Hybrid Methods for Improving Information Access in Clinical Documents: Concept, Assertion, and Relation Identification
Overview
Authors
Affiliations
Objective: This paper describes the approaches the authors developed while participating in the i2b2/VA 2010 challenge to automatically extract medical concepts and annotate assertions on concepts and relations between concepts.
Design: The authors'approaches rely on both rule-based and machine-learning methods. Natural language processing is used to extract features from the input texts; these features are then used in the authors' machine-learning approaches. The authors used Conditional Random Fields for concept extraction, and Support Vector Machines for assertion and relation annotation. Depending on the task, the authors tested various combinations of rule-based and machine-learning methods.
Results: The authors'assertion annotation system obtained an F-measure of 0.931, ranking fifth out of 21 participants at the i2b2/VA 2010 challenge. The authors' relation annotation system ranked third out of 16 participants with a 0.709 F-measure. The 0.773 F-measure the authors obtained on concept extraction did not make it to the top 10.
Conclusion: On the one hand, the authors confirm that the use of only machine-learning methods is highly dependent on the annotated training data, and thus obtained better results for well-represented classes. On the other hand, the use of only a rule-based method was not sufficient to deal with new types of data. Finally, the use of hybrid approaches combining machine-learning and rule-based approaches yielded higher scores.
Chinese Clinical Named Entity Recognition with ALBERT and MHA Mechanism.
Li D, Long J, Qu J, Zhang X Evid Based Complement Alternat Med. 2022; 2022:2056039.
PMID: 35656458 PMC: 9152388. DOI: 10.1155/2022/2056039.
DI++: A deep learning system for patient condition identification in clinical notes.
Shi J, Gao X, Kinsman W, Ha C, Gao G, Chen Y Artif Intell Med. 2022; 123:102224.
PMID: 34998515 PMC: 8832473. DOI: 10.1016/j.artmed.2021.102224.
Clinical Concept Extraction with Lexical Semantics to Support Automatic Annotation.
Abbas A, Afzal M, Hussain J, Ali T, Bilal H, Lee S Int J Environ Res Public Health. 2021; 18(20).
PMID: 34682315 PMC: 8535468. DOI: 10.3390/ijerph182010564.
Kersloot M, van Putten F, Abu-Hanna A, Cornet R, Arts D J Biomed Semantics. 2020; 11(1):14.
PMID: 33198814 PMC: 7670625. DOI: 10.1186/s13326-020-00231-z.
Differentiating Sense through Semantic Interaction Data.
Workman T, Weir C, Rindflesch T AMIA Annu Symp Proc. 2017; 2016:1238-1247.
PMID: 28269921 PMC: 5333208.