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Semantic Segmentation of Femur Bone from MRI Images of Patients with Hematologic Malignancies

机译:血液学恶性肿瘤患者MRI图像股骨骨骼的语义分割

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Femur bone marrow MRI images may provide more information for better characterizing hematologic malignancies and understanding their prognostics compared with blind bone marrow biopsies and aspirates. However, the interpretation of femur bone marrow MRI images is time-consuming and intervariable among different physicians. To develop a computer-aided diagnosis system for hematologic malignancies using femur bone marrow MRI images, we propose a fully automatic method for femur bone segmentation using deep learning. Five classical pretrained networks such as U-Net and Segnet based on a backbone of Resnet50 network are used for femoral bone segmentation. We conducted an experimental study on 200 cases with hematologic malignancies. Through training using 149 patients' T1-enhanced MRI images, we obtained an average Dice coefficient of 0.907 using Segnet based on a validation using 38 patients' T1-enhanced MRI images.
机译:股骨骨髓MRI图像可以提供更多信息,以便与盲骨骨髓活组织检查和吸气相比,更好地表征血液学恶性肿瘤并理解他们的预后。然而,股骨骨髓MRI图像的解释是不同的医生之间的耗时和间隔。使用股骨骨髓MRI图像开发一种用于血液学恶性肿瘤的计算机辅助诊断系统,我们向使用深度学习提出了一种全自动的股骨分割方法。基于Reset50网络的骨干的U-Net和Segnet等五种经典掠夺网络用于股骨骨分割。我们对200例血液学恶性肿瘤进行了实验研究。通过使用149名患者的T1增强MRI图像的培训,我们使用38名患者T1增强MRI图像的验证使用SEGNET获得了0.907的平均骰子系数。

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