Montin Eros, Deniz Cem M, Kijowski Richard, Youm Thomas, Lattanzi Riccardo
Bernard and Irene Schwartz Center for Biomedical Imaging, Department of Radiology, New York University Grossman School of Medicine, New York, NY, USA.
Center for Advanced Imaging Innovation and Research (CAIR), Department of Radiology, New York University Grossman School of Medicine, New York, NY, USA.
Inform Med Unlocked. 2024;45. doi: 10.1016/j.imu.2023.101444. Epub 2024 Jan 6.
Different pathologies of the hip are characterized by the abnormal shape of the bony structures of the joint, namely the femur and the acetabulum. Three-dimensional (3D) models of the hip can be used for diagnosis, biomechanical simulation, and planning of surgical treatments. These models can be generated by building 3D surfaces of the joint's structures segmented on magnetic resonance (MR) images. Deep learning can avoid time-consuming manual segmentations, but its performance depends on the amount and quality of the available training data. Data augmentation and transfer learning are two approaches used when there is only a limited number of datasets. In particular, data augmentation can be used to artificially increase the size and diversity of the training datasets, whereas transfer learning can be used to build the desired model on top of a model previously trained with similar data. This study investigates the effect of data augmentation and transfer learning on the performance of deep learning for the automatic segmentation of the femur and acetabulum on 3D MR images of patients diagnosed with femoroacetabular impingement. Transfer learning was applied starting from a model trained for the segmentation of the bony structures of the shoulder joint, which bears some resemblance to the hip joint. Our results suggest that data augmentation is more effective than transfer learning, yielding a Dice similarity coefficient compared to ground-truth manual segmentations of 0.84 and 0.89 for the acetabulum and femur, respectively, whereas the Dice coefficient was 0.78 and 0.88 for the model based on transfer learning. The Accuracy for the two anatomical regions was 0.95 and 0.97 when using data augmentation, and 0.87 and 0.96 when using transfer learning. Data augmentation can improve the performance of deep learning models by increasing the diversity of the training dataset and making the models more robust to noise and variations in image quality. The proposed segmentation model could be combined with radiomic analysis for the automatic evaluation of hip pathologies.
髋关节的不同病理状况表现为关节骨骼结构(即股骨和髋臼)的异常形状。髋关节的三维(3D)模型可用于诊断、生物力学模拟以及手术治疗规划。这些模型可以通过构建在磁共振(MR)图像上分割出的关节结构的3D表面来生成。深度学习可以避免耗时的手动分割,但其性能取决于可用训练数据的数量和质量。当数据集数量有限时,数据增强和迁移学习是两种常用的方法。特别是,数据增强可用于人为增加训练数据集的大小和多样性,而迁移学习可用于在先前使用类似数据训练的模型基础上构建所需模型。本研究调查了数据增强和迁移学习对深度学习性能的影响,该深度学习用于对诊断为股骨髋臼撞击症患者的3D MR图像上的股骨和髋臼进行自动分割。迁移学习从一个为肩关节骨骼结构分割训练的模型开始应用,肩关节与髋关节有一些相似之处。我们的结果表明,数据增强比迁移学习更有效,与真实手动分割相比,髋臼和股骨的Dice相似系数分别为0.84和0.89,而基于迁移学习的模型的Dice系数为0.78和0.88。使用数据增强时,两个解剖区域的准确率分别为0.95和0.9