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Computer-aided diagnosis of lung cancer based on analysis of the significant slice of chest computed tomography image

机译:基于胸部胸部X线断层扫描图像分析的肺癌计算机辅助诊断

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In this study, a computer-aided diagnosis system capable of selecting a significant slice for the analysis of each nodule from a set of slices of a computed tomography (CT) scan in digital imaging and communications in medicine (DICOM) format has been developed for the diagnosis of lung cancer. First, the CT image was preprocessed by segmenting the lung parenchyma from each slice using a greedy snake algorithm. The regions of interest (ROIs) were then extracted from the lung parenchyma using a regiongrowing algorithm. The extracted ROIs were labelled as cancerous or non-cancerous nodules with the aid of a human expert and then the shape and texture features were extracted from each ROI. The extracted features and the label of the corresponding ROI were used to train a radial basis function neural network (RBFNN). When a CT image is given to the system for diagnosis, it is first preprocessed to extract the ROIs from each slice. Only those ROIs that are greater than nine pixels and that exist in at least three slices are considered as nodules. For each nodule, the slice with the largest area is chosen as the significant slice and this slice is taken up by the feature extraction subsystem for further analysis of the nodule. The features are extracted and fed to the RBFNN, which classifies the nodule as cancerous or non-cancerous. From the experimental results, the system was found to achieve an accuracy of 94.44%.
机译:在这项研究中,已经开发了一种计算机辅助诊断系统,该系统能够从一组以数字成像和医学通信(DICOM)格式的计算机断层扫描(CT)扫描的切片中选择一个重要的切片,以便分析每个结节。肺癌的诊断。首先,通过使用贪婪蛇算法对每个切片的肺实质进行分割,对CT图像进行预处理。然后使用区域增长算法从肺实质提取感兴趣区域(ROI)。在人类专家的帮助下,将提取的ROI标记为癌结节或非癌结节,然后从每个ROI提取形状和纹理特征。提取的特征和相应ROI的标签用于训练径向基函数神经网络(RBFNN)。将CT图像提供给系统进行诊断时,首先对其进行预处理以从每个切片中提取ROI。只有那些大于九个像素且至少存在于三个切片中的ROI才被视为结核。对于每个结节,选择面积最大的切片作为有效切片,然后由特征提取子系统处理此切片以进一步分析结节。提取特征并将其输入到RBFNN中,RBFNN将结节分类为癌性或非癌性。从实验结果来看,该系统的准确度达到94.44%。

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