Medical report generation task, which targets to produce long and coherent descriptions of medical images, has attracted growing research interests recently. Different from the general image captioning tasks, medical report generation is more challenging for data-driven neural models. This is mainly due to 1) the serious data bias and 2) the limited medical data. To alleviate the data bias and make best use of available data, we propose a Competence-based Multimodal Curriculum Learning framework (CMCL). Specifically, CMCL simulates the learning process of radiologists and optimizes the model in a step by step manner. Firstly, CMCL estimates the difficulty of each training instance and evaluates the competence of current model; Secondly, CMCL selects the most suitable batch of training instances considering current model competence. By iterating above two steps, CMCL can gradually improve the model's performance. The experiments on the public IU-Xray and MIMIC-CXR datasets show that CMCL can be incorporated into existing models to improve their performance.
翻译:医学报告生成工作的目标是对医学图像进行长期和连贯的描述,最近引起了越来越多的研究兴趣,与一般图像说明任务不同,医学报告生成对数据驱动神经模型更具挑战性,这主要是因为:(1)数据偏差严重,(2)医疗数据有限;为减轻数据偏差和最佳利用现有数据,我们提议了一个基于能力的多模式课程学习框架(CMCL),具体地说,CMCL模拟放射学家的学习过程,并一步一步地优化模型。首先,CMCL估计了每个培训案例的困难,并评估了当前模型的能力;第二,CMCL选择了考虑到当前模型能力的最合适的培训案例。通过超越两个步骤,CMCL可以逐步改进模型的性能。关于公众的IU-Xray和MIMIC-CXR数据集的实验表明,CMCL可以纳入现有的模型,以提高其性能。