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A Deep Look Into the Future of Quantitative Imaging in Oncology: A Statement of Working Principles and Proposal for Change

机译:深入了解肿瘤中定量成像的未来:改变工作原则和建议的陈述

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摘要

The adoption of enterprise digital imaging, along with the development of quantitative imaging methods and the re-emergence of statistical learning, has opened the opportunity for more personalized cancer treatments through transformative data science research. In the last 5?years, accumulating evidence has indicated that noninvasive advanced imaging analytics (i.e., radiomics) can reveal key components of tumor phenotype for multiple lesions at multiple time points over the course of treatment. Many groups using homegrown software have extracted engineered and deep quantitative features on 3-dimensional medical images for better spatial and longitudinal understanding of tumor biology and for the prediction of diverse outcomes. These developments could augment patient stratification and prognostication, buttressing emerging targeted therapeutic approaches. Unfortunately, the rapid growth in popularity of this immature scientific discipline has resulted in many early publications that miss key information or use underpowered patient data sets, without production of generalizable results. Quantitative imaging research is complex, and key principles should be followed to realize its full potential. The fields of quantitative imaging and radiomics in particular require a renewed focus on optimal study design and reporting practices, standardization, interpretability, data sharing, and clinical trials. Standardization of image acquisition, feature calculation, and statistical analysis (i.e., machine learning) are required for the field to move forward. A new data-sharing paradigm enacted among open and diverse participants (medical institutions, vendors and associations) should be embraced for faster development and comprehensive clinical validation of imaging biomarkers. In this review and critique of the field, we propose working principles and fundamental changes to the current scientific approach, with the goal of high-impact research and development of actionable prediction models that will yield more meaningful applications of precision cancer medicine.
机译:通过企业数字成像,随着量化成像方法的发展和统计学习的重新出现,通过转型性数据科学研究开辟了更多个性化癌症治疗的机会。在过去的5年中,累积证据表明,非侵入性的晚期成像分析(即,辐射瘤)可以在治疗过程中多次点处揭示多个病变的肿瘤表型的关键组分。使用本土软件的许多群体在三维医学图像上提取了设计的设计和深度定量特征,以更好地对肿瘤生物学的空间和纵向理解和预测不同的结果。这些发展可以增强患者的分层和预后,令人遗憾的是出现的目标治疗方法。不幸的是,这种未成熟科学学科的普及的快速增长导致许多早期出版物,错过关键信息或使用功能的患者数据集,而不会产生普遍的结果。定量成像研究是复杂的,应遵循关键原则来实现其全部潜力。特别是定量成像和辐射族的领域特别需要重新关注最佳研究设计和报告实践,标准化,可解释性,数据分享和临床试验。现场需要图像采集,特征计算和统计分析(即机器学习)的标准化。在开放和多样化的参与者(医疗机构,供应商和协会)中颁布了一项新的数据分享范式,应采用更快的开发和成像生物标志物的综合临床验证。在本领域的审查和批评中,我们提出了对当前科学方法的工作原则和基本变化,目的是高影响力的研究和开发可行的预测模型,将产生更有意义的癌症医学应用。

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