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Fast fully automatic detection, classification and 3D reconstruction of pulmonary nodules in CT images by local image feature analysis

机译:本地图像特征分析快速全自动检测,分类和CT图像中肺结核的三维重建

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摘要

This study develops a computer-aided diagnosis (CAD) system for automatic detection and classification of pulmonary nodules in lung computed tomography (CT) images, which can simultaneously detect and classify ground-glass opacity (GGO), part-solid, and solid nodules. From the morphological feature and local image features of pulmonary nodules, a total of ten features were selected for artificial neural network (ANN) training and testing, to ensure the system can detect and classify pulmonary nodules. Then, the cross-sectional area of each slice of pulmonary nodule was extracted. The response evaluation criteria in solid tumor (RECIST) value was obtained using the Euclidean distance formula, and the number of pixels of the maximum cross-sectional area was counted for area computation. The nodule volume and 3D reconstruction was obtained using the marching cube algorithm and Riemann integral formula. The sensitivity of system detection and classification were 93.13% and 92.70%, respectively. The proposed system can detect GGO, part-solid, and solid nodules, and takes only 0.1 s to process a single image. This study used the clay model imitating pulmonary nodule morphology as physical samples. Each physical sample underwent three CT. The average difference between the physical volume and the volume derived from this study was 0.37%. The detection and classification results of the system enhanced the clinical detection of missing nodules. 3D reconstruction and volume information of the nodules can give their volume doubling time and growth rate when the patient undergoes CT for the second time, thus enhancing the effect of diagnosis and treatment.
机译:该研究开发了一种用于自动检测和分类肺计算断层扫描(CT)图像的计算机辅助诊断(CAD)系统,其可以同时检测和分类研磨玻璃不透明度(GGO),部分固体和固体结节。根据肺结核的形态特征和局部图像特征,选择了为人工神经网络(ANN)训练和测试的总共十个特征,以确保系统可以检测和分类肺结核。然后,提取各一层肺结核的横截面积。使用欧几里德距离公式获得固体肿瘤(再读数)值的响应评估标准,并且对区域计算计数最大横截面积的像素数。使用前进的多维数据集算法和Riemann积分公式获得结节音量和3D重建。系统检测和分类的敏感性分别为93.13%和92.70%。所提出的系统可以检测GGO,部分固体和实心结节,并且仅需要0.1秒来处理单个图像。本研究使用粘土模型模拟肺结结形态作为物理样品。每个物理样本都接受了三个CT。该研究源自该研究的体积与体积之间的平均差异为0.37%。该系统的检测和分类结果增强了缺失结节的临床检测。当患者第二次经历CT时,结节的三维重建和体积信息可以给出它们的体积倍增时间和生长速度,从而提高诊断和治疗的影响。

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