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Automatic Tumor Segmentation With a Convolutional Neural Network in Multiparametric MRI: Influence of Distortion Correction

机译:卷积神经网络在多参数MRI中的自动肿瘤分割:失真校正的影响

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摘要

Precise tumor segmentation is a crucial task in radiation therapy planning. Convolutional neural networks (CNNs) are among the highest scoring automatic approaches for tumor segmentation. We investigate the difference in segmentation performance of geometrically distorted and corrected diffusion-weighted data using data of patients with head and neck tumors; 18 patients with head and neck tumors underwent multiparametric magnetic resonance imaging, including T2w, T1w, T2*, perfusion (ktrans), and apparent diffusion coefficient (ADC) measurements. Owing to strong geometrical distortions in diffusion-weighted echo planar imaging in the head and neck region, ADC data were additionally distortion corrected. To investigate the influence of geometrical correction, first 14 CNNs were trained on data with geometrically corrected ADC and another 14 CNNs were trained using data without the correction on different samples of 13 patients for training and 4 patients for validation each. The different sets were each trained from scratch using randomly initialized weights, but the training data distributions were pairwise equal for corrected and uncorrected data. Segmentation performance was evaluated on the remaining 1 test-patient for each of the 14 sets. The CNN segmentation performance scored an average Dice coefficient of 0.40 ± 0.18 for data including distortion-corrected ADC and 0.37 ± 0.21 for uncorrected data. Paired t test revealed that the performance was not significantly different (P = .313). Thus, geometrical distortion on diffusion-weighted imaging data in patients with head and neck tumor does not significantly impair CNN segmentation performance in use.
机译:精确的肿瘤分割是放射治疗计划中的关键任务。卷积神经网络(CNN)是得分最高的自动肿瘤分割方法之一。我们使用头颈部肿瘤患者的数据调查几何畸变和校正后的弥散加权数据的分割性能差异。对18例头颈部肿瘤患者进行了多参数磁共振成像,包括T2w,T1w,T2 *,灌注(ktrans)和表观扩散系数(ADC)测量。由于在头颈部区域的扩散加权回波平面成像中存在强烈的几何畸变,因此还对ADC数据进行了畸变校正。为了研究几何校正的影响,首先对13个CNN进行了几何校正ADC的数据训练,另外14个CNN使用了没有校正的数据对13名患者进行了训练,对4名患者进行了验证。使用随机初始化的权重从头开始训练不同的集合,但是对于校正和未校正的数据,训练数据分布成对相等。针对14组中的每组,对其余1名测试患者进行了细分效果评估。 CNN分割性能对包括失真校正ADC的数据的平均Dice系数得分为0.40±0.18,对于未经校正的数据的得分为0.37±0.21。配对t检验显示,性能没有显着差异(P = .313)。因此,头颈部肿瘤患者的扩散加权成像数据的几何畸变不会明显损害使用中的CNN分割性能。

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