| CPC G16B 20/00 (2019.02) [G16B 40/00 (2019.02)] | 7 Claims |
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1. A method for analyzing proximity binding assay data to detect a target protein in a test sample having an unknown quantity of the target protein, comprising:
conducting a proximity binding assay on the test sample, a reference sample, a background sample lacking the target protein, and at least two calibration samples having different respective known quantities of the target protein;
generating, from the conducting, proximity binding assay data comprising at least one set of test sample data, at least one set of reference sample data, at least one background sample data set, and at least two sets of calibration sample data,
wherein conducting the proximity binding assay comprises:
introducing a first biorecognition probe modified with a first oligonucleotide sequence and a second biorecognition probe modified with a second oligonucleotide sequence to each of a first sample region comprising the test sample, a second sample region comprising a reference sample, and a third sample region comprising a background sample, wherein the first and second biorecognition probes are designed to specifically bind to the target protein, and the first oligonucleotide sequence and the second oligonucleotide sequence are designed to readily bind to each other when in proximity to each other, thereby generating a target nucleic acid sequence for amplification;
obtaining, from the first sample region, the second sample region, and the third sample region, any targets for amplification resulting from introducing;
respectively combining any targets for amplification obtained from the first sample region, the second sample region, and the third sample region with labeling probes;
conducting an amplification reaction on respective combinations comprising the targets for amplification and the labeling probes; and
detecting the labeling probes resulting from the amplification reaction;
receiving, by a processor, the at least one set of test sample data, the at least one set of reference sample data, the at least one background sample data set, and the at least two sets of calibration sample data;
determining, by the processor, cycle threshold (Ct) values for the at least one set of test sample data and the at least one set of reference sample data;
calculating, by the processor, background corrected Ct values for each value in the at least one set of test sample data and the at least one set of reference sample data using a corresponding value in the at least one background sample data set;
determining, by the processor, a linear range for the background corrected Ct values as a function of sample quantity;
calculating, by the processor, a linear regression line for each linear range that is determined;
estimating, by the processor, one or more parameter values of an exponential model (EM) fold change formula by using the at least two sets of calibration data generated from the at least two calibration samples; and
calculating, by the processor, a quantity of the target protein in the test sample and an associated confidence interval using the linear regression lines calculated for the at least one set of test sample data and the at least one set of reference sample data and the EM fold change formula with the one or more parameter values estimated from the at least two sets of calibration sample data.
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