利用CT图像识别和三维可视化人体部位和骨骼区域

IF 0.5 Q4 COMPUTER SCIENCE, THEORY & METHODS Applied Computer Systems Pub Date : 2023-06-01 DOI:10.2478/acss-2023-0007
H. T. Nguyen, My N. Nguyen, Bang Anh Nguyen, Linh Chi Nguyen, Linh Duong Phung
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引用次数: 0

摘要

医学影像的出现极大地辅助了疾病的诊断和治疗。本研究介绍了一种检测DICOM格式计算机断层扫描(CT)图像中人体部位的框架。此外,该方法可以突出显示CT图像中的骨骼区域,并将2D切片转换为可视化的3D模型,以说明人体部位的结构。首先,我们利用浅卷积神经网络对身体部位进行分类,并检测每个部位的骨骼区域。然后,应用Grad-CAM突出骨骼区域。最后,利用Insight和Visualization库对身体部位的幻灯片进行3D可视化。结果,在CT图像数据集上,分类器对人体部位的分类达到了98%的f1得分,其中包括1234张女性身体部位的幻灯片用于训练阶段,1245张男性身体部位的图像用于测试。此外,在CT图像中设置显示骨骼区域的阈值生成的数据集上,骨与非骨图像的区分率在F1-score上可以达到97%。此外,基于grad - cam的方法可以提供清晰,准确的图像中分割的骨骼可视化。此外,我们成功地将身体部位的2D切片图像转换为生动的3D模型,从任何角度提供更直观的视图。该方法有望为支持医生进行基于医学图像的疾病诊断提供一个有趣的可视化工具。
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Recognition and 3D Visualization of Human Body Parts and Bone Areas Using CT Images
Abstract The advent of medical imaging significantly assisted in disease diagnosis and treatment. This study introduces to a framework for detecting several human body parts in Computerised Tomography (CT) images formatted in DICOM files. In addition, the method can highlight the bone areas inside CT images and transform 2D slices into a visual 3D model to illustrate the structure of human body parts. Firstly, we leveraged shallow convolutional Neural Networks to classify body parts and detect bone areas in each part. Then, Grad-CAM was applied to highlight the bone areas. Finally, Insight and Visualization libraries were utilized to visualize slides in 3D of a body part. As a result, the classifiers achieved 98 % in F1-score in the classification of human body parts on a CT image dataset, including 1234 slides capturing body parts from a woman for the training phase and 1245 images from a male for testing. In addition, distinguishing between bone and non-bone images can reach 97 % in F1-score on the dataset generated by setting a threshold value to reveal bone areas in CT images. Moreover, the Grad-CAM-based approach can provide clear, accurate visualizations with segmented bones in the image. Also, we successfully converted 2D slice images of a body part into a lively 3D model that provided a more intuitive view from any angle. The proposed approach is expected to provide an interesting visual tool for supporting doctors in medical image-based disease diagnosis.
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来源期刊
Applied Computer Systems
Applied Computer Systems COMPUTER SCIENCE, THEORY & METHODS-
自引率
10.00%
发文量
9
审稿时长
30 weeks
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