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Comparison of Analytical Mathematical Approaches for Identifying Key Nuclear Magnetic Resonance Spectroscopy Biomarkers in the Diagnosis and Assessment of Clinical Change of Diseases

机译:在诊断和评估疾病的临床变化中识别关键核磁共振波谱生物标志物的分析数学方法的比较

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Nuclear magnetic resonance (NMR) spectroscopy is a rapidly emerging technology that can be used to assess tissue metabolic profile in the living animal. At the present time, no approach has been developed 1) to systematically identify profiles of key chemical alterations that can be used as biomarkers to diagnose diseases and to monitor disease progression; and 2) to assess mathematically the diagnostic power of potential biomarkers. To address this issue, we have evaluated mathematical approaches that employ receiver operating characteristic (ROC) curve analysis, linear discriminant analysis, and logistic regression analysis to systematically identify key biomarkers from NMR spectra that have excellent diagnostic power and can be used accurately for disease diagnosis and monitoring. To validate our mathematical approaches, we studied the striatal concentrations of 17 metabolites of 13 R6/ 2 transgenic mice with Huntington's disease, as well as those of 17 wild-type (WT) mice, which were obtained via in vivo proton NMR spectroscopy (9.4 Tesla). We developed diagnostic biomarker models and clinical change assessment models based on our three aforementioned mathematical approaches, and we tested all of them, first, with the 30 original mice and, then, with 31 unknown mice. Their prediction results were compared with genotyping-the gold standard. All models correctly diagnosed all of the 30 original mice (17 WT and 13 R6/2) and all of the 31 unknown mice (20 WT and 11 R6/2), with a positive likelihood ratio approximating infinity [1/0 (-> infinity)], and with a negative likelihood ratio equal to zero [0/1 = 0].
机译:核磁共振(NMR)光谱技术是一种迅速出现的技术,可用于评估活体动物的组织代谢状况。目前,尚未开发出任何方法:1)系统地识别关键化学变化的概况,这些变化可以用作诊断疾病和监测疾病进展的生物标记;和2)在数学上评估潜在生物标记物的诊断能力。为解决此问题,我们评估了采用接收器工作特征(ROC)曲线分析,线性判别分析和逻辑回归分析的数学方法,以从NMR光谱中系统地识别具有出色诊断能力且可准确用于疾病诊断的关键生物标志物。和监控。为了验证我们的数学方法,我们研究了通过体内质子NMR光谱法获得的13例亨廷顿氏病R6 / 2转基因小鼠以及17例野生型(WT)小鼠的17种代谢产物的纹状体浓度(9.4特斯拉)。我们基于上述三种数学方法开发了诊断性生物标记物模型和临床变化评估模型,我们首先对30只原始小鼠进行测试,然后对31只未知小鼠进行了测试。他们的预测结果与基因分型-金标准进行了比较。所有模型都正确诊断了所有30只原始小鼠(17 WT和13 R6 / 2)和所有31只未知小鼠(20 WT和11 R6 / 2),正似然比接近无穷大[1/0(->无限大]],并且负似然比等于零[0/1 = 0]。

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