Lung Nodule Classification Using Combined Deep and Spectral 3D Shape Features

Fereshteh S. Bashiri, Jonathan C. Badger, R. D'Souza, Zeyun Yu, P. Peissig
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引用次数: 1

Abstract

Accurate diagnosis of lung nodules is essential for detection and assessment of lung cancer. The present contribution proposes a descriptive model for diagnostic classification of lung nodules by jointly using deep and spectral features from the 3D surface structure of nodules. To the best of our knowledge, this is the first work that utilizes a point cloud (PC)-based deep network for extracting nodule shape features. The PC-based deep network takes into account the 3D context of a nodule; meanwhile, it is extensively less computationally intensive. The spectral features prevent over-fitting, a common problem of deep networks trained by relatively small dataset in the medical imaging domain, and compensates for missing information of mesh connections. Experimental results reveal that our descriptive model demonstrates high sensitivity (87.23%) as well as high specificity (89.80%) with a total accuracy of 88.54% for reliable and accurate prediction of lung nodule malignancy.
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结合深度和光谱三维形状特征的肺结节分类
准确诊断肺结节对肺癌的发现和评估至关重要。本文提出了一种描述性模型,通过联合使用来自结节三维表面结构的深度和光谱特征来诊断肺结节的分类。据我们所知,这是第一个利用基于点云(PC)的深度网络提取结节形状特征的工作。基于pc的深度网络考虑了结节的三维环境;同时,它的计算强度也大大降低。光谱特征防止了过度拟合,这是医学成像领域中由相对较小的数据集训练的深度网络的常见问题,并补偿了网格连接的缺失信息。实验结果表明,我们的描述模型具有高灵敏度(87.23%)和高特异性(89.80%),总准确率为88.54%,能够可靠、准确地预测肺结节恶性肿瘤。
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