Deep Learning and Classic Machine Learning Approach for Automatic Bone Age Assessment

A. Wibisono, M. Saputri, P. Mursanto, Joachim Rachmad, Alberto, Ari Tri Wibowo Yudasubrata, Fadzil Rizki, Ernest Anderson
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引用次数: 9

Abstract

The rapid growth of technology has initiated the development of automated system in various fields, including medical. One of the application is an automatic bone assessment from left-hand X-ray images which helps radiologist and pediatrician to take a decision regarding children’s growth status. However, one of the major issues in developing this automated system is determining the appropriate technique which can produce effective and reliable prediction, especially when dealing with vast amount of data. The dataset used in this work is taken from RSNA bone age dataset which has 9 GB size consists of 12.611 images with various resolutions. To overcome this problem, we implemented and analyzed two different approaches for automatic bone assessment: deep learning and classic machine learning. For the deep learning approach, we utilized two different pre-trained Convolutional Neural Network (CNN) models, i.e. VGG16 and MobileNets. On the other hand, classic machine learning approach implemented Canny edge detection to extract image feature and several traditional regressor algorithms. Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), Symmetric Mean Absolute Percentage Error (SMAPE), and time execution are employed as evaluation metrics. The results of our experiments show that deep learning based VGG16 model performs better in predicting bone age values compared to classic machine learning. The MAE and RMSE achieved by VGG16 are 14.78 months and 18.93 months respectively. However, classic machine learning approach has better error percentage in general, marked by lower SMAPE, i.e 28.34%. In terms of time execution, classic machine learning approach performs 10 times faster than deep learning based approach.
骨龄自动评估的深度学习和经典机器学习方法
技术的快速发展带动了包括医疗在内的各个领域的自动化系统的发展。其中一个应用程序是左手x射线图像的自动骨骼评估,这有助于放射科医生和儿科医生对儿童的生长状况做出决定。然而,开发这一自动化系统的主要问题之一是确定适当的技术,可以产生有效和可靠的预测,特别是在处理大量数据时。本工作使用的数据集取自RSNA骨龄数据集,该数据集大小为9 GB,由12.611张不同分辨率的图像组成。为了克服这个问题,我们实现并分析了两种不同的自动骨骼评估方法:深度学习和经典机器学习。对于深度学习方法,我们使用了两种不同的预训练卷积神经网络(CNN)模型,即VGG16和MobileNets。另一方面,经典的机器学习方法实现了Canny边缘检测来提取图像特征和几种传统的回归算法。采用平均绝对误差(MAE)、均方根误差(RMSE)、对称平均绝对百分比误差(SMAPE)和执行时间作为评价指标。我们的实验结果表明,与经典机器学习相比,基于深度学习的VGG16模型在预测骨龄值方面表现更好。VGG16的MAE和RMSE分别为14.78个月和18.93个月。而经典的机器学习方法总体上有更好的错误率,SMAPE更低,为28.34%。在时间执行方面,经典机器学习方法的执行速度比基于深度学习的方法快10倍。
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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