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首页> 外文期刊>Medical Physics >A pattern classification approach to characterizing solitary pulmonary nodules imaged on high resolution CT: preliminary results.
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A pattern classification approach to characterizing solitary pulmonary nodules imaged on high resolution CT: preliminary results.

机译:一种模式分类方法,用于表征高分辨率CT成像的孤立性肺结节:初步结果。

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The purpose of this research is to characterize solitary pulmonary nodules as benign or malignant based on quantitative measures extracted from high resolution CT (HRCT) images. High resolution CT images of 31 patients with solitary pulmonary nodules and definitive diagnoses were obtained. The diagnoses of these 31 cases (14 benign and 17 malignant) were determined from either radiologic follow-up or pathological specimens. Software tools were developed to perform the classification task. On the HRCT images, solitary nodules were identified using semiautomated contouring techniques. From the resulting contours, several quantitative measures were extracted related to each nodule's size, shape, attenuation, distribution of attenuation, and texture. A stepwise discriminant analysis was performed to determine which combination of measures were best able to discriminate between the benign and malignant nodules. A linear discriminant analysis was then performed using selected features to evaluate the ability of these features to predict the classification for each nodule. A jackknifed procedure was performed to provide a less biased estimate of the linear discriminator's performance. The preliminary discriminant analysis identified two different texture measures--correlation and difference entropy--as the top features in discriminating between benign and malignant nodules. The linear discriminant analysis using these features correctly classified 28/31 cases (90.3%) of the training set. A less biased estimate, using jackknifed training and testing, yielded the same results (90.3% correct). The preliminary results of this approach are very promising in characterizing solitary nodules using quantitative measures extracted from HRCT images. Future work involves including contrast enhancement and three-dimensional measures extracted from volumetric CT scans, as well as the use of several pattern classifiers.
机译:这项研究的目的是基于从高分辨率CT(HRCT)图像中提取的量化指标,将孤立性肺结节表征为良性或恶性。获得了31例孤立性肺结节和明确诊断的高分辨率CT图像。这31例病例(14例良性和17例恶性)的诊断是根据放射学随访或病理标本确定的。开发了用于执行分类任务的软件工具。在HRCT图像上,使用半自动轮廓技术识别了单个结节。从得到的轮廓中,提取出与每个结节的大小,形状,衰减,衰减分布和质地有关的几种定量测量。进行了逐步判别分析,以确定哪种措施最能区分良性和恶性结节。然后使用选定的特征进行线性判别分析,以评估这些特征预测每个结节分类的能力。进行了套头程序,以提供对线性鉴别器性能的较小偏差的估计。初步的判别分析确定了两种不同的纹理度量-相关性和差异熵-作为区分良性和恶性结节的主要特征。使用这些特征的线性判别分析正确地将训练组的28/31例(90.3%)分类。使用专门训练和测试的偏倚估计值较小,得出的结果相同(正确率为90.3%)。这种方法的初步结果在使用从HRCT图像中提取的定量指标表征孤立性结节方面非常有希望。未来的工作涉及从体积CT扫描中提取对比度增强和三维测量,以及使用几种模式分类器。

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