Portland Bioscience, Inc., Portland, OR, United States.
Biophys Chem. 2010 Nov;152(1-3):184-90. doi: 10.1016/j.bpc.2010.09.007. Epub 2010 Sep 29.
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.
通过差示扫描量热法(DSC)测量的人类血浆熔融曲线(称为热谱图),有可能对人类疾病的诊断产生显著影响。开发了一种通用的统计方法来分析和分类 DSC 热谱图,以分析和分类热谱图。对获得的热谱图的分析涉及与临床特征疾病的经验参考热谱图数据库进行比较。两个参数,距离度量 P 和相关系数 r,组合产生一个“相似度量”ρ,可以用于将未知热谱图分类为预定义的类别。还分析了已知位于中位数参考值 90%分位数范围内或落在其之外的模拟热谱图。结果验证了这些方法的有效性,并确定了度量 ρ 的明显动态范围。然后将这些方法应用于从临床诊断为 SLE(狼疮)的患者的血浆样本中获得的数据。发现曲线形状和度量 ρ 值之间存在高度一致性。在最后的应用中,实现了一个基本的分类规则,成功地分析和分类了未标记的热谱图。这些方法构成了一组强大而易于实施的工具,用于对 DSC 血浆熔融曲线进行定量分类、分析和解释。