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首页> 外文期刊>Central European journal of operations research: CEJOR >A methodology for automatic classification of breast cancer immunohistochemical data using semi-supervised Fuzzy c-means
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A methodology for automatic classification of breast cancer immunohistochemical data using semi-supervised Fuzzy c-means

机译:使用半监督的模糊c均值自动分类乳腺癌免疫组织化学数据的方法

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摘要

Previously, a semi-manual method was used to identify six novel and clinically useful classes in the Nottingham Tenovus Breast Cancer dataset. 663 out of 1,076 patients were classified. The objectives of our work is three folds. Firstly, our primary objective is to use one single automatic method (post-initialisation) to reproduce the six classes for the 663 patients and to classify the remaining 413 patients. Secondly, we explore using semi-supervised fuzzy c-means with various distance metrics and initialisation techniques to achieve this. Thirdly, the clinical characteristics of the 413 patients are examined by comparing with the 663 patients. Our experiments use various amount of labelled data and 10-fold cross validation to reproduce and evaluate the classification. ssFCM with Euclidean distance and initialisation technique by Katsavounidis et al. produced the best results. It is then used to classify the 413 patients. Visual evaluation of the 413 patients' classifications revealed common characteristics as those previously reported. Examination of clinical characteristics indicates significant associations between classification and clinical parameters. More importantly, association between classification and survival based on the survival curves is shown.
机译:以前,使用半手动方法来识别诺丁汉Tenovus乳腺癌数据集中的六种新颖且对临床有用的类别。在1,076名患者中,有663名被分类。我们工作的目标是三个方面。首先,我们的主要目标是使用一种单一的自动方法(初始化后)为663名患者重现六种分类,并对其余413名患者进行分类。其次,我们探索使用具有各种距离度量和初始化技术的半监督模糊c均值来实现这一目标。第三,与663例患者进行比较,检查了413例患者的临床特征。我们的实验使用各种数量的标记数据和10倍交叉验证来重现和评估分类。 ssFCM具有欧氏距离和Katsavounidis等人的初始化技术。产生了最好的结果。然后将其用于对413位患者进行分类。对413位患者分类的视觉评估显示出先前报道的共同特征。临床特征检查表明分类与临床参数之间存在显着关联。更重要的是,显示了基于生存曲线的分类与生存之间的关联。

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