemoglobin
- M.C.V. Hemoglobin g/dl X 10
- RBC in millions/µl
- Normal values Men women
- 27 32 pg (pico grams)
- Increased Hyperchromic
- Decreased Hypochromic
44MCHC Mean Cell Hb Concentration
- M.C.V. Hemoglobin g/dl X 100
- Hematocrit
- Normal values Men women
- 30 34 g/dl
- Increased Hyperchromic
- Decreased Hypochromic
45Other Hematology Machines
- Coagulometers
- - Used in Hemostasis studies, and the Endpoint
Detection depends on Mechanical, Optical
(Photo-optical , Nephelometric , Chromogenic or
Immunologic), Electrochemical principles. - ESR machines in 30 minutes.
- Leucocytes automated Differential Counters
- Using cytochemical or image recognition methods.
46