Computer-aided recognition and assessment of a porous bioelastomer in ultrasound images for regenerative medicine applications

Dun Wang , Sheng Yang , Kai-Xuan Guo , Yan-Ying Zhu , Jia Sun , Aliona Dreglea , Yan-Hong Gao , Jiao Yu
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引用次数: 2

Abstract

It is difficult to use a single edge operator in image processing to extract continuous and accurate contours of a porous bioelastomer due to the fuzzy boundary and complex background in ultrasound images. To solve this problem, this paper proposes a joint algorithm for bioelastomer contour detection and a texture feature extraction method for monitoring the degradation performance of bioelastomers. First, the mean-shift clustering method is utilized to obtain the clustering feature information of bioelastomers and native tissue from manually segmented images, and this information is used as the initial information in the image binarization algorithm for image partitioning. Second, Otsu's thresholding method and mathematical morphology are applied in the process of image binarization. Finally, the Canny edge detector is employed to extract the complete bioelastomers contour from the binary image. To verify the robustness of the proposed joint algorithm, the results using the proposed joint algorithm, where mean-shift clustering is replaced with k-means clustering are also obtained. The proposed joint algorithm based on mean-shift clustering outperforms the joint algorithm based on k-means clustering, as well as algorithms that directly apply the Canny, Sobel and Laplacian methods. Texture feature extraction is based on the computer-aided recognition of bioelastomers. The region of interest (ROI) is set in the scaffold region, and the first-order statistical features and second-order statistical features of the greyscale values of the ROI are extracted and analysed. The proposed joint algorithm can not only extract ideal bioelastomers contours from ultrasound images but also provide valuable feedback on the degradation behaviour of bioelastomers at implant sites.

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再生医学应用超声图像中多孔生物弹性体的计算机辅助识别和评估
由于超声图像中边界模糊、背景复杂,难以在图像处理中使用单边缘算子来提取连续准确的多孔生物弹性体轮廓。为了解决这个问题,本文提出了一种生物弹性体轮廓检测的联合算法和一种用于监测生物弹性体降解性能的纹理特征提取方法。首先,利用均值偏移聚类方法从手动分割的图像中获得生物弹性体和天然组织的聚类特征信息,并将该信息作为图像二值化算法中的初始信息进行图像分割。其次,将Otsu阈值法和数学形态学应用于图像二值化过程中。最后,利用Canny边缘检测器从二值图像中提取完整的生物弹性体轮廓。为了验证所提出的联合算法的鲁棒性,还获得了使用所提出联合算法的结果,其中用k均值聚类代替了均值移位聚类。所提出的基于均值移位聚类的联合算法优于基于k-均值聚类的联合方法,以及直接应用Canny、Sobel和拉普拉斯方法的算法。纹理特征提取是基于生物弹性体的计算机辅助识别。在支架区域中设置感兴趣区域(ROI),并提取和分析ROI灰度值的一阶统计特征和二阶统计特征。所提出的联合算法不仅可以从超声图像中提取理想的生物弹性体轮廓,还可以对生物弹性体在植入部位的降解行为提供有价值的反馈。
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来源期刊
Medicine in Novel Technology and Devices
Medicine in Novel Technology and Devices Medicine-Medicine (miscellaneous)
CiteScore
3.00
自引率
0.00%
发文量
74
审稿时长
64 days
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