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Classification of Benign and Metastatic Lymph Nodes in Lung Cancer with Deep Learning

机译:深度学习肺癌良性和转移性淋巴结分类

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This paper presents the development of a non-invasive image-analysis method for improving the diagnostic accuracy of mediastinal lymph node metastasis in patients with lung cancer. The approach adopts pretrained deep learning models incorporated with the geostatistical simulation of texture of benign and metastatic lung lymph nodes in computed tomography (CT) images for classification. Using 271 CT samples of mediastinal lymph nodes collected from 148 patients with lung cancer, deep-learning models coupled with the stochastic simulated data augmentation provide the best classification results. The simulation of texture in these medical images was able to discover rich radiomic features to ascertain subtle difference between benign and metastatic lymph nodes and enhance the performance of the deep-learning models for complex pattern classification. The proposed approach is very promising to be utilized as a computerized tool for medical image analysis.
机译:本文介绍了一种在肺癌患者中提高纵隔淋巴结转移诊断准确性的非侵入性图像分析方法的发展。该方法采用普瑞赖林深度学习模型,该模型纳入了计算断层扫描(CT)图像中良性和转移性肺淋巴结纹理的地质统计模拟,以进行分类。使用从148例肺癌患者收集的纵隔淋巴结样品,与随机模拟数据增强的深度学习模型提供了最佳分类结果。这些医学图像中的纹理模拟能够发现丰富的射线特征,以确定良性和转移性淋巴结之间的微妙差异,并增强复杂模式分类的深度学习模型的性能。所提出的方法非常有前途使用作为用于医学图像分析的计算机化工具。

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