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首页> 外文期刊>Biomedical Engineering Letters >Bone age estimation using deep learning and hand X-ray images
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Bone age estimation using deep learning and hand X-ray images

机译:使用深度学习和手X射线图像的骨骼年龄估计

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摘要

Bones during growth period undergo substantial changes in shape and size. X-ray imaging has been routinely used for bone growth diagnosis purpose. Hand has been the part of choice for X-ray imaging due to its high bone parts count and relatively low radiation requirement. Traditionally, bone age estimation has been performed by referencing atlases of images of hand bone regions where aging-related metamorphoses are most conspicuous. Tanner and Whitehouse’ and Greulich and Pyle’s are some well known ones. The process entails manual comparison of subject’s hand region images against a set of corresponding images in the atlases. It is desired to estimate bone age from hand images in an automated manner, which would facilitate more efficient estimation in terms of time and labor cost and enables quantitative and objective assessments. Deep learning method has proved to be a viable approach in a number of application domains. It is also gaining wider grounds in medical image analysis. A cascaded structure of layers can be trained to mimic the image-based cognitive and inference processes of human and other higher organisms. We employed a set of well known deep learning network architectures. In the current study, 3000 images were manually curated to mark feature points on hands. They were used as reference points in removing unnecessary image regions and to retain regions of interest (ROI) relevant to age estimation. Different ROI’s were defined and used—that of rather small area mostly made up of carpal and metacarpal bones and that includes most of phalanges in addition. Irrelevant intensity variation across cropped images was minimized by applying histogram equalization. In consideration of the established gender difference in growth rates, separate gender models were built. Certain age range image data are far scarcer and exhibit rather large excursion in morphology from other age ranges—e.g. infancy and very early childhood. Many studies excluded them and addressed only elder subjects in later developmental stages. Considering infant age group’s diagnosis demand is just as valid as elder groups’, we included entire age ranges for our study. A number of different deep learning architectures were trained with varying region of interest definitions. Smallest mean absolute difference error was 8.890?months for a test set of 400 images. This study was preliminary, and in the future, we plan to investigate alternative approaches not taken in the present study.
机译:生长期间的骨骼发生大幅度的形状和大小。 X射线成像经常用于骨骼生长诊断目的。由于其高骨零件计数和相对低的辐射要求,手已经成为X射线成像的首选部分。传统上,通过参考手骨区域的图像的地图集进行骨龄估计,其中与老化相关的变质最显着。 Tanner和Whitehouse'和Greulich和Pyle是一些着名的。该过程需要对atlase中的一组相应图像进行对象的手区域图像进行手动比较。期望以自动方式从手图像估计骨骼年龄,这将在时间和劳动力成本方面促进更有效的估计,并实现定量和客观评估。深入学习方法已被证明是在许多应用领域中的可行方法。它还在医学图像分析中获得更广泛的理由。可以训练一条级联的层结构,以模仿人和其他更高生物的基于图像的认知和推理过程。我们雇用了一套众所周知的深度学习网络架构。在目前的研究中,手动策划3000个图像以标记手上的特征点。它们被用作去除不必要的图像区域并保留与年龄估计相关的感兴趣区域(ROI)的参考点。不同的投资回报率是定义和使用的 - 相当小的区域主要由腕骨和糖尿病骨骼组成,并且还包括大部分斑夸。通过施加直方图均衡,最小化曲方测量图像的无关强度变化。考虑到增长率的既定性别差异,建立了单独的性别模式。某些年龄范围图像数据远稀少,并且从其他年龄的形态学展示相当大的偏移 - 例如 - 例如。婴儿期和非常早期的童年。许多研究除了他们,并在后期的发展阶段只解决了老年人。考虑到婴儿年龄组的诊断需求与长者群体一样有效,我们包括整个学习的范围。许多不同的深度学习架构接受了不同的利益定义区域。最小的平均绝对差异错误为8.890?对于400张图像的测试集几个月。本研究初步,在未来,我们计划调查本研究中未采取的替代方法。

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