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Quantitative Imaging Features: Extension of the Oncology Medical Image Database

机译:定量成像特征:扩展肿瘤医学图像数据库

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Radiological imaging is fundamental within the healthcare industry and has become routinely adopted for diagnosis, disease monitoring and treatment planning. With the advent of digital imaging modalities and the rapid growth in both diagnostic and therapeutic imaging, the ability to be able to harness this large influx of data is of paramount importance. The Oncology Medical Image Database (OMI-DB) was created to provide a centralized, fully annotated dataset for research. The database contains both processed and unprocessed images, associated data, and annotations and where applicable expert determined ground truths describing features of interest. Medical imaging provides the ability to detect and localize many changes that are important to determine whether a disease is present or a therapy is effective by depicting alterations in anatomic, physiologic, biochemical or molecular processes. Quantitative imaging features are sensitive, specific, accurate and reproducible imaging measures of these changes. Here, we describe an extension to the OMI-DB whereby a range of imaging features and descriptors are pre-calculated using a high throughput approach. The ability to calculate multiple imaging features and data from the acquired images would be valuable and facilitate further research applications investigating detection, prognosis, and classification. The resultant data store contains more than 10 million quantitative features as well as features derived from CAD predictions. Theses data can be used to build predictive models to aid image classification, treatment response assessment as well as to identify prognostic imaging biomarkers.
机译:放射性成像是医疗保健行业的基础,并已常规用于诊断,疾病监测和治疗计划。随着数字成像模态的出现和诊断和治疗成像的快速增长,能够利用这种大涌入数据的能力是至关重要的。创建了肿瘤医学图像数据库(OMI-DB),以提供用于研究的集中式全注算的数据集。该数据库包含已处理和未处理的图像,关联数据和注释,以及适用的专家确定描述感兴趣的特征的基础事实。医学成像提供了检测和定位许多变化的能力,以确定是否存在疾病或通过描述解剖学,生理学,生物化学或分子过程的改变是有效的。定量成像特征是这些变化的敏感,具体,准确,可重复的成像措施。这里,我们描述了向OMI-DB的扩展,由此使用高吞吐量方法预先计算一系列成像特征和描述符。计算来自所获取的图像的多个成像特征和数据的能力将有价值,并促进进一步研究检测,预后和分类的研究应用。结果数据存储包含超过1000万的定量特征以及从CAD预测派生的功能。这些数据可用于构建预测模型以帮助图像分类,治疗响应评估以及识别预后的成像生物标志物。

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