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可疑乳腺病变:磁共振成像与放射病理对照

Suspicious breast lesions: MR imaging with radiologic-pathologic correlation.

作者信息

Orel S G, Schnall M D, LiVolsi V A, Troupin R H

机构信息

Department of Radiology, Hospital of the University of Pennsylvania, Philadelphia 19104.

出版信息

Radiology. 1994 Feb;190(2):485-93. doi: 10.1148/radiology.190.2.8284404.

Abstract

PURPOSE

To study the architecture and enhancement characteristics of breast lesions with magnetic resonance imaging.

MATERIALS AND METHODS

Forty-one patients with mammographic and/or palpable lesions were imaged. T1-weighted, fat-saturated T2-weighted fast spin-echo, and gadolinium-enhanced and -unenhanced fat-saturated spoiled gradient-echo images were obtained. All patients underwent excisional biopsy or cyst aspiration.

RESULTS

Fifteen of 16 carcinomas were identified and exhibited at least partially irregular borders. T2-weighted signal intensity and contrast enhancement varied. Rim enhancement was seen in five lesions. Nine of 10 fibroadenomas were visualized and showed well-defined borders. T2-weighted signal intensity and contrast enhancement varied and correlated with histologic features. Internal septations were seen in five lesions. Time-intensity curves showed no statistically significant difference between fibroadenomas and cancers.

CONCLUSION

There is an overlap in the signal intensity characteristics and enhancement profiles of benign and malignant lesions. However, border characteristics, internal architecture, enhancement characteristics, and the presence of multiple tiny associated cysts may be important clues to lesion identification.

摘要

目的

利用磁共振成像研究乳腺病变的结构及强化特征。

材料与方法

对41例有乳腺钼靶检查和/或可触及病变的患者进行成像。获取了T1加权、脂肪抑制T2加权快速自旋回波、钆增强及未增强脂肪抑制扰相梯度回波图像。所有患者均接受了切除活检或囊肿抽吸。

结果

16例癌中15例被识别出,且至少部分边界不规则。T2加权信号强度及对比增强情况各异。5个病变可见边缘强化。10例纤维腺瘤中有9例被显示出来,边界清晰。T2加权信号强度及对比增强情况不同,并与组织学特征相关。5个病变可见内部间隔。时间-强度曲线显示纤维腺瘤和癌之间无统计学显著差异。

结论

良性和恶性病变的信号强度特征及强化模式存在重叠。然而,边界特征、内部结构、强化特征以及多个微小相关囊肿的存在可能是病变识别的重要线索。

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