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首页> 外文期刊>Journal of medical systems >Learning ECOC Code Matrix for Multiclass Classification with Application to Glaucoma Diagnosis
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Learning ECOC Code Matrix for Multiclass Classification with Application to Glaucoma Diagnosis

机译:学习型ECOC代码矩阵用于多类分类及其在青光眼诊断中的应用

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摘要

Classification of different mechanisms of angle closure glaucoma (ACG) is important for medical diagnosis. Error-correcting output code (ECOC) is an effective approach for multiclass classification. In this study, we propose a new ensemble learning method based on ECOC with application to classification of four ACG mechanisms. The dichotomizers in ECOC are first optimized individually to increase their accuracy and diversity (or interdependence) which is beneficial to the ECOC framework. Specifically, the best feature set is determined for each possible dichotomizer and a wrapper approach is applied to evaluate the classification accuracy of each dichotomizer on the training dataset using cross-validation. The separability of the ECOC codes is maximized by selecting a set of competitive dichotomizers according to a new criterion, in which a regularization term is introduced in consideration of the binary classification performance of each selected dichotomizer. The proposed method is experimentally applied for classifying four ACG mechanisms. The eye images of 152 glaucoma patients are collected by using anterior segment optical coherence tomography (AS-OCT) and then segmented, from which 84 features are extracted. The weighted average classification accuracy of the proposed method is 87.65 % based on the results of leave-one-out cross-validation (LOOCV), which is much better than that of the other existing ECOC methods. The proposed method achieves accurate classification of four ACG mechanisms which is promising to be applied in diagnosis of glaucoma.
机译:闭角型青光眼(ACG)不同机制的分类对于医学诊断很重要。纠错输出代码(ECOC)是进行多类分类的有效方法。在这项研究中,我们提出了一种新的基于ECOC的整体学习方法,并将其应用于四种ACG机制的分类。首先对ECOC中的二分词进行单独优化,以提高其准确性和多样性(或相互依赖性),这对ECOC框架是有利的。具体来说,为每个可能的二分频器确定最佳特征集,并使用包装方法来使用交叉验证在训练数据集上评估每个二分频器的分类准确性。通过根据新标准选择一组竞争性二分频器,可以最大化ECOC代码的可分离性,其中考虑到每个所选二分频器的二进制分类性能,引入了正则化项。所提出的方法在实验上用于对四种ACG机制进行分类。使用前段光学相干断层扫描(AS-OCT)收集152例青光眼患者的眼图,然后进行分割,从中提取84个特征。基于留一法交叉验证(LOOCV)的结果,该方法的加权平均分类精度为87.65%,比其他现有的ECOC方法要好得多。所提出的方法实现了对四种ACG机制的准确分类,有望用于青光眼的诊断。

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