INTERNATIONAL JOURNAL OF MEDICAL EVALUATION AND PHYSICAL REPORT (IJMEPR )
E-ISSN 2579-0498
P-ISSN 2695-2181
VOL. 7 NO. 4 2023
DOI: https://doi.org/10.56201/ijmepr.v7.no4.2023.pg83.89
Dr. Teibowei, Marie Therese, Teibowei Jennifer Tariere Mbete
This meta-analysis examines the efficacy of machine translation in the intricate domain of biomedical texts, focusing on the impact of linguistic intricacies, domain-specific terminology, and contextual nuances on translation outcomes. A comprehensive review of relevant research studies highlights the strengths and weaknesses of neural machine translation (NMT) and rule- based translation systems, shedding light on the challenges posed by the dynamic nature of biomedical terminology and the complexities of scientific jargon. The findings underscore the critical need for comprehensive language models, advanced natural language processing techniques, and interdisciplinary collaborations to enhance the precision and reliability of machine-translated biomedical content. The analysis emphasizes the importance of continually updating translation databases, integrating domain-specific knowledge, and implementing rigorous quality control measures to ensure the accuracy and fluency of machine-translated biomedical texts. The recommendations in this meta-analysis aim to guide stakeholders in the biomedical and computational linguistics communities in fostering the development of robust machine translation systems capable of effectively conveying critical scientific knowledge and promoting cross-cultural collaboration within the global biomedical research landscape.
This meta-analysis examines the efficacy of machine translation in the intricate domain of biomedical texts, focusing on the impact of linguistic intricacies, domain-specific terminology, and contex
Meta-analysis machine translation, biomedical texts, linguistic intricacies,
domain-specific terminology