Endoscopic Mayo score and Ulcerative Colitis Endoscopic Index of Severity are commonly used scoring systems for the assessment of endoscopic severity of ulcerative colitis. They are based on assigning a score in relation to the disease activity, which creates a rank among the levels, making it an ordinal regression problem. On the other hand, most studies use categorical cross-entropy loss function, which is not optimal for the ordinal regression problem, to train the deep learning models. In this study, we propose a novel loss function called class distance weighted cross-entropy (CDW-CE) that respects the order of the classes and takes the distance of the classes into account in calculation of cost. Experimental evaluations show that CDW-CE outperforms the conventional categorical cross-entropy and CORN framework, which is designed for the ordinal regression problems. In addition, CDW-CE does not require any modifications at the output layer and is compatible with the class activation map visualization techniques.
翻译:另一方面,大多数研究都使用绝对的跨物种流失功能来训练深层学习模型,在本研究中,我们建议使用一种叫做等级间距加权跨有机物(CDW-CE)的新式损失函数,以尊重各等级的顺序,并在计算成本时考虑到各等级之间的距离。 实验性评估表明,CDW-CE超越了常规的直截性跨有机和CORN框架,而该框架是针对各级回归问题设计的。此外,CDW-CE不需要在产出层作任何修改,并且与班级激活图直观技术兼容。