基于深度学习的 DCE-MRI 自动分割技术在 BI-RADS 第 4 类病变性质预测中的应用》(Deep Learning-Based DCE-MRI Automatic Segmentation in Predicting Lesion Nature in BI-RADS Category 4)。

Tianyu Liu, Yurui Hu, Zehua Liu, Zeshuo Jiang, Xiao Ling, Xueling Zhu, Wenfei Li
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引用次数: 0

摘要

研究基于深度学习(DL)算法的DCE-MRI自动分割在区分BI-RADS 4乳腺病变方面是否比人工分割更具优势。本研究共纳入了来自两家医疗中心的 197 例可疑乳腺病变患者。2018年1月至2024年4月期间在秦皇岛市第一医院接受治疗的患者被纳入训练集(n = 138)。兰州大学第二医院治疗的患者被分配到外部验证集(n = 59)。根据 DL 自动分割和手动分割划分可疑病变区域,并通过 Dice 相关系数评估一致性。根据 DL 和人工分割构建放射组学模型,以预测 BI-RADS 4 病变的性质。同时,由专业放射科医生和非专业放射科医生对病变的性质进行评估。最后,通过曲线下面积值(AUC)和准确率(ACC)来确定哪种预测模型更有效。本研究共纳入 64 例恶性病例(32.5%)和 133 例良性病例(67.5%)。基于 DL 的自动分割模型与人工分割显示出高度一致性,Dice 系数达到 0.84 ± 0.11。与专业放射科医生相比,基于 DL 的放射组学模型显示出更优越的预测性能,AUC 为 0.85(95% CI 0.79-0.92)。与人工分割相比,DL 模型大大缩短了工作时间,提高了 83.2% 的效率,进一步证明了其临床应用的可行性。基于 DL 的放射组学自动分割模型在区分 BI-RADS 第 4 类良性和恶性病变方面的表现优于专业放射医师,从而有助于避免不必要的活检。这一突破性进展表明,DL 模型有望在不久的将来广泛应用于临床实践,为乳腺癌的诊断和治疗提供有效的辅助工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-Based DCE-MRI Automatic Segmentation in Predicting Lesion Nature in BI-RADS Category 4.

To investigate whether automatic segmentation based on DCE-MRI with a deep learning (DL) algorithm enabled advantages over manual segmentation in differentiating BI-RADS 4 breast lesions. A total of 197 patients with suspicious breast lesions from two medical centers were enrolled in this study. Patients treated at the First Hospital of Qinhuangdao between January 2018 and April 2024 were included as the training set (n = 138). Patients treated at Lanzhou University Second Hospital were assigned to an external validation set (n = 59). Areas of suspicious lesions were delineated based on DL automatic segmentation and manual segmentation, and evaluated consistency through the Dice correlation coefficient. Radiomics models were constructed based on DL and manual segmentations to predict the nature of BI-RADS 4 lesions. Meanwhile, the nature of the lesions was evaluated by both a professional radiologist and a non-professional radiologist. Finally, the area under the curve value (AUC) and accuracy (ACC) were used to determine which prediction model was more effective. Sixty-four malignant cases (32.5%) and 133 benign cases (67.5%) were included in this study. The DL-based automatic segmentation model showed high consistency with manual segmentation, achieving a Dice coefficient of 0.84 ± 0.11. The DL-based radiomics model demonstrated superior predictive performance compared to professional radiologists, with an AUC of 0.85 (95% CI 0.79-0.92). The DL model significantly reduced working time and improved efficiency by 83.2% compared to manual segmentation, further demonstrating its feasibility for clinical applications. The DL-based radiomics model for automatic segmentation outperformed professional radiologists in distinguishing between benign and malignant lesions in BI-RADS category 4, thereby helping to avoid unnecessary biopsies. This groundbreaking progress suggests that the DL model is expected to be widely applied in clinical practice in the near future, providing an effective auxiliary tool for the diagnosis and treatment of breast cancer.

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