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首页> 外文期刊>Medical Physics >A 3D deep convolutional neural network approach for the automated measurement of cerebellum tracer uptake in FDG PET‐CT scans
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A 3D deep convolutional neural network approach for the automated measurement of cerebellum tracer uptake in FDG PET‐CT scans

机译:FDG PET-CT扫描中小脑示踪器自动测量的3D深卷积神经网络方法

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摘要

Purpose The purpose of this work was to assess the potential of deep convolutional neural networks in automated measurement of cerebellum tracer uptake in F‐18 fluorodeoxyglucose (FDG) positron emission tomography (PET) scans. Methods Three different three‐dimensional (3D) convolutional neural network architectures (U‐Net, V‐Net, and modified U‐Net) were implemented and compared regarding their performance in 3D cerebellum segmentation in FDG PET scans. For network training and testing, 134 PET scans with corresponding manual volumetric segmentations were utilized. For segmentation performance assessment, a fivefold cross‐validation was used, and the Dice coefficient as well as signed and unsigned distance errors were calculated. In addition, standardized uptake value (SUV) uptake measurement performance was assessed by means of a statistical comparison to an independent reference standard. Furthermore, a comparison to a previously reported active‐shape‐model‐based approach was performed. Results Out of the three convolutional neural networks investigated, the modified U‐Net showed significantly better segmentation performance. It achieved a Dice coefficient of 0.911?±?0.026, a signed distance error of 0.220?±?0.103?mm, and an unsigned distance error of 1.048?±?0.340?mm. When compared to the independent reference standard, SUV uptake measurements produced with the modified U‐Net showed no significant error in slope and intercept. The estimated reduction in total SUV measurement error was 95.1%. Conclusions The presented work demonstrates the potential of deep convolutional neural networks in automated SUV measurement of reference regions. While it focuses on the cerebellum, utilized methods can be generalized to other reference regions like the liver or aortic arch. Future work will focus on combining lesion and reference region analysis into one approach.
机译:目的这项工作的目的是评估F-18氟吲哚葡萄糖(FDG)正电子发射断层扫描(PET)扫描的CERebellum示踪剂吸收自动测量中深度卷积神经网络的潜力。方法采用三种不同的三维(3D)卷积神经网络架构(U-Net,V-Net和修改U-Net),并在FDG PET扫描中的3D小脑分段中的性能进行比较。对于网络培训和测试,利用了具有相应手动体积分割的134个宠物扫描。对于分割性能评估,使用了五倍交叉验证,并计算了骰子系数以及签名和无符号距离误差。此外,通过与独立参考标准的统计比较评估标准化的摄取值(SUV)摄取测量性能。此外,执行与先前报道的基于主动形式模型的方法的比较。结果在调查的三个卷积神经网络中,修改的U-Net显示出明显更好的分割性能。它达到了0.911≤0.026的骰子系数,符号距离误差为0.220?±0.103Ω·mm,和1.048的无符号距离误差为0.340?mm。与独立参考标准相比,使用修改的U-Net产生的SUV摄取测量显示斜率和截距没有显着误差。总SUV测量误差的估计减少为95.1%。结论所提出的工作表明了参考区域的自动化SUV测量中深度卷积神经网络的潜力。虽然它专注于小脑,但是利用方法可以推广到像肝脏或主动脉弓的其他参考区域。未来的工作将集中在一个方法中将病变和参考区域分析结合起来。

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