In medical image analysis, the cost of acquiring high-quality data and their annotation by experts is a barrier in many medical applications. Most of the techniques used are based on supervised learning framework and need a large amount of annotated data to achieve satisfactory performance. As an alternative, in this paper, we propose a self-supervised learning approach to learn the spatial anatomical representations from the frames of magnetic resonance (MR) video clips for the diagnosis of knee medical conditions. The pretext model learns meaningful spatial context-invariant representations. The downstream task in our paper is a class imbalanced multi-label classification. Different experiments show that the features learnt by the pretext model provide explainable performance in the downstream task. Moreover, the efficiency and reliability of the proposed pretext model in learning representations of minority classes without applying any strategy towards imbalance in the dataset can be seen from the results. To the best of our knowledge, this work is the first work of its kind in showing the effectiveness and reliability of self-supervised learning algorithms in class imbalanced multi-label classification tasks on MR video. The code for evaluation of the proposed work is available at https://github.com/sadimanna/sslm
翻译:在医学图像分析中,获取高质量数据的费用和专家对这些数据的说明是许多医疗应用的障碍。所使用的技术大多以监督学习框架为基础,需要大量附加说明的数据才能取得令人满意的业绩。作为替代办法,我们在本文件中提出一个自我监督的学习方法,从磁共振(MR)视频剪辑框架中学习空间解剖表解,用于诊断膝盖病情。借口模型学习有意义的空间环境差异表征。我们文件中的下游任务是一个等级不平衡的多标签分类。不同的实验显示,由借口模型所学的特征为下游任务提供了可解释的性能。此外,从结果中可以看出,拟议的少数群体课堂学习借口模型的效率和可靠性,而没有采用任何战略来纠正数据集中的不平衡。据我们所知,这项工作是同类工作的首项工作,在MR视频上展示了自我强化的多标签分类任务。在 httpsmann://githmas/busums.com上可以找到拟议工作的评估代码。