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Information-Based Medicine in Glioma Patients: A Clinical Perspective

机译:脑胶质瘤患者基于信息的医学:临床观点

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摘要

Glioma constitutes the most common type of primary brain tumor with a dismal survival, often measured in terms of months or years. The thin line between treatment effectiveness and patient harm underpins the importance of tailoring clinical management to the individual patient. Randomized trials have laid the foundation for many neuro-oncological guidelines. Despite this, their findings focus on group-level estimates. Given our current tools, we are limited in our ability to guide patients on what therapy is best for them as individuals, or even how long they should expect to survive. Machine learning, however, promises to provide the analytical support for personalizing treatment decisions, and deep learning allows clinicians to unlock insight from the vast amount of unstructured data that is collected on glioma patients. Although these novel techniques have achieved astonishing results across a variety of clinical applications, significant hurdles remain associated with the implementation of them in clinical practice. Future challenges include the assembly of well-curated cross-institutional datasets, improvement of the interpretability of machine learning models, and balancing novel evidence-based decision-making with the associated liability of automated inference. Although artificial intelligence already exceeds clinical expertise in a variety of applications, clinicians remain responsible for interpreting the implications of, and acting upon, each prediction.
机译:胶质瘤是最常见的原发性脑肿瘤,其存活率低下,通常以几个月或几年来衡量。治疗效果与患者伤害之间的细线强调了针对个别患者进行临床管理的重要性。随机试验为许多神经肿瘤学指南奠定了基础。尽管如此,他们的发现集中在小组层面的估计上。鉴于我们目前的工具,我们在指导患者进行个体治疗的最佳方法,甚至是预期生存时间方面的能力有限。然而,机器学习有望为个性化治疗决策提供分析支持,而深度学习则使临床医生能够从胶质瘤患者身上收集到的大量非结构化数据中解脱出来。尽管这些新技术在各种临床应用中均取得了惊人的结果,但在临床实践中仍存在与实施它们相关的重大障碍。未来的挑战包括精心组织的跨机构数据集的组装,机器学习模型的可解释性的提高以及基于证据的新型决策与自动推理的相关责任之间的平衡。尽管人工智能已经超出了各种应用领域的临床专业知识,但是临床医生仍然负责解释每种预测的含义并根据每种预测采取行动。

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