Pattini Linda, Mazzara Saveria, Conti Antonio, Iannaccone Sandro, Cerutti Sergio, Alessio Massimo
Department of Bioengineering, Politecnico di Milano, Piazza L. da Vinci, 32, 20133, Milan Italy.
Exp Biol Med (Maywood). 2008 Apr;233(4):483-91. doi: 10.3181/0707-RM-187.
Two-dimensional gel electrophoresis (2DE) is an indispensable tool in proteomics for the analysis of protein expression in complex biological systems such as cells and tissues. However, the automatic extraction of information from gel images is still a challenging task. In this paper we propose a strategy that represents a computational procedure of support to the discrimination of different clinical conditions associated with the samples. The analyzed gel images were acquired within the framework of a study of peripheral neuropathies: twenty-four 2DE maps generated from cerebrospinal fluid (16 pathologic and 8 control subjects) were processed. Quantitative features were defined to describe each image and treated with a method of dimensionality reduction. The informativeness of the descriptors allowed us to see the gel of the data set as items in a three-dimensional space, segregating according to the clinical conditions. Moreover, information with prognostic value was obtained for a single outsider gel of a patient who was included in a clinical subgroup at the first diagnosis but whose disease progressed with clinical features belonging to a different clinical subgroup. The method developed may represent an effective tool of classification that can be used repeatedly to capture the essential impression from separation images.
二维凝胶电泳(2DE)是蛋白质组学中用于分析细胞和组织等复杂生物系统中蛋白质表达的不可或缺的工具。然而,从凝胶图像中自动提取信息仍然是一项具有挑战性的任务。在本文中,我们提出了一种策略,该策略代表了一种计算程序,用于支持区分与样本相关的不同临床状况。所分析的凝胶图像是在一项周围神经病变研究的框架内获取的:对从脑脊液中生成的24张2DE图谱(16例病理样本和8例对照样本)进行了处理。定义了定量特征来描述每张图像,并采用降维方法进行处理。描述符的信息性使我们能够将数据集的凝胶视为三维空间中的项目,并根据临床状况进行分离。此外,对于一名患者的单个外部凝胶,我们获得了具有预后价值的信息,该患者在首次诊断时属于一个临床亚组,但疾病进展后出现了属于不同临床亚组的临床特征。所开发的方法可能代表一种有效的分类工具,可反复使用以从分离图像中捕捉基本特征。