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Personalizing Medicine Through Hybrid Imaging and Medical Big Data Analysis

机译:通过混合成像和医学大数据分析使医学个性化

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Medical imaging has evolved from a pure visualization tool to representing a primary source of analytic approaches towards in vivo disease characterization. Hybrid imaging is an integral part of this approach, as it provides complementary visual and quantitative information in the form of morphological and functional insights into the living body. As such, non-invasive imaging modalities no longer provide images only, but data, as stated recently by pioneers in the field. Today, such information, together with other, non-imaging medical data creates highly heterogeneous data sets that underpin the concept of medical big data. While the exponential growth of medical big data challenges their processing, they inherently contain information that benefits a patient-centric personalized healthcare. Novel machine learning approaches combined with high-performance distributed cloud computing technologies help explore medical big data. Such exploration and subsequent generation of knowledge require a profound understanding of the technical challenges. These challenges increase in complexity when employing hybrid, aka dual- or even multi-modality image data as input to big data repositories. This paper provides a general insight into medical big data analysis in light of the use of hybrid imaging information. First, hybrid imaging is introduced (see further contributions to this special Research Topic), also in the context of medical big data, then the technological background of machine learning as well as state-of-the-art distributed cloud computing technologies are presented, followed by the discussion of data preservation and data sharing trends. Joint data exploration endeavours in the context of in vivo radiomics and hybrid imaging will be presented. Standardization challenges of imaging protocol, delineation, feature engineering and machine learning evaluation will be detailed. Last, the paper will provide an outlook into the future role of hybrid imaging in view of personalized medicine, whereby a focus will be given to the derivation of prediction models as part of clinical decision support systems, to which machine learning approaches and hybrid imaging can be anchored.
机译:医学成像已从单纯的可视化工具发展成为代表体内疾病表征分析方法的主要来源。混合成像是该方法不可或缺的一部分,因为它以形态学和功能性见解的形式提供了对活体的补充性视觉和定量信息。这样,非侵入性成像方式不再仅提供图像,而是提供数据,正如该领域的先驱者最近所说的那样。如今,此类信息与其他非成像医疗数据一起创建了高度异构的数据集,这些数据集支持了医疗大数据的概念。尽管医疗大数据的指数增长挑战了其处理能力,但它们固有地包含了有益于以患者为中心的个性化医疗保健的信息。新颖的机器学习方法与高性能分布式云计算技术相结合,有助于探索医学大数据。这种探索和随后的知识产生需要对技术挑战的深刻理解。当将混合,aka双模甚至多模态图像数据用作大数据存储库的输入时,这些挑战增加了复杂性。鉴于混合成像信息的使用,本文提供了对医学大数据分析的一般见解。首先,在医学大数据的背景下,介绍了混合成像(请参阅对该特殊研究主题的进一步贡献),然后介绍了机器学习的技术背景以及最新的分布式云计算技术,然后讨论数据保存和数据共享趋势。将介绍在体内放射学和混合成像背景下的联合数据探索工作。将详细介绍成像协议,轮廓,功能工程和机器学习评估的标准化挑战。最后,本文将针对个性化医学对混合成像的未来作用进行展望,从而将重点放在作为临床决策支持系统一部分的预测模型的推导上,机器学习方法和混合成像可以为该模型提供参考。被锚定。

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