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首页> 外文期刊>Journal of medical systems >Support vector machine-based feature selection for classification of liver fibrosis grade in chronic hepatitis C.
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Support vector machine-based feature selection for classification of liver fibrosis grade in chronic hepatitis C.

机译:基于支持向量机的特征选择用于慢性丙型肝炎肝纤维化分级的分类

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摘要

Although liver biopsy is currently regarded as the gold standard for staging liver fibrosis in chronic hepatitis C, it is a costly invasive procedure and carries a small risk for complication. Our aim in this study was to construct a simple model to distinguish between patients with no or mild fibrosis (METAVIR F0-F1) versus those with clinically significant fibrosis (METAVIR F2-F4). We retrospectively studied 204 consecutive CHC patients. Thirty-four serum markers with age, gender, duration of infection were assessed to classify fibrosis with a classifier known as the support vector machine (SVM). The method of feature selection known as sequential forward floating selection (SFFS) was introduced before the performance of SVM. When four serum markers were extracted with SFFS-SVM, F2-F4 could be predicted accurately in 96%. Our study showed that application of this model could identify CHC patients with clinically significant fibrosis with a high degree of accuracy and may decrease the need for liver biopsy.
机译:尽管肝活检目前被认为是治疗慢性丙型肝炎的肝纤维化的金标准,但它是一项昂贵的侵入性手术,并发症风险很小。我们在这项研究中的目的是构建一个简单的模型,以区分无纤维化或轻度纤维化的患者(METAVIR F0-F1)与具有临床显着纤维化的患者(METAVIR F2-F4)。我们回顾性研究了204位连续的CHC患者。使用年龄分类,性别,感染持续时间的三十四种血清标志物,使用称为支持向量机(SVM)的分类器对纤维化进行分类。在执行SVM之前,先介绍了称为顺序前向浮动选择(SFFS)的特征选择方法。用SFFS-SVM提取四种血清标志物时,F2-F4的准确预测率为96%。我们的研究表明,该模型的应用可以高度准确地识别具有临床意义的纤维化的CHC患者,并且可以减少对肝活检的需求。

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