Departments of Biomedical Data Science, Geisel School of Medicine, Dartmouth College, Hanover, NH, United States.
Departments of Radiology, Geisel School of Medicine, Dartmouth College, Hanover, NH, United States.
J Magn Reson. 2021 Jul;328:106992. doi: 10.1016/j.jmr.2021.106992. Epub 2021 Apr 28.
Electron paramagnetic resonance (EPR) oximetry, using oxygen-sensing implant such as OxyChip, is capable of measuring oxygen concentration in vivo - a critical tissue information required for successful medical treatment such as cancer, wound healing and diabetes. Typically, EPR oximetry produces one value of the oxygen concentration, expressed as pO at the site of implant. However, it is well recognized that in vivo one deals with a distribution of oxygen concentration and therefore reporting just one number is not representative_a long-standing critique of EPR oximetry. Indeed, when it comes to the assessment of radiation efficacy one should be guided not by the mean or median but the proportion of oxygenated cancer cells which can be estimated only when the whole oxygen distribution in the tumor is known. Although there is a handful of papers attempting estimation of the oxygen distribution they suffer from the problem of negative frequencies and no theoretical justification and no biomedical interpretation. The goal of this work is to suggest a novel method using the empirical Bayesian approach realized via nonlinear mixed modeling with a priori distribution of oxygen following a two-parameter lognormal distribution with parameters estimated from the multi-implant single component EPR scan. Unlike previous work, the result of our estimation is the distribution with positive values for the frequency and the associated pO value. Our algorithm based on nonlinear regression is illustrated with EPR measurements on OxyChips equilibrated with gas mixtures containing four values of pO and computation of the proportion of volume with pO greater than any given threshold. This approach may become crucial for application of the EPR oximetry in clinical setting when the sucsess of the treatment depends of the proportion of tissue oxygenated.
电子顺磁共振(EPR)血氧计,使用氧敏植入物,如 OxyChip,能够测量体内的氧浓度——这是癌症、伤口愈合和糖尿病等成功治疗所需的关键组织信息。通常,EPR 血氧计产生一个氧浓度值,以植入部位的 pO 表示。然而,人们已经认识到,体内存在氧浓度分布,因此仅报告一个数值是不具有代表性的——这是 EPR 血氧计长期以来受到的批评。事实上,在评估辐射疗效时,人们应该根据氧合癌细胞的比例来指导,而只有当肿瘤内的整个氧分布已知时,才能估计出这一比例。尽管有少数几篇论文试图估计氧分布,但它们都存在负频率的问题,没有理论依据,也没有生物医学解释。这项工作的目的是提出一种新的方法,使用经验贝叶斯方法,通过非线性混合建模实现,先验分布的氧遵循双参数对数正态分布,参数由多植入单成分 EPR 扫描估计。与以前的工作不同,我们的估计结果是具有正频率和相关 pO 值的分布。我们的基于非线性回归的算法通过 EPR 测量来演示,这些测量是在与包含四个 pO 值的气体混合物平衡的 OxyChips 上进行的,并且计算了 pO 大于任何给定阈值的体积比例。当治疗的成功取决于组织氧合的比例时,这种方法可能会成为 EPR 血氧计在临床环境中应用的关键。