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Initial results of applying automatic channel fault detection and diagnosis on small animal APD-based digital PET scanners

机译:在基于APD的小型动物数字PET扫描仪上应用自动通道故障检测和诊断的初步结果

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Optimal image quality in small animal positron emission tomography (PET) is critical to ensure accuracy and reliability of results obtained in biological studies. Indeed, unstable image quality over time can jeopardize longitudinal studies. This is why quality control (QC) procedures are of the utmost importance in order to keep PET scanners at an optimal performance level. Unfortunately, as the scanner technology evolves increasing the number of acquisition channels, so does the scanner operator's effort to keep up with adequate QC procedures. With scanners using one-to-one crystal to photodetector coupling to achieve enhanced spatial resolution and contrast to noise ratio (CNR), the QC workload rapidly increases to unmanageable levels due to the number of independent channels involved. An intelligent system (IS) was proposed to help reduce the QC workload by performing automatic channel fault detection and diagnosis. The IS consists of four high-level modules that employ machine learning methods to perform their tasks: Parameter extraction, Fault detection, Fault prioritization and Fault diagnosis. Ultimately, the IS presents a prioritized list to the operator containing the faulty channels and proposes actions that should be taken to correct them. To validate that the IS can perform QC procedures with minimal operator intervention, it was deployed on a LabPET™ scanner in Sherbrooke and image quality metrics were extracted before and after the channel corrections proposed by the IS where applied. After a single iteration of corrections on sub-optimal scanner settings, a 6.3 % increase in the CNR was observed as well as a 7.0 % decrease of the uniformity percentage standard deviation. These results indicate that the IS can improve scanner performance and further iterations are expected to make the scanner converge towards optimal settings.
机译:小动物正电子发射断层扫描(PET)中的最佳图像质量对于确保生物学研究中获得的结果的准确性和可靠性至关重要。实际上,随着时间的推移,不稳定的图像质量可以危及纵向研究。这就是为什么质量控制(QC)程序最重要的原因,以便在最佳性能水平保持宠物扫描仪。遗憾的是,随着扫描仪技术的发展提高了采集渠道的数量,扫描仪操作员可以努力跟上足够的QC程序。通过使用一对一晶体来光电探测器耦合以实现增强的空间分辨率和与噪声比对比(CNR)的扫描仪,由于所涉及的独立信道的数量,QC工作负载迅速增加到不可分割的水平。提出了一个智能系统(是)以通过执行自动通道故障检测和诊断来帮助减少QC工作负载。该由四个高级模块组成,采用机器学习方法来执行其任务:参数提取,故障检测,故障优先级和故障诊断。最终,该呈现出优先列表的包含故障通道的操作员,并提出应采取的操作来纠正它们。为了验证,可以使用最小的操作员干预执行QC程序,它部署在Sherbrooke中的Labpet™扫描仪上,在应用程序提出的信道校正之前和之后提取图像质量指标。在次优扫描仪设置上的单一迭代后,观察到CNR的增加6.3%,并且均匀性百分比标准偏差的7.0%降低。这些结果表明,可以改善扫描仪性能,并且预计进一步的迭代将使扫描仪达到最佳设置。

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