Yamashita Y, Hatanaka Y, Torashima M, Takahashi M, Miyazaki K, Okamura H
Department of Radiology, Kumamoto University School of Medicine, Honjo, Japan.
Acta Radiol. 1997 Jul;38(4 Pt 1):572-7. doi: 10.1080/02841859709174389.
The goal of this study was to maximize the discrimination between benign and malignant masses in patients with sonographically indeterminate ovarian lesions by means of unenhanced and contrast-enhanced MR imaging, and to develop a computer-assisted diagnosis system.
Findings in precontrast and Gd-DTPA contrast-enhanced MR images of 104 patients with 115 sonographically indeterminate ovarian masses were analyzed, and the results were correlated with histopathological findings. Of 115 lesions, 65 were benign (23 cystadenomas, 13 complex cysts, 11 teratomas, 6 fibrothecomas, 12 others) and 50 were malignant (32 ovarian carcinomas, 7 metastatic tumors of the ovary, 4 carcinomas of the fallopian tubes, 7 others). A logistic regression analysis was performed to discriminate between benign and malignant lesions, and a model of a computer-assisted diagnosis was developed. This model was prospectively tested in 75 cases of ovarian tumors found at other institutions.
From the univariate analysis, the following parameters were selected as significant for predicting malignancy (p< or =0.05): a solid or cystic mass with a large solid component or wall thickness greater than 3 mm; complex internal architecture; ascites; and bilaterality. Based on these parameters, a model of a computer-assisted diagnosis system was developed with the logistic regression analysis. To distinguish benign from malignant lesions, the maximum cut-off point was obtained between 0.47 and 0.51. In a prospective application of this model, 87% of the lesions were accurately identified as benign or malignant.
Benign and malignant ovarian lesions can be distinguished in most sonographically indeterminate lesions by means of parameters obtained from contrast-enhanced MR imaging.
本研究的目的是通过非增强和对比增强磁共振成像,最大限度地提高超声检查结果不确定的卵巢病变患者中良性和恶性肿块之间的鉴别能力,并开发一种计算机辅助诊断系统。
分析了104例患者115个超声检查结果不确定的卵巢肿块的对比剂增强磁共振成像前和钆喷酸葡胺对比剂增强磁共振成像的结果,并将结果与组织病理学结果进行关联。在115个病变中,65个为良性(23个囊腺瘤、13个复杂囊肿、11个畸胎瘤、6个纤维卵泡膜瘤、12个其他),50个为恶性(32个卵巢癌、7个卵巢转移瘤、4个输卵管癌、7个其他)。进行逻辑回归分析以区分良性和恶性病变,并开发了计算机辅助诊断模型。该模型在其他机构发现的75例卵巢肿瘤中进行了前瞻性测试。
单因素分析中,以下参数被选为预测恶性肿瘤的显著参数(p≤0.05):具有大实性成分或壁厚大于3mm的实性或囊性肿块;复杂的内部结构;腹水;以及双侧性。基于这些参数,通过逻辑回归分析开发了计算机辅助诊断系统模型。为区分良性和恶性病变,在0.47至0.51之间获得了最大截断点。在该模型的前瞻性应用中,87%的病变被准确鉴定为良性或恶性。
通过对比增强磁共振成像获得的参数,大多数超声检查结果不确定的病变中的良性和恶性卵巢病变可以被区分。