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Survey on Natural Language Processing in Medical Image Analysis

Abstract

Recent advancement in natural language processing (NLP) and medical imaging empowers the wide applicability of deep learning models. These developments have increased not only data understanding, but also knowledge of state-of-the-art architectures and their real-world potentials. Medical imaging researchers have recognized the limitations of only targeting images, as well as the importance of integrating multimodal inputs into medical image analysis. The lack of comprehensive surveys of the current literature, however, impedes the progress of this domain. Existing research perspectives, as well as the architectures, tasks, datasets, and performance measures examined in the present literature, are reviewed in this work, and we also provide a brief description of possible future directions in the field, aiming to provide researchers and healthcare professionals with a detailed summary of existing academic research and to provide rational insights to facilitate future research.

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References
1.
Heilbrun M, Chapman B, Narasimhan E, Patel N, Mowery D . Feasibility of Natural Language Processing-Assisted Auditing of Critical Findings in Chest Radiology. J Am Coll Radiol. 2019; 16(9 Pt B):1299-1304. DOI: 10.1016/j.jacr.2019.05.038. View

2.
Harkema H, Dowling J, Thornblade T, Chapman W . ConText: an algorithm for determining negation, experiencer, and temporal status from clinical reports. J Biomed Inform. 2009; 42(5):839-51. PMC: 2757457. DOI: 10.1016/j.jbi.2009.05.002. View

3.
Reading Turchioe M, Volodarskiy A, Pathak J, Wright D, Tcheng J, Slotwiner D . Systematic review of current natural language processing methods and applications in cardiology. Heart. 2021; 108(12):909-916. PMC: 9046466. DOI: 10.1136/heartjnl-2021-319769. View

4.
Islamaj Dogan R, Leaman R, Lu Z . NCBI disease corpus: a resource for disease name recognition and concept normalization. J Biomed Inform. 2014; 47:1-10. PMC: 3951655. DOI: 10.1016/j.jbi.2013.12.006. View

5.
Berman A, Biery D, Ginder C, Hulme O, Marcusa D, Leiva O . Natural language processing for the assessment of cardiovascular disease comorbidities: The cardio-Canary comorbidity project. Clin Cardiol. 2021; 44(9):1296-1304. PMC: 8428009. DOI: 10.1002/clc.23687. View