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Gene Selection for Multiclass Prediction by Weighted Fisher Criterion

机译:加权Fisher准则进行多类预测的基因选择

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摘要

Gene expression profiling has been widely used to study molecular signatures of many diseases and to develop molecular diagnostics for disease prediction. Gene selection, as an important step for improved diagnostics, screens tens of thousands of genes and identifies a small subset that discriminates between disease types. A two-step gene selection method is proposed to identify informative gene subsets for accurate classification of multiclass phenotypes. In the first step, individually discriminatory genes (IDGs) are identified by using one-dimensional weighted Fisher criterion (wFC). In the second step, jointly discriminatory genes (JDGs) are selected by sequential search methods, based on their joint class separability measured by multidimensional weighted Fisher criterion (wFC). The performance of the selected gene subsets for multiclass prediction is evaluated by artificial neural networks (ANNs) and/or support vector machines (SVMs). By applying the proposed IDG/JDG approach to two microarray studies, that is, small round blue cell tumors (SRBCTs) and muscular dystrophies (MDs), we successfully identified a much smaller yet efficient set of JDGs for diagnosing SRBCTs and MDs with high prediction accuracies (96.9% for SRBCTs and 92.3% for MDs, resp.). These experimental results demonstrated that the two-step gene selection method is able to identify a subset of highly discriminative genes for improved multiclass prediction.
机译:基因表达谱已被广泛用于研究许多疾病的分子特征并开发用于疾病预测的分子诊断方法。基因选择是改善诊断的重要步骤,它筛选了成千上万的基因,并识别出区分疾病类型的一小部分。提出了一种两步基因选择方法来鉴定信息性基因子集,以准确分类多类表型。第一步,通过使用一维加权Fisher准则(wFC)来识别单独的歧视性基因(IDG)。第二步,根据通过多维加权Fisher准则(wFC)测得的联合类别可分离性,通过顺序搜索方法选择联合区分基因(JDG)。通过人工神经网络(ANN)和/或支持向量机(SVM)评估用于多类预测的所选基因子集的性能。通过将拟议的IDG / JDG方法应用于两项微阵列研究,即小圆形蓝细胞肿瘤(SRBCT)和肌营养不良(MD),我们成功地鉴定出了一套更小而有效的JDG,用于诊断SRBCT和MD具有较高的预测性精度(SRBCT为96.9%,MD为92.3%)。这些实验结果表明,两步基因选择方法能够识别高度区分基因的子集,以改善多类预测。

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