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Performance of Computer-Aided Diagnosis in Ultrasonography for Detection of Breast Lesions Less and More Than 2 cm: Prospective Comparative Study

机译:超声检查计算机辅助诊断的性能检测乳房病变少于2厘米:前瞻性比较研究

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Background Computer-aided diagnosis (CAD) is used as an aid tool by radiologists on breast lesion diagnosis in ultrasonography. Previous studies demonstrated that CAD can improve the diagnosis performance of radiologists. However, the optimal use of CAD on breast lesions according to size (below or above 2 cm) has not been assessed. Objective The aim of this study was to compare the performance of different radiologists using CAD to detect breast tumors less and more than 2 cm in size. Methods We prospectively enrolled 261 consecutive patients (mean age 43 years; age range 17-70 years), including 398 lesions (148 lesions2 cm, 79 malignant and 69 benign; 250 lesions≤2 cm, 71 malignant and 179 benign) with breast mass as the prominent symptom. One novice radiologist with 1 year of ultrasonography experience and one experienced radiologist with 5 years of ultrasonography experience were each assigned to read the ultrasonography images without CAD, and then again at a second reading while applying the CAD S-Detect. We then compared the diagnostic performance of the readers in the two readings (without and combined with CAD) with breast imaging. The McNemar test for paired data was used for statistical analysis. Results For the novice reader, the area under the receiver operating characteristic curve (AUC) improved from 0.74 (95% CI 0.67-0.82) from the without-CAD mode to 0.88 (95% CI 0.83-0.93; P 2 cm, the AUC moderately decreased from 0.81 to 0.80 (novice reader) and from 0.90 to 0.82 (experienced reader). The sensitivity of the novice and experienced reader in lesions≤2 cm improved from 61.97% and 73.23% at the without-CAD mode to 90.14% and 97.18% (both P .001) at the combined-CAD mode, respectively. Conclusions S-Detect is a feasible diagnostic tool that can improve the sensitivity for both novice and experienced readers, while also improving the negative predictive value and AUC for lesions≤2 cm, demonstrating important application value in the clinical diagnosis of breast cancer.
机译:背景技术计算机辅助诊断(CAD)用辐射学家用作辅助工具对超声检查的乳腺病变诊断。以前的研究表明,CAD可以改善放射科医生的诊断性能。然而,尚未评估根据尺寸(低于或高于2cm)对乳房病变上的CAD的最佳用途。目的本研究的目的是使用CAD进行比较不同放射科医生的性能,以检测乳腺肿瘤的尺寸更少,超过2厘米。方法对我们预期的261名连续患者(平均43岁;年龄43岁; 17-70岁的年龄范围),包括398例病变(148个病变> 2厘米,79个恶性和69个良性; 250病变≤2厘米,71恶性和179厘米)乳房质量作为突出症状。每个新手放射科医生都有1年的超声检查经验和一个有5年的超声检查经验的有经验的放射科医生,每个都被分配到没有CAD的超声图像,然后在应用CAD S检测时再次读取。然后,我们将读者与乳房成像进行了两种读数(无和结合CAD)的诊断性能。配对数据的McNemar测试用于统计分析。新手读者的结果,接收器下的区域,操作特征曲线(AUC)从无需CAD模式改善0.74(95%CI 0.67-0.82)至0.88(95%CI 0.83-0.93; P 2 CM,AUC从0.81到0.80(新手读者)和0.90至0.82(经验丰富的读者)中度下降。损伤中的新手和经验丰富的读者的敏感性从没有-CAD模式的61.97%和73.23%提高到90.14%和90.14%在组合CAD模式下97.18%(P <.001)。结论S-DERTRIA是一种可行的诊断工具,可以提高新手和经验丰富的读者的敏感性,同时还改善了病变的负面预测值和AUC ≤2厘米,展示了乳腺癌临床诊断中的重要应用价值。

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