Deep learning methods have contributed substantially to the rapid advancement of medical image segmentation, the quality of which relies on the suitable design of loss functions. Popular loss functions, including the cross-entropy and dice losses, often fall short of boundary detection, thereby limiting high-resolution downstream applications such as automated diagnoses and procedures. We developed a novel loss function that is tailored to reflect the boundary information to enhance the boundary detection. As the contrast between segmentation and background regions along the classification boundary naturally induces heterogeneity over the pixels, we propose the piece-wise two-sample t-test augmented (PTA) loss that is infused with the statistical test for such heterogeneity. We demonstrate the improved boundary detection power of the PTA loss compared to benchmark losses without a t-test component.
翻译:深层学习方法极大地促进了医学图像分割的快速发展,其质量取决于损失功能的适当设计,包括交叉渗透和骰子损失在内的普通损失功能往往没有达到边界探测的限度,从而限制了高分辨率下游应用,如自动诊断和程序。我们开发了一种新的损失功能,专门反映边界信息,以加强边界探测。由于分类边界沿线的分离和背景区域之间的对比自然诱发了像素的异质性,我们建议采用与这种异质性统计测试不相适应的拼法双模强化(PTA)损失。我们展示了PTA损失的边界探测能力,与没有顶点成分的基准损失相比,PTA损失的边界探测能力有所提高。