Automatic image segmentation is a critical component of medical image analysis, and hence quantifying segmentation performance is crucial. Challenges in medical image segmentation are mainly due to spatial variations of regions to be segmented and imbalance in distribution of classes. Commonly used metrics treat all detected pixels, indiscriminately. However, pixels in smaller segments must be treated differently from pixels in larger segments, as detection of smaller ones aid in early treatment of associated disease and are also easier to miss. To address this, we propose a novel evaluation metric for segmentation performance, emphasizing smaller segments, by assigning higher weightage to smaller segment pixels. Weighted false positives are also considered in deriving the new metric named, "SSEGEP"(Small SEGment Emphasized Performance evaluation metric), (range : 0(Bad) to 1(Good)). The experiments were performed on diverse anatomies(eye, liver, pancreas and breast) from publicly available datasets to show applicability of the proposed metric across different imaging techniques. Mean opinion score (MOS) and statistical significance testing is used to quantify the relevance of proposed approach. Across 33 fundus images, where the largest exudate is 1.41%, and the smallest is 0.0002% of the image, the proposed metric is 30% closer to MOS, as compared to Dice Similarity Coefficient (DSC). Statistical significance testing resulted in promising p-value of order 10^{-18} with SSEGEP for hepatic tumor compared to DSC. The proposed metric is found to perform better for the images having multiple segments for a single label.
翻译:自动图像分解是医学图像分析的一个关键组成部分,因此对分解性能进行量化至关重要。在医学图像分解方面,挑战主要在于需要分割的区域空间变化和分类分布不平衡。常用的量度处理所有检测到的像素,但是,较小部分的像素必须同较大部分的像素区别对待,因为对较小部分的像素的检测有助于早期治疗相关疾病,也更容易错过。为了解决这个问题,我们提议对分解性能进行新的评价衡量,强调小部分,方法是给小部分像素分配更大的重量。在得出名为“SSEGEEP”(Small SEGment强调性业绩评价指标)的新度时,也考虑到假阳性。(范围为:0(Bad)至1(Good)),小部分的像素必须区别对待,因为小部分的检测有助于早期治疗相关疾病,因此更容易被忽略。为了显示拟议的分解性分解性分解性性性性工作,强调小部分,通过对较小部分像素等分分量。在得出新指标时,还考虑到假阳性阳性阳性阳性阳性阳性阳性阳性阳性阳性阳性阳性反应。在生成中产生数值时,对数值的数值的数值比值中,为最接近性数值为最接近性S33的S-S-SERMIM图比为更接近性比为最接近性,为最接近性,为最接近性,为最近的数值,为最近的数值,为最近的SIM为最近的SIM为最近的SUI。在10的值,为最近的值。在10的SUIFI 。