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首页> 外文期刊>Investigative radiology >Computer-Aided Diagnosis in Multiparametric Magnetic Resonance Imaging Screening of Women With Extremely Dense Breasts to Reduce False-Positive Diagnoses
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Computer-Aided Diagnosis in Multiparametric Magnetic Resonance Imaging Screening of Women With Extremely Dense Breasts to Reduce False-Positive Diagnoses

机译:计算机辅助诊断在多气体磁共振成像筛选患有极致密乳房的女性,以减少假阳性诊断

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摘要

Objectives To reduce the number of false-positive diagnoses in the screening of women with extremely dense breasts using magnetic resonance imaging (MRI), we aimed to predict which BI-RADS 3 and BI-RADS 4 lesions are benign. For this purpose, we use computer-aided diagnosis (CAD) based on multiparametric assessment. Materials and Methods Consecutive data were used from the first screening round of the DENSE (Dense Tissue and Early Breast Neoplasm Screening) trial. In this trial, asymptomatic women with a negative screening mammography and extremely dense breasts were screened using multiparametric MRI. In total, 4783 women, aged 50 to 75 years, enrolled and were screened in 8 participating hospitals between December 2011 and January 2016. In total, 525 lesions in 454 women were given a BI-RADS 3 (n = 202), 4 (n = 304), or 5 score (n = 19). Of these lesions, 444 were benign and 81 were malignant on histologic examination. The MRI protocol consisted of 5 different MRI sequences: T1-weighted imaging without fat suppression, diffusion-weighted imaging, T1-weighted contrast-enhanced images at high spatial resolution, T1-weighted contrast-enhanced images at high temporal resolution, and T2-weighted imaging. A machine-learning method was developed to predict, without deterioration of sensitivity, which of the BI-RADS 3- and BI-RADS 4-scored lesions are actually benign and could be prevented from being recalled. BI-RADS 5 lesions were only used for training, because the gain in preventing false-positive diagnoses is expected to be low in this group. The CAD consists of 2 stages: feature extraction and lesion classification. Two groups of features were extracted: the first based on all multiparametric sequences, the second based only on sequences that are typically used in abbreviated MRI protocols. In the first group, 49 features were used as candidate predictors: 46 were automatically calculated from the MRI scans, supplemented with 3 clinical features (age, body mass index, and BI-RADS score). In the second group, 36 image features and the same 3 clinical features were used. Each group was considered separately in a machine-learning model to differentiate between benign and malignant lesions. We developed a Ridge regression model using 10-fold cross validation. Performance of the models was analyzed using an accuracy measure curve and receiver-operating characteristic analysis. Results Of the total number of BI-RADS 3 and BI-RADS 4 lesions referred to additional MRI or biopsy, 425/487 (87.3%) were false-positive. The full multiparametric model classified 176 (41.5%) and the abbreviated-protocol model classified 111 (26.2%) of the 425 false-positive BI-RADS 3- and BI-RADS 4-scored lesions as benign without missing a malignant lesion. If the full multiparametric CAD had been used to aid in referral, recall for biopsy or repeat MRI could have been reduced from 425/487 (87.3%) to 311/487 (63.9%) lesions. For the abbreviated protocol, it could have been 376/487 (77.2%). Conclusions Dedicated multiparametric CAD of breast MRI for BI-RADS 3 and 4 lesions in screening of women with extremely dense breasts has the potential to reduce false-positive diagnoses and consequently to reduce the number of biopsies without missing cancers.
机译:使用磁共振成像(MRI)筛选具有极致密乳房的妇女筛选伪阳性诊断数量的目标,我们旨在预测哪种Bi-rad 3和Bi-rads 4病变是良性的。为此目的,我们使用基于多体评估的计算机辅助诊断(CAD)。材料和方法连续数据被从致密的第一次筛选(致密组织和早期乳腺肿瘤筛选)试验中使用。在该试验中,使用多体MRI筛选具有阴性筛选乳房X线照相术和极致密乳房的无症状妇女。总共有4783名妇女,50至75岁,注册,并于2011年12月和2016年1月在8次参加医院举办。总共有525名妇女的病例,给予Bi-Rad 3(n = 202),4( n = 304),或5分(n = 19)。在这些病变中,444例是良性的,81例对组织学检查恶性肿瘤。 MRI协议由5种不同的MRI序列组成:T1加权成像,无脂肪抑制,扩散加权成像,在高空间分辨率下的T1加权对比度增强图像,在高时分辨率下的T1加权对比度增强图像和T2-加权成像。开发了一种机器学习方法来预测,而不会劣化灵敏度,这是一种Bi-rad 3-和Bi-rad 4分别的病变实际上是良性的,并且可以防止被召回。 Bi-rads 5病变仅用于训练,因为预期假阳性诊断的增益预计在该组中将是低的。 CAD由2个阶段组成:特征提取和病变分类。提取两组特征:基于所有多个多个序列,仅基于缩写的MRI协议中使用的序列。在第一组中,49个特征用作候选预测因子:46自动从MRI扫描计算,补充有3个临床特征(年龄,体重指数和Bi-RADS得分)。在第二组中,使用36个图像特征和相同的3个临床特征。每组在机器学习模型中被分别考虑,以区分良性和恶性病变。我们使用10倍交叉验证开发了山脊回归模型。使用精度测量曲线和接收器操作特性分析分析模型的性能。 Bi-rads 3和Bi-rads 4病变的总数的结果称为额外的MRI或活检,425/487(87.3%)是假阳性的。完整的Multiparametric Model分类176(41.5%)和缩写 - 协议模型分类为111(26.2%)的425个假阳性Bi-rad 3-和Bi-rads 4分类病变,作为良性而不会缺少恶性病变。如果曾经用过辅助的全部多射点CAD,则可以从425/487(87.3%)到311/487(63.9%)病变中的召回或重复MRI召回。对于缩写的议定书,它可能已经376/487(77.2%)。结论Bi-rads 3和4个病变筛查具有极致密乳房的女性的乳腺MRI的专用多丙酰·CAD具有潜力可降低假阳性诊断,从而减少未缺失癌组织的活组织检查数量。

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