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Data Science in Radiology: A Path Forward

机译:放射学中的数据科学:前进的道路

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摘要

Artificial intelligence (AI), especially deep learning, has the potential to fundamentally alter clinical radiology. AI algorithms, which excel in quantifying complex patterns in data, have shown remarkable progress in applications ranging from self-driving cars to speech recognition. The AI application within radiology, known as radiomics, can provide detailed quantifications of the radiographic characteristics of underlying tissues. This information can be used throughout the clinical care path to improve diagnosis and treatment planning, as well as assess treatment response. This tremendous potential for clinical translation has led to a vast increase in the number of research studies being conducted in the field, a number that is expected to rise sharply in the future. Many studies have reported robust and meaningful findings; however, a growing number also suffer from flawed experimental or analytical designs. Such errors could not only can result in invalid discoveries, but also may lead others to perpetuate similar flaws in their own work. This perspective article aims to increase awareness of the issue, identify potential reasons why this is happening, and provide a path forward.
机译:人工智能(AI),尤其是深度学习,有可能从根本上改变临床放射学。擅长量化数据复杂模式的AI算法在从无人驾驶汽车到语音识别的应用中已显示出惊人的进步。放射线学中的AI应用程序(称为放射线学)可以提供对下层组织的放射线照相特征的详细量化。该信息可用于整个临床护理路径,以改善诊断和治疗计划,以及评估治疗反应。临床翻译的巨大潜力导致在该领域进行的研究数量大量增加,并且预计这一数字将来会急剧上升。许多研究报告了强有力而有意义的发现。但是,越来越多的人也遭受了有缺陷的实验或分析设计的困扰。这样的错误不仅可能导致无效的发现,而且可能导致其他人在自己的工作中永久保留类似的缺陷。本透视文章旨在提高对该问题的认识,确定发生这种情况的潜在原因,并提供前进的道路。

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