论文标题
增强医疗图像细分的前景边界
Enhancing Foreground Boundaries for Medical Image Segmentation
论文作者
论文摘要
物体分割在现代医学图像分析中起着重要作用,这使临床研究,疾病诊断和手术计划受益。鉴于医学图像的各种方式,自动化或半自动分割方法已用于识别和解析器官,骨骼,肿瘤和其他利益区域(ROI)。但是,由于成像过程中引起的模糊外观对比度,这些当代分割方法往往无法预测ROI的边界区域。为了进一步提高边界区域的细分质量,我们提出了边界增强损失,以对优化机器学习模型的其他限制进行实施。提出的损失功能是轻度加权且易于实现的,而无需进行任何预处理或后处理。我们的实验结果验证了我们的损失函数优于或至少与其他最先进的损失函数相比,就分割精度而言。
Object segmentation plays an important role in the modern medical image analysis, which benefits clinical study, disease diagnosis, and surgery planning. Given the various modalities of medical images, the automated or semi-automated segmentation approaches have been used to identify and parse organs, bones, tumors, and other regions-of-interest (ROI). However, these contemporary segmentation approaches tend to fail to predict the boundary areas of ROI, because of the fuzzy appearance contrast caused during the imaging procedure. To further improve the segmentation quality of boundary areas, we propose a boundary enhancement loss to enforce additional constraints on optimizing machine learning models. The proposed loss function is light-weighted and easy to implement without any pre- or post-processing. Our experimental results validate that our loss function are better than, or at least comparable to, other state-of-the-art loss functions in terms of segmentation accuracy.