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Machine learning and modeling: Data validation communication challenges

机译:机器学习和建模:数据验证交流挑战

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摘要

With the era of big data, the utilization of machine learning algorithms in radiation oncology is rapidly growing with applications including: treatment response modeling, treatment planning, contouring, organ segmentation, image-guidance, motion tracking, quality assurance, and more. Despite this interest, practical clinical implementation of machine learning as part of the day-to-day clinical operations is still lagging. The aim of this white paper is to further promote progress in this new field of machine learning in radiation oncology by highlighting its untapped advantages and potentials for clinical advancement, while also presenting current challenges and open questions for future research. The targeted audience of this paper includes newcomers as well as practitioners in the field of medical physics/radiation oncology. The paper also provides general recommendations to avoid common pitfalls when applying these powerful data analytic tools to medical physics and radiation oncology problems and suggests some guidelines for transparent and informative reporting of machine learning results.
机译:随着大数据时代的到来,机器学习算法在放射肿瘤学中的应用正在迅速增长,其应用包括:治疗反应模型,治疗计划,轮廓绘制,器官分割,图像引导,运动跟踪,质量保证等。尽管有这种兴趣,但是机器学习作为日常临床操作的一部分的实际临床实施仍然滞后。本白皮书的目的是通过突出其在放射肿瘤学方面的尚未开发的优势和潜力,同时在提出当前挑战和未来研究的未解决问题的同时,进一步促进放射肿瘤学机器学习这一新领域的进步。本文的目标读者包括医学物理学/放射肿瘤学领域的新手和从业人员。本文还提供了一般性建议,以避免在将这些功能强大的数据分析工具应用于医学物理学和放射肿瘤学问题时避免常见的陷阱,并提出了一些透明且内容丰富的机器学习结果报告指南。

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