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关于放射组学以及精准医学中用于患者选择的治疗诊断学未来的综述。

A review on radiomics and the future of theranostics for patient selection in precision medicine.

作者信息

Keek Simon A, Leijenaar Ralph Th, Jochems Arthur, Woodruff Henry C

机构信息

1 The D-Lab: Decision Support for Precision Medicine GROW - School for Oncology and Developmental Biology & MCCC , Maastricht University Medical Centre+ , Maastricht , The Netherlands.

2 Department of Radiation Oncology (MAASTRO) GROW - School for Oncology and Developmental Biology, Maastricht University Medical Centre+ , Maastricht , The Netherlands.

出版信息

Br J Radiol. 2018 Nov;91(1091):20170926. doi: 10.1259/bjr.20170926. Epub 2018 Jul 5.

Abstract

The growing complexity and volume of clinical data and the associated decision-making processes in oncology promote the advent of precision medicine. Precision (or personalised) medicine describes preventive and/or treatment procedures that take individual patient variability into account when proscribing treatment, and has been hindered in the past by the strict requirements of accurate, robust, repeatable and preferably non-invasive biomarkers to stratify both the patient and the disease. In oncology, tumour subtypes are traditionally measured through repeated invasive biopsies, which are taxing for the patient and are cost and labour intensive. Quantitative analysis of routine clinical imaging provides an opportunity to capture tumour heterogeneity non-invasively, cost-effectively and on large scale. In current clinical practice radiological images are qualitatively analysed by expert radiologists whose interpretation is known to suffer from inter- and intra-operator variability. Radiomics, the high-throughput mining of image features from medical images, provides a quantitative and robust method to assess tumour heterogeneity, and radiomics-based signatures provide a powerful tool for precision medicine in cancer treatment. This study aims to provide an overview of the current state of radiomics as a precision medicine decision support tool. We first provide an overview of the requirements and challenges radiomics currently faces in being incorporated as a tool for precision medicine, followed by an outline of radiomics' current applications in the treatment of various types of cancer. We finish with a discussion of possible future advances that can further develop radiomics as a precision medicine tool.

摘要

肿瘤学中临床数据及其相关决策过程日益复杂且数量不断增加,推动了精准医学的出现。精准(或个性化)医学描述的是在规定治疗方案时考虑个体患者差异的预防和/或治疗程序,过去一直受到准确、可靠、可重复且最好是非侵入性生物标志物的严格要求的阻碍,这些生物标志物用于对患者和疾病进行分层。在肿瘤学中,肿瘤亚型传统上是通过反复进行侵入性活检来测量的,这对患者来说负担较重,而且成本高、劳动强度大。对常规临床影像进行定量分析为大规模、经济高效且非侵入性地捕捉肿瘤异质性提供了机会。在当前临床实践中,放射科专家对放射影像进行定性分析,而众所周知,他们的解读存在操作者间和操作者内的差异。放射组学,即从医学影像中高通量挖掘图像特征,提供了一种定量且可靠的方法来评估肿瘤异质性,基于放射组学的特征为癌症治疗中的精准医学提供了强大工具。本研究旨在概述放射组学作为精准医学决策支持工具的当前状态。我们首先概述放射组学目前作为精准医学工具在纳入过程中面临的要求和挑战,接着概述放射组学目前在各类癌症治疗中的应用。最后我们讨论可能的未来进展,这些进展可进一步将放射组学发展成为精准医学工具。

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