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Automated Measurement of Pancreatic Fat and Iron Concentration Using Multi-Echo and T1-Weighted MRI Data

机译:使用多回波和T1加权MRI数据自动测量胰腺脂肪和铁的浓度

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We present an automated method for estimation of proton density fat fraction and iron concentration in the pancreas using both structural and quantitative imaging data present in the UK Biobank abdominal MRI acquisition protocol. Our method relies on automatic segmentation of 3D T1-weighted MRI data using a convolutional neural network and extracting the location of the multi -echo slice through the segmented volume. We finally estimate the fat and iron content in the pancreas using the extracted segmentation as a mask on the multi-echo data. Our segmentation model achieves a mean dice similarity coefficient of 0.842±0.071 on unseen data, which is comparable to the current state of the art for 3D segmentation of the pancreas. The proposed method is efficient and robust and enables an enhanced analysis of spatial distribution of proton density fat fraction and iron concentration over the current practice of manually placing regions of interest on often ambiguous multi-echo data.
机译:我们提出了一种自动化的方法,用于使用UK Biobank腹部MRI采集协议中存在的结构和定量成像数据来评估胰腺中的质子密度,脂肪含量和铁浓度。我们的方法依靠使用卷积神经网络对3D T1加权MRI数据进行自动分割,并通过分割后的体积提取多回波切片的位置。我们最终使用提取的分割作为多回波数据的掩码来估计胰腺中的脂肪和铁含量。我们的分割模型在看不见的数据上获得的平均骰子相似系数为0.842±0.071,这与胰腺3D分割的当前技术水平相当。所提出的方法是有效且鲁棒的,并且能够在当前通常将模棱两可的多回波数据手动放置感兴趣区域的实践中,对质子密度脂肪分数和铁浓度的空间分布进行增强的分析。

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