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Multi-Type Interdependent Feature Analysis Based on Hybrid Neural Networks for Computer-Aided Diagnosis of Epidermal Growth Factor Receptor Mutations

机译:基于混合神经网络的计算机辅助诊断表皮生长因子受体突变的多型相互依赖特征分析

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摘要

The mutation status of the epidermal growth factor receptor (EGFR) is an important clinical reference indicator for lung cancer diagnosis and treatment. However, the extraction of effective discriminative features for non-invasive computer-aided EGFR mutation prediction still poses a big challenge. In this paper, multiple types of features are designed and analyzed to address this problem. These features include clinical features based on prior medical knowledge and quantitative image features extracted by convolutional neural networks (CNN). A long short-term memory (LSTM) network is also introduced to exploit the dependency between these feature types and then fuse them. In particular, a CNN is constructed to extract quantitative features of computed-tomography (CT) images. Furthermore, a LSTM is utilized to analyze the dependency between these clinical and CT image features and generate a new feature representation for computer-aided diagnosis. For samples from the same category, the proposed method deal with feature representation variabilities arising from interdependencies in multi-type features and patient specificity. The multiple feature types of the collected clinical data are used to assess the proposed approach and other relevant algorithms. Our results demonstrate that the multi-type dependency-based feature representation shows superior performance (Accuracy & x003D; 75& x0025;, AUC & x003D; 0.78) compared to single-type feature representations. The proposed method is reliable to apply for diagnosing of the EGFR mutation status.
机译:表皮生长因子受体(EGFR)的突变状态是肺癌诊断和治疗的重要临床参考指标。然而,用于非侵入性计算机辅助EGFR突变预测的有效鉴别特征的提取仍然存在大挑战。在本文中,设计并分析了多种功能以解决这个问题。这些特征包括基于现有医学知识和由卷积神经网络提取的定量图像特征的临床特征(CNN)。还引入了长期短期内存(LSTM)网络以利用这些特征类型之间的依赖性,然后熔断它们。特别地,构建了CNN以提取计算断层扫描(CT)图像的定量特征。此外,利用LSTM来分析这些临床和CT图像特征之间的依赖性,并为计算机辅助诊断产生新的特征表示。对于来自同一类别的示例,所提出的方法处理来自多型特征和患者特异性的相互依赖性引起的特征表示变量。收集的临床数据的多种特征类型用于评估所提出的方法和其他相关算法。我们的结果表明,与单型特征表示相比,基于多型依赖性的特征表示显示出优异的性能(精度和x003d; 75&x0025;,auc&x003d; 0.78)。该方法可靠地申请诊断EGFR突变状态。

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