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Deep Learning Based Approach to Quantification of PET Tracer Uptake in Small Tumors

机译:基于深度学习的小肿瘤宠物跟踪器摄取量的方法

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In Positron Emission Tomography (PET), quantification of tumor radiotracer uptake is mainly performed using standardised uptake value and related methods. However, the accuracy of these metrics is limited by the poor spatial resolution and noise properties of PET images. Therefore, there is a great need for new methods that allow for accurate and reproducible quantification of tumor radiotracer uptake, particularly for small regions. In this work, we propose a deep learning approach to improve quantification of PET tracer uptake in small tumors using a 3D convolutional neural network. The network was trained on simulated images that present 3D shapes with typical tumor tracer uptake distributions ('ground truth distributions'), and the corresponding set of simulated PET images. The network was tested on unseen simulated PET images and was shown to robustly estimate the original radiotracer uptake, yielding improved images both in terms of shape and activity distribution. The same network was successful when applied to 3D tumors acquired from physical phantom PET scans.
机译:在正电子发射断层扫描(PET)中,主要使用标准化摄取值和相关方法进行肿瘤放射性机构吸收的定量。然而,这些度量的准确性受到PET图像的空间分辨率和噪声特性的限制。因此,对肿瘤放射机构摄取的准确和可再现量化的新方法非常需要,特别是对于小区域。在这项工作中,我们提出了一种深入的学习方法,可以使用3D卷积神经网络来改善小肿瘤中PET示踪剂吸收的量化。该网络培训了在具有典型肿瘤示踪剂摄取分布('地形事实分布')和相应的模拟PET图像的模拟图像上培训。在看不见的模拟PET图像上测试了网络,并且被证明是鲁布布利地估计原始放射性机构吸收,从而在形状和活性分布方面产生改善的图像。当应用于从物理幻影宠物扫描获得的3D肿瘤时,同样的网络是成功的。

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