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Classification and evaluation strategies of auto-segmentation approaches for PET: report of AAPM task group No. 211

机译:PET自动分割方法的分类和评估策略:AAPM任务组211的报告

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摘要

Purpose\ud\udThe purpose of this educational report is to provide an overview of the present state-of-the-art PET auto-segmentation (PET-AS) algorithms and their respective validation, with an emphasis on providing the user with help in understanding the challenges and pitfalls associated with selecting and implementing a PET-AS algorithm for a particular application.\ud\ud\udApproach\ud\udA brief description of the different types of PET-AS algorithms is provided using a classification based on method complexity and type. The advantages and the limitations of the current PET-AS algorithms are highlighted based on current publications and existing comparison studies. A review of the available image datasets and contour evaluation metrics in terms of their applicability for establishing a standardized evaluation of PET-AS algorithms is provided. The performance requirements for the algorithms and their dependence on the application, the radiotracer used and the evaluation criteria are described and discussed. Finally, a procedure for algorithm acceptance and implementation, as well as the complementary role of manual and auto-segmentation are addressed.\ud\udFindings\ud\udA large number of PET-AS algorithms have been developed within the last 20 years. Many of the proposed algorithms are based on either fixed or adaptively selected thresholds. More recently, numerous papers have proposed the use of more advanced image analysis paradigms to perform semi-automated delineation of the PET images. However, the level of algorithm validation is variable and for most published algorithms is either insufficient or inconsistent which prevents recommending a single algorithm. This is compounded by the fact that realistic image configurations with low signal-to-noise ratios (SNR) and heterogeneous tracer distributions have rarely been used. Large variations in the evaluation methods used in the literature point to the need for a standardized evaluation protocol.\ud\ud\udConclusions\ud\udAvailable comparison studies suggest that PET-AS algorithms relying on advanced image analysis paradigms provide generally more accurate segmentation than approaches based on PET activity thresholds, particularly for realistic configurations. However, this may not be the case for simple shape lesions in situations with a narrower range of parameters, where simpler methods may also perform well. Recent algorithms which employ some type of consensus or automatic selection between several PET-AS methods have potential to overcome the limitations of the individual methods when appropriately trained. In either case, accuracy evaluation is required for each different PET scanner and scanning and image reconstruction protocol. For the simpler, less robust approaches, adaptation to scanning conditions, tumor type, and tumor location by optimization of parameters is necessary. The results from the method evaluation stage can be used to estimate the contouring uncertainty. All PET-AS contours should be critically verified by a physician. A standard test, i.e., a benchmark dedicated to evaluating both existing and future PET-AS algorithms needs to be designed, to aid clinicians in evaluating and selecting PET-AS algorithms and to establish performance limits for their acceptance for clinical use. The initial steps toward designing and building such a standard are undertaken by the task group members.
机译:目的\ ud \ ud本教育报告的目的是概述当前最新的PET自动细分(PET-AS)算法及其各自的验证,重点是在以下方面为用户提供帮助:了解针对特定应用选择和实现PET-AS算法的挑战和陷阱。\ ud \ ud \ udApproach \ ud \ ud使用基于方法复杂度的分类对不同类型的PET-AS算法进行了简要说明和类型。基于当前出版物和现有比较研究,突出了当前PET-AS算法的优点和局限性。提供了对可用图像数据集和轮廓评估指标在建立PET-AS算法标准化评估方面的适用性的综述。描述并讨论了算法的性能要求及其对应用程序的依赖,所使用的放射性示踪剂和评估标准。最后,解决了算法接受和实现的过程,以及手动和自动分段的补充作用。\ ud \ udFindings \ ud \ ud在过去的20年中,已经开发了许多PET-AS算法。许多提出的算法都基于固定或自适应选择的阈值。最近,许多论文提出了使用更高级的图像分析范例来执行PET图像的半自动描绘。但是,算法验证的级别是可变的,并且对于大多数已发布的算法而言,要么不够充分要么不一致,从而无法推荐使用单个算法。由于很少使用具有低信噪比(SNR)和异构示踪剂分布的逼真的图像配置,这一事实使情况更加复杂。文献中使用的评估方法差异很大,因此需要标准化的评估协议。\ ud \ ud \ ud结论\ ud \ ud可用的比较研究表明,依赖于高级图像分析范式的PET-AS算法通常比以下方法更准确地进行细分基于PET活性阈值的方法,特别是针对实际配置的方法。但是,在参数范围较窄的情况下,对于简单的形状病变可能不是这种情况,在这种情况下,更简单的方法也可能效果很好。在几种PET-AS方法之间采用某种类型的共识或自动选择的最新算法,在经过适当训练后有可能克服各个方法的局限性。无论哪种情况,都需要对每个不同的PET扫描仪以及扫描和图像重建协议进行准确性评估。对于更简单,更不可靠的方法,必须通过优化参数来适应扫描条件,肿瘤类型和肿瘤位置。方法评估阶段的结果可用于估计轮廓不确定性。所有PET-AS轮廓都应由医生严格验证。需要设计一个标准测试,即专门用于评估现有和将来的PET-AS算法的基准,以帮助临床医生评估和选择PET-AS算法,并确定其接受临床使用的性能极限。设计和建立这种标准的最初步骤由任务组成员执行。

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