Few-shot learning for medical text: A systematic review
Yao Ge, Yuting Guo, Yuan-Chi Yang, Mohammed Ali Al-Garadi, Abeed, Sarker

TL;DR
This systematic review examines the recent development of few-shot learning methods in medical NLP, highlighting their applications, datasets, and challenges faced in the biomedical domain.
Contribution
It provides a comprehensive overview of FSL approaches in medical NLP, emphasizing the need for standardized datasets and identifying current limitations.
Findings
Most studies focus on concept extraction and text classification.
Synthetic dataset creation is common for FSL scenarios.
FSL methods show limited progress in biomedical NLP compared to general NLP.
Abstract
Objective: Few-shot learning (FSL) methods require small numbers of labeled instances for training. As many medical topics have limited annotated textual data in practical settings, FSL-based natural language processing (NLP) methods hold substantial promise. We aimed to conduct a systematic review to explore the state of FSL methods for medical NLP. Materials and Methods: We searched for articles published between January 2016 and August 2021 using PubMed/Medline, Embase, ACL Anthology, and IEEE Xplore Digital Library. To identify the latest relevant methods, we also searched other sources such as preprint servers (eg., medRxiv) via Google Scholar. We included all articles that involved FSL and any type of medical text. We abstracted articles based on data source(s), aim(s), training set size(s), primary method(s)/approach(es), and evaluation method(s). Results: 31 studies met our…
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Taxonomy
TopicsTopic Modeling · Artificial Intelligence in Healthcare and Education · Biomedical Text Mining and Ontologies
