Department of Electrical and Computer Engineering, University of Florida, Gainesville, FL, 32608, United States.
Department of Medicine, University of Florida, Gainesville, FL, 32608, United States.
Comput Med Imaging Graph. 2024 Mar;112:102326. doi: 10.1016/j.compmedimag.2024.102326. Epub 2024 Jan 5.
Micro-ultrasound (micro-US) is a novel 29-MHz ultrasound technique that provides 3-4 times higher resolution than traditional ultrasound, potentially enabling low-cost, accurate diagnosis of prostate cancer. Accurate prostate segmentation is crucial for prostate volume measurement, cancer diagnosis, prostate biopsy, and treatment planning. However, prostate segmentation on micro-US is challenging due to artifacts and indistinct borders between the prostate, bladder, and urethra in the midline. This paper presents MicroSegNet, a multi-scale annotation-guided transformer UNet model designed specifically to tackle these challenges. During the training process, MicroSegNet focuses more on regions that are hard to segment (hard regions), characterized by discrepancies between expert and non-expert annotations. We achieve this by proposing an annotation-guided binary cross entropy (AG-BCE) loss that assigns a larger weight to prediction errors in hard regions and a lower weight to prediction errors in easy regions. The AG-BCE loss was seamlessly integrated into the training process through the utilization of multi-scale deep supervision, enabling MicroSegNet to capture global contextual dependencies and local information at various scales. We trained our model using micro-US images from 55 patients, followed by evaluation on 20 patients. Our MicroSegNet model achieved a Dice coefficient of 0.939 and a Hausdorff distance of 2.02 mm, outperforming several state-of-the-art segmentation methods, as well as three human annotators with different experience levels. Our code is publicly available at https://github.com/mirthAI/MicroSegNet and our dataset is publicly available at https://zenodo.org/records/10475293.
微超声(micro-US)是一种新颖的 29MHz 超声技术,其分辨率比传统超声高 3-4 倍,有望实现低成本、准确的前列腺癌诊断。准确的前列腺分割对于前列腺体积测量、癌症诊断、前列腺活检和治疗计划至关重要。然而,由于微超声中的伪影以及前列腺、膀胱和中线尿道之间的边界不清晰,前列腺分割具有挑战性。本文提出了 MicroSegNet,这是一种多尺度注释引导的变压器 UNet 模型,专门用于解决这些挑战。在训练过程中,MicroSegNet 更关注难以分割的区域(困难区域),这些区域的特征是专家和非专家注释之间存在差异。我们通过提出一种注释引导的二进制交叉熵(AG-BCE)损失来实现这一点,该损失对困难区域的预测误差赋予更大的权重,对容易区域的预测误差赋予更小的权重。通过利用多尺度深度监督,将 AG-BCE 损失无缝集成到训练过程中,使 MicroSegNet 能够在不同尺度上捕获全局上下文依赖关系和局部信息。我们使用来自 55 名患者的微超声图像对我们的模型进行训练,然后在 20 名患者上进行评估。我们的 MicroSegNet 模型的 Dice 系数为 0.939,Hausdorff 距离为 2.02mm,优于几种最先进的分割方法,以及具有不同经验水平的三位人类注释者。我们的代码可在 https://github.com/mirthAI/MicroSegNet 上获得,我们的数据集可在 https://zenodo.org/records/10475293 上获得。