基于兴趣区域提取和卷积神经网络的骨异常检测

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2023-02-02 DOI:10.3390/asi6010021
M. N. Meqdad, Hafiz Tayyab Rauf, Seifedine Kadry
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引用次数: 1

摘要

评估骨龄最合适的方法是检查左手腕x线片骨化中心的成熟程度。因此,人们已经做出了很多努力来帮助放射科医生,并提供可靠的自动化方法来使用这些图像。本研究设计并测试了Alexnet和GoogLeNet方法以及一种评估骨龄的新架构。所有这些方法都在DHA数据集上完全自动实现,该数据集包括1400张来自亚洲、西班牙裔、黑人和高加索人种的0至18岁健康儿童的手腕图像。为此,首先对图像进行分割,然后对图像的4个不同区域进行分离。每个区域的骨龄由一个单独的网络进行评估,该网络的结构是新的,是通过反复试验获得的。骨龄的最终评估是通过基于4个CNN模型之间的平均算法的集成来完成的。在关于结果和模型评估的一节中,进行了各种测试,包括预先训练的网络测试。所有试验结果都证实了所设计系统的性能优于其他方法。该方法的准确率为83.4%,平均错误率为0.1%。
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Bone Anomaly Detection by Extracting Regions of Interest and Convolutional Neural Networks
The most suitable method for assessing bone age is to check the degree of maturation of the ossification centers in the radiograph images of the left wrist. So, a lot of effort has been made to help radiologists and provide reliable automated methods using these images. This study designs and tests Alexnet and GoogLeNet methods and a new architecture to assess bone age. All these methods are implemented fully automatically on the DHA dataset including 1400 wrist images of healthy children aged 0 to 18 years from Asian, Hispanic, Black, and Caucasian races. For this purpose, the images are first segmented, and 4 different regions of the images are then separated. Bone age in each region is assessed by a separate network whose architecture is new and obtained by trial and error. The final assessment of bone age is performed by an ensemble based on the Average algorithm between 4 CNN models. In the section on results and model evaluation, various tests are performed, including pre-trained network tests. The better performance of the designed system compared to other methods is confirmed by the results of all tests. The proposed method achieves an accuracy of 83.4% and an average error rate of 0.1%.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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