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首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Algorithm-based method for detection of blood vessels in breast MRI for development of computer-aided diagnosis.
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Algorithm-based method for detection of blood vessels in breast MRI for development of computer-aided diagnosis.

机译:基于算法的乳腺MRI血管检测方法,以开发计算机辅助诊断。

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摘要

PURPOSE: To develop a computer-based algorithm for detecting blood vessels that appear in breast dynamic contrast-enhanced (DCE) magnetic resonance imaging (MRI), and to evaluate the improvement in reducing the number of vascular pixels that are labeled by computer-aided diagnosis (CAD) systems as being suspicious of malignancy. MATERIALS AND METHODS: The analysis was performed in 34 cases. The algorithm applied a filter bank based on wavelet transform and the Hessian matrix to detect linear structures as blood vessels on a two-dimensional maximum intensity projection (MIP). The vessels running perpendicular to the MIP plane were then detected based on the connectivity of enhanced pixels above a threshold. The nonvessel enhancements were determined and excluded based on their morphological properties, including those showing scattered small segment enhancements or nodular or planar clusters. The detected vessels were first converted to a vasculature skeleton by thinning and subsequently compared to the vascular track manually drawn by a radiologist. RESULTS: When evaluating the performance of the algorithm in identifying vascular tissue, the correct-detection rate refers to pixels identified by both the algorithm and radiologist, while the incorrect-detection rate refers to pixels identified by only the algorithm, and the missed-detection rate refers to pixels identified only by the radiologist. From 34 analyzed cases the median correct-detection rate was 85.6% (mean 84.9% +/- 7.8%), the incorrect-detection rate was 13.1% (mean 15.1% +/- 7.8%), and the missed-detection rate was 19.2% (mean 21.3% +/- 12.8%). When detected vessels were excluded in the hot-spot color-coding of the CAD system, they could reduce the labeling of vascular vessels in 2.6%-68.6% of hot-spot pixels (mean 16.6% +/- 15.9%). CONCLUSION: The computer algorithm-based method can detect most large vessels and provide an effective means in reducing the labeling of vascular pixels as suspicious on a DCE-MRI CAD system. This algorithm may improve the workflow of radiologists using CAD for image display, but will be particularly useful for development of automated CAD that gives diagnostic impression.
机译:目的:开发一种基于计算机的算法,以检测出现在乳腺动态对比增强(DCE)磁共振成像(MRI)中的血管,并评估减少由计算机辅助标记的血管像素数量方面的改进诊断(CAD)系统怀疑为恶性肿瘤。材料与方法:分析34例。该算法应用了基于小波变换和Hessian矩阵的滤波器组,以在二维最大强度投影(MIP)上检测作为血管的线性结构。然后基于阈值以上的增强像素的连通性来检测垂直于MIP平面延伸的血管。根据其形态学特性确定并排除了无血管增强,包括那些表现出分散的小节段增强或结节状或平面团簇的形态。首先通过细化将检测到的血管转化为脉管骨架,然后将其与放射科医生手动绘制的血管轨迹进行比较。结果:在评估算法在识别血管组织中的性能时,正确检测率是指由算法和放射科医生识别出的像素,而错误检测率是指仅通过算法识别出的像素,而漏检比率是指仅由放射科医生识别的像素。在34个分析的案例中,正确检出率中位数为85.6%(平均84.9%+/- 7.8%),错误检出率为13.1%(平均15.1%+/- 7.8%),漏检率是19.2%(平均21.3%+/- 12.8%)。如果将检测到的血管排除在CAD系统的热点颜色编码之外,则它们可以减少2.6%-68.6%的热点像素(平均16.6%+/- 15.9%)中的血管标记。结论:基于计算机算法的方法可以检测大多数大血管,并为减少在DCE-MRI CAD系统上可疑的血管像素标记提供了有效的手段。该算法可以改善使用CAD进行图像显示的放射科医生的工作流程,但对于开发具有诊断印象的自动CAD尤其有用。

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