Computer vision and machine learning are playing an increasingly important role in computer-assisted diagnosis; however, the application of deep learning to medical imaging has challenges in data availability and data imbalance, and it is especially important that models for medical imaging are built to be trustworthy. Therefore, we propose TRUDLMIA, a trustworthy deep learning framework for medical image analysis, which adopts a modular design, leverages self-supervised pre-training, and utilizes a novel surrogate loss function. Experimental evaluations indicate that models generated from the framework are both trustworthy and high-performing. It is anticipated that the framework will support researchers and clinicians in advancing the use of deep learning for dealing with public health crises including COVID-19.
翻译:计算机愿景和机器学习在计算机辅助诊断中正在发挥日益重要的作用;然而,将深层次学习应用于医学成像在数据提供和数据不平衡方面有挑战性,建立医学成像模型是特别重要的,因此,我们提议建立TRUDLMIA,这是一个值得信赖的医学形象分析深层次学习框架,采用模块设计,利用自我监督的预培训,并使用新的替代损失功能。实验性评估表明,从这一框架产生的模型既可信又高性能。预计该框架将支持研究人员和临床医生在应对包括COVID-19在内的公共卫生危机方面推动利用深层学习。