Kuikka J T, Bassingthwaighte J B, Henrich M M, Feinendegen L E
Department of Clinical Physiology, University Central Hospital, Kuopio, Finland.
Eur J Nucl Med. 1991;18(5):351-62. doi: 10.1007/BF02285464.
Modern imaging techniques can provide sequences of images giving signals proportional to the concentrations of tracers (by emission tomography), of X-ray-absorbing contrast materials (fast CT or perhaps NMR contrast), or of native chemical substances (NMR) in tissue regions at identifiable locations in 3D space. Methods for the analysis of the concentration-time curves with mathematical models describing the physiological processes and the appropriate anatomy are now available to give a quantitative portrayal of both structure and function: such is the approach to metabolic or functional imaging. One formulates a model first by defining what it should represent: this is the hypothesis. When translated into a self-consistent set of differential equations, the model becomes a mathematical model, a quantitative version of the hypothesis. This is what one would like to test against data. However, the next step is to reduce the mathematical model to a computable form; anatomically and physiologically realistic models account of the spatial gradients in concentrations within blood-tissue exchange units, while compartmental models simplify the equations by using the average concentrations. The former are known as distributed models and the latter as lumped compartmental or mixing chamber models. Since both are derived from the same ideas, the parameters are usually the same; their differences are in their ability to represent the hypothesis correctly, quantitatively, and sometimes in their computability. In this essay we review the philosophical and practical aspects of such modelling analysis for translating image sequences into physiological terms.
现代成像技术能够提供一系列图像,这些图像给出的信号与示踪剂浓度(通过发射断层扫描)、X射线吸收造影剂浓度(快速CT或可能的核磁共振造影)或天然化学物质浓度(核磁共振)成正比,这些物质存在于三维空间中可识别位置的组织区域。现在已有方法可通过描述生理过程和适当解剖结构的数学模型来分析浓度-时间曲线,从而对结构和功能进行定量描绘:这就是代谢或功能成像的方法。首先通过定义模型应代表的内容来构建模型:这就是假设。当将其转化为一组自洽的微分方程时,该模型就成为一个数学模型,即假设的定量形式。这就是要根据数据进行检验的内容。然而,下一步是将数学模型简化为可计算的形式;解剖学和生理学上现实的模型考虑了血液-组织交换单元内浓度的空间梯度,而房室模型则通过使用平均浓度来简化方程。前者称为分布式模型,后者称为集总房室或混合室模型。由于两者都源自相同的理念,参数通常相同;它们的差异在于正确、定量地表示假设的能力,有时还在于其可计算性。在本文中,我们回顾了将图像序列转化为生理学术语的此类建模分析的哲学和实践方面。