State Key Laboratory of Ultrasound in Medicine and Engineering, College of Biomedical Engineering, Chongqing Medical University, 1 Medical College Road, Chongqing, 400016, China.
Chongqing Key Laboratory of Biomedical Engineering, Chongqing Medical University, Chongqing, 400016, China.
Biomed Eng Online. 2024 Jan 14;23(1):5. doi: 10.1186/s12938-024-01198-z.
Breast fibroadenoma poses a significant health concern, particularly for young women. Computer-aided diagnosis has emerged as an effective and efficient method for the early and accurate detection of various solid tumors. Automatic segmentation of the breast fibroadenoma is important and potentially reduces unnecessary biopsies, but challenging due to the low image quality and presence of various artifacts in sonography.
Human learning involves modularizing complete information and then integrating it through dense contextual connections in an intuitive and efficient way. Here, a human learning paradigm was introduced to guide the neural network by using two consecutive phases: the feature fragmentation stage and the information aggregation stage. To optimize this paradigm, three fragmentation attention mechanisms and information aggregation mechanisms were adapted according to the characteristics of sonography. The evaluation was conducted using a local dataset comprising 600 breast ultrasound images from 30 patients at Suining Central Hospital in China. Additionally, a public dataset consisting of 246 breast ultrasound images from Dataset_BUSI and DatasetB was used to further validate the robustness of the proposed network. Segmentation performance and inference speed were assessed by Dice similarity coefficient (DSC), Hausdorff distance (HD), and training time and then compared with those of the baseline model (TransUNet) and other state-of-the-art methods.
Most models guided by the human learning paradigm demonstrated improved segmentation on the local dataset with the best one (incorporating C3ECA and LogSparse Attention modules) outperforming the baseline model by 0.76% in DSC and 3.14 mm in HD and reducing the training time by 31.25%. Its robustness and efficiency on the public dataset are also confirmed, surpassing TransUNet by 0.42% in DSC and 5.13 mm in HD.
Our proposed human learning paradigm has demonstrated the superiority and efficiency of ultrasound breast fibroadenoma segmentation across both public and local datasets. This intuitive and efficient learning paradigm as the core of neural networks holds immense potential in medical image processing.
乳腺纤维腺瘤对年轻女性的健康构成重大威胁。计算机辅助诊断已成为早期准确检测各种实体瘤的有效方法。乳腺纤维腺瘤的自动分割很重要,并且有可能减少不必要的活检,但由于超声图像质量低和存在各种伪影,因此具有挑战性。
人类学习涉及将完整信息模块化,然后通过密集的上下文连接以直观有效的方式对其进行集成。在这里,引入了一种人类学习范式,通过使用两个连续的阶段(特征碎片化阶段和信息聚合阶段)来指导神经网络。为了优化该范式,根据超声的特点,采用了三种碎片化注意力机制和信息聚合机制。该评估是使用来自中国遂宁市中心医院的 30 名患者的 600 张乳腺超声图像的本地数据集进行的。此外,还使用了由 Dataset_BUSI 和 DatasetB 组成的 246 张乳腺超声图像的公共数据集来进一步验证所提出网络的稳健性。通过 Dice 相似系数(DSC)、Hausdorff 距离(HD)评估分割性能和推理速度,并与基线模型(TransUNet)和其他最先进方法进行比较。
大多数受人类学习范式指导的模型在本地数据集上的分割性能得到了提高,其中最好的模型(结合了 C3ECA 和 LogSparse Attention 模块)在 DSC 中比基线模型提高了 0.76%,在 HD 中提高了 3.14mm,训练时间减少了 31.25%。在公共数据集上的稳健性和效率也得到了证实,在 DSC 中比 TransUNet 提高了 0.42%,在 HD 中提高了 5.13mm。
我们提出的人类学习范式在公共和本地数据集上都展示了乳腺纤维腺瘤超声分割的优越性和效率。这种直观有效的学习范式作为神经网络的核心,在医学图像处理中具有巨大的潜力。