首页> 外文期刊>Medical Physics >A support vector machine classifier reduces interscanner variation in the HRCT classification of regional disease pattern in diffuse lung disease: comparison to a Bayesian classifier.
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A support vector machine classifier reduces interscanner variation in the HRCT classification of regional disease pattern in diffuse lung disease: comparison to a Bayesian classifier.

机译:支持向量机分类器可减少弥散性肺部疾病区域疾病模式的HRCT分类中的扫描器间变化:与贝叶斯分类器相比。

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To investigate the effect of using different computed tomography (CT) scanners on the accuracy of high-resolution CT (HRCT) images in classifying regional disease patterns in patients with diffuse lung disease, support vector machine (SVM) and Bayesian classifiers were applied to multicenter data.Two experienced radiologists marked sets of 600 rectangular 20 × 20 pixel regions of interest (ROIs) on HRCT images obtained from two scanners (GE and Siemens), including 100 ROIs for each of local patterns of lungs-normal lung and five of regional pulmonary disease patterns (ground-glass opacity, reticular opacity, honeycombing, emphysema, and consolidation). Each ROI was assessed using 22 quantitative features belonging to one of the following descriptors: histogram, gradient, run-length, gray level co-occurrence matrix, low-attenuation area cluster, and top-hat transform. For automatic classification, a Bayesian classifier and a SVM classifier were compared under three different conditions. First, classification accuracies were estimated using data from each scanner. Next, data from the GE and Siemens scanners were used for training and testing, respectively, and vice versa. Finally, all ROI data were integrated regardless of the scanner type and were then trained and tested together. All experiments were performed based on forward feature selection and fivefold cross-validation with 20 repetitions.For each scanner, better classification accuracies were achieved with the SVM classifier than the Bayesian classifier (92% and 82%, respectively, for the GE scanner; and 92% and 86%, respectively, for the Siemens scanner). The classification accuracies were 82%/72% for training with GE data and testing with Siemens data, and 79%/72% for the reverse. The use of training and test data obtained from the HRCT images of different scanners lowered the classification accuracy compared to the use of HRCT images from the same scanner. For integrated ROI data obtained from both scanners, the classification accuracies with the SVM and Bayesian classifiers were 92% and 77%, respectively. The selected features resulting from the classification process differed by scanner, with more features included for the classification of the integrated HRCT data than for the classification of the HRCT data from each scanner. For the integrated data, consisting of HRCT images of both scanners, the classification accuracy based on the SVM was statistically similar to the accuracy of the data obtained from each scanner. However, the classification accuracy of the integrated data using the Bayesian classifier was significantly lower than the classification accuracy of the ROI data of each scanner.The use of an integrated dataset along with a SVM classifier rather than a Bayesian classifier has benefits in terms of the classification accuracy of HRCT images acquired with more than one scanner. This finding is of relevance in studies involving large number of images, as is the case in a multicenter trial with different scanners.
机译:为了研究使用不同的计算机断层扫描(CT)扫描仪对高分辨率CT(HRCT)图像对弥漫性肺疾病患者的区域疾病类型进行分类的准确性的影响,将支持向量机(SVM)和贝叶斯分类器应用于多中心数据。两名经验丰富的放射科医生在从两个扫描仪(GE和Siemens)获得的HRCT图像上标记了600个矩形20×20像素感兴趣区域(ROI)的集合,其中包括每个正常肺部局部模式和五个局部肺部模式的100个ROI肺部疾病的类型(玻璃杯混浊,网状混浊,蜂窝状,肺气肿和固结)。使用属于以下描述符之一的22个定量特征来评估每个ROI:直方图,梯度,游程长度,灰度共生矩阵,低衰减区域簇和礼帽变换。对于自动分类,在三种不同条件下比较了贝叶斯分类器和SVM分类器。首先,使用来自每个扫描仪的数据估算分类准确性。接下来,分别使用GE和Siemens扫描仪的数据进行培训和测试,反之亦然。最终,所有ROI数据都会被整合,而与扫描仪的类型无关,然后一起进行培训和测试。所有实验均基于前向特征选择和20次重复的五重交叉验证进行。对于每个扫描仪,使用SVM分类器比贝叶斯分类器获得更好的分类准确性(GE扫描仪分别为92%和82%;以及西门子扫描仪分别为92%和86%)。使用GE数据进行训练并使用Siemens数据进行测试时,分类准确性为82%/ 72%,对于相反的情况则为79%/ 72%。与使用来自同一扫描仪的HRCT图像相比,使用从不同扫描仪的HRCT图像获得的训练和测试数据降低了分类准确性。对于从两个扫描仪获得的集成ROI数据,使用SVM和贝叶斯分类器进行分类的准确度分别为92%和77%。归类过程产生的所选特征因扫描仪的不同而有所不同,与对每个扫描仪的HRCT数据进行归类相比,对集成HRCT数据进行归类所包含的特征更多。对于由两个扫描仪的HRCT图像组成的集成数据,基于SVM的分类准确性在统计上类似于从每个扫描仪获得的数据的准确性。但是,使用贝叶斯分类器对集成数据进行分类的准确性明显低于每个扫描仪的ROI数据的分类准确性。与SVM分类器而非贝叶斯分类器一起使用集成数据集在以下方面具有优势:使用多台扫描仪采集的HRCT图像的分类精度。这一发现与涉及大量图像的研究具有相关性,就像在使用不同扫描仪的多中心试验中一样。

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