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Quantitative Imaging Network: Data Sharing and Competitive AlgorithmValidation Leveraging The Cancer Imaging Archive

机译:定量成像网络:数据共享和竞争算法验证利用癌症成像档案

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摘要

The Quantitative Imaging Network (QIN), supported by the National Cancer Institute, is designed to promote research and development of quantitative imaging methods and candidate biomarkers for the measurement of tumor response in clinical trial settings. An integral aspect of the QIN mission is to facilitate collaborative activities that seek to develop best practices for the analysis of cancer imaging data. The QIN working groups and teams are developing new algorithms for image analysis and novel biomarkers for the assessment of response to therapy. To validate these algorithms and biomarkers and translate them into clinical practice, algorithms need to be compared and evaluated on large and diverse data sets. Analysis competitions, or “challenges,” are being conducted within the QIN as a means to accomplish this goal. The QIN has demonstrated, through its leveraging of The Cancer Imaging Archive (TCIA), that data sharing of clinical images across multiple sites is feasible and that it can enable and support these challenges. In addition to Digital Imaging and Communications in Medicine (DICOM) imaging data, many TCIA collections provide linked clinical, pathology, and “ground truth” data generated by readers that could be used for further challenges. The TCIA-QIN partnership is a successful model that provides resources for multisite sharing of clinical imaging data and the implementation of challenges to support algorithm and biomarker validation.
机译:由美国国家癌症研究所(National Cancer Institute)支持的定量成像网络(QIN)旨在促进定量成像方法和候选生物标记物的研究和开发,以用于在临床试验环境中测量肿瘤反应。 QIN任务的一个不可或缺的方面是促进旨在开发最佳实践以分析癌症影像数据的协作活动。 QIN工作组和团队正在开发用于图像分析的新算法和用于评估治疗反应的新型生物标记。为了验证这些算法和生物标记并将其转化为临床实践,需要对各种大型数据集进行比较和评估。在QIN内部正在进行分析竞赛或“挑战”,以此来实现这一目标。 QIN通过利用癌症影像档案(TCIA)证明了跨多个站点共享临床影像的数据是可行的,并且可以实现并支持这些挑战。除了医学数字成像和通信(DICOM)成像数据外,许多TCIA馆藏还提供了由读者生成的链接的临床,病理学和“地面真理”数据,可用于进一步的挑战。 TCIA-QIN合作伙伴关系是一个成功的模型,可为临床成像数据的多站点共享以及挑战的实施提供资源,以支持算法和生物标记物验证。

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