Statistical Analysis of Quantitative Cancer Imaging Data

Shariq Mohammed, Maria Masotti, Nathaniel Osher, Satwik Acharyya, Veerabhadran Baladandayuthapani
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Abstract

Recent advances in types and extent of medical imaging technologies has led to proliferation of multimodal quantitative imaging data in cancer. Quantitative medical imaging data refer to numerical representations derived from medical imaging technologies, such as radiology and pathology imaging, that can be used to assess and quantify characteristics of diseases, especially cancer. The use of such data in both clinical and research setting enables precise quantifications and analyses of tumor characteristics that can facilitate objective evaluation of disease progression, response to therapy, and prognosis. The scale and size of these imaging biomarkers is vast and presents several analytical and computational challenges that range from high-dimensionality to complex structural correlation patterns. In this review article, we summarize some state-of-the-art statistical methods developed for quantitative medical imaging data ranging from topological, functional and shape data analyses to spatial process models. We delve into common imaging biomarkers with a focus on radiology and pathology imaging in cancer, address the analytical questions and challenges they present, and highlight the innovative statistical and machine learning models that have been developed to answer relevant scientific and clinical questions. We also outline some emerging and open problems in this area for future explorations.
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癌症定量成像数据的统计分析
定量医学影像数据是指通过医学影像技术(如放射学和病理学成像)获得的数字表示,可用于评估和量化疾病(尤其是癌症)的特征。在临床和研究环境中使用这些数据可对肿瘤特征进行精确的量化和分析,从而有助于客观评估疾病的进展、对治疗的反应和预后。这些成像生物标记物的规模和大小非常庞大,带来了从高维到复杂结构相关模式等多个分析和计算方面的挑战。在这篇综述文章中,我们总结了为定量医学成像数据开发的一些最先进的统计方法,包括拓扑、功能和形状数据分析以及空间过程模型。我们深入研究了常见的成像生物标记物,重点关注癌症的放射学和病理学成像,探讨了它们带来的分析问题和挑战,并重点介绍了为回答相关科学和临床问题而开发的创新统计和机器学习模型。我们还概述了这一领域的一些新问题和开放性问题,供未来探索。
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