Gartland K P, Beddell C R, Lindon J C, Nicholson J K
Department of Chemistry, Birkbeck College, University of London, UK.
Mol Pharmacol. 1991 May;39(5):629-42.
A computer-based pattern recognition (PR) approach has been applied to the classification and interrogation of 1H NMR-generated urinalysis data, in a variety of experimental toxicity states in the rat. 1H NMR signal intensities for each endogenous urinary metabolite were regarded as coordinates in multidimensional space and analyzed using PR methods, through which the dimensionality was reduced for display and categorization purposes. The changes in the NMR spectral patterns were characterized by 17 metabolic dimensions, which were then analyzed by employing the unsupervised learning methods of hierarchical cluster analysis, two-dimensional nonlinear map (NLM) analysis, and two- or three-dimensional principal components analysis (PCA). Different types of toxin (hepatotoxins and cortical and papillary nephrotoxins) were classified according to NMR-detectable biochemical effects. PCA provided consistently better results than NLMs in terms of discrimination of toxicity type, and maps based on correlation matrices also gave improved discrimination over those based on raw data. Various refinements in the data analysis were investigated, including taking NMR urinalysis data at three time points after exposure of the rats to six different nephrotoxins, as well as employing a dual-scoring system (time and magnitude of change). The maps generated from the time-course information produced the best discrimination between nephrotoxins from different classes. The robustness of the classification methods (in particular NLMs and PCA based on correlation matrices) and the influence of the addition of new scored biochemical data, reflecting dose-response situations, nutritional effects on toxicity, sex differences in biochemical response to toxins, the addition of a new toxin class (cadmium chloride, a testicular toxin and renal carbonic anhydrase inhibitor), and an additional metabolite descriptor (creatine), to the PR analysis were also evaluated. Initial training set maps were fundamentally stable to the addition of new data, and both NLM and PCA methods correctly "predicted" the toxicological effects from NMR data for test compounds, suggesting that the approach using PR and 1H NMR urinalysis for the generation and classification of acute toxicological data has wide applicability.
一种基于计算机的模式识别(PR)方法已应用于大鼠多种实验性毒性状态下1H NMR产生的尿液分析数据的分类和解析。每种内源性尿液代谢物的1H NMR信号强度被视为多维空间中的坐标,并使用PR方法进行分析,通过该方法降低维度以用于展示和分类目的。NMR光谱模式的变化由17个代谢维度表征,然后通过层次聚类分析、二维非线性映射(NLM)分析以及二维或三维主成分分析(PCA)等无监督学习方法进行分析。根据NMR可检测到的生化效应,对不同类型的毒素(肝毒素、皮质和乳头肾毒素)进行分类。在毒性类型的区分方面,PCA始终比NLM提供更好的结果,并且基于相关矩阵的图谱在区分能力上也优于基于原始数据的图谱。研究了数据分析中的各种改进方法,包括在大鼠接触六种不同肾毒素后的三个时间点获取NMR尿液分析数据,以及采用双评分系统(变化的时间和幅度)。从时间进程信息生成的图谱在区分不同类别的肾毒素方面表现最佳。还评估了分类方法(特别是基于相关矩阵的NLM和PCA)的稳健性,以及添加反映剂量反应情况、营养对毒性的影响、对毒素生化反应的性别差异、添加新的毒素类别(氯化镉,一种睾丸毒素和肾碳酸酐酶抑制剂)以及额外的代谢物描述符(肌酸)到PR分析中的影响。初始训练集图谱对新数据的添加基本稳定,并且NLM和PCA方法都能从测试化合物的NMR数据中正确“预测”毒理学效应,这表明使用PR和1H NMR尿液分析生成和分类急性毒理学数据的方法具有广泛的适用性。