Chang Herng-Hua, Zhuang Audrey H, Valentino Daniel J, Chu Woei-Chyn
Institute of Biomedical Engineering, National Yang-Ming University, Taiwan.
Neuroimage. 2009 Aug 1;47(1):122-35. doi: 10.1016/j.neuroimage.2009.03.068. Epub 2009 Apr 5.
Characterizing the performance of segmentation algorithms in brain images has been a persistent challenge due to the complexity of neuroanatomical structures, the quality of imagery and the requirement of accurate segmentation. There has been much interest in using the Jaccard and Dice similarity coefficients associated with Sensitivity and Specificity for evaluating the performance of segmentation algorithms. This paper addresses the essential characteristics of the fundamental performance measure coefficients adopted in evaluation frameworks. While exploring the properties of the Jaccard, Dice and Specificity coefficients, we propose new measure coefficients Conformity and Sensibility for evaluating image segmentation techniques. It is indicated that Conformity is more sensitive and rigorous than Jaccard and Dice in that it has better discrimination capabilities in detecting small variations in segmented images. Comparing to Specificity, Sensibility provides consistent and reliable evaluation scores without the incorporation of image background properties. The merits of the proposed coefficients are illustrated by extracting neuroanatomical structures in a wide variety of brain images using various segmentation techniques.
由于神经解剖结构的复杂性、图像质量以及精确分割的要求,表征脑图像分割算法的性能一直是一项持续存在的挑战。使用与敏感性和特异性相关的杰卡德(Jaccard)和骰子(Dice)相似系数来评估分割算法的性能,这一点已引起了广泛关注。本文阐述了评估框架中所采用的基本性能度量系数的基本特征。在探究杰卡德、骰子和特异性系数的属性时,我们提出了用于评估图像分割技术的新度量系数——一致性(Conformity)和敏感性(Sensibility)。结果表明,一致性在检测分割图像中的微小变化方面具有更好的辨别能力,因此比杰卡德和骰子系数更敏感、更严格。与特异性相比,敏感性在不考虑图像背景属性的情况下提供了一致且可靠的评估分数。通过使用各种分割技术在多种脑图像中提取神经解剖结构,说明了所提出系数的优点。