Browne Jean L, Pascual Maria Ángela, Perez Jorge, Salazar Sulimar, Valero Beatriz, Rodriguez Ignacio, Cassina Darío, Alcázar Juan Luis, Guerriero Stefano, Graupera Betlem
Department of Obstetrics, Gynecology, and Reproduction, Hospital Universitari Dexeus, 08028 Barcelona, Spain.
Department of Obstetrics and Gynecology, Clínica Universidad de Navarra, 31008 Pamplona, Spain.
Diagnostics (Basel). 2023 Feb 20;13(4):811. doi: 10.3390/diagnostics13040811.
(1) Background: This study aims to compare the ground truth (pathology results) against the BI-RADS classification of images acquired while performing breast ultrasound diagnostic examinations that led to a biopsy and against the result of processing the same images through the AI algorithm KOIOS DS (KOIOS). (2) Methods: All results of biopsies performed with ultrasound guidance during 2019 were recovered from the pathology department. Readers selected the image which better represented the BI-RADS classification, confirmed correlation to the biopsied image, and submitted it to the KOIOS AI software. The results of the BI-RADS classification of the diagnostic study performed at our institution were set against the KOIOS classification and both were compared to the pathology reports. (3) Results: 403 cases were included in this study. Pathology rendered 197 malignant and 206 benign reports. Four biopsies on BI-RADS 0 and two images are included. Of fifty BI-RADS 3 cases biopsied, only seven rendered cancers. All but one had a positive or suspicious cytology; all were classified as suspicious by KOIOS. Using KOIOS, 17 B3 biopsies could have been avoided. Of 347 BI-RADS 4, 5, and 6 cases, 190 were malignant (54.7%). Because only KOIOS suspicious and probably malignant categories should be biopsied, 312 biopsies would have resulted in 187 malignant lesions (60%), but 10 cancers would have been missed. (4) Conclusions: KOIOS had a higher ratio of positive biopsies in this selected case study vis-à-vis the BI-RADS 4, 5 and 6 categories. A large number of biopsies in the BI-RADS 3 category could have been avoided.
(1) 背景:本研究旨在将金标准(病理结果)与在进行乳腺超声诊断检查(导致活检)时获取图像的BI-RADS分类进行比较,并与通过人工智能算法KOIOS DS(KOIOS)处理相同图像的结果进行比较。(2) 方法:从病理科获取2019年超声引导下进行的所有活检结果。读者选择最能代表BI-RADS分类的图像,确认与活检图像的相关性,然后将其提交给KOIOS人工智能软件。将我们机构进行的诊断研究的BI-RADS分类结果与KOIOS分类结果进行对比,并将两者与病理报告进行比较。(3) 结果:本研究纳入403例病例。病理报告显示197例为恶性病变,206例为良性病变。纳入了4例BI-RADS 0类活检及2张图像。在接受活检的50例BI-RADS 3类病例中,仅7例为癌症。除1例之外,其余所有病例的细胞学检查均为阳性或可疑;所有病例在KOIOS系统中均被分类为可疑。使用KOIOS系统,17例B3类活检本可避免。在347例BI-RADS 4、5和6类病例中,190例为恶性病变(54.7%)。由于只有KOIOS系统中的可疑和可能为恶性的类别才应进行活检,312例活检本应能检出187例恶性病变(60%),但会漏诊10例癌症。(4) 结论:在本选定的病例研究中,相对于BI-RADS 4、5和6类,KOIOS系统活检阳性率更高。BI-RADS 3类中的大量活检本可避免。