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Ovarian cancer identification based on dimensionality reduction for high-throughput mass spectrometry data

机译:基于降维的高通量质谱数据鉴定卵巢癌

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Motivation: High-throughput and high-resolution mass spectrometry instruments are increasingly used for disease classification and therapeutic guidance. However, the analysis of immense amount of data poses considerable challenges. We have therefore developed a novel method for dimensionality reduction and tested on a published ovarian high-resolution SELDI-TOF dataset.Results: We have developed a four-step strategy for data preprocessing based on: (1) binning, (2) Kolmogorov-Smirnov test, (3) restriction of coefficient of variation and (4) wavelet analysis. Subsequently, support vector machines were used for classification. The developed method achieves an average sensitivity of 97.38% (sd = 0.0125) and an average specificity of 93.30% (sd = 0.0174) in 1000 independent k-fold cross-validations, where k = 2, ..., 10.
机译:动机:高通量和高分辨率质谱仪越来越多地用于疾病分类和治疗指导。然而,对大量数据的分析提出了相当大的挑战。因此,我们开发了一种新的降维方法,并在已发布的卵巢高分辨率SELDI-TOF数据集上进行了测试。结果:我们开发了一种基于以下四个步骤的数据预处理策略:(1)分箱,(2)Kolmogorov- Smirnov检验,(3)变异系数的限制和(4)小波分析。随后,将支持向量机用于分类。所开发的方法在1000次独立的k倍交叉验证中获得了97.38%(sd = 0.0125)的平均灵敏度和93.30%(sd = 0.0174)的平均特异性,其中k = 2,...,10。

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