M. Malek , M. Moayeri , S. Akhavan , S.S. Hasani , F. Nili , Z. Mahboubi- Fooladi
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引用次数: 0
Abstract
Aim
The uterine carcinoma is the most commonly diagnosed malignancy in the female pelvis. Accurate identification of tumour origin is crucial for determining appropriate treatment approaches. This study aims to develop a prediction model using multiple MRI parameters to accurately diagnose uterine cancer with an indistinctive origin and those involving both the endometrium and cervix prior to treatment.
Material and methods
This prospective cohort study included patients who were newly diagnosed with uterine carcinoma who underwent MRI and were considered for hysterectomy within 6 months after MRI.
Results
A total of 78 patients with uterine carcinoma were enrolled. Certain imaging features were found to be consistent with cervical carcinoma, included parametrial, vaginal, stromal invasion, and peripheral rim enhancement. Cervical cancer appeared hyperintense compared to the myometrium unlike endometrial cancer.
Discussion
The study found that certain morphologic features were reliable indicators for detecting cervical carcinoma.
期刊介绍:
Clinical Radiology is published by Elsevier on behalf of The Royal College of Radiologists. Clinical Radiology is an International Journal bringing you original research, editorials and review articles on all aspects of diagnostic imaging, including:
• Computed tomography
• Magnetic resonance imaging
• Ultrasonography
• Digital radiology
• Interventional radiology
• Radiography
• Nuclear medicine
Papers on radiological protection, quality assurance, audit in radiology and matters relating to radiological training and education are also included. In addition, each issue contains correspondence, book reviews and notices of forthcoming events.