ShapeMed-Knee:用于三维股骨建模的数据集和神经形状模型基准

Anthony A. Gatti, Louis Blankemeier, Dave Van Veen, Brian Hargreaves, Scott L. Delp, Garry E. Gold, Feliks Kogan, Akshay S. Chaudhari
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摘要

分析组织和器官的解剖形状对于准确诊断疾病和临床决策至关重要。骨关节炎是一种依赖解剖形状分析的常见疾病,影响着 3,000 万美国人。为了推进骨关节炎的诊断和预后,我们推出了 ShapeMed-Knee,这是一个三维形状数据集,包含 9376 个基于医学影像的股骨头和软骨的高分辨率三维形状。除数据外,ShapeMed-Knee 还包括两个用于评估重建准确性的基准和五个用于评估所学形状表征效用的临床预测任务。利用 ShapeMed-Knee,我们开发并评估了一种新颖的显式-隐式混合神经形状模型,其重建准确率比统计形状模型和隐式神经形状模型高出 40%。我们的混合模型在保存软骨生物标志物方面达到了最先进的性能;它们也是首个成功预测骨关节炎局部结构特征的模型,性能优于应用于原始磁共振图像和分割的形状模型和卷积神经网络。ShapeMed-Knee 数据集可提供医学评估,以重建多个解剖表面,并嵌入有意义的特定疾病信息。ShapeMed-Knee 减少了在医学中应用三维建模的障碍,我们的基准突出表明,三维建模的进步可以加强复杂疾病的诊断和风险分层。我们将免费提供数据集、代码和基准。
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ShapeMed-Knee: A Dataset and Neural Shape Model Benchmark for Modeling 3D Femurs
Analyzing anatomic shapes of tissues and organs is pivotal for accurate disease diagnostics and clinical decision-making. One prominent disease that depends on anatomic shape analysis is osteoarthritis, which affects 30 million Americans. To advance osteoarthritis diagnostics and prognostics, we introduce ShapeMed-Knee, a 3D shape dataset with 9,376 high-resolution, medical-imaging-based 3D shapes of both femur bone and cartilage. Besides data, ShapeMed-Knee includes two benchmarks for assessing reconstruction accuracy and five clinical prediction tasks that assess the utility of learned shape representations. Leveraging ShapeMed-Knee, we develop and evaluate a novel hybrid explicit-implicit neural shape model which achieves up to 40% better reconstruction accuracy than a statistical shape model and implicit neural shape model. Our hybrid models achieve state-of-the-art performance for preserving cartilage biomarkers; they’re also the first models to successfully predict localized structural features of osteoarthritis, outperforming shape models and convolutional neural networks applied to raw magnetic resonance images and segmentations. The ShapeMed-Knee dataset provides medical evaluations to reconstruct multiple anatomic surfaces and embed meaningful disease-specific information. ShapeMed-Knee reduces barriers to applying 3D modeling in medicine, and our benchmarks highlight that advancements in 3D modeling can enhance the diagnosis and risk stratification for complex diseases. The dataset, code, and benchmarks will be made freely accessible.
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