Mitos Medical Technologies, ITU Ayazaga Ari Teknokent, 2-B Block 2-2-E, Maslak 34469, Istanbul, Turkey; Electrical and Electronics Engineering Faculty, Istanbul Technical University, Maslak, 34469 Istanbul, Turkey.
Mitos Medical Technologies, ITU Ayazaga Ari Teknokent, 2-B Block 2-2-E, Maslak 34469, Istanbul, Turkey; Electrical and Electronics Engineering Faculty, Istanbul Technical University, Maslak, 34469 Istanbul, Turkey.
Acad Radiol. 2023 Sep;30 Suppl 2:S1-S8. doi: 10.1016/j.acra.2022.12.001. Epub 2022 Dec 21.
Microwave breast cancer imaging (MWI) is an emerging non-invasive technology used to clinically assess the internal breast tissue inhomogeneity. MWI utilizes the variance in dielectric properties of healthy and cancerous tissue to identify anomalies inside the breast and make further clinical predictions. In this study, we evaluate our SAFE MWI system in a clinical setting. Capability of SAFE to provide breast pathology is assessed.
Patients with BI-RADS category 4 or 5 who were scheduled for biopsy were included in the study. Machine learning approach, more specifically the Adaptive Boosting (AdaBoost) model, was implemented to determine if the level of difference between backscattered signals of breasts with the benign and malignant pathological outcome is significant enough for quantitative breast health classification via SAFE.
A dataset of 113 (70 benign and 43 malignant) breast samples was used in the study. The proposed classification model achieved the sensitivity, specificity, and accuracy of 79%, 77%, and 78%, respectively.
The non-ionizing and non-invasive nature gives SAFE an opportunity to impact breast cancer screening and early detection positively. Device classified both benign and malignant lesions at a similar rate. Further clinical studies are planned to validate the findings of this study.
微波乳腺癌成像(MWI)是一种新兴的非侵入性技术,用于临床评估内部乳腺组织的不均匀性。MWI 利用健康组织和癌变组织介电特性的差异来识别乳房内的异常,并进行进一步的临床预测。在这项研究中,我们在临床环境中评估了我们的 SAFE MWI 系统。评估了 SAFE 提供乳房病理的能力。
本研究纳入了计划进行活检的 BI-RADS 分类 4 或 5 类的患者。采用机器学习方法,特别是自适应增强(AdaBoost)模型,来确定通过 SAFE 进行定量乳腺健康分类时,良性和恶性病理结果的反向散射信号之间的差异水平是否足以显著区分。
研究使用了 113 个(70 个良性和 43 个恶性)乳腺样本数据集。所提出的分类模型的灵敏度、特异性和准确率分别为 79%、77%和 78%。
SAFE 的非电离和非侵入性性质为积极影响乳腺癌筛查和早期检测提供了机会。该设备对良性和恶性病变的分类率相似。计划进行进一步的临床研究来验证本研究的结果。