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Classification Analysis of Surface-enhanced Laser Desorption/Ionization Mass Spectral Serum Profiles for Prostate Cancer

机译:前列腺癌表面增强激光解吸/电离质谱血清谱的分类分析

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Classification analysis was performed on 322 SELDI-TOF-MS protein expression profiles for prostate cancer. Feature ranking was based on the F-test, information gain (entropy), and Gini diversity applied in a pairwise, one-against-all, and all-at-once modular form. Classifiers included 4NN, NBC, LDA, LVQ1, SVM, and ANN. 4-class bootstrap (0.632) accuracies were in the range 50-80%, with NBC resulting in the lowest average accuracy (50-66%) and SVM resulting in the greatest average accuracy (71-79%). A 12-peak model with 88% accuracy collapsed into 6 peaks with m/z values of 3460, 4172, 4581, 6890, 14281 and 14696. The peaks identified may be confirmed in the future to be markers of early detection and/or therapy.
机译:对322种SELDI-TOF-MS前列腺癌蛋白表达谱进行了分类分析。特征排名基于F检验,信息增益(熵)和基尼多样性,它们以成对,一对一,一次全部的模块化形式应用。分类器包括4NN,NBC,LDA,LVQ1,SVM和ANN。 4级自举(0.632)的准确性在50-80%的范围内,其中NBC导致最低的平均准确度(50-66%),而SVM导致的最大平均准确度(71-79%)。一个具有88%准确度的12峰模型崩溃为6个峰,m / z值分别为3460、4172、4581、6890、14281和14696。所鉴定的峰将来可能被确认为早期检测和/或治疗的标志物。

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