Transfer learning refers to machine learning techniques that focus on acquiring knowledge from related tasks to improve generalization in the tasks of interest. In MRI, transfer learning is important for developing strategies that address the variation in MR images. Additionally, transfer learning is beneficial to re-utilize machine learning models that were trained to solve related tasks to the task of interest. Our goal is to identify research directions, gaps of knowledge, applications, and widely used strategies among the transfer learning approaches applied in MR brain imaging. We performed a systematic literature search for articles that applied transfer learning to MR brain imaging. We screened 433 studies and we categorized and extracted relevant information, including task type, application, and machine learning methods. Furthermore, we closely examined brain MRI-specific transfer learning approaches and other methods that tackled privacy, unseen target domains, and unlabeled data. We found 129 articles that applied transfer learning to brain MRI tasks. The most frequent applications were dementia related classification tasks and brain tumor segmentation. A majority of articles utilized transfer learning on convolutional neural networks (CNNs). Only few approaches were clearly brain MRI specific, considered privacy issues, unseen target domains or unlabeled data. We proposed a new categorization to group specific, widely-used approaches. There is an increasing interest in transfer learning within brain MRI. Public datasets have contributed to the popularity of Alzheimer's diagnostics/prognostics and tumor segmentation. Likewise, the availability of pretrained CNNs has promoted their utilization. Finally, the majority of the surveyed studies did not examine in detail the interpretation of their strategies after applying transfer learning, and did not compare to other approaches.
翻译:转移学习是指侧重于从相关任务获取知识的机器学习技术,以改善感兴趣的任务的一般化。在磁共振成像中,转移学习对于制定解决MR图像差异的战略十分重要。此外,转移学习有助于重新利用经过培训的解决相关任务与感兴趣的任务有关的机器学习模式。我们的目标是确定研究方向、知识差距、应用和在MR脑成像中应用的转移学习方法中广泛使用的战略。我们系统搜索文献,将学习应用到MR脑成像中的文章。我们筛选了433项研究,并对相关信息进行了分类和提取,包括任务类型、应用和机器学习方法。此外,我们仔细检查了针对大脑的MRI转让学习方法和其他方法,这些方法涉及隐私、隐蔽目标领域和未贴标签的数据。我们发现了129篇文章,将学习转移到大脑MRI的任务。最经常应用的是与感官有关的分类任务和脑肿瘤分解。我们利用了神经神经网络(CNNs)的转移学习方法。我们只对少数几项方法进行了明确的大脑MRI隐私问题、不考虑、无形目标领域或未加固化的大脑分析方法进行了分类。我们一直在研究。