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Accurate Automated Volumetry of Cartilage of the Knee Using Convolutional Neural Networks: Data From the Osteoarthritis Initiative

机译:使用卷积神经网络进行的膝关节软骨自动精确容积测定:来自骨关节炎计划的数据

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Volumetry of the cartilage of the knee, as needed for the assessment of knee osteoarthritis (KOA), is typically performed in a tedious and subjective process. We present an automated segmentation-based method for the quantification of cartilage volume by employing 3D Convolutional Neural Networks (CNNs). CNNs were trained in a supervised manner using magnetic resonance imaging data as well as cartilage volumetry readings given by clinical experts for 1378 subjects. It was shown that 3D CNNs can be employed for cartilage volumetry with an accuracy similar to expert volumetry readings. In future, accurate automated cartilage volumetry might support both, diagnosis of KOA as well as assessment of KOA progression via longitudinal analysis.
机译:评估膝盖骨关节炎(KOA)所需要的膝盖软骨容积测定通常是在乏味和主观的过程中进行的。通过使用3D卷积神经网络(CNN),我们提出了一种基于自动分割的量化软骨体积的方法。使用核磁共振成像数据以及临床专家为1378名受试者提供的软骨体积读数,以有监督的方式训练了CNN。结果表明,3D CNN可以用于软骨量测,其准确性类似于专家量测仪的读数。将来,精确的自动化软骨量测定可能会支持KOA的诊断以及通过纵向分析评估KOA的进展。

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