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Manifold Ordinal-Mixup for Ordered Classes in TW3-Based Bone Age Assessment

机译:歧管序数混合在TW3基于骨骼年龄评估中的订购课程

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Bone age assessment (BAA) is vital to detecting abnormal growth in children and can be used to investigate its cause. Automating assessments could benefit radiologists by reducing reader variability and reading time. Recently, deep learning (DL) algorithms have been devised to automate BAA using hand X-ray images mostly based on GP-based methods. In contrast to GP-based methods where radiologists compare the whole hand's X-ray image with standard images in the GP-atlas, TW3 methods operate by analyzing major bones in the hand image to estimate the subject's bone age. It is thus more attractive to automate TW3 methods for their lower reader variability and higher accuracy; however, the inaccessibility of bone maturity stages inhibited wide-spread application of DL in automating TW3 systems. In this work, we propose an unprecedented DL-based TW3 system by training deep neural networks (DNNs) to extract region of interest (RoI) patches in hand images for all 13 major bones and estimate the bone's maturity stage which in turn can be used to estimate the bone age. For this purpose, we designed a novel loss function which considers ordinal relations among classes corresponding to maturity stages, and show that DNNs trained using our loss not only attains lower mean absolute error, but also learns a path-connected latent space illuminating the inherent ordinal relations among classes. Our experiments show that DNNs trained using the proposed loss outperform other DL algorithms, known to excel in other tasks, in estimating maturity stage and bone age.
机译:骨龄评估(BAA)对检测儿童的异常生长至关重要,可用于调查其原因。通过减少读者的可变性和阅读时间,自动化评估可以使放射科医师受益。最近,已经设计了深度学习(DL)算法,以使用基于GP的方法使用手X射线图像自动化BAA。与基于GP的方法形成对比,其中放射科医师将整个手的X射线图像与GP-ATLAS中的标准图像进行比较,TW3方法通过分析手形图像中的主要骨骼来估计受试者的骨骼时代。因此,更具吸引力,可以自动化TW3方法,以便较低的读卡器可变性和更高的精度;然而,骨成熟阶段的不良是在自动化TW3系统中抑制DL的广泛应用。在这项工作中,我们通过培训深度神经网络(DNN)提出前所未有的DL-TW3系统,以便为所有13个主要骨骼提取患者区域(ROI)斑块,并估计又可以使用的骨骼成熟阶段估计骨骼时代。为此目的,我们设计了一种新的损失函数,其考虑了与成熟阶段对应的课程之间的序数关系,并显示使用我们的损失训练的DNN不仅达到较低的平均绝对误差,而且还要学习照明固有序列的路径连接的潜空间课堂关系。我们的实验表明,使用所提出的损失训练的DNN训练,估计成熟期和骨骼时代在其他任务中擅长其他任务中的其他DL算法。

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