College of Sciences, Zhejiang University of Technology, China.
Affiliation Institute of Cardiovascular Medicine and Research, LiKaShing Faculty of Medicine, University of Hong Kong, Hong Kong.
Comput Med Imaging Graph. 2017 Apr;57:29-39. doi: 10.1016/j.compmedimag.2016.11.003. Epub 2016 Nov 17.
Intravascular ultrasound (IVUS) has been well recognized as one powerful imaging technique to evaluate the stenosis inside the coronary arteries. The detection of lumen border and media-adventitia (MA) border in IVUS images is the key procedure to determine the plaque burden inside the coronary arteries, but this detection could be burdensome to the doctor because of large volume of the IVUS images. In this paper, we use the artificial neural network (ANN) method as the feature learning algorithm for the detection of the lumen and MA borders in IVUS images. Two types of imaging information including spatial, neighboring features were used as the input data to the ANN method, and then the different vascular layers were distinguished accordingly through two sparse auto-encoders and one softmax classifier. Another ANN was used to optimize the result of the first network. In the end, the active contour model was applied to smooth the lumen and MA borders detected by the ANN method. The performance of our approach was compared with the manual drawing method performed by two IVUS experts on 461 IVUS images from four subjects. Results showed that our approach had a high correlation and good agreement with the manual drawing results. The detection error of the ANN method close to the error between two groups of manual drawing result. All these results indicated that our proposed approach could efficiently and accurately handle the detection of lumen and MA borders in the IVUS images.
血管内超声(IVUS)已被广泛认可为一种强大的成像技术,可用于评估冠状动脉内的狭窄程度。在 IVUS 图像中检测管腔边界和中膜-外膜(MA)边界是确定冠状动脉内斑块负担的关键步骤,但由于 IVUS 图像的体积较大,这一检测可能会给医生带来负担。在本文中,我们使用人工神经网络(ANN)方法作为检测 IVUS 图像中管腔和 MA 边界的特征学习算法。两种类型的成像信息,包括空间和相邻特征,被用作 ANN 方法的输入数据,然后通过两个稀疏自编码器和一个 softmax 分类器来相应地区分不同的血管层。另一个 ANN 用于优化第一个网络的结果。最后,主动轮廓模型被应用于平滑由 ANN 方法检测到的管腔和 MA 边界。我们的方法的性能与两位 IVUS 专家在来自四个受试者的 461 张 IVUS 图像上进行的手动绘图方法进行了比较。结果表明,我们的方法与手动绘图结果具有高度相关性和良好的一致性。ANN 方法的检测误差接近两组手动绘图结果之间的误差。所有这些结果表明,我们提出的方法可以有效地、准确地处理 IVUS 图像中管腔和 MA 边界的检测。