Transfer Learning in Magnetic Resonance Brain Imaging: a Systematic Review
Juan Miguel Valverde, Vandad Imani, Ali Abdollahzadeh, Riccardo De, Feo, Mithilesh Prakash, Robert Ciszek, Jussi Tohka

TL;DR
This systematic review analyzes transfer learning applications in MRI brain imaging, highlighting common strategies, research gaps, and the increasing trend driven by public datasets and pretrained models.
Contribution
It provides a comprehensive categorization of transfer learning approaches in MRI brain imaging and identifies key research gaps and future directions.
Findings
Most applications focus on dementia and tumor segmentation.
CNNs are the predominant models used.
Few studies address privacy, unseen domains, or unlabeled data.
Abstract
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…
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