Kim Youngjune, Rim Jiwon, Kim Sun Mi, Yun Bo La, Park So Yeon, Ahn Hye Shin, Kim Bohyoung, Jang Mijung
Department of Radiology, Seoul National University Bundang Hospital, Seongnam, Korea.
Aerospace Medical Group, Air Force Education and Training Command, Jinju, Korea.
Ultrasonography. 2021 Jan;40(1):83-92. doi: 10.14366/usg.19076. Epub 2020 Mar 24.
The purpose of this study was to measure the cancer detection rate of computer-aided detection (CAD) software in preoperative automated breast ultrasonography (ABUS) of breast cancer patients and to determine the characteristics associated with false-negative outcomes.
A total of 129 index lesions (median size, 1.7 cm; interquartile range, 1.2 to 2.4 cm) from 129 consecutive patients (mean age±standard deviation, 53.4±11.8 years) who underwent preoperative ABUS from December 2017 to February 2018 were assessed. An index lesion was defined as a breast cancer confirmed by ultrasonography (US)-guided core needle biopsy. The detection rate of the index lesions, positive predictive value (PPV), and false-positive rate (FPR) of the CAD software were measured. Subgroup analysis was performed to identify clinical and US findings associated with false-negative outcomes.
The detection rate of the CAD software was 0.84 (109 of 129; 95% confidence interval, 0.77 to 0.90). The PPV and FPR were 0.41 (221 of 544; 95% CI, 0.36 to 0.45) and 0.45 (174 of 387; 95% CI, 0.40 to 0.50), respectively. False-negative outcomes were more frequent in asymptomatic patients (P<0.001) and were associated with the following US findings: smaller size (P=0.001), depth in the posterior third (P=0.002), angular or indistinct margin (P<0.001), and absence of architectural distortion (P<0.001).
The CAD software showed a promising detection rate of breast cancer. However, radiologists should judge whether CAD software-marked lesions are true- or false-positive lesions, considering its low PPV and high FPR. Moreover, it would be helpful for radiologists to consider the characteristics associated with false-negative outcomes when reading ABUS with CAD.
本研究旨在测量计算机辅助检测(CAD)软件在乳腺癌患者术前自动乳腺超声检查(ABUS)中的癌症检测率,并确定与假阴性结果相关的特征。
对2017年12月至2018年2月期间连续129例接受术前ABUS检查的患者(平均年龄±标准差,53.4±11.8岁)的129个索引病变(中位大小,1.7 cm;四分位间距,1.2至2.4 cm)进行评估。索引病变定义为经超声(US)引导下的粗针活检确诊的乳腺癌。测量CAD软件对索引病变的检测率、阳性预测值(PPV)和假阳性率(FPR)。进行亚组分析以确定与假阴性结果相关的临床和超声表现。
CAD软件的检测率为0.84(129个中的109个;95%置信区间,0.77至0.90)。PPV和FPR分别为0.41(544个中的221个;95% CI,0.36至0.45)和0.45(387个中的174个;95% CI,0.40至0.50)。无症状患者的假阴性结果更常见(P<0.001),并且与以下超声表现相关:较小的大小(P=0.001)、位于后三分之一深度(P=0.002)、角状或边界不清(P<0.001)以及无结构扭曲(P<0.001)。
CAD软件显示出有前景的乳腺癌检测率。然而,考虑到其低PPV和高FPR,放射科医生应判断CAD软件标记的病变是真阳性还是假阳性病变。此外,放射科医生在使用CAD读取ABUS时考虑与假阴性结果相关的特征将有所帮助。