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Predicting the Stage of Non-small Cell Lung Cancer with Divergence Neural Network Using Pre-treatment Computed Tomography

机译:使用预处理计算机断层扫描预测发散神经网络的非小细胞肺癌阶段

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Determining the stage of non-small cell lung cancer (NSCLC) is important for treatment and prognosis. Staging includes a professional interpretation of imaging, thus we aimed to build an automatic process with deep learning (DL). We proposed an end-to-end DL method that uses pre-treatment computer tomography images to classify the early- and advanced-stage of NSCLC. DL models were developed and tested to classify the early- and advanced-stage using training (n = 58), validation (n = 7), and testing (n = 17) cohorts obtained from public domains. The network consists of three parts of encoder, decoder, and classification layer. Encoder and decoder layers are trained to reconstruct original images. Classification layers are trained to classify early- and advanced-stage NSCLC patients with a dense layer. Other machine learning-based approaches were compared. Our model achieved accuracy of 0.8824, sensitivity of 1.0, specificity of 0.6, and area under the curve (AUC) of 0.7333 compared with other approaches (AUC 0.5500 - 0.7167) in the test cohort for classifying between early- and advanced-stages. Our DL model to classify NSCLC patients into early-stage and advanced-stage showed promising results and could be useful in future NSCLC research.
机译:确定非小细胞肺癌(NSCLC)的阶段对于治疗和预后是重要的。分期包括对成像的专业解释,从而旨在建立一个深入学习的自动过程(DL)。我们提出了一种端到端的DL方法,使用预处理计算机断层扫描图像来分类NSCLC的早期和高级阶段。开发并测试了DL模型,以使用训练(n = 58),验证(n = 7)和从公共域获得的群组进行分类,以对早期和高级阶段进行分类。该网络由编码器,解码器和分类层的三个部分组成。编码器和解码器层训练以重建原始图像。培训分类层以分类致密层的早期和高级NSCLC患者。比较了其他基于机器学习的方法。我们的型号可实现0.8824的精度,1.0的灵敏度为1.0,0.6的特异性0.733的曲线(AUC),与其他方法(AUC 0.500- 0.7167)相比,在测试队列中进行分类,用于在早期和高级阶段之间进行分类。我们的DL模型将NSCLC患者分类为早期和高级阶段显示有希望的结果,可用于未来的NSCLC研究。

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