Performance measures are an important tool for assessing and comparing different medical image segmentation algorithms. Unfortunately, the current measures have their weaknesses when it comes to assessing certain edge cases. These limitations arouse when images with a very small region of interest or without a region of interest at all are assessed. As a solution for these limitations, we propose a new medical image segmentation metric: MISm. To evaluate MISm, the popular metrics in the medical image segmentation and MISm were compared using images of magnet resonance tomography from several scenarios. In order to allow application in the community and reproducibility of experimental results, we included MISm in the publicly available evaluation framework MISeval: https://github.com/frankkramer-lab/miseval/tree/master/miseval
翻译:业绩计量是评估和比较不同医学图像分割算法的重要工具,不幸的是,在评估某些边缘案例时,目前的措施有其弱点,这些局限性在评估有兴趣或根本没有兴趣区域的非常小区域或根本没有兴趣区域的图像时引起。作为这些局限性的解决方案,我们提出一个新的医学图像分割指标:MISM。为评价MISM,医疗图像分割和MISS的流行度量指标使用几种情景的磁共振成像图像进行了比较。为了在社区应用并推广实验结果,我们把MISSM纳入公开的评估框架:https://github.com/frankkkrammer-lab/miseval/tre/master/miseval。