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Basic Principles in Flow Cytometry

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1 Basic Principles in Flow Cytometry
Prepared by Hector Nolla Manager CRL Flow Cytometry Lab University of California, Berkeley

2 Flow Cytometry Flow Cytometry is the technological process that allows for the individual measurements of cell fluorescence and light scattering. This process is performed at rates of thousands of cells per second. This information can be used to individually sort or separate subpopulations of cells.

3 History Flow cytometry developed from microscopy. Thus Leeuwenhoek is often cited in any discussion regarding it’s history. F.T. Gucker (1947)build the first apparatus for detecting bacteria in a LAMINAR SHEATH stream of air. L. Kamentsky (IBM Labs), and M. Fulwyler (Los Alamos Nat. Lab.) experimented with fluidic switching and electrostatic cell sorters respectively. Both described cell sorters in 1965. M. Fulwyler utilized Pulse Height Analyzers to accumulate distributions from a Coulter counter. This feature allowed him to apply statistical analysis to samples analyzed by flow.

4 History In 1972 L. Herzenberg (Stanford Univ.), developed a cell sorter that separated cells stained with fluorescent antibodies.The Herzenberg group coined the term Fluorescence Activated Cell Sorter (FACS).

5 Fluorescence Activation Process (or Immunofluorescence)
Antibodies recognize specific molecules in the surface of some cells Antibodies are artificially conjugated to fluorochromes FITC FITC Antibodies When the cells are analyzed by flow cytometry the cells expressing the marker for which the antibody is specific will manifest fluorescence. Cells who lack the marker will not manifest fluorescence FITC FITC But not others

6 Cellular Parameters Measured by Flow
Intrinsic Extrinsic No reagents or probes required (Structural) Cell size(Forward Light Scatter) Cytoplasmic grabularity(90 degree Light Scatter) Photsynthetic pigments Reagents are required. Structural DNA content DNA base ratios RNA content Functional Surface and intracellular receptors. DNA synthesis DNA degradation (apoptosis) Cytoplasmic Ca++ Gene expression

7 Flow Cytometry Applications
Immunofluorescence Cell Cycle Kinetics Cell Kinetics Genetics Molecular Biology Animal Husbandry (and Human as well) Microbiology Biological Oceanography Parasitology Bioterrorism

8 Flow cytometry integrates electronics, fluidics, computer, optics, software, and laser technologies in a single platform.

9 Laser optics Laser Beam Flow chamber Sheath Sample Cells are presented to the laser using principles of hydrodynamic focusing Y Z X Y Z X

10 Laminar Fluidic Sheath
PE FL FITC FL 488nm Sct Core Sheath Outer Sheath

11 Each cell generates a quanta of fluorescence
Photomultiplier Tubes (PMT’s) PE FL FITC FL 488nm Sct Discriminating Filters Forward Light Scattering Detector Dichroic Lenses Confocal Lens

12 Negative cells are also detected
PE FL FITC FL 488nm Sct Forward Light Scatter Dichroic Lenses Confocal Lens

13 Optical Bench Schematic
Flow Cell Laser Beam FS Sensor Fluorescence Pickup Lens SS Sensor FL1 Sensor 525BP FL2 Sensor 575BP FL3 Sensor 620BP FL4 Sensor 675BP 488DL 488BK 550DL 600DL 645DL

14 From Fluorescence to Computer Display
Individual cell fluorescence quanta is picked up by the various detectors(PMT’s). PMT’s convert light into electrical pulses. These electrical signals are amplified and digitized using Analog to Digital Converters (ADC’s). Each event is designated a channel number (based on the fluorescence intensity as originally detected by the PMT’s) on a 1 Parameter Histogram or 2 Parameter Histogram. All events are individually correlated for all the parameters collected.

15 Light Scattering, 2 Parameter Histogram
Bigger Apoptotic Cells Bigger Cells 90 degree Light Scatter Dead Cells More Granular Y Axis X Axis Live Cells Forward Light Scatter (FLS)

16 1 Parameter Histogram Positive Negative Brighter Count Dimmer
6 4 1 Channel Number Fluorescence picked up from the FITC PMT

17 2 Parameter Histogram PE FL FITC FL Single Positive PI Population
Double Positive Population PE FL Negative Population Single Positive FITC Population FITC FL

18 Gating and Statistics Data generated in flow cytometry is displayed using Multiparamater Acquisition and Display software platforms. Histograms corresponding to each of the parameters of interest can be analyzed using statistical tools to calculate percentage of cells manifesting specific fluorescence, and fluorescence intensity. This information can be used to look at fluorescence expression within subpopulations of cells in a sample (gating).

19 Flow Cytometry Data Smaller Region, Live cells mostly
Larger Region includes all cells

20 Running Samples Prepare samples.
One sample should be completely negative. This sample should be analyzed first. This sample is used for adjusting the PMT’s amplification voltage. Adjust the PMT Voltage until you can see a population peak in the first decade of your 1 parameter and or your two parameter plot.These samples are used for adjusting Spectral Overlap. Once the instrument settings are optimized, run samples and collect data.

21 Flow Cytometry and sorting


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