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同步放化疗后直肠癌的 MRI 再分期。

Restaging of Rectal Cancer with MR Imaging after Concurrent Chemotherapy and Radiation Therapy.

机构信息

Department of Radiology, Gangnam Severance Hospital, and Department of Radiology, Severance Hospital, Yonsei University College of Medicine, 612 Eonjuro, Gangnam-gu, Seoul 135-720, Korea.

出版信息

Radiographics. 2010 Mar;30(2):503-16. doi: 10.1148/rg.302095046.

Abstract

In patients with rectal cancer who have received concurrent chemotherapy and radiation therapy (CCRT) before surgery, magnetic resonance (MR) imaging has low accuracy in prediction of the pathologic stage owing to overstaging or understaging. The factors related to this problem include fibrosis, desmoplastic reaction, edema, inflammation, and viable tumor nets at a fibrotic scar from a previous tumor. Preoperative diagnosis with MR imaging of histologic variants of rectal adenocarcinoma, especially mucinous adenocarcinoma, is important because these variants tend to have a poor response to CCRT. In addition, these variants manifest with high signal intensity on T2-weighted images after CCRT; this finding makes it difficult to differentiate residual tumors from remaining mucin pools. MR volumetry and functional MR imaging may be helpful in prediction and assessment of tumor response to CCRT. Awareness of post-CCRT changes helps radiologists achieve appropriate restaging of irradiated rectal cancer with MR imaging and can lead to a reduction in understaging or overstaging. It is important to obtain and compare both pre- and post-CCRT images before interpreting the post-CCRT images.

摘要

在接受术前同步放化疗(CCRT)的直肠癌患者中,由于过度分期或分期不足,磁共振成像(MR)在预测病理分期方面的准确性较低。与该问题相关的因素包括纤维化、纤维母细胞反应、水肿、炎症和来自先前肿瘤的纤维性瘢痕中的存活肿瘤网。术前用 MR 成像对直肠腺癌的组织学变异型(特别是黏液腺癌)进行诊断很重要,因为这些变异型往往对 CCRT 反应不佳。此外,这些变异型在 CCRT 后 T2 加权图像上表现为高信号强度;这一发现使得难以区分残留肿瘤与残留的黏液池。MR 体积测量和功能 MR 成像可能有助于预测和评估肿瘤对 CCRT 的反应。了解 CCRT 后的变化有助于放射科医生对接受放疗的直肠癌进行适当的重新分期,并可减少分期不足或过度分期。在解释 CCRT 后的图像之前,重要的是要获取和比较 CCRT 前后的图像。

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