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Mitotic HEp-2 Cells Recognition under Class Skew

机译:类偏斜下的有丝分裂HEp-2细胞识别

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Indirect immunofluorescence (IIF) is the recommended method to diagnose the presence of antinuclear autoantibodies in patient serum. A main step of the diagnostic procedure requires to detect mitotic cells in the well under examination. However, such cells rarely occur in comparison to other cells and, hence, traditional recognition algorithms fail in this task since they cannot cope with large differences between the number of samples in each class, resulting in a low predictive accuracy over the minority class. In this paper we present a system for mitotic cells recognition based on multiobjective optimisation, which is able to handle their low a priori probability. It chooses between the output of a classifier trained on the original skewed distribution and the output of a classifier trained according to a learning method addressing the course of imbalanced data. This choice is driven by a parameter whose value maximises, on a validation set, two objective functions, i.e. the global accuracy and the accuracies for each class. The approach has been evaluated on an annotated dataset of mitotic cells and successfully compared to five learning methods applying four different classification paradigms.
机译:推荐使用间接免疫荧光(IIF)诊断患者血清中抗核自身抗体的存在。诊断程序的主要步骤需要在检查孔中检测有丝分裂细胞。但是,与其他单元格相比,此类单元格很少出现,因此,传统的识别算法无法完成此任务,因为它们无法应对每个类别中样本数量之间的较大差异,从而导致对少数类别的预测准确性较低。在本文中,我们提出了一种基于多目标优化的有丝分裂细胞识别系统,该系统能够处理其先验概率低的问题。它在根据原始偏斜分布训练的分类器的输出和根据解决不平衡数据过程的学习方法训练的分类器的输出之间进行选择。该选择由一个参数决定,该参数的值在验证集上最大化两个目标函数,即每个类别的全局精度和精度。该方法已在带注释的有丝分裂细胞数据集上进行了评估,并成功地与采用四种不同分类范例的五种学习方法进行了比较。

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