LGAIAug 5, 2023

Meta-learning in healthcare: A survey

arXiv:2308.02877v221 citationsh-index: 19
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners in healthcare AI, but is incremental as it synthesizes existing studies without new results.

This survey examines how meta-learning addresses healthcare challenges like insufficient data and domain shifts by reviewing its applications, categorizing approaches, and discussing future directions.

As a subset of machine learning, meta-learning, or learning to learn, aims at improving the model's capabilities by employing prior knowledge and experience. A meta-learning paradigm can appropriately tackle the conventional challenges of traditional learning approaches, such as insufficient number of samples, domain shifts, and generalization. These unique characteristics position meta-learning as a suitable choice for developing influential solutions in various healthcare contexts, where the available data is often insufficient, and the data collection methodologies are different. This survey discusses meta-learning broad applications in the healthcare domain to provide insight into how and where it can address critical healthcare challenges. We first describe the theoretical foundations and pivotal methods of meta-learning. We then divide the employed meta-learning approaches in the healthcare domain into two main categories of multi/single-task learning and many/few-shot learning and survey the studies. Finally, we highlight the current challenges in meta-learning research, discuss the potential solutions, and provide future perspectives on meta-learning in healthcare.

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