Data processing: measuring – calibrating – or testing – Measurement system in a specific environment – Biological or biochemical
Reexamination Certificate
2008-04-22
2008-04-22
Martinell, James (Department: 1634)
Data processing: measuring, calibrating, or testing
Measurement system in a specific environment
Biological or biochemical
Reexamination Certificate
active
07363169
ABSTRACT:
Simulating a microarray includes defining a number of parameters. A microarray is generated according to the parameters using an imaging procedure. The microarray is compared to a known value, and the imaging procedure is evaluated in response to the comparison. A simulated microarray image can be generated based on parameters. The simulated microarray can be associated with known values. An imaging procedure is applied to the simulated microarray image to generate observed values. The known values (e.g., intensities) can be compared to the observed values to evaluate the imaging procedure.
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Balagurunathan Yoganand
Chen Yidong
Dougherty Edward R.
Klarquist & Sparkman, LLP
Martinell James
The Texas A&M University System
United States of America as represented by the Secretary of the
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