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Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning

机译:借助3D深度学习自动预测肺腺癌中EGFR突变状态

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摘要

To develop a deep learning system based on 3D convolutional neural networks (CNNs), and to automatically predict EGFR‐mutant pulmonary adenocarcinoma in CT images. A dataset of 579 nodules with EGFR mutation status labels of mutant (Mut) or wild‐type (WT) was retrospectively analyzed. A deep learning system, namely 3D DenseNets, was developed to process 3D patches of nodules from CT data, and learn strong representations with supervised end‐to‐end training. The 3D DenseNets were trained with a training subset of 348 nodules and tuned with a development subset of 116 nodules. A strong data augmentation technique, mixup, was used for better generalization. We evaluated our model on a holdout subset of 115 nodules. An independent public dataset of 37 nodules from the cancer imaging archive (TCIA) was also used to test the generalization of our method. Conventional radiomics analysis was also performed for comparison. Our method achieved promising performance on predicting EGFR mutation status, with AUCs of 75.8% and 75.0% for our holdout test set and public test set, respectively. Moreover, strong relations were found between deep learning feature and conventional radiomics, while deep learning worked through an enhanced radiomics manner, that is, deep learned radiomics (DLR), in terms of robustness, compactness and expressiveness. The proposed deep learning system predicts EGFR‐mutant of lung adenocarcinomas in CT images noninvasively and automatically, indicating its potential to help clinical decision‐making by identifying eligible patients of pulmonary adenocarcinoma for EGFR‐targeted therapy.
机译:开发基于3D卷积神经网络(CNN)的深度学习系统,并在CT图像中自动预测EGFR突变型肺腺癌。回顾性分析了具有突变(Mut)或野生型(WT)的EGFR突变状态标记的579个结节的数据集。开发了一种深度学习系统,即3D DenseNets,以从CT数据处理结节的3D斑块,并通过有监督的端到端培训来学习强大的表示形式。 3D DenseNets用348个结节的训练子集进行了训练,并用116个结节的开发子集进行了调整。强大的数据增强技术mixup用于更好的概括。我们在115个结节的保留子集中评估了我们的模型。来自癌症影像档案库(TCIA)的37个结节的独立公共数据集也用于测试我们方法的推广性。还进行了常规放射学分析以进行比较。我们的方法在预测EGFR突变状态方面取得了可喜的表现,我们的保留测试集和公开测试集的AUC分别为75.8%和75.0%。此外,在深度学习功能和常规放射线学之间发现了密切的关系,而深度学习通过增强的放射线学方式(即深度学习放射线学(DLR))在鲁棒性,紧凑性和表达性方面发挥了作用。拟议中的深度学习系统可无创且自动地在CT图像中预测肺腺癌的EGFR突变,表明其潜力可通过识别符合EGFR靶向治疗条件的合格肺腺癌患者来帮助临床决策。

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