[人工智能对肿瘤学临床实践演变的影响:关注语言模型]。

Bulletin du cancer Pub Date : 2025-01-01 Epub Date: 2024-12-18 DOI:10.1016/j.bulcan.2024.12.005
Daphné Morel, Loïc Verlingue
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引用次数: 0

摘要

人工智能(AI)正在满足肿瘤医疗从业人员和患者的许多期望。它有可能彻底改变我们今天所了解的医疗实践:通过分析大量医疗数据改善早期诊断、完善个性化治疗方案并优化患者随访。人工智能还能更容易地识别新的生物标志物并预测对疗法的反应,从而减少误差并加快临床决策。最受欢迎的人工智能类型之一是语言模型,它将彻底改变临床实践。在一个完美的世界里,人工智能的整合将促进更精确、个性化和高效的护理,同时减轻医疗服务提供者繁琐或重复的任务,使他们能够更加专注于为患者提供人力支持,而所有这一切都只需较低的能源消耗。然而,人工智能的大规模应用目前引发了一些基本问题,如公平性、使用安全性以及如何纵向评估人工智能取得的成果。本文将探讨如何评估人工智能在我们临床实践中的众多应用(剧透:这些应用目前还很有限)、潜在的临床益处以及目前在将人工智能融入常规肿瘤治疗时遇到的挑战。我们将重点关注语言模型,自 2021 年以来,语言模型的发展呈爆炸式增长。
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[Impact of artificial intelligence on the evolution of clinical practices in oncology: Focus on language models].

Artificial intelligence (AI) is addressing many expectations for healthcare practitioners and patients in oncology. It has the potential to deeply transform medical practices as we know them today: improving early diagnosis by analysing large quantities of medical data, refining personalised treatment plans and optimising patient follow-up. AI also makes it easier to identify new biomarkers and predict responses to therapies, reducing margins of error and speeding up clinical decisions. Among the most popular types of AI to revolutionise clinical practice are language models. In a perfect world, the integration of AI would promote more precise, personalised and efficient care, while relieving healthcare providers of tedious or repetitive tasks, allowing them to concentrate more on providing human support to patients, and all this with a low energy consumption. However, the large-scale deployment of AI currently raises fundamental questions about fairness, safety of use and how to assess the results obtained from AI longitudinally. This article explores how the many applications are evaluated for our practice (spoiler alert: they are currently limited), potential clinical benefits and challenges currently encountered when dealing with the integration of AI into routine oncology care. We will focus on language models whose development has been exploding since 2021.

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