Bordeaux University, IMB, UMR 5251, 33400 Talence, France.
Diagn Interv Imaging. 2013 Jun;94(6):593-600. doi: 10.1016/j.diii.2013.03.001. Epub 2013 Apr 10.
The future challenges in oncology imaging are to assess the response to treatment even earlier. As an addition to functional imaging, mathematical modeling based on the imaging is an alternative, cross-disciplinary area of development. Modeling was developed in oncology not only in order to understand and predict tumor growth, but also to anticipate the effects of targeted and untargeted therapies. A very wide range of these models exist, involving many stages in the progression of tumors. Few models, however, have been proposed to reproduce in vivo tumor growth because of the complexity of the mechanisms involved. Morphological imaging combined with "spatial" models appears to perform well although functioning imaging could still provide further information on metabolism and the micro-architecture. The combination of imaging and modeling can resolve complex problems and describe many facets of tumor growth or response to treatment. It is now possible to consider its clinical use in the medium term. This review describes the basic principles of mathematical modeling and describes the advantages, limitations and future prospects for this in vivo approach based on imaging data.
肿瘤影像学的未来挑战在于更早地评估治疗反应。除了功能成像外,基于成像的数学建模是另一个跨学科的发展领域。建模在肿瘤学中的发展不仅是为了了解和预测肿瘤生长,也是为了预测靶向和非靶向治疗的效果。存在着非常广泛的这类模型,涉及肿瘤进展的许多阶段。然而,由于涉及的机制非常复杂,很少有模型被提出来再现体内肿瘤生长。形态学成像与“空间”模型相结合似乎表现良好,尽管功能成像仍可以提供关于代谢和微观结构的进一步信息。影像学与建模的结合可以解决复杂的问题,描述肿瘤生长或对治疗的反应的许多方面。现在可以考虑在中期将其用于临床。本文综述了数学建模的基本原理,并描述了基于影像学数据的这种体内方法的优点、局限性和未来前景。