Affiliation:
1. Jena University Language & Information Engineering (JULIE) Lab, Friedrich-Schiller-Universität Jena, Jena, Germany
2. Institute for Medical Informatics, Statistics and Documentation, Medical University of Graz, Graz, Austria
Abstract
Objectives: We survey recent developments in medical Information Extraction (IE) as reported in the literature from the past three years. Our focus is on the fundamental methodological paradigm shift from standard Machine Learning (ML) techniques to Deep Neural Networks (DNNs). We describe applications of this new paradigm concentrating on two basic IE tasks, named entity recognition and relation extraction, for two selected semantic classes—diseases and drugs (or medications)—and relations between them.
Methods: For the time period from 2017 to early 2020, we searched for relevant publications from three major scientific communities: medicine and medical informatics, natural language processing, as well as neural networks and artificial intelligence.
Results: In the past decade, the field of Natural Language Processing (NLP) has undergone a profound methodological shift from symbolic to distributed representations based on the paradigm of Deep Learning (DL). Meanwhile, this trend is, although with some delay, also reflected in the medical NLP community. In the reporting period, overwhelming experimental evidence has been gathered, as illustrated in this survey for medical IE, that DL-based approaches outperform non-DL ones by often large margins. Still, small-sized and access-limited corpora create intrinsic problems for data-greedy DL as do special linguistic phenomena of medical sublanguages that have to be overcome by adaptive learning strategies.
Conclusions: The paradigm shift from (feature-engineered) ML to DNNs changes the fundamental methodological rules of the game for medical NLP. This change is by no means restricted to medical IE but should also deeply influence other areas of medical informatics, either NLP- or non-NLP-based.
Reference70 articles.
1. A state-of-the-art survey on deep learning theory and architectures;M Z Alom;Electronics,2019
2. A survey on deep learning: algorithms, techniques, and applications;S Pouyanfar;ACM Computing Surveys,2018
3. Analysis methods in neural language processing: a survey;Y Belinkov;Transactions of the Association for Computational Linguistics,2019
4. Deep learning in neural networks: an overview;H J Schmidhuber;Neural Networks,2015
5. Visual analytics in deep learning: an interrogative survey for the next frontiers;F M Hohman;IEEE Trans Vis Comput Graph,2019
Cited by
55 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献