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A New Reliable Cancer Diagnosis Method Using Boosted Fuzzy Classifier with a SWEEP Operator Method

机译:基于SWEEP算子的Boosting模糊分类器的可靠癌症诊断新方法。

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For the adequate treatment of patients,it is important to have an accurate and reliable algorithm developed for construction of a diagnosis system that can deal with gene expression data of DNA microarray,or proteomic data obtained by means of mass spectrometry (MS).It is also necessary that this algorithm is fast because these data consist of thousands of attributes (genes or proteins). We have developed a boosted fuzzy classifier with a SWEEP operator (BFCS) method on the basis of the fuzzy theory and boosting algorithm.This method has been applied for the construction of class predictors for cancer diagnosis using clinical data for breast cancer or proteomic pattern data of MS for ovarian cancer.The model performance has been evaluated by comparison with a conventional method such as a support vector machine (SVM) and a fuzzy neural network combined with the SWEEP operator (FNN-SWEEP) method previously proposed by us.The BFCS algorithm is 1,000 to 10,000 times faster than the other two methods.The constructed BFCS class predictors could discriminate classes of breast cancer and ovarian cancer with the same or higher accuracy than the other two methods.Furthermore,BFCS enabled the calculation of the reliability index for each patient,while the feature is not incorporated into a conventional algorithm.Based on this index,the discriminated group with 100% prediction accuracy was separated from the others.
机译:为了使患者得到充分的治疗,重要的是要开发准确,可靠的算法来构建诊断系统,以处理DNA微阵列的基因表达数据或通过质谱(MS)获得的蛋白质组数据。由于这些数据包含成千上万的属性(基因或蛋白质),因此也必须使该算法快速运行。我们在模糊理论和Boosting算法的基础上开发了一种采用SWEEP算子(BFCS)方法的Boosting模糊分类器,该方法已被用于利用乳腺癌或蛋白质组模式数据的临床数据构建癌症诊断的分类预测器通过与传统方法(如支持向量机(SVM)和模糊神经网络与我们先前提出的SWEEP算子(FNN-SWEEP)结合的方法进行比较,对模型性能进行了评估。该算法比其他两种方法快1,000到10,000倍。构建的BFCS类预测器可以以与其他两种方法相同或更高的准确度区分乳腺癌和卵巢癌。每位患者,但该功能并未纳入常规算法中。基于该指标,具有100%预测值好奇心与其他人分开了。

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