Transfer Learning Model Training Time Comparison for Osteoporosis Classification on Knee Radiograph of RGB and Grayscale Images

Usman Bello Abubakar, Moussa Mahamat Boukar, Steve A. Adeshina, S. Dane
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Abstract

In terms of financial costs and human suffering, osteoporosis poses a serious public health burden. Reduced bone mass, degeneration of the microarchitecture of bone tissue, and an increased risk of fracture are its main skeletal symptoms. Osteoporosis is caused not just by low bone mineral density, but also by other factors such as age, weight, height, and lifestyle. Recent advancement in Artificial Intelligence (AI) has led to successful applications of expert systems that use Deep Learning techniques for osteoporosis diagnosis based on some modalities such as dental radiographs amongst others. This study uses a dataset of knee radiographs (i.e., knee-Xray images) to apply and compare the training time of two robust transfer learning model algorithms: GoogLeNet, VGG-16, and ResNet50 to classify osteoporosis. The dataset was split into two subcategories using python opencv library: Grayscale Images and Red Green Blue (RGB) images. From the scikit learn python analysis, the training time of the GoogLeNet model on grayscale images and RGB images was 42minutes and 50 minutes respectively. The VGG-16 model training time on grayscale images and RGB images was 37 minutes and 44 minutes respectively. In addition, to compare the diagnostic performance of the two models, several state-of-the-art neural networks metric was used.
RGB与灰度膝关节x线片骨质疏松分类的迁移学习模型训练时间比较
就财务成本和人类痛苦而言,骨质疏松症构成了严重的公共卫生负担。骨量减少、骨组织微结构退化和骨折风险增加是其主要骨骼症状。骨质疏松症不仅是由低骨密度引起的,还与年龄、体重、身高和生活方式等其他因素有关。人工智能(AI)的最新进展导致了专家系统的成功应用,这些专家系统使用深度学习技术进行骨质疏松症诊断,这些诊断基于某些模式,如牙科x光片等。本研究使用膝关节x线片数据集(即膝关节x线图像)应用并比较两种鲁棒迁移学习模型算法:GoogLeNet、VGG-16和ResNet50对骨质疏松症进行分类的训练时间。使用python opencv库将数据集分成两个子类别:灰度图像和红绿蓝(RGB)图像。从scikit learn python分析可知,GoogLeNet模型在灰度图像和RGB图像上的训练时间分别为42分钟和50分钟。VGG-16模型在灰度图像和RGB图像上的训练时间分别为37分钟和44分钟。此外,为了比较两种模型的诊断性能,使用了几种最先进的神经网络度量。
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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