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首页> 外文期刊>Ultrasound in obstetrics & gynecology: the official journal of the International Society of Ultrasound in Obstetrics and Gynecology >Accuracy of ultrasound subjective 'pattern recognition' for the diagnosis of borderline ovarian tumors.
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Accuracy of ultrasound subjective 'pattern recognition' for the diagnosis of borderline ovarian tumors.

机译:超声主观“模式识别”诊断交界性卵巢肿瘤的准确性。

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摘要

OBJECTIVES: To assess the value of pattern recognition for the preoperative ultrasound diagnosis of borderline ovarian tumors (BOTs). METHODS: This was a prospective study of women who were referred to our regional cancer center with the diagnosis of an adnexal mass on a Level II (routine) gynecological ultrasound scan. Women with lesions of uncertain nature were referred for a Level III (expert) ultrasound scan in our tertiary center. The tumor pattern recognition method was used to differentiate between various types of ovarian tumors. Morphological features suggestive of BOTs were: unilocular cyst with a positive ovarian crescent sign and extensive papillary projections arising from the inner wall, or a cyst with a well defined multilocular nodule. The ultrasound findings were compared with the final histological diagnosis. RESULTS: A total of 224 women with an adnexal mass of uncertain nature were referred for an expert scan, 166 (74.1%) of whom underwent surgery. In this group of women the final histological diagnoses were: 99 (60%) benign lesions, 32 (19%) invasive ovarian cancer and 35 (21%) BOTs. Using pattern recognition combining the different morphological features, a correct preoperative diagnosis of BOT was made in 24/35 (68.6%) women: area under the receiver-operating characteristics curve 0.812 (standard error 0.049; 95% CI, 0.716-0.908), sensitivity 0.69 (95% CI, 0.52-0.81), specificity 0.94 (95% CI, 0.88-0.97), positive likelihood ratio 11.3 (95% CI, 5.53-22.8) and negative likelihood ratio 0.34 (95% CI, 0.21-0.55). CONCLUSIONS: Ultrasound diagnosis of BOTs is highly specific. However, typical features are absent in one-third of cases, which are typically misdiagnosed as benign lesions.
机译:目的:评估模式识别在交界性卵巢肿瘤(BOTs)术前超声诊断中的价值。方法:这是一项针对前瞻性研究的女性,这些女性被转诊到我们的地区癌症中心,并通过妇科II级(常规)超声扫描诊断出附件包块。具有不确定性病变的女性在我们的第三中心接受了III级(专家)超声扫描。肿瘤模式识别方法用于区分各种类型的卵巢肿瘤。提示BOT的形态特征是:卵巢新月征阳性的单眼囊肿,内壁出现广泛的乳头状突起,或多眼结节明确的囊肿。将超声检查结果与最终的组织学诊断结果进行比较。结果:总共有224名具有不确定性质的附件质量的女性被转诊至专家扫描,其中166名(74.1%)接受了手术。在这组女性中,最终的组织学诊断为:99例(60%)良性病变,32例(19%)浸润性卵巢癌和35例(21%)BOT。使用模式识别结合不同的形态学特征,可以对24/35(68.6%)的女性进行正确的术前诊断:受试者工作特征曲线下的面积为0.812(标准误为0.049; 95%CI为0.716-0.908),敏感性0.69(95%CI,0.52-0.81),特异性0.94(95%CI,0.88-0.97),正似然比11.3(95%CI,5.53-22.8)和负似然比0.34(95%CI,0.21-0.55) )。结论:BOT的超声诊断具有高度特异性。但是,在三分之一的病例中没有典型的特征,这些特征通常被误诊为良性病变。

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