Department of Radiology, Breast Imaging Service, Memorial Sloan Kettering Cancer Center, 300 E 66th Street, New York, NY, 10065, USA.
Department of Radiology, Memorial Sloan Kettering Cancer Center, 300 E 66th Street, New York, NY, 10065, USA.
Breast Cancer Res Treat. 2021 Jun;187(2):535-545. doi: 10.1007/s10549-020-06074-7. Epub 2021 Jan 20.
To investigate whether radiomics features extracted from magnetic resonance imaging (MRI) of patients with biopsy-proven atypical ductal hyperplasia (ADH) coupled with machine learning can differentiate high-risk lesions that will upgrade to malignancy at surgery from those that will not, and to determine if qualitatively and semi-quantitatively assessed imaging features, clinical factors, and image-guided biopsy technical factors are associated with upgrade rate.
This retrospective study included 127 patients with 139 breast lesions yielding ADH at biopsy who were assessed with multiparametric MRI prior to biopsy. Two radiologists assessed all lesions independently and with a third reader in consensus according to the BI-RADS lexicon. Univariate analysis and multivariate modeling were performed to identify significant radiomic features to be included in a machine learning model to discriminate between lesions that upgraded to malignancy on surgery from those that did not.
Of 139 lesions, 28 were upgraded to malignancy at surgery, while 111 were not upgraded. Diagnostic accuracy was 53.6%, specificity 79.2%, and sensitivity 15.3% for the model developed from pre-contrast features, and 60.7%, 86%, and 22.8% for the model developed from delta radiomics datasets. No significant associations were found between any radiologist-assessed lesion parameters and upgrade status. There was a significant correlation between the number of specimens sampled during biopsy and upgrade status (p = 0.003).
Radiomics analysis coupled with machine learning did not predict upgrade status of ADH. The only significant result from this analysis is between the number of specimens sampled during biopsy procedure and upgrade status at surgery.
研究从经活检证实为非典型导管增生(ADH)的患者的磁共振成像(MRI)中提取的放射组学特征,结合机器学习,是否可以区分手术时将升级为恶性的高危病变与不会升级为恶性的病变,并确定定性和半定量评估的影像学特征、临床因素和图像引导活检技术因素是否与升级率相关。
这项回顾性研究纳入了 127 名接受过多参数 MRI 检查的 139 名乳腺病变活检为 ADH 的患者。两位放射科医生独立评估了所有病变,并由第三位读者进行共识评估,评估依据是 BI-RADS 词汇。进行了单变量分析和多变量建模,以确定显著的放射组学特征,将其纳入机器学习模型,以区分手术时升级为恶性的病变与未升级的病变。
在 139 个病变中,有 28 个在手术时升级为恶性,而 111 个没有升级。基于术前特征开发的模型的诊断准确性为 53.6%,特异性为 79.2%,敏感性为 15.3%,而基于 delta 放射组学数据集开发的模型的诊断准确性为 60.7%、86%和 22.8%。任何一位放射科医生评估的病变参数与升级状态之间均无显著相关性。活检过程中取样的标本数量与升级状态之间存在显著相关性(p=0.003)。
放射组学分析结合机器学习并不能预测 ADH 的升级状态。该分析唯一的显著结果是活检过程中取样的标本数量与手术时的升级状态之间存在显著相关性。