论文标题
功能医学图像的域适应和概括:系统调查
Domain Adaptation and Generalization on Functional Medical Images: A Systematic Survey
论文作者
论文摘要
机器学习算法彻底改变了不同的领域,包括自然语言处理,计算机视觉,信号处理和医疗数据处理。尽管机器学习算法在各种任务和领域中具有出色的功能,但是当测试和培训数据分布发生变化时,这些模型的性能主要会恶化。由于侵犯了训练和测试数据是独立且分布相同的基本假设(i.i.d),因此发生了这一差距。在现实情况下,从所有可能的域中收集数据进行培训的数据是昂贵且不可能的,因此几乎无法满足I.I.D的假设。在医疗图像和信号的情况下,问题更加严重,因为它需要昂贵的设备或细致的实验设置来收集数据,即使对于一个域也是如此。此外,性能下降可能在医疗记录分析时会产生严重的后果。由于这种问题,在分布偏移(域概括(DG)和域适应性(DA))中概括和适应的能力对于分析医疗数据至关重要。本文提供了DG和DA对功能性脑信号的首次系统评价,以填补该时代缺乏全面研究的空白。我们提供了功能性脑图像中DG和DA中使用的数据集,方法和架构的详细说明和分类。我们进一步解决了值得关注的未来曲目。
Machine learning algorithms have revolutionized different fields, including natural language processing, computer vision, signal processing, and medical data processing. Despite the excellent capabilities of machine learning algorithms in various tasks and areas, the performance of these models mainly deteriorates when there is a shift in the test and training data distributions. This gap occurs due to the violation of the fundamental assumption that the training and test data are independent and identically distributed (i.i.d). In real-world scenarios where collecting data from all possible domains for training is costly and even impossible, the i.i.d assumption can hardly be satisfied. The problem is even more severe in the case of medical images and signals because it requires either expensive equipment or a meticulous experimentation setup to collect data, even for a single domain. Additionally, the decrease in performance may have severe consequences in the analysis of medical records. As a result of such problems, the ability to generalize and adapt under distribution shifts (domain generalization (DG) and domain adaptation (DA)) is essential for the analysis of medical data. This paper provides the first systematic review of DG and DA on functional brain signals to fill the gap of the absence of a comprehensive study in this era. We provide detailed explanations and categorizations of datasets, approaches, and architectures used in DG and DA on functional brain images. We further address the attention-worthy future tracks in this field.