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
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