Research on NLP Based Automatic Summarization Generation Method for Medical Texts
DOI: 10.23977/acss.2023.070903 | Downloads: 16 | Views: 320
Author(s)
Yuhang Tang 1
Affiliation(s)
1 Xi'an Jiaotong-Liverpool University Affiliated School, Beijing, 100086, China
Corresponding Author
Yuhang TangABSTRACT
The fundamental concept underpinning text summarization technology revolves around the capacity to encapsulate the original information into a succinct form, thus equipping individuals to promptly extract essential content from vast data repositories and liberating users from the cumbersome task of processing extensive textual material. In recent years, the exponential proliferation of data in biomedical literature, patient case records, and healthcare documentation, has presented a pressing challenge. This research undertakes the integration of Natural Language Processing (NLP)-related technologies into the domain of medical text summarization. It puts forth a novel solution for generative automatic summarization, with a specific focus on enhancing the model's proficiency in assimilating the semantic nuances inherent in biomedical texts. The methodology incorporates within existing text summarization frameworks to optimize the model's efficacy in handling biomedical data. The empirical findings presented in this study attest to the remarkable precision of the sentence similarity calculation method introduced herein. In a comparative analysis against four alternative methodologies, this approach achieves a high accuracy rate of 90.6%. This outcome highlights the superior predictive performance of the sentence integration similarity calculation method proposed in this research.
KEYWORDS
Natural Language Processing; Medical texts; Automatic abstract generation methodCITE THIS PAPER
Yuhang Tang, Research on NLP Based Automatic Summarization Generation Method for Medical Texts. Advances in Computer, Signals and Systems (2023) Vol. 7: 19-25. DOI: http://dx.doi.org/10.23977/acss.2023.070903.
REFERENCES
[1] Yamamoto S, Fukuhara Y, Suzuki R, et al. Automatic Paper Summary Generation from Visual and Textual Information [J]. Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology, 2021, 10(7):11-14.
[2] Liu Y, Yang Y, Huang Y. Automatic Generation of Comparative Summary for Scientific Literature[J]. International Journal of Performability Engineering, 2018, 14(7):1570-1579.
[3] Xu F, Yi G, Qi W, et al. Automatic summary of short text based on Seq2Seq and keywords correction[J]. Computer Engineering and Design, 2022, 11(9):8-14.
[4] Menger, Vincent, Scheepers, et al. DEDUCE: A pattern matching method for automatic de-identification of Dutch medical text [J]. Telematics and informatics, 2022, 19(7):35-40.
[5] Ozyegen O, Kabe D, Cevik M. Word-level Text Highlighting of Medical Texts forTelehealth Services[J]. Journal of Medical Imaging and Health Informatics, 2021, 11(4):36-40.
[6] Jiamin Cao, Jiawei Wang, et al. Semi-Automatic Synthetic Computed Tomography Generation for Abdomens Using Transfer Learning and Semi-Supervised Classification [J]. Journal of Medical Imaging and Health Informatics, 2019, 9(9):11-1
14.
[7] Xingqiang W, Na M. The Automatic Generation Method of Shared Document of Electronic Medical Records [J]. China Digital Medicine, 2019, 13(4):21-26.
[8] Matentzoglu, N. Ontology-Based Generation of Medical, Multi-Term MCQs. [J]. International Journal of Artificial Intelligence in Education, 2019, 29(5):5-9.
[9] Zhou Q, Peng W, Tang D. Automatic recommendation of medical departments to outpatients based on text analyses and medical knowledge graph[J]. Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology, 2021, 13(2):41-45.
[10] Yashaswini S, Shylaja S S. Metrics for Automatic Evaluation of Text from NLP Models for Text to Scene Generation [J]. European Open Science Publishing, 2021, 12(4):9-12.
Downloads: | 13505 |
---|---|
Visits: | 259072 |
Sponsors, Associates, and Links
-
Power Systems Computation
-
Internet of Things (IoT) and Engineering Applications
-
Computing, Performance and Communication Systems
-
Journal of Artificial Intelligence Practice
-
Journal of Network Computing and Applications
-
Journal of Web Systems and Applications
-
Journal of Electrotechnology, Electrical Engineering and Management
-
Journal of Wireless Sensors and Sensor Networks
-
Journal of Image Processing Theory and Applications
-
Mobile Computing and Networking
-
Vehicle Power and Propulsion
-
Frontiers in Computer Vision and Pattern Recognition
-
Knowledge Discovery and Data Mining Letters
-
Big Data Analysis and Cloud Computing
-
Electrical Insulation and Dielectrics
-
Crypto and Information Security
-
Journal of Neural Information Processing
-
Collaborative and Social Computing
-
International Journal of Network and Communication Technology
-
File and Storage Technologies
-
Frontiers in Genetic and Evolutionary Computation
-
Optical Network Design and Modeling
-
Journal of Virtual Reality and Artificial Intelligence
-
Natural Language Processing and Speech Recognition
-
Journal of High-Voltage
-
Programming Languages and Operating Systems
-
Visual Communications and Image Processing
-
Journal of Systems Analysis and Integration
-
Knowledge Representation and Automated Reasoning
-
Review of Information Display Techniques
-
Data and Knowledge Engineering
-
Journal of Database Systems
-
Journal of Cluster and Grid Computing
-
Cloud and Service-Oriented Computing
-
Journal of Networking, Architecture and Storage
-
Journal of Software Engineering and Metrics
-
Visualization Techniques
-
Journal of Parallel and Distributed Processing
-
Journal of Modeling, Analysis and Simulation
-
Journal of Privacy, Trust and Security
-
Journal of Cognitive Informatics and Cognitive Computing
-
Lecture Notes on Wireless Networks and Communications
-
International Journal of Computer and Communications Security
-
Journal of Multimedia Techniques
-
Automation and Machine Learning
-
Computational Linguistics Letters
-
Journal of Computer Architecture and Design
-
Journal of Ubiquitous and Future Networks