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Classification of breast mass lesions on dynamic contrast-enhanced magnetic resonance imaging by a computer-assisted diagnosis system based on quantitative analysis

机译:基于定量分析的计算机辅助诊断系统在动态对比增强磁共振成像下对乳腺肿块的分类

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摘要

The aim of the current study was to develop a semi-automatic and quantitative method for the analysis of a time-intensity curve (TIC) from breast dynamic contrast-enhanced magnetic resonance imaging. The performance of the proposed method, based on the level set segmentation algorithm, was evaluated by comparison with the traditional method. In the traditional method, the lesion area is delineated manually and the corresponding mean TIC is classified subjectively as one of three washout patterns. In addition, only one quantitative parameter, the maximum slope of increase (MSI), is calculated. In the proposed method, the lesion region was determined semi-automatically and the corresponding mean TIC was categorized quantitatively. In addition to MSI, a number of quantitative parameters were derived from the mean TIC and lesion area, including signal intensity slope (SIslope), initial percentage of enhancement (Einitial), percentage of peak enhancement (Epeak), early signal enhancement ratio (ESER) and second enhancement percentage (SEP). Wilcoxon signed-rank test and receiver operating characteristic analyses were performed for statistical analysis. For TIC categorization the accuracy was 61.54% for the traditional method and 82.05% for the proposed method. Using the proposed method, mean curve accuracies were 84.0% for SIslope, 66.7% for MSI, 66.0% for Einitial, 66.0% for Epeak, 68.0% for ESER and 44.9% for SEP. In the lesion region, the accuracies for the aforementioned parameters were 80.8, 65.4, 66.7, 62.2, 69.2 and 57.1%, respectively. Accuracy of the MSI value derived from the traditional method was 63.4%. Compared with the traditional method, the proposed semi-automatic method in the current study may provide results with a higher accuracy to differentiate benign and malignant lesions. Therefore, the proposed method should be considered as a supplementary tool for the diagnosis of breast lesions.
机译:当前研究的目的是开发一种半自动和定量的方法,用于通过乳房动态对比增强磁共振成像分析时间强度曲线(TIC)。通过与传统方法的比较,评估了基于水平集分割算法的方法的性能。在传统方法中,手动划定病变区域,主观地将相应的平均TIC分类为三种冲洗模式之一。此外,仅计算一个定量参数,即最大增加斜率(MSI)。在该方法中,半自动确定病变区域,并对相应的平均TIC进行定量分类。除了MSI之外,还从平均TIC和病变区域中得出了许多定量参数,包括信号强度斜率(SIslope),增强的初始百分比(Einitial),峰增强的百分比(Epeak),早期信号增强比(ESER) )和第二增强百分比(SEP)。进行了Wilcoxon符号秩检验和接收机工作特性分析,以进行统计分析。对于TIC分类,传统方法的准确性为61.54%,建议方法的准确性为82.05%。使用建议的方法,SIslope的平均曲线准确度为84.0%,MSI为66.7%,Einitial为66.0%,Epeak为66.0%,ESER为68.0%,SEP为44.9%。在病变区域,上述参数的准确度分别为80.8%,65.4、66.7、62.2、69.2和57.1%。传统方法得出的MSI值的准确度为63.4%。与传统方法相比,当前研究中提出的半自动方法在区分良性和恶性病变方面可能提供更高的准确性。因此,建议的方法应被视为诊断乳腺病变的辅助工具。

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