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卵巢病变:1.5T钆增强磁共振成像的检测与特征分析

Ovarian lesions: detection and characterization with gadolinium-enhanced MR imaging at 1.5 T.

作者信息

Stevens S K, Hricak H, Stern J L

机构信息

Department of Diagnostic Radiology, University of California, San Francisco 94143.

出版信息

Radiology. 1991 Nov;181(2):481-8. doi: 10.1148/radiology.181.2.1924792.

Abstract

Magnetic resonance (MR) imaging for detection and characterization of ovarian masses was assessed in 33 patients with a total of 60 lesions. Lesions were characterized prospectively as benign or malignant by using T2-weighted MR images and unenhanced and gadolinium-enhanced T1-weighted MR images. MR imaging findings were compared with results of surgical laparotomy performed for staging of lesions. When malignancy was suspected, staging with MR imaging was performed. MR imaging demonstrated 57 of 60 (95%) surgically proved ovarian masses (34 of 36 were benign, 23 of 24 were malignant). Five significant primary criteria and four ancillary criteria for malignancy were established. For all MR pulse sequences combined, characterization of either type of lesion was correct in 84% of cases (48 of 57) when the five primary criteria were used and 95% (54 of 57) were correct when the four ancillary criteria were added. With gadolinium-enhanced images, correct characterization of malignant lesions increased from 56% to 78% with use of the five primary criteria and from 83% to 100% with use of both sets of criteria. Malignancies were correctly staged with MR imaging in 12 of 16 patients. Staging accuracy was 63% with unenhanced images and 75% with the addition of enhanced images.

摘要

对33例患者共60个卵巢肿物进行了磁共振(MR)成像检查,以检测并确定其特征。通过使用T2加权MR图像以及未增强和钆增强的T1加权MR图像,前瞻性地将肿物分为良性或恶性。将MR成像结果与为肿物分期而进行的手术剖腹探查结果进行比较。当怀疑为恶性时,采用MR成像进行分期。MR成像显示60个经手术证实的卵巢肿物中有57个(95%)(36个良性肿物中的34个,24个恶性肿物中的23个)。确立了五个主要标准和四个恶性辅助标准。对于所有组合的MR脉冲序列,当使用五个主要标准时,84%(57个中的48个)的病例中两种类型肿物的特征判断正确;当加入四个辅助标准时,95%(57个中的54个)判断正确。在钆增强图像中,使用五个主要标准时,恶性肿物特征的正确判断率从56%提高到78%;使用两组标准时,从83%提高到100%。16例患者中有12例通过MR成像正确分期。未增强图像的分期准确率为63%,加入增强图像后为75%。

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