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基于全卷积神经网络生成的 MRI 合成 CT 的蒙特卡罗剂量计算在伽玛刀放射外科中的应用。

Monte Carlo Dose Calculation Using MRI Based Synthetic CT Generated by Fully Convolutional Neural Network for Gamma Knife Radiosurgery.

机构信息

114516University Hospitals Cleveland Medical Center, Cleveland, USA.

出版信息

Technol Cancer Res Treat. 2021 Jan-Dec;20:15330338211046433. doi: 10.1177/15330338211046433.

Abstract

The aim of this work is to study the dosimetric effect from generated synthetic computed tomography (sCT) from magnetic resonance (MR) images using a deep learning algorithm for Gamma Knife (GK) stereotactic radiosurgery (SRS). The Monte Carlo (MC) method is used for dose calculations. Thirty patients were retrospectively selected with our institution IRB's approval. All patients were treated with GK SRS based on T1-weighted MR images and also underwent conventional external beam treatment with a CT scan. Image datasets were preprocessed with registration and were normalized to obtain similar intensity for the pairs of MR and CT images. A deep convolutional neural network arranged in an encoder-decoder fashion was used to learn the direct mapping from MR to the corresponding CT. A number of metrics including the voxel-wise mean error (ME) and mean absolute error (MAE) were used for evaluating the difference between generated sCT and the true CT. To study the dosimetric accuracy, MC simulations were performed based on the true CT and sCT using the same treatment parameters. The method produced an MAE of 86.6 ± 34.1 Hundsfield units (HU) and a mean squared error (MSE) of 160.9 ± 32.8. The mean Dice similarity coefficient was 0.82 ± 0.05 for HU > 200. The difference for dose-volume parameter D95 between the ground true dose and the dose calculated with sCT was 1.1% if a synthetic CT-to-density table was used, and 4.9% compared with the calculations based on the water-brain phantom.

摘要

本研究旨在利用深度学习算法从磁共振(MR)图像生成合成计算断层摄影术(sCT),研究其在伽玛刀(GK)立体定向放射外科(SRS)中的剂量学效应。采用蒙特卡罗(MC)方法进行剂量计算。本研究回顾性选择了 30 名患者,经机构审查委员会(IRB)批准。所有患者均根据 T1 加权 MR 图像接受 GK SRS 治疗,并接受 CT 扫描的常规外束治疗。对图像数据集进行了配准预处理,并进行归一化处理,以使 MR 和 CT 图像的强度相似。采用一种以编码器-解码器形式排列的深度卷积神经网络,直接从 MR 图像学习到相应的 CT 图像。采用体素级平均误差(ME)和平均绝对误差(MAE)等多项指标评估生成 sCT 与真实 CT 之间的差异。为了研究剂量学准确性,根据真实 CT 和 sCT 采用相同的治疗参数进行 MC 模拟。该方法的 MAE 为 86.6±34.1 亨氏单位(HU),MSE 为 160.9±32.8。HU>200 时,Dice 相似系数的平均值为 0.82±0.05。如果使用合成 CT 到密度表,sCT 计算的 D95 与真实剂量之间的剂量体积参数差异为 1.1%,与基于水脑体模的计算相比差异为 4.9%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/39be/8504229/eda848d29da2/10.1177_15330338211046433-fig1.jpg

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