Fundamental differences between natural and medical images have recently favored the use of self-supervised learning (SSL) over ImageNet transfer learning for medical image applications. Differences between image types are primarily due to the imaging modality and medical images utilize a wide range of physics based techniques while natural images are captured using only visible light. While many have demonstrated that SSL on medical images has resulted in better downstream task performance, our work suggests that more performance can be gained. The scientific principles which are used to acquire medical images are not often considered when constructing learning problems. For this reason, we propose incorporating quantitative imaging principles during generative SSL to improve image quality and quantitative biological accuracy. We show that this training schema results in better starting states for downstream supervised training on limited data. Our model also generates images that validate on clinical quantitative analysis software.
翻译:自然图像和医学图像之间的根本差异最近有利于使用自我监督学习(SSL)而不是图像网络传输学习用于医学图像应用。图像类型之间的差异主要归因于成像模式和医疗图像使用广泛的物理基础技术,而自然图像仅使用可见的光来捕捉。虽然许多图像表明医学图像上的SSL提高了下游任务性能,但我们的工作表明可以取得更大的绩效。在构建学习问题时,通常不考虑用于获取医疗图像的科学原则。为此,我们建议在基因化的SSL中纳入定量成像原则,以提高图像质量和生物定量准确性。我们表明,这种培训计划可以更好地启动关于有限数据的下游监管培训。我们的模型还生成了用于验证临床定量分析软件的图像。