Natural Language Processing for Radiation Oncology: Personalizing Treatment Pathways

Hui Lin, Lisa Ni, Christina Phuong, Julian C Hong
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Abstract

Abstract: Natural language processing (NLP), a technology that translates human language into machine-readable data, is revolutionizing numerous sectors, including cancer care. This review outlines the evolution of NLP and its potential for crafting personalized treatment pathways for cancer patients. Leveraging NLP’s ability to transform unstructured medical data into structured learnable formats, researchers can tap into the potential of big data for clinical and research applications. Significant advancements in NLP have spurred interest in developing tools that automate information extraction from clinical text, potentially transforming medical research and clinical practices in radiation oncology. Applications discussed include symptom and toxicity monitoring, identification of social determinants of health, improving patient-physician communication, patient education, and predictive modeling. However, several challenges impede the full realization of NLP’s benefits, such as privacy and security concerns, biases in NLP models, and the interpretability and generalizability of these models. Overcoming these challenges necessitates a collaborative effort between computer scientists and the radiation oncology community. This paper serves as a comprehensive guide to understanding the intricacies of NLP algorithms, their performance assessment, past research contributions, and the future of NLP in radiation oncology research and clinics.

Keywords: artificial intelligence, personalized medicine, radiation therapy, natural language processing
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放射肿瘤学的自然语言处理:个性化治疗路径
摘要:自然语言处理(NLP)是一种将人类语言转化为机器可读数据的技术,它正在彻底改变包括癌症治疗在内的众多领域。本综述概述了 NLP 的发展及其为癌症患者制定个性化治疗方案的潜力。利用 NLP 将非结构化医疗数据转化为结构化可学习格式的能力,研究人员可以挖掘大数据在临床和研究应用方面的潜力。NLP 的重大进展激发了人们对开发工具的兴趣,这些工具可以自动从临床文本中提取信息,从而有可能改变放射肿瘤学的医学研究和临床实践。讨论的应用包括症状和毒性监测、健康的社会决定因素识别、改善患者与医生的沟通、患者教育和预测建模。然而,一些挑战阻碍了 NLP 优点的充分实现,如隐私和安全问题、NLP 模型的偏差以及这些模型的可解释性和可推广性。要克服这些挑战,计算机科学家和放射肿瘤学界必须通力合作。本文可作为了解 NLP 算法的复杂性、其性能评估、过去的研究贡献以及 NLP 在放射肿瘤学研究和临床中的未来的综合指南。 关键词:人工智能、个性化医疗、放射治疗、自然语言处理
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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