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Fuzzy hidden Markov chains segmentation for volume determination and quantitation in PET

机译:模糊隐马尔可夫链分割用于PET中的体积测定和定量

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摘要

Accurate volume of interest (VOI) estimation in PET is crucial in different oncology applications such as response to therapy evaluation and radiotherapy treatment planning. The objective of our study was to evaluate the performance of the proposed algorithm for automatic lesion volume delineation; namely the Fuzzy Hidden Markov Chains (FHMC), with that of current state of the art in clinical practice threshold based techniques. As the classical Hidden Markov Chain (HMC) algorithm, FHMC takes into account noise, voxel’s intensity and spatial correlation, in order to classify a voxel as background or functional VOI. However the novelty of the fuzzy model consists of the inclusion of an estimation of imprecision, which should subsequently lead to a better modelling of the “fuzzy” nature of the object on interest boundaries in emission tomography data. The performance of the algorithms has been assessed on both simulated and acquired datasets of the IEC phantom, covering a large range of spherical lesion sizes (from 10 to 37mm), contrast ratios (4:1 and 8:1) and image noise levels. Both lesion activity recovery and VOI determination tasks were assessed in reconstructed images using two different voxel sizes (8mm3 and 64mm3). In order to account for both the functional volume location and its size, the concept of % classification errors was introduced in the evaluation of volume segmentation using the simulated datasets. Results reveal that FHMC performs substantially better than the threshold based methodology for functional volume determination or activity concentration recovery considering a contrast ratio of 4:1 and lesion sizes of <28mm. Furthermore differences between classification and volume estimation errors evaluated were smaller for the segmented volumes provided by the FHMC algorithm. Finally, the performance of the automatic algorithms was less susceptible to image noise levels in comparison to the threshold based techniques. The analysis of both simulated and acquired datasets led to similar results and conclusions as far as the performance of segmentation algorithms under evaluation is concerned.
机译:在不同的肿瘤学应用中,例如对治疗评估和放疗治疗计划的响应,PET中准确的目标剂量(VOI)估计至关重要。我们研究的目的是评估提出的自动病变体积描绘算法的性能。即模糊隐马尔可夫链(FHMC),以及基于临床实践阈值技术的最新技术。作为经典的隐马尔可夫链(HMC)算法,FHMC考虑了噪声,体素的强度和空间相关性,以便将体素分类为背景或功能VOI。然而,模糊模型的新颖性包括对不精确性的估计,这随后将导致对放射线断层扫描数据中感兴趣边界上物体的“模糊”性质进行更好的建模。算法的性能已在IEC幻像的模拟和采集数据集上进行了评估,涵盖了球形病变尺寸(从10到37mm),对比度(4:1和8:1)和图像噪声水平的大范围。使用两种不同的体素大小(8mm 3 和64mm 3 )在重建图像中评估病变活动恢复和VOI确定任务。为了考虑功能体积的位置及其大小,在使用模拟数据集进行体积分割的评估中引入了%分类错误的概念。结果表明,考虑到4:1的对比度和<28mm的病变尺寸,FHMC在功能体积测定或活性浓度恢复方面的性能明显优于基于阈值的方法。此外,对于FHMC算法提供的分段体积,评估的分类和体积估计误差之间的差异较小。最后,与基于阈值的技术相比,自动算法的性能不易受到图像噪声水平的影响。就评估中的分割算法的性能而言,对模拟数据集和采集数据集的分析得出相似的结果和结论。

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