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引用次数: 1

摘要

骨骼年龄评估(BAA)是一种常用的临床实践,用于诊断儿童生长过程中的内分泌和代谢疾病。BAA入路一般从获取左手从手腕到指尖的X线图像开始。X射线图像中的骨骼与标准骨骼发育图谱中的放射学图像进行比较。由于手工方法耗时且错误,最近开发的深度学习(DL)模型在使用X射线图像的自动化BAA设计中非常有用。在这种观点下,本文提出了一种新的基于X射线图像的DL- abaa (DL- abaa)模型。本文提出的DL-ABAA模型进行了初始预处理,提高了图像质量。然后利用基于VGG-19模型的快速区域卷积神经网络(Fast- rcnn)对输入的X射线图像进行特征提取。同时,利用洗牌蛙叶优化(SFLO)算法作为VGG-19模型的超参数优化器。此外,采用基于softmax (SM)的年龄预测和基于极限梯度提升(XGBoost)的阶段分类过程来预测年龄和确定类别标签。详细的实验结果分析表明,与现有的方法相比,BAA技术的性能得到了提高,准确率达到96.53%。
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Deep Learning Empowered Automatic Bone Age Assessment
Skeletal bone age assessment (BAA) is a commonly employed clinical practice used for the diagnosis of endocrine and metabolic illness in child growth. BAA approach generally starts with the acquisition of the X ray image of the left hand from the wrist to fingertip. The bones in the X ray image undergo comparison with the radiological images that exist in the standard atlas of bone development. Since manual methods are time consuming and erroneous, the recently developed deep learning (DL) models find useful in the design of automated BAA using X ray images. In this view, this paper presents a new DL empowered automated BAA (DL-ABAA) model using X ray images. The proposed DL-ABAA model performs initial preprocessing to improve the image quality. Followed by Fast region convolutional neural network (Fast-RCNN) with VGG-19 model-based feature extractor is involved for deriving the features from the input X ray images. At the same time, shuffled frog leaf optimization (SFLO) algorithm is utilized as a hyperparameter optimizer of the VGG-19 model. In addition, softmax (SM) based age prediction and extreme gradient boosting (XGBoost) based stage classification processes are applied to predict the age and determine the class labels. A detailed experimental results analysis stated the improved performance of the BAA technique over the recent approaches with the higher accuracy of 96.53%.
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