首页> 外文期刊>Physics in medicine and biology. >Computerized detection of breast lesions in multi-centre and multi-instrument DCE-MR data using 3D principal component maps and template matching.
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Computerized detection of breast lesions in multi-centre and multi-instrument DCE-MR data using 3D principal component maps and template matching.

机译:使用3D主成分映射和模板匹配的多中心和多仪器DCE-MR数据中的乳房病变的计算机化检测。

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摘要

In this study, we introduce a novel, robust and accurate computerized algorithm based on volumetric principal component maps and template matching that facilitates lesion detection on dynamic contrast-enhanced MR. The study dataset comprises 24,204 contrast-enhanced breast MR images corresponding to 4034 axial slices from 47 women in the UK multi-centre study of MRI screening for breast cancer and categorized as high risk. The scans analysed here were performed on six different models of scanner from three commercial vendors, sited in 13 clinics around the UK. 1952 slices from this dataset, containing 15 benign and 13 malignant lesions, were used for training. The remaining 2082 slices, with 14 benign and 12 malignant lesions, were used for test purposes. To prevent false positives being detected from other tissues and regions of the body, breast volumes are segmented from pre-contrast images using a fast semi-automated algorithm. Principal component analysis is applied to the centred intensity vectors formed from the dynamic contrast-enhanced T1-weighted images of the segmented breasts, followed by automatic thresholding to eliminate fatty tissues and slowly enhancing normal parenchyma and a convolution and filtering process to minimize artefacts from moderately enhanced normal parenchyma and blood vessels. Finally, suspicious lesions are identified through a volumetric sixfold neighbourhood connectivity search and calculation of two morphological features: volume and volumetric eccentricity, to exclude highly enhanced blood vessels, nipples and normal parenchyma and to localize lesions. This provides satisfactory lesion localization. For a detection sensitivity of 100%, the overall false-positive detection rate of the system is 1.02/lesion, 1.17/case and 0.08/slice, comparing favourably with previous studies. This approach may facilitate detection of lesions in multi-centre and multi-instrument dynamic contrast-enhanced breast MR data.
机译:在这项研究中,我们介绍了一种基于体积主成分映射和模板匹配的新颖,坚固且准确的计算机化算法,这有助于对动态对比度增强MR的病变检测。该研究数据集包括24,204个对比增强的乳房MR图像,其来自英国MRI筛选的MRI筛选的47名女性的4034个轴向切片,对乳腺癌进行分类,并视为高风险。这里分析的扫描在来自英国的13个诊所中的三个商业供应商中占据了六种不同的扫描仪。 1952年由该数据集的切片,包含15个良性和13个恶性病变,用于培训。剩余的2082片,具有14个良性和12个恶性病变的切片用于测试目的。为了防止从身体的其他组织和区域检测到误报,使用快速半自动算法从预造影图像中分段乳房量。主要成分分析应用于由分段乳房的动态对比增强T1加权图像形成的中心强度向量,然后自动阈值化,以消除脂肪组织,缓慢增强正常的实质和卷积和过滤过程,以使来自中等的人工制品最小化增强的正常牙科和血管。最后,通过体积的六倍邻域连接搜索和计算来识别可疑病变:体积和体积偏心,排除高度增强的血管,乳头和正常的实质和定位病变。这提供了令人满意的病变定位。对于100%的检测灵敏度,系统的总体假阳性探测速率为1.02 /损伤,1.17 /案例和0.08 /切片,有利地与先前的研究相比。该方法可以促进多中心和多仪器动态对比度增强乳房MR数据中的病变的检测。

著录项

  • 来源
    《Physics in medicine and biology.》 |2011年第24期|共17页
  • 作者

    Ertas G; Doran S; Leach MO;

  • 作者单位

    Cancer Research UK and EPSRC Cancer Imaging Centre Institute of Cancer Research and Royal Marsden;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 R35;
  • 关键词

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