Pouya Khomand, M. Sabeti, R. Boostani, E. Moradi, Mahmoud Odeh, M. Al-Mousa
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引用次数: 0
摘要
骨龄评估(SBAA)是家长和医生评估儿童生长发育不规律的重要手段。SBAA过程由放射科医生根据Greulich and Pyle (GP)或Tanner-Whitehouse 2 (TW2)方法目视检查左手放射学图像进行。然而,人的眼睛有其自身的局限性,因此放射科医生的视觉检查过程涉及一定程度的误差和个人内部的可变性。为了解决这些缺点,本文提出了一种基于深度学习的方法来精确地处理这些x射线图像。所使用的数据库包含1391张来自洛杉矶儿童医院的左手x射线图像和200张来自设拉子Namazi医院的不同年龄和性别的伊朗儿童的左手x射线图像。结果表明,该模型在该领域的有效性(平均绝对误差为0.89)。
Deep Learning for Automatic Determination of Bone Age in Children
Skeletal bone age assessment (SBAA) is very important for both sides of parents and physicians to evaluate the irregular growth of children. SBAA process is carried out by radiologists who visually inspect the radiology image of the left hand according to the Greulich and Pyle (GP) or the Tanner-Whitehouse 2 (TW2) methods. However, human eyes have their own limitations and therefore the visual inspection procedure by radiologist involves a degree of error and also intra personal variability. To address these drawbacks, a deep learning-based approach is proposed here to precisely act on these X-ray images. The employed database contains 1391 X-ray left-hand image from Los Angeles children's hospital and 200 left hand x-ray image from different age and gender from Iranian children from Namazi hospital of Shiraz. Our results demonstrate the efficiency of proposed model (mean absolute error of 0.89) in this field.