首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >A Supervised Incremental Learning Technique for Automatic Recognition of the Skeletal Maturity, or can a Machine Learn to Assess Bone Age Without Radiological Training from Experts?
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A Supervised Incremental Learning Technique for Automatic Recognition of the Skeletal Maturity, or can a Machine Learn to Assess Bone Age Without Radiological Training from Experts?

机译:一种用于自动识别骨骼成熟度的有监督的增量学习技术,或者在没有专家的放射学培训的情况下,机器可以学会评估骨骼年龄吗?

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摘要

Skeletal maturity estimation is an important medical procedure in the early diagnosis of growth disorders. Traditionally, it is performed by an expert physician or radiologist who determines it based on a visual subjective inspection, the approximated bone age of the child. This task is time consuming and is usually dependent on the judgment of each particular physician. Therefore, automated methods are extremely valuable and desirable. In this paper, we propose and describe an automatic method to estimate skeletal maturity through a supervised and incremental learning approach. Our method determines bone age by comparing aligned images with a K-NN regression classifier. Here, we have solved the difficult task of image alignment by designing a radiological-hand specific Active Appearance Model, which was developed from a varied set of hand-labeled radiological images. By using this active model, our system constructs its own learned database by increasing a set of shape-aligned training images which are incrementally stored. Thus, when a test image arrives at the system, the alignment process is performed before the classification task takes place. For that purpose, we designed an original layout of landmarks to be located in representative regions of the radiographical image of the hand. Our results show that it is possible to use pixels directly as classification features as long as training and testing images have been previously aligned in shape and pose.
机译:骨骼成熟度估计是早期诊断生长失调的重要医学方法。传统上,它是由专业的医师或放射线医师执行的,他们会根据视觉主观检查(孩子的大概骨龄)来确定它。该任务是耗时的,并且通常取决于每个特定医师的判断。因此,自动化方法是非常有价值和令人期望的。在本文中,我们提出并描述了一种通过监督和增量学习方法来估计骨骼成熟的自动方法。我们的方法通过将对齐的图像与K-NN回归分类器进行比较来确定骨骼年龄。在这里,我们通过设计放射线特定的主动外观模型解决了图像对齐的艰巨任务,该模型是从一组经过手工标记的放射线图像中开发出来的。通过使用此活动模型,我们的系统通过增加一组形状对齐的训练图像(增量存储)来构造自己的学习数据库。因此,当测试图像到达系统时,在进行分类任务之前执行对齐过程。为此,我们设计了地标的原始布局,使其位于手部放射线图像的代表性区域中。我们的结果表明,只要训练和测试图像之前已经在形状和姿势上对齐,就可以将像素直接用作分类特征。

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