Mammography

乳房 X 线照相术
  • 文章类型: Journal Article
    探讨灰阶超声(GSUS)和乳腺X线照相术(MG)在区分乳腺腺病和浸润性导管癌(IDC)中的实用性。
    回顾性收集了2018年1月至2022年12月147例经病理证实的乳腺病变(乳腺腺病:61例;IDC:86例)的女性患者的数据。纳入2018年1月至2021年12月诊断的113例患者(乳腺腺病:50例;IDC:63例)的训练队列和2022年1月至2022年12月诊断的34例患者(乳腺腺病:11例;IDC:23例)的时间独立测试队列。从MG和GSUS图像中提取病变的影像学特征。应用最小绝对收缩和选择算子(LASSO)回归来选择最有判别力的特征,然后进行逻辑回归(LR)来构建临床和影像组学模型,以及合并影像组学和临床特征的组合模型。使用接收器工作特性(ROC)分析评估模型性能。
    在培训队列中,基于MG特征的影像组学模型的曲线下面积(AUC),GSUS功能,其组合分别为0.974、0.936和0.991。在测试队列中,AUC分别为0.885,0.876和0.949.组合模型,结合临床和所有影像学特征,并且发现MG加GSUS放射组学模型在训练队列和测试队列中均表现出比临床模型显著更高的AUC(p<0.05)。在训练队列和测试队列中,组合模型和MG加GSUS放射组学模型之间没有观察到显著差异(p>0.05)。
    证明了GSUS和MG的影像学特征在区分乳腺腺病和IDC方面的有效性。组合模型显示出较好的判别效力,整合这两种模式。
    UNASSIGNED: To explore the utility of gray-scale ultrasound (GSUS) and mammography (MG) for radiomic analysis in distinguishing between breast adenosis and invasive ductal carcinoma (IDC).
    UNASSIGNED: Data from 147 female patients with pathologically confirmed breast lesions (breast adenosis: 61 patients; IDC: 86 patients) between January 2018 and December 2022 were retrospectively collected. A training cohort of 113 patients (breast adenosis: 50 patients; IDC: 63 patients) diagnosed from January 2018 to December 2021 and a time-independent test cohort of 34 patients (breast adenosis: 11 patients; IDC: 23 patients) diagnosed from January 2022 to December 2022 were included. Radiomic features of lesions were extracted from MG and GSUS images. The least absolute shrinkage and selection operator (LASSO) regression was applied to select the most discriminant features, followed by logistic regression (LR) to construct clinical and radiomic models, as well as a combined model merging radiomic and clinical features. Model performance was assessed using receiver operating characteristic (ROC) analysis.
    UNASSIGNED: In the training cohort, the area under the curve (AUC) for radiomic models based on MG features, GSUS features, and their combination were 0.974, 0.936, and 0.991, respectively. In the test cohort, the AUCs were 0.885, 0.876, and 0.949, respectively. The combined model, incorporating clinical and all radiomic features, and the MG plus GSUS radiomics model were found to exhibit significantly higher AUCs than the clinical model in both the training cohort and test cohort (p<0.05). No significant differences were observed between the combined model and the MG plus GSUS radiomics model in the training cohort and test cohort (p>0.05).
    UNASSIGNED: The effectiveness of radiomic features derived from GSUS and MG in distinguishing between breast adenosis and IDC is demonstrated. Superior discriminatory efficacy is shown by the combined model, integrating both modalities.
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  • 文章类型: Journal Article
    本研究旨在开发一种使用多模态成像的深度学习影像组学模型,以区分良性和恶性乳腺肿瘤。
    多模态成像数据,包括超声检查(美国),乳房X线照相术(MG),磁共振成像(MRI),在2018年12月至2023年5月期间,回顾性收集了322例经组织病理学证实的乳腺肿瘤患者(112例乳腺良性肿瘤和210例乳腺恶性肿瘤).基于多模态成像,实验分为三个部分:传统的影像组学,深度学习影像组学,和特征融合。我们测试了七个分类器的性能,即,SVM,KNN,随机森林,额外的树木,XGBoost,LightGBM,和LR,在不同的特征模型上。通过使用集成和堆叠策略的特征融合,我们获得了良性和恶性乳腺肿瘤的最佳分类模型。
    就传统的影像组学而言,集成融合策略达到了最高的精度,AUC,和特异性,值为0.892、0.942[0.886-0.996],和0.956[0.873-1.000],分别。与美国的早期融合战略,MG,MRI达到最高灵敏度0.952[0.887-1.000]。就深度学习影像组学而言,堆叠融合策略达到了最高的精度,AUC,和灵敏度,值为0.937、0.947[0.887-1.000],和1.000[0.999-1.000],分别。US+MRI和US+MG的早期融合策略达到0.954[0.867-1.000]的最高特异性。在特征融合方面,后期融合策略的集合和堆叠方法达到了0.968的最高精度。此外,堆叠实现了最高的AUC和特异性,分别为0.997[0.990-1.000]和1.000[0.999-1.000],分别。在早期融合策略下,USMGMR的传统影像和深度特征达到了1.000[0.999-1.000]的最高灵敏度。
    这项研究证明了将深度学习和影像组学特征与多模态图像集成的潜力。作为一种单一的模态,基于影像组学特征的MRI比US或MG具有更高的准确性。与单模或放射学模型相比,US和MG模型通过迁移学习实现了更高的准确性。在早期融合策略下,US+MG+MR的传统影像和深度特征达到了最高的灵敏度,显示出更高的诊断性能,并为乳腺良恶性肿瘤的鉴别提供了更有价值的信息。
    UNASSIGNED: This study aimed to develop a deep learning radiomic model using multimodal imaging to differentiate benign and malignant breast tumours.
    UNASSIGNED: Multimodality imaging data, including ultrasonography (US), mammography (MG), and magnetic resonance imaging (MRI), from 322 patients (112 with benign breast tumours and 210 with malignant breast tumours) with histopathologically confirmed breast tumours were retrospectively collected between December 2018 and May 2023. Based on multimodal imaging, the experiment was divided into three parts: traditional radiomics, deep learning radiomics, and feature fusion. We tested the performance of seven classifiers, namely, SVM, KNN, random forest, extra trees, XGBoost, LightGBM, and LR, on different feature models. Through feature fusion using ensemble and stacking strategies, we obtained the optimal classification model for benign and malignant breast tumours.
    UNASSIGNED: In terms of traditional radiomics, the ensemble fusion strategy achieved the highest accuracy, AUC, and specificity, with values of 0.892, 0.942 [0.886-0.996], and 0.956 [0.873-1.000], respectively. The early fusion strategy with US, MG, and MRI achieved the highest sensitivity of 0.952 [0.887-1.000]. In terms of deep learning radiomics, the stacking fusion strategy achieved the highest accuracy, AUC, and sensitivity, with values of 0.937, 0.947 [0.887-1.000], and 1.000 [0.999-1.000], respectively. The early fusion strategies of US+MRI and US+MG achieved the highest specificity of 0.954 [0.867-1.000]. In terms of feature fusion, the ensemble and stacking approaches of the late fusion strategy achieved the highest accuracy of 0.968. In addition, stacking achieved the highest AUC and specificity, which were 0.997 [0.990-1.000] and 1.000 [0.999-1.000], respectively. The traditional radiomic and depth features of US+MG + MR achieved the highest sensitivity of 1.000 [0.999-1.000] under the early fusion strategy.
    UNASSIGNED: This study demonstrated the potential of integrating deep learning and radiomic features with multimodal images. As a single modality, MRI based on radiomic features achieved greater accuracy than US or MG. The US and MG models achieved higher accuracy with transfer learning than the single-mode or radiomic models. The traditional radiomic and depth features of US+MG + MR achieved the highest sensitivity under the early fusion strategy, showed higher diagnostic performance, and provided more valuable information for differentiation between benign and malignant breast tumours.
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  • 文章类型: Journal Article
    乳腺癌(BC)显着导致女性癌症相关死亡率,强调早期检测对最佳患者预后的重要性。乳房X线照相术是识别和诊断乳房异常的关键工具;然而,准确区分恶性肿块病变仍然具有挑战性。为了解决这个问题,我们提出了一种新的深度学习方法,利用乳房X线摄影图像进行BC筛查。我们提出的模型包括三个不同的阶段:从既定的基准来源收集数据,采用基于Atrous卷积的细心和自适应跨Res-UNet(ACA-ATRUNet)体系结构的图像分割,通过基于Atrous卷积的注意和自适应多尺度DenseNet(ACA-AMDN)模型进行BC识别。ACA-ATRUNet和ACA-AMDN模型中的超参数使用基于改进的贻贝长度的欧亚牡蛎捕集器优化(MML-EOO)算法进行了优化。使用各种指标来评估性能,并与传统方法进行了比较分析。我们的实验结果表明,提出的BC检测框架在早期疾病检测中获得了较高的准确率,展示了其增强基于乳房X线照相术的筛查方法的潜力。
    Breast cancer (BC) significantly contributes to cancer-related mortality in women, underscoring the criticality of early detection for optimal patient outcomes. Mammography is a key tool for identifying and diagnosing breast abnormalities; however, accurately distinguishing malignant mass lesions remains challenging. To address this issue, we propose a novel deep learning approach for BC screening utilizing mammography images. Our proposed model comprises three distinct stages: data collection from established benchmark sources, image segmentation employing an Atrous Convolution-based Attentive and Adaptive Trans-Res-UNet (ACA-ATRUNet) architecture, and BC identification via an Atrous Convolution-based Attentive and Adaptive Multi-scale DenseNet (ACA-AMDN) model. The hyperparameters within the ACA-ATRUNet and ACA-AMDN models are optimized using the Modified Mussel Length-based Eurasian Oystercatcher Optimization (MML-EOO) algorithm. The performance is evaluated using a variety of metrics, and a comparative analysis against conventional methods is presented. Our experimental results reveal that the proposed BC detection framework attains superior precision rates in early disease detection, demonstrating its potential to enhance mammography-based screening methodologies.
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  • 文章类型: Journal Article
    探讨断层融合点压缩(TSC)与常规点压缩(CSC)相比,对全场数字乳腺X线摄影(FFDM)的模糊发现的诊断功效。在这项回顾性研究中,使用CSC和TSC对具有模糊的FFDM发现的122例患者(包括108例致密乳房患者)进行了成像。两名放射科医生使用乳腺成像报告和数据系统独立审查了图像并评估了病变。病理学或至少1年的随访成像被用作参考标准。比较CSC和TSC的诊断效能,包括曲线下面积(AUC),准确度,灵敏度,特异性,阳性预测值(PPV),和阴性预测值(NPV)。记录并比较TSC和CSC的平均腺体剂量。在122名患者中,良性病变63例,恶性病变59例。对于读者1,TSC的以下诊断效能显着高于CSC:AUC(0.988vs.0.906,P=0.001),准确度(93.4%与77.8%,P=0.001),特异性(87.3%vs.63.5%,P=0.002),PPV(88.1%与70.5%,P=0.010),和净现值(100%与90.9%,P=0.029)。对于读者2,TSC显示更高的AUC(0.949vs.0.909,P=0.011)和准确性(83.6%与71.3%,P=0.022)比CSC。TSC的平均腺体剂量高于CSC(1.85±0.53vs.1.47±0.58mGy,P<0.001),但仍在安全范围内。TSC提供了更好的诊断功效,其辐射剂量比CSC稍高但可容忍。因此,TSC可能是FFDM发现模糊的患者的候选模式。
    To explore the diagnostic efficacy of tomosynthesis spot compression (TSC) compared with conventional spot compression (CSC) for ambiguous findings on full-field digital mammography (FFDM). In this retrospective study, 122 patients (including 108 patients with dense breasts) with ambiguous FFDM findings were imaged with both CSC and TSC. Two radiologists independently reviewed the images and evaluated lesions using the Breast Imaging Reporting and Data System. Pathology or at least a 1-year follow-up imaging was used as the reference standard. Diagnostic efficacies of CSC and TSC were compared, including area under the curve (AUC), accuracy, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV). The mean glandular dose was recorded and compared for TSC and CSC. Of the 122 patients, 63 had benign lesions and 59 had malignant lesions. For Reader 1, the following diagnostic efficacies of TSC were significantly higher than those of CSC: AUC (0.988 vs. 0.906, P = 0.001), accuracy (93.4% vs. 77.8%, P = 0.001), specificity (87.3% vs. 63.5%, P = 0.002), PPV (88.1% vs. 70.5%, P = 0.010), and NPV (100% vs. 90.9%, P = 0.029). For Reader 2, TSC showed higher AUC (0.949 vs. 0.909, P = 0.011) and accuracy (83.6% vs. 71.3%, P = 0.022) than CSC. The mean glandular dose of TSC was higher than that of CSC (1.85 ± 0.53 vs. 1.47 ± 0.58 mGy, P < 0.001) but remained within the safety limit. TSC provides better diagnostic efficacy with a slightly higher but tolerable radiation dose than CSC. Therefore, TSC may be a candidate modality for patients with ambiguous findings on FFDM.
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  • 文章类型: Journal Article
    背景:较高的乳房X线摄影密度(MD),乳腺中纤维腺体组织比例的放射学测量,和下部末端导管小叶单位(TDLU)内卷,乳腺上皮组织数量的组织学测量,是独立的乳腺癌危险因素。先前在白人女性中进行的研究表明,TDLU消退减少与MD升高相关。
    方法:在来自中国的611名浸润性乳腺癌患者(年龄23-91岁[58.4%≥50岁])的队列中,与西方国家相比,乳腺癌发病率较低,乳房致密的患病率较高,我们研究了在肿瘤附近的正常乳腺组织中评估的TDLU退化与从VolparaDensity软件获得的对侧乳腺中评估的定量MD之间的相关性.使用以MD度量作为结果变量的广义线性模型估计关联(对数变换),TDLU测量为解释变量(分为四分位数或三分位数),并根据年龄进行了调整,身体质量指数,奇偶校验,初潮年龄和乳腺癌亚型。
    结果:我们发现,在所有女性中,密度百分比(PDV)与TDLU计数呈正相关(最高三分位数与零:Expeta=1.28,95%置信区间[CI]1.08-1.51,ptrend=<.0001),TDLU跨度(最高与最低三元:Expeta=1.23,95%CI1.11-1.37,ptrend=<.0001)和腺泡计数/TDLU(最高与最低三元:Expeta=1.22,95%CI1.09-1.37,ptrend=0.0005),而非致密体积(NDV)与这些指标呈负相关。在调整总乳房体积后,绝对致密体积(ADV)观察到类似的趋势,尽管ADV的关联总体上弱于PDV。MD-TDLU相关性在≥50岁的乳腺癌患者和管腔A肿瘤患者中通常比<50岁的患者和管腔B肿瘤患者更为明显。
    结论:我们在中国乳腺癌患者中基于定量MD和TDLU退化测量的发现与在西方人群中报道的结果基本一致,并可能为关系的复杂性提供更多见解。因年龄而异,可能还有乳腺癌亚型.
    BACKGROUND: Higher mammographic density (MD), a radiological measure of the proportion of fibroglandular tissue in the breast, and lower terminal duct lobular unit (TDLU) involution, a histological measure of the amount of epithelial tissue in the breast, are independent breast cancer risk factors. Previous studies among predominantly white women have associated reduced TDLU involution with higher MD.
    METHODS: In this cohort of 611 invasive breast cancer patients (ages 23-91 years [58.4% ≥ 50 years]) from China, where breast cancer incidence rates are lower and the prevalence of dense breasts is higher compared with Western countries, we examined the associations between TDLU involution assessed in tumor-adjacent normal breast tissue and quantitative MD assessed in the contralateral breast obtained from the VolparaDensity software. Associations were estimated using generalized linear models with MD measures as the outcome variables (log-transformed), TDLU measures as explanatory variables (categorized into quartiles or tertiles), and adjusted for age, body mass index, parity, age at menarche and breast cancer subtype.
    RESULTS: We found that, among all women, percent dense volume (PDV) was positively associated with TDLU count (highest tertile vs. zero: Expbeta = 1.28, 95% confidence interval [CI] 1.08-1.51, ptrend =  < .0001), TDLU span (highest vs. lowest tertile: Expbeta = 1.23, 95% CI 1.11-1.37, ptrend =  < .0001) and acini count/TDLU (highest vs. lowest tertile: Expbeta = 1.22, 95% CI 1.09-1.37, ptrend = 0.0005), while non-dense volume (NDV) was inversely associated with these measures. Similar trend was observed for absolute dense volume (ADV) after the adjustment of total breast volume, although the associations for ADV were in general weaker than those for PDV. The MD-TDLU associations were generally more pronounced among breast cancer patients ≥ 50 years and those with luminal A tumors compared with patients < 50 years and with luminal B tumors.
    CONCLUSIONS: Our findings based on quantitative MD and TDLU involution measures among Chinese breast cancer patients are largely consistent with those reported in Western populations and may provide additional insights into the complexity of the relationship, which varies by age, and possibly breast cancer subtype.
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  • 文章类型: Journal Article
    背景:雌激素受体(ER)是评估内分泌治疗疗效和乳腺癌预后的关键指标。侵入性活检是评估ER表达水平的常规方法,但由于肿瘤异质性,它具有缺点。为了解决这个问题,本研究开发了一种利用乳腺X线摄影图像的深度学习模型,用于准确评估乳腺癌患者的ER状态.
    目的:利用新开发的深度学习模型利用乳房X线摄影图像预测乳腺癌患者的ER状态。
    方法:包含术前乳房X线照相术图像的数据集,ER表达水平,回顾性收集了358例诊断为浸润性导管癌的患者2016年10月至2021年10月的临床数据.收集之后,这些数据集分为训练数据集(n=257)和测试数据集(n=101).随后,深度学习预测模型,称为IP-SE-DResNet模型,是利用两个深度残差网络以及挤压和激励注意机制开发的。该模型旨在利用颅尾视图和中侧斜视图的乳房X线摄影图像来预测乳腺癌患者的ER状态。性能测量,包括预测准确性,灵敏度,特异性,和受试者工作特征曲线下面积(AUC)用于评估模型的有效性。
    结果:在训练数据集中,IP-SE-DResNet模型的AUC利用来自头尾视图的乳房X线照相术图像,中外侧斜视图,和来自两个视图的组合图像,为0.849(95%CI:0.809-0.868),0.858(95%CI:0.813-0.872),和0.895(95%CIs:0.866-0.913),分别。相应地,测试数据集中这三个图像类别的AUC为0.835(95%CIs:0.790-0.887),0.746(95%CIs:0.793-0.889),和0.886(95%CIs:0.809-0.934),分别。性能测量之间的综合比较强调了与采用朴素贝叶斯分类器的传统影像组学模型相比,所提出的IP-SE-DResNet模型实现了实质性增强。对于后者,训练数据集中的AUC仅为0.614(95%CIs:0.594-0.638),测试数据集中为0.613(95%CIs:0.587-0.654),两者都利用了来自头尾和中外侧倾斜视图的乳房X线照相术图像的组合。
    结论:提出的IP-SE-DResNet模型为预测乳腺癌患者的ER状态提供了一种有效且非侵入性的方法,有可能提高放射科医生的效率和诊断精度。
    BACKGROUND: The estrogen receptor (ER) serves as a pivotal indicator for assessing endocrine therapy efficacy and breast cancer prognosis. Invasive biopsy is a conventional approach for appraising ER expression levels, but it bears disadvantages due to tumor heterogeneity. To address the issue, a deep learning model leveraging mammography images was developed in this study for accurate evaluation of ER status in patients with breast cancer.
    OBJECTIVE: To predict the ER status in breast cancer patients with a newly developed deep learning model leveraging mammography images.
    METHODS: Datasets comprising preoperative mammography images, ER expression levels, and clinical data spanning from October 2016 to October 2021 were retrospectively collected from 358 patients diagnosed with invasive ductal carcinoma. Following collection, these datasets were divided into a training dataset (n = 257) and a testing dataset (n = 101). Subsequently, a deep learning prediction model, referred to as IP-SE-DResNet model, was developed utilizing two deep residual networks along with the Squeeze-and-Excitation attention mechanism. This model was tailored to forecast the ER status in breast cancer patients utilizing mammography images from both craniocaudal view and mediolateral oblique view. Performance measurements including prediction accuracy, sensitivity, specificity, and the area under the receiver operating characteristic curves (AUCs) were employed to assess the effectiveness of the model.
    RESULTS: In the training dataset, the AUCs for the IP-SE-DResNet model utilizing mammography images from the craniocaudal view, mediolateral oblique view, and the combined images from both views, were 0.849 (95% CIs: 0.809-0.868), 0.858 (95% CIs: 0.813-0.872), and 0.895 (95% CIs: 0.866-0.913), respectively. Correspondingly, the AUCs for these three image categories in the testing dataset were 0.835 (95% CIs: 0.790-0.887), 0.746 (95% CIs: 0.793-0.889), and 0.886 (95% CIs: 0.809-0.934), respectively. A comprehensive comparison between performance measurements underscored a substantial enhancement achieved by the proposed IP-SE-DResNet model in contrast to a traditional radiomics model employing the naive Bayesian classifier. For the latter, the AUCs stood at only 0.614 (95% CIs: 0.594-0.638) in the training dataset and 0.613 (95% CIs: 0.587-0.654) in the testing dataset, both utilizing a combination of mammography images from the craniocaudal and mediolateral oblique views.
    CONCLUSIONS: The proposed IP-SE-DResNet model presents a potent and non-invasive approach for predicting ER status in breast cancer patients, potentially enhancing the efficiency and diagnostic precision of radiologists.
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  • 文章类型: Journal Article
    这项研究旨在评估二次超声检查(US)在区分乳腺成像报告和数据系统(BI-RADS)4个最初在乳腺X线摄影(MG)上检测到的钙化中的实用性。BI-RADS4钙化具有广泛的阳性预测值。我们假设第二外观US将有助于区分BI-RADS4钙化,而没有MG的临床表现和其他异常。这项研究包括1510名女性(112例双侧钙化患者)的1622例纯BI-RADS4钙化。这些病例被随机分为训练(85%)和测试(15%)数据集。开发了两个列线图来区分训练数据集中的BI-RADS4钙化:MG-US列线图,基于多因素逻辑回归和整合的临床信息,MG,和第二看美国的特点,和MG列线图,基于临床信息和乳房X线特征。使用校准曲线进行MG-US列线图的校准。使用测试数据集中的受试者工作特征曲线(AUC)和决策分析曲线(DCA)下的面积比较了两个列线图的判别能力和临床实用性。训练和测试数据集之间的临床信息和成像特征具有可比性。MG-US列线图的偏差校正校准曲线非常接近两个数据集的理想线。在测试数据集中,MG-US列线图的AUC高于MG列线图(0.899vs0.852,P=.01).DCA证明了MG-US列线图优于MG列线图。第二看美国的特点,包括超声钙化,病变,和中等或标记的颜色流,对区分MG无临床表现和其他异常的BI-RADS4钙化有价值。
    This study aimed to assess the utility of second-look ultrasonography (US) in differentiating breast imaging reporting and data system (BI-RADS) 4 calcifications initially detected on mammography (MG). BI-RADS 4 calcifications have a wide range of positive predictive values. We hypothesized that second-look US would help distinguish BI-RADS 4 calcifications without clinical manifestations and other abnormalities on MG. This study included 1622 pure BI-RADS 4 calcifications in 1510 women (112 patients with bilateral calcifications). The cases were randomly divided into training (85%) and testing (15%) datasets. Two nomograms were developed to differentiate BI-RADS 4 calcifications in the training dataset: the MG-US nomogram, based on multifactorial logistic regression and incorporated clinical information, MG, and second-look US characteristics, and the MG nomogram, based on clinical information and mammographic characteristics. Calibration of the MG-US nomogram was performed using calibration curves. The discriminative ability and clinical utility of both nomograms were compared using the area under the receiver operating characteristic curve (AUC) and the decision analysis curve (DCA) in the test dataset. The clinical information and imaging characteristics were comparable between the training and test datasets. The bias-corrected calibration curves of the MG-US nomogram closely approximate the ideal line for both datasets. In the test dataset, the MG-US nomogram exhibited a higher AUC than the MG nomogram (0.899 vs 0.852, P = .01). DCA demonstrated the superiority of the MG-US nomogram over the MG nomogram. Second-look US features, including ultrasonic calcifications, lesions, and moderate or marked color flow, were valuable for distinguishing BI-RADS 4 calcifications without clinical manifestations and other abnormalities on MG.
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  • 文章类型: Journal Article
    目的/背景乳腺白血病(BL)是一种罕见的乳腺恶性肿瘤,其治疗方法与其他恶性肿瘤不同。然而,它很容易与其他条件混淆;因此,如何准确诊断至关重要。我们回顾性分析了13例患者的影像学表现,以提供诊断参考。方法回顾性分析2015年1月至2023年4月在北京大学人民医院行影像学检查的13例经活检证实的BL患者的临床资料。通过超声(US)获得的成像结果,乳房X线摄影(MMG),磁共振成像(MRI),和正电子发射断层扫描/计算机断层扫描(PET/CT)进行了分析,并比较了这些方法诊断BL的检出率。结果13例患者共检出29个病灶。这些患者在白血病治疗后几个月出现明显的肿块或乳房肿胀,主要涉及双侧乳房。对13例患者进行了超声检查,并检测到所有病变。大多数已确定的肿块是低回声的,边界不清,不规则形状,后回声没有增强,没有充足的血液流动。对五名患者进行了MMG,露出的乳房肿块,建筑扭曲,也没有异常.对四名患者进行了MRI检查,并检测到所有病变;大多数病变在T1加权成像上为低信号,在T2加权成像和弥散加权成像上为高强度,具有降低的表观扩散系数和不均匀增强。增强曲线主要为流入模式。4例患者行PET/CT检查,2例患者出现代谢亢进,另外两个没有明显的放射性吸收。结论与MMG和PET/CT相比,US和MRI具有较高的检出率。此外,与MRI相比,美国便宜,方便高效;因此,应该是诊断BL的首选.
    Aims/Background Breast leukaemia (BL) is a rare breast malignancy that is treated differently from other malignant conditions. However, it is easily confused with other conditions; therefore, how to accurately diagnose is crucial. We retrospectively analysed the imaging findings of 13 patients to provide a diagnostic reference. Methods From January 2015 to April 2023, 13 patients with BL confirmed by biopsy who underwent imaging in Peking University People\'s hospital were retrospectively analysed. The imaging findings obtained via ultrasound (US), mammography (MMG), magnetic resonance imaging (MRI), and positron emission tomography/computed tomography (PET/CT) were analysed, and the detection rates of these methods for diagnosing BL were compared. Results Twenty-nine lesions were detected in the 13 patients. These patients presented with palpable masses or breast swelling several months after treatment for leukaemia, mainly involving the bilateral breasts. Ultrasonography was performed for 13 patients, and all lesions were detected. Most of the identified masses were hypoechoic and had indistinct boundaries, irregular shapes, no enhancement of the posterior echo, and no abundant blood flow. MMG was performed for five patients, revealing breast masses, architectural distortion, and no abnormalities. MRI was performed for four patients, and all lesions were detected; most of the lesions were hypointense on T1-weighted imaging and hyperintense on T2-weighted imaging and diffusion-weighted imaging, with a decreased apparent diffusion coefficient and inhomogeneous enhancement. The enhancement curves were mostly inflow patterns. PET/CT was performed for four patients; two patients had hypermetabolism, and the other two had no obvious radioactive uptake. Conclusion Compared to MMG and PET/CT, US and MRI have higher detection rates. Furthermore, compared to MRI, US is inexpensive, convenient and efficient; therefore, it should be the first choice for diagnosing BL.
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  • 文章类型: Journal Article
    计算机辅助诊断系统在乳腺癌的诊断和早期检测中起着至关重要的作用。然而,目前大多数方法主要集中在单乳房的双视图分析,从而忽略了双侧乳房X线照片之间潜在的有价值的信息。在本文中,我们提出了一种四视图相关和对比联合学习网络(FV-Net),用于双侧乳房X线照片图像的分类。具体来说,FV-Net专注于在双侧乳房X线照片的四个视图中提取和匹配特征,同时最大化它们的相似性和差异性。通过跨乳房X线双途径注意模块,实现了双侧乳房X线照片视图之间的特征匹配,捕获乳房X线照片的一致性和互补特征,并有效减少特征错位。在来自双侧乳房X线照片的重组特征图中,双侧乳房X线对比联合学习模块对每个局部区域内的阳性和阴性样本对进行关联对比学习。这旨在最大化相似局部特征之间的相关性,并增强双侧乳房X线照片表示中不同特征之间的区别。我们在包含20%的Mini-DDSM和Vindr-mamo组合数据集的测试集上的实验结果,以及在INbast数据集上,表明,与竞争方法相比,我们的模型在乳腺癌分类中表现出优异的性能。
    Computer-aided diagnosis systems play a crucial role in the diagnosis and early detection of breast cancer. However, most current methods focus primarily on the dual-view analysis of a single breast, thereby neglecting the potentially valuable information between bilateral mammograms. In this paper, we propose a Four-View Correlation and Contrastive Joint Learning Network (FV-Net) for the classification of bilateral mammogram images. Specifically, FV-Net focuses on extracting and matching features across the four views of bilateral mammograms while maximizing both their similarities and dissimilarities. Through the Cross-Mammogram Dual-Pathway Attention Module, feature matching between bilateral mammogram views is achieved, capturing the consistency and complementary features across mammograms and effectively reducing feature misalignment. In the reconstituted feature maps derived from bilateral mammograms, the Bilateral-Mammogram Contrastive Joint Learning module performs associative contrastive learning on positive and negative sample pairs within each local region. This aims to maximize the correlation between similar local features and enhance the differentiation between dissimilar features across the bilateral mammogram representations. Our experimental results on a test set comprising 20% of the combined Mini-DDSM and Vindr-mamo datasets, as well as on the INbreast dataset, show that our model exhibits superior performance in breast cancer classification compared to competing methods.
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  • 文章类型: Journal Article
    探讨钼靶X线微钙化患者铸造型钙化(CC)的临床病理特征及预后意义。回顾性分析乳腺钙化的浸润性乳腺癌患者的数据。卡方检验用于评估两种形式的CC相关乳腺癌的临床病理特征。使用Kaplan-Meier和Cox回归分析对预后变量进行检查。共有427名符合条件的患者被纳入本研究。卡方分析表明,CC的存在与雌激素受体(ER)阴性有关(P=0.005)。孕激素受体(PR)阴性(P<0.001),和表皮生长因子受体2(HER-2)阳性(P<0.001);其中,与CC占优势型的相关性更强。经过82个月的中位随访,CC患者的5年无复发生存率(RFS)较差(77.1%vs.86.9%,p=0.036;危险比[HR],1.86;95%置信区间[CI]1.04-3.31)和总生存期(OS)(84.0%vs.94.4%,p=0.007;HR,2.99;95%CI1.34-6.65)率。在COX回归分析中,在HER-2阳性亚组中仍观察到这种差异(RFS:HR:2.45,95%CI1-5.97,P=0.049;OS:HR:4.53,95%CI1.17-17.52,P=0.029).浸润性乳腺癌患者在乳房X线照相术上显示钙化,CC的存在,尤其是CC型,与更高频率的激素受体阴性和HER-2阳性有关。CC的存在与不利的5年RFS和OS率有关。
    To explore the clinicopathological characteristics and prognostic significance of casting-type calcification (CC) in patients with breast cancer presenting with microcalcification on mammography. Data on patients with invasive breast cancer who had mammographic calcification was retrospectively analyzed. The chi-square test was utilized to assess the clinicopathological characteristics of two forms of CC-related breast cancer. The examination of prognostic variables was conducted using Kaplan-Meier and Cox regression analyses. A total of 427 eligible patients were included in this study. Chi-square analysis indicated that the presence of CC was associated with estrogen receptor (ER) negativity (P = 0.005), progesterone receptor (PR) negativity (P < 0.001), and epidermal growth factor receptor 2 (HER-2) positivity (P < 0.001); among these, the association was stronger with the CC-predominant type. After a median follow-up of 82 months, those with CC had a worse 5-year recurrence-free survival (RFS) (77.1% vs. 86.9%, p = 0.036; hazard ratio [HR], 1.86; 95% confidence interval [CI] 1.04-3.31) and overall survival (OS) (84.0% vs. 94.4%, p = 0.007; HR, 2.99; 95% CI 1.34-6.65) rates. In COX regression analysis, such differences were still observed in HER-2 positive subgroups (RFS: HR: 2.45, 95% CI 1-5.97, P = 0.049; OS: HR: 4.53, 95% CI 1.17-17.52, P = 0.029). In patients with invasive breast cancer exhibiting calcifications on mammography, the presence of CC, especially the CC-predominant type, is linked to a higher frequency of hormone receptor negativity and HER-2 positivity. The presence of CC is associated with an unfavorable 5-year RFS and OS rates.
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