Title of article :
Statistical analysis of plasma thermograms measured by differential scanning calorimetry Original Research Article
Author/Authors :
Daniel J. Fish، نويسنده , , Greg P. Brewood، نويسنده , , Jong Sung Kim، نويسنده , , Nichola C. Garbett، نويسنده , , Jonathan B. Chaires، نويسنده , , Albert S. Benight، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
7
From page :
184
To page :
190
Abstract :
Melting curves of human plasma measured by differential scanning calorimetry (DSC), known as thermograms, have the potential to markedly impact diagnosis of human diseases. A general statistical methodology is developed to analyze and classify DSC thermograms to analyze and classify thermograms. Analysis of an acquired thermogram involves comparison with a database of empirical reference thermograms from clinically characterized diseases. Two parameters, a distance metric, P, and correlation coefficient, r, are combined to produce a ‘similarity metric,’ ρ, which can be used to classify unknown thermograms into pre-characterized categories. Simulated thermograms known to lie within or fall outside of the 90% quantile range around a median reference are also analyzed. Results verify the utility of the methods and establish the apparent dynamic range of the metric ρ. Methods are then applied to data obtained from a collection of plasma samples from patients clinically diagnosed with SLE (lupus). High correspondence is found between curve shapes and values of the metric ρ. In a final application, an elementary classification rule is implemented to successfully analyze and classify unlabeled thermograms. These methods constitute a set of powerful yet easy to implement tools for quantitative classification, analysis and interpretation of DSC plasma melting curves.
Keywords :
Calorimetry , Biostatistics , Chemometrics , Plasma thermograms , Diagnostics
Journal title :
Biophysical Chemistry
Serial Year :
2010
Journal title :
Biophysical Chemistry
Record number :
1120403
Link To Document :
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