Deep learning-based automated bone age estimation for Saudi patients on hand radiograph images: a retrospective study.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Zuhal Y Hamd, Amal I Alorainy, Mohammed A Alharbi, Anas Hamdoun, Arwa Alkhedeiri, Shaden Alhegail, Nurul Absar, Mayeen Uddin Khandaker, Alexander F I Osman
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引用次数: 0

Abstract

Purpose: In pediatric medicine, precise estimation of bone age is essential for skeletal maturity evaluation, growth disorder diagnosis, and therapeutic intervention planning. Conventional techniques for determining bone age depend on radiologists' subjective judgments, which may lead to non-negligible differences in the estimated bone age. This study proposes a deep learning-based model utilizing a fully connected convolutional neural network(CNN) to predict bone age from left-hand radiographs.

Methods: The data set used in this study, consisting of 473 patients, was retrospectively retrieved from the PACS (Picture Achieving and Communication System) of a single institution. We developed a fully connected CNN consisting of four convolutional blocks, three fully connected layers, and a single neuron as output. The model was trained and validated on 80% of the data using the mean-squared error as a cost function to minimize the difference between the predicted and reference bone age values through the Adam optimization algorithm. Data augmentation was applied to the training and validation sets yielded in doubling the data samples. The performance of the trained model was evaluated on a test data set (20%) using various metrics including, the mean absolute error (MAE), median absolute error (MedAE), root-mean-squared error (RMSE), and mean absolute percentage error (MAPE). The code of the developed model for predicting the bone age in this study is available publicly on GitHub at https://github.com/afiosman/deep-learning-based-bone-age-estimation .

Results: Experimental results demonstrate the sound capabilities of our model in predicting the bone age on the left-hand radiographs as in the majority of the cases, the predicted bone ages and reference bone ages are nearly close to each other with a calculated MAE of 2.3 [1.9, 2.7; 0.95 confidence level] years, MedAE of 2.1 years, RMAE of 3.0 [1.5, 4.5; 0.95 confidence level] years, and MAPE of 0.29 (29%) on the test data set.

Conclusion: These findings highlight the usability of estimating the bone age from left-hand radiographs, helping radiologists to verify their own results considering the margin of error on the model. The performance of our proposed model could be improved with additional refining and validation.

基于深度学习的沙特病人手部放射影像骨龄自动估算:一项回顾性研究。
目的:在儿科医学中,精确估算骨龄对骨骼成熟度评估、生长障碍诊断和治疗干预计划至关重要。确定骨龄的传统技术依赖于放射科医生的主观判断,这可能导致估计骨龄存在不可忽略的差异。本研究提出了一种基于深度学习的模型,利用全连接卷积神经网络(CNN)来预测左手X光片的骨龄:本研究使用的数据集由 473 名患者组成,是从一家机构的 PACS(图像采集与通信系统)中回顾性获取的。我们开发了一个全连接 CNN,由四个卷积块、三个全连接层和一个作为输出的神经元组成。该模型使用均方误差作为成本函数,通过亚当优化算法使预测值和参考骨龄值之间的差异最小化,并在 80% 的数据上进行了训练和验证。对训练集和验证集进行了数据扩增,使数据样本增加了一倍。在测试数据集(20%)上使用各种指标评估了训练模型的性能,包括平均绝对误差(MAE)、中值绝对误差(MedAE)、均方根误差(RMSE)和平均绝对百分比误差(MAPE)。本研究中用于预测骨龄的模型代码已在 GitHub 上公开,网址为 https://github.com/afiosman/deep-learning-based-bone-age-estimation .结果:实验结果表明,我们的模型在预测左侧X光片骨龄方面具有良好的能力,因为在大多数情况下,预测骨龄和参考骨龄几乎接近,在测试数据集上计算出的MAE为2.3 [1.9, 2.7; 0.95置信水平]年,MedAE为2.1年,RMAE为3.0 [1.5, 4.5; 0.95置信水平]年,MAPE为0.29 (29%):这些研究结果凸显了从左侧X光片估算骨龄的实用性,有助于放射科医生在考虑到模型误差范围的情况下验证自己的结果。通过进一步的改进和验证,我们提出的模型的性能还可以得到提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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