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Meta Ordinal Regression Forest For Learning with Unsure Lung Nodules

机译:元序数回归森林与不确定的肺结节学习

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Deep learning-based methods have achieved promising performance in early detection and classification of lung nodules, most of which discard unsure nodules and simply deal with a binary classification-malignant vs benign. Recently, an unsure data model (UDM) was proposed to incorporate those unsure nodules by formulating this problem as an ordinal regression, showing better performance over traditional binary classification. To further explore the ordinal relationship for lung nodule classification, this paper proposes a meta ordinal regression forest (MORF), which improves upon the state-of the-art ordinal regression method, deep ordinal regression forest (DORF), in three major ways. First, MORF can alleviate the biases of the predictions by making full use of deep features while DORF needs to fix the composition of decision trees before training. Second, MORF has a novel grouped feature selection (GFS) module to re-sample the split nodes of decision trees. Last, combined with GFS, MORF is equipped with a meta learning based weighting scheme to map the features selected by GFS to tree-wise weights while DORF assigns equal weights for all trees. Experimental results on LIDC-IDRI dataset demonstrate superior performance over existing methods, including the state of-the-art DORF.
机译:基于深度学习的方法在肺结核的早期检测和分类中取得了有希望的性能,其中大部分丢弃不确定的结节并简单地处理二元分类 - 恶性VS良性。最近,提出了一种不确定的数据模型(UDM)以通过将该问题作为序数回归制定这个问题来纳入那些不确定的结节,显示出对传统二进制分类的更好性能。为了进一步探讨肺结核分类的序序关系,本文提出了一个Meta序数回归森林(Morf),其提高了最先进的序数回归方法,深度序数回归森林(DORF),以三种主要方式。首先,摩尔夫可以通过充分利用深层特征来缓解预测的偏见,而DORF需要在训练前修复决策树的组成。其次,Morf具有新颖的分组特征选择(GFS)模块,用于重新采样决策树的分割节点。最后,与GFS相结合,MORF配备了基于元学习的权重方案,以将GFS选择的功能映射到树下的权重,而DORF为所有树分配相同的权重。 LIDC-IDRI数据集的实验结果表明了对现有方法的卓越性能,包括最先进的DORF。

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