Probabilistic deconvolution of PET images using informed priors.

Thomas Mejer Hansen, Klaus Mosegaard, Søren Holm, Flemming Littrup Andersen, Barbara Malene Fischer, Adam Espe Hansen
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Abstract

Purpose: We present a probabilistic approach to medical image analysis that requires, and makes use of, explicit prior information provided by a medical expert. Depending on the choice of prior model the method can be used for image enhancement, analysis, and segmentation.

Methods: The methodology is based on a probabilistic approach to medical image analysis, that allows integration of 1) arbitrarily complex prior information (for which realizations can be generated), 2) information about a convolution operator of the imaging system, and 3) information about the noise in the reconstructed image into a posterior probability density. The method was demonstrated on positron emission tomography (PET) images obtained from a phantom and a patient with lung cancer. The likelihood model (multivariate log-normal) and the convolution operator were derived from phantom data. Two examples of prior information were used to show the potential of the method. The extended Metropolis-Hastings algorithm, a Markov chain Monte Carlo method, was used to generate realizations of the posterior distribution of the tracer activity concentration.

Results: A set of realizations from the posterior was used as the base of a quantitative PET image analysis. The mean and variance of activity concentrations were computed, as well as the probability of high tracer uptake and statistics on the size and activity concentration of high uptake regions. For both phantom and in vivo images, the estimated images of mean activity concentrations appeared to have reduced noise levels, and a sharper outline of high activity regions, as compared to the original PET. The estimated variance of activity concentrations was high at the edges of high activity regions.

Conclusions: The methodology provides a probabilistic approach for medical image analysis that explicitly takes into account medical expert knowledge as prior information. The presented first results indicate the potential of the method to improve the detection of small lesions. The methodology allows for a probabilistic measure of the size and activity level of high uptake regions, with possible long-term perspectives for early detection of cancer, as well as treatment, planning, and follow-up.

使用知情先验的PET图像的概率反卷积
目的我们提出了一种医学图像分析的概率方法,该方法需要并利用医学专家提供的明确的先验信息。根据先前模型的选择,该方法可用于图像增强、分析和分割。方法该方法基于医学图像分析的概率方法,该方法允许将1)任意复杂的先验信息(可以为其生成实现)、2)关于成像系统的卷积算子的信息和3)关于重建图像中的噪声的信息集成到后验概率密度中。该方法在正电子发射断层扫描(PET)图像上得到了证明,该图像来自体模和癌症患者。似然模型(多元对数正态)和卷积算子是从体模数据中导出的。使用两个先验信息的例子来展示该方法的潜力。扩展的Metropolis-Hastings算法是一种马尔可夫链蒙特卡罗方法,用于生成示踪剂活性浓度的后验分布的实现。结果一组来自后方的实现被用作定量PET图像分析的基础。计算活性浓度的平均值和方差,以及高示踪剂摄取的概率和高摄取区域的大小和活性浓度的统计数据。对于体模和体内图像,与原始PET相比,平均活性浓度的估计图像似乎具有降低的噪声水平和更清晰的高活性区域轮廓。在高活性区域的边缘,活性浓度的估计方差较高。结论该方法为医学图像分析提供了一种概率方法,明确地将医学专家知识作为先验信息。所提出的第一个结果表明了该方法提高小病变检测的潜力。该方法允许对高摄取区域的大小和活动水平进行概率测量,并为癌症的早期检测以及治疗、规划和随访提供可能的长期前景。
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