首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Lung Nodule Classification on CT Images Using Deep Convolutional Neural Network Based on Geometric Feature Extraction
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Lung Nodule Classification on CT Images Using Deep Convolutional Neural Network Based on Geometric Feature Extraction

机译:基于几何特征提取的深卷积神经网络对CT图像的肺结节分类

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Lung cancer detection in the earlier stage is essential to improve the survival rate of the cancer patient. Computed Tomography [CT] is a first and preferred modality of imaging for detecting cancer with an enhanced rate of diagnosis accuracy owing to its function as a single scan process. Visual inspections of the CT images are prone to error, as it is more complex to distinguish lung nodules from the background tissues which are subjective to intra and interobserver variability. Hence, computer-aided diagnosis is essential to support radiologists for accurate lung nodule prediction. To overcome this issue, we propose a deep learning approach for automatic lung cancer detection from a low dose CT images. We also propose image pre-processing using Efficient Adaptive Histogram Equalization based Region of Interest [EAHE-ROl] to enhance the CT scan and to eliminate artefacts which occur due to noise and variations of the image. The ROI is extracted from CT scans using morphological operators, thus reducing the number of false positives. We chose geometric features as they extract more geometric elements like curves, lines and points of cancer nodules. Our Non-Gaussian Convolutional Neural Networks [NG-CNN] architecture contains feature extractor and classifier, which has been applied on training, validation and test dataset. Our proposed methodology offers better-classified outcome and effectual cancer detection by outperforming the other competing methods and gives a test accuracy of 94.97% and AUC 0.896.
机译:肺癌检测在早期的阶段对于提高癌症患者的存活率至关重要。计算机断层扫描[CT]是用于检测癌症的癌症的第一和优选的模型,由于其作为单个扫描过程的功能而具有增强的诊断精度。 CT图像的目视检查易于误差,因为将肺结核与主体帧内和interobserver变异性的背景组织中的肺结节更复杂。因此,计算机辅助诊断对于支持放射科医师进行准确的肺结节预测是必不可少的。为了克服这个问题,我们提出了一种深度学习方法,用于从低剂量CT图像中自动肺癌检测。我们还使用基于有效的自适应直方图均衡的感兴趣区域[eahe-rol]提出图像预处理,以增强CT扫描,并消除由于噪声和图像的变化而发生的人工制品。使用形态算子从CT扫描中提取ROI,从而减少了误报的数量。我们选择了几何特征,因为它们提取更多的几何元素,如曲线,线条和癌症点数。我们的非高斯卷积神经网络[NG-CNN]体系结构包含了特征提取器和分类器,它已应用于培训,验证和测试数据集。我们所提出的方法通过表现其他竞争方法,提供了更好的竞争方法,并提供了94.97%和AUC 0.896的测试精度,提供了更好的分类结果和有效的癌症检测。

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