Natural language processing in veterinary pathology: A review.

IF 1.7 2区 农林科学 Q2 PATHOLOGY
Lev Stimmer, Raoul V Kuiper, Laura Polledo, Lorenzo Ressel, Josep M Monné Rodriguez, Inês B Veiga, Jonathan Williams, Vanessa Herder
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引用次数: 0

Abstract

Natural language processing (NLP), a branch of artificial intelligence that focuses on the interaction between computers and human language, has potential in advancing veterinary pathology through its ability to source knowledge efficiently from vast data sets, generate high-quality text rapidly, and enhance data searchability. This review explores the applications of NLP in veterinary pathology, emphasizing its potential role in diagnostics, training pathologists, and research. NLP might offer many advantages, such as accuracy, speed, and cost reduction, especially for routine tasks including text summarization and report generation. These benefits make NLP a promising technology for achieving precision, adding value, and driving innovation in health care. However, caution is warranted, as NLP models may introduce biases and errors due to the quality of the data they are trained on, have limitations in interpreting nuanced or context-specific information, and lead to private data leakage. Furthermore, the multifaceted nature of veterinary pathology data may require specifically trained and expert-validated algorithms for accurate interpretation. To ensure the credibility and validity of research findings, pathologists must critically evaluate and complement obtained outputs with human expertise and judgment. This article highlights the transformative potential of NLP in veterinary pathology, underscores the importance of integrating this technology into the field for enhanced diagnostic accuracy and research advancements, and gives real-life examples from pathologists for pathologists, which illustrate how NLP can be applied in veterinary pathology.

自然语言处理在兽医病理学中的应用综述。
自然语言处理(NLP)是人工智能的一个分支,专注于计算机与人类语言之间的交互,通过其从大量数据集中有效地获取知识、快速生成高质量文本和增强数据可搜索性的能力,在推进兽医病理学方面具有潜力。本文探讨了NLP在兽医病理学中的应用,强调了其在诊断、培训病理学家和研究方面的潜在作用。NLP可能提供许多优点,例如准确性、速度和降低成本,特别是对于包括文本摘要和报告生成在内的日常任务。这些优点使NLP成为一种很有前途的技术,可以在医疗保健领域实现精度、增加价值和推动创新。然而,谨慎是有必要的,因为NLP模型可能会由于它们所训练的数据的质量而引入偏差和错误,在解释细微差别或特定于上下文的信息方面存在局限性,并导致私人数据泄露。此外,兽医病理数据的多面性可能需要经过专门训练和专家验证的算法才能准确解释。为了确保研究结果的可信度和有效性,病理学家必须用人类的专业知识和判断来批判性地评估和补充获得的结果。本文强调了NLP在兽医病理学中的变革潜力,强调了将该技术整合到该领域以提高诊断准确性和研究进展的重要性,并给出了病理学家对病理学家的真实例子,说明了NLP如何应用于兽医病理学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Veterinary Pathology
Veterinary Pathology 农林科学-病理学
CiteScore
4.70
自引率
8.30%
发文量
99
审稿时长
2 months
期刊介绍: Veterinary Pathology (VET) is the premier international publication of basic and applied research involving domestic, laboratory, wildlife, marine and zoo animals, and poultry. Bridging the divide between natural and experimental diseases, the journal details the diagnostic investigations of diseases of animals; reports experimental studies on mechanisms of specific processes; provides unique insights into animal models of human disease; and presents studies on environmental and pharmaceutical hazards.
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