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Deep Learning for Osteoporosis Classification Using Hip Radiographs and Patient Clinical Covariates

机译:使用HIP X线本和患者临床协变者深入学习骨质疏松症分类

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摘要

This study considers the use of deep learning to diagnose osteoporosis from hip radiographs, and whether adding clinical data improves diagnostic performance over the image mode alone. For objective labeling, we collected a dataset containing 1131 images from patients who underwent both skeletal bone mineral density measurement and hip radiography at a single general hospital between 2014 and 2019. Osteoporosis was assessed from the hip radiographs using five convolutional neural network (CNN) models. We also investigated ensemble models with clinical covariates added to each CNN. The accuracy, precision, recall, specificity, negative predictive value (npv), F1 score, and area under the curve (AUC) score were calculated for each network. In the evaluation of the five CNN models using only hip radiographs, GoogleNet and EfficientNet b3 exhibited the best accuracy, precision, and specificity. Among the five ensemble models, EfficientNet b3 exhibited the best accuracy, recall, npv, F1 score, and AUC score when patient variables were included. The CNN models diagnosed osteoporosis from hip radiographs with high accuracy, and their performance improved further with the addition of clinical covariates from patient records.
机译:本研究考虑了深度学习来诊断骨质疏松症免于HIP X线片,以及添加临床数据单独提高图像模式的诊断性能。对于客观标记,我们收集了一个数据集,其中包含1131次图像的患者,在2014年和2019年间在单个综合医院进行骨骼骨密度测量和髋部射线照相。使用五个卷积神经网络(CNN)模型从髋关节射线照片评估骨质疏松症。我们还调查了在每个CNN中添加了临床协变量的集合模型。为每个网络计算曲线(AUC)评分下的准确度,精度,召回,特异性,否定值(NPV),F1分数和面积。在使用仅使用HIP X线片的5个CNN模型的评估中,Googlenet和WentureNet B3表现出最佳精度,精度和特异性。在五个集合模型中,当包括患者变量时,效率为最佳准确性,召回,NPV,F1分数和AUC分数。 CNN模型从高精度诊断出骨质疏松症的骨质疏松症,并且随着患者记录的临床协调会进一步提高了它们的性能。

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