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首页> 外文期刊>IEICE transactions on information and systems >Lesion Type Classification by Applying Machine-Learning Technique to Contrast-Enhanced Ultrasound Images
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Lesion Type Classification by Applying Machine-Learning Technique to Contrast-Enhanced Ultrasound Images

机译:通过机器学习技术对超声图像进行病变类型分类

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One of the major applications of contrast-enhanced ultrasound (CEUS) is lesion classification. After contrast agents are administered, it is possible to identify a lesion type from its enhancement pattern. However, CEUS image reading is not easy because there are various types of enhancement patterns even for the same type of lesion, and clear classification criteria have not yet been defined. Some studies have used conventional time intensity curves (TICs), which show the vessel dynamics of a lesion. It is possible to predict lesion type from the TIC parameters, such as the coefficients obtained by curve fitting, peak intensity, flow rate and time to peak. However, these parameters are not always provide sufficient accuracy. In this paper, we prepare 1D Haar-like features which describe intensity changes in a TIC and adopt the Adaboost machine learning technique, which eases understanding of which features are useful. Hyperparameters of weak classifiers, e.g., the step size of a Haar-like filter length and threshold for output of the filter, are optimized by searching for those parameters that give the best accuracy. We evaluate the proposed method using 36 focal splenic lesions in canines 16 of which were benign and 20 malignant. The accuracies were 91.7% (33/36) when inspected by an experienced veterinarian, 75.0% (27/36) by linear discriminant analysis (LDA) using conventional three TIC parameters: time to peak, area under curve and peak intensity, and 91.7% (33/36) using our proposed method. McNemar testing shows the p-value to be less than 0.05 between the proposed method and LDA. This result shows the statistical significance of differences between the proposed method and the conventional TIC analysis method using LDA.
机译:造影增强超声(CEUS)的主要应用之一是病变分类。施用造影剂后,有可能从其增强模式中识别出病变类型。但是,CEUS图像读取并不容易,因为即使对于同一类型的病变也存在多种类型的增强模式,并且尚未定义明确的分类标准。一些研究使用了常规的时间强度曲线(TICs),显示了病变的血管动态。可以根据TIC参数预测病变类型,例如通过曲线拟合获得的系数,峰强度,流速和达到峰值的时间。但是,这些参数并不总是提供足够的精度。在本文中,我们准备了描述TIC中强度变化的一维类似Haar的特征,并采用了Adaboost机器学习技术,该技术可简化对哪些特征有用的理解。弱分类器的超参数(例如,类似Haar的滤波器长度的步长和滤波器输出的阈值)通过搜索可提供最佳准确性的参数进行优化。我们在犬中有16个为良性和20个为恶性的犬中使用36个局灶性脾损伤来评估所提出的方法。由经验丰富的兽医检查时的准确性为91.7%(33/36),使用常规三个TIC参数通过线性判别分析(LDA)进行线性判别分析(LDA)时为75.0%(27/36)。 %(33/36)使用我们提出的方法。 McNemar测试表明,所提出的方法与LDA之间的p值小于0.05。该结果表明了所提出的方法与使用LDA的常规TIC分析方法之间差异的统计意义。

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