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Physical correction model for automatic correction of intensity non-uniformity in magnetic resonance imaging

机译:自动校正磁共振成像强度不均匀的物理校正模型

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Background and purpose Magnetic resonance imaging (MRI) plays an important role in the field of MR-guided radiotherapy or personalised radiation oncology. The application of quantitative image analyses like radiomics as well as automated tissue characterisation is frequently disturbed by the effect of intensity non-uniformity. We present a novel fully automated physical correction model (PCM) for the reduction of intensity non-uniformity. Materials and methods The proposed algorithm is based on a 3D physically motivated correction model, which maximises the image information expressed by the Shannon entropy. The PCM was evaluated using the coefficient of variation (cv) on 176 MRI datasets of the human brain and abdomen acquired on 1.5 Tesla and 3 Tesla MR scanners. The resulting cv was compared to the cv of the original images and to the results of the established N4 algorithm. Results The PCM algorithm significantly improved the image quality of all considered 1.5 and 3.0 Tesla MR scans compared to the original images ( p Conclusion The proposed PCM algorithm led to a significantly improved image quality compared to the originally acquired images, suggesting that it is applicable to the correction of MRI data. Thus it may help to reduce intensity non-uniformity which is an important step for advanced image analysis.
机译:背景和目的磁共振成像(MRI)在MR引导的放射疗法或个性化放射肿瘤学领域中发挥着重要作用。定量图像分析(例如放射线学)以及自动组织表征的应用通常会受到强度不均匀性的影响。我们提出了一种新颖的全自动物理校正模型(PCM),以减少强度不均匀性。材料和方法所提出的算法基于3D物理校正模型,该模型使Shannon熵表示的图像信息最大化。使用在1.5 Tesla和3 Tesla MR扫描仪上采集的176个人脑和腹部MRI数据集的变异系数(cv)评估PCM。将所得的cv与原始图像的cv以及已建立的N4算法的结果进行比较。结果与原始图像相比,PCM算法显着改善了所有考虑的1.5和3.0 Tesla MR扫描的图像质量(p结论与原始采集的图像相比,所提出的PCM算法导致图像质量显着改善,表明它适用于MRI数据的校正,因此可以帮助减少强度不均匀性,这是进行高级图像分析的重要步骤。

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