Department of Biomedical Engineering, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, No. 800 Dongchuan Road, Shanghai, China.
J Digit Imaging. 2011 Jun;24(3):382-93. doi: 10.1007/s10278-010-9276-7.
This paper presents an automatic computer-aided detection scheme on digital chest radiographs to detect pneumoconiosis. Firstly, the lung fields are segmented from a digital chest X-ray image by using the active shape model method. Then, the lung fields are subdivided into six non-overlapping regions, according to Chinese diagnosis criteria of pneumoconiosis. The multi-scale difference filter bank is applied to the chest image to enhance the details of the small opacities, and the texture features are calculated from each region of the original and the processed images, respectively. After extracting the most relevant ones from the feature sets, support vector machine classifiers are utilized to separate the samples into the normal and the abnormal sets. Finally, the final classification is performed by the chest-based report-out and the classification probability values of six regions. Experiments are conducted on randomly selected images from our chest database. Both the training and the testing sets have 300 normal and 125 pneumoconiosis cases. In the training phase, training models and weighting factors for each region are derived. We evaluate the scheme using the full feature vectors or the selected feature vectors of the testing set. The results show that the classification performances are high. Compared with the previous methods, our fully automated scheme has a higher accuracy and a more convenient interaction. The scheme is very helpful to mass screening of pneumoconiosis in clinic.
本文提出了一种用于数字胸片的计算机辅助自动检测矽肺的方案。首先,使用主动形状模型方法从数字胸片图像中分割出肺区。然后,根据我国矽肺诊断标准,将肺区细分为六个不重叠的区域。多尺度差分滤波器组应用于胸部图像,以增强小不透明度的细节,从原始图像和处理后的图像的每个区域分别计算纹理特征。从特征集中提取出最相关的特征后,利用支持向量机分类器将样本分为正常和异常两组。最后,通过基于胸部的报告和六个区域的分类概率值进行最终分类。实验是在我们的胸部数据库中随机选择的图像上进行的。训练集和测试集各有 300 个正常和 125 个矽肺病例。在训练阶段,为每个区域导出训练模型和加权因子。我们使用测试集的全特征向量或选择的特征向量来评估该方案。结果表明,分类性能较高。与以前的方法相比,我们的全自动方案具有更高的准确性和更方便的交互性。该方案对临床矽肺的大规模筛查非常有帮助。