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Supervised machine learning for coronary artery lumen segmentation in intravascular ultrasound images

机译:血管内超声图像中冠状动脉腔分段监督机器学习

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Intravascular ultrasound (IVUS) has been widely used to capture cross sectional lumen frames of inner wall of coronary arteries. This kind of medical imaging modalities is capable of providing detailed and significant information of lumen contour shape, which is very important for clinical diagnosis and analysis of cardiovascular diseases. Numerous learning based techniques have recently become very popular for coronary artery segmentation due to their impressive results. In this work, a supervised machine learning method for coronary artery lumen segmentation with high accuracy and minimal user interaction is designed. The fully discriminative lumen segmentation method jointly learning a classifier the weak learners rely on and the features of the classifier is developed. Additionally, the theoretical supports of the Gradient Boosting framework used in this work and its quadratic approximation are presented. The proposed algorithm is tested on the public datasets of boundary detection of lumen in IVUS challenge held in MICCAI 2011 and achieves a higher average Jaccard similarity of 96.8% and a lower mean error distance of 0.55 (in Cartesian coordinates), which shows higher accuracy compared to the existing learning based methods. Moreover, three real patient IVUS datasets are used to evaluate the performance of the proposed coronary artery lumen segmentation algorithm, which is shown to achieve lower percent error of lumen area of 1.861% +/- 0.965%, 1.968% +/- 0.864%, and 1.671% +/- 0.584%, respectively, compared to the manually measured lumen area (ground truth). The proposed lumen segmentation method is found to be superior to the latest learning based segmentation techniques. Given the efficiency and robustness, our method has great potential in IVUS images processing and coronary artery segmentation and quantification.
机译:血管内超声(IVUS)已被广泛用于捕获冠状动脉内壁的横截面内腔框架。这种医学成像模式能够提供内腔轮廓形状的详细和重要信息,这对于心血管疾病的临床诊断和分析非常重要。由于其令人印象深刻的结果,许多学习的基于学习的技术最近对冠状动脉细分变得非常流行。在这项工作中,设计了具有高精度和最小用户交互的冠状动脉腔分段的监督机器学习方法。共同学习分类器的完全辨别的内腔分割方法,弱学习者依赖于和分类器的功能。另外,介绍了本作工作中使用的梯度升压框架及其二次逼近的理论支持。该算法在Miccai 2011年举行的IVUS挑战中的边界检测的公共数据集上进行了测试,并且达到96.8%的较高平均jaccard相似性,较低的平均误差距离为0.55(在笛卡尔坐标),比较了更高的准确性到现有的基于学习的方法。此外,三种真实患者IVUS数据集用于评估所提出的冠状动脉内腔分割算法的性能,其显示出较低百分比的腔面积误差为1.861%+/- 0.965%,1.968%+/- 0.864%,与手动测量的流明区域(地面真相)相比,分别为1.671%+/- 0.584%。发现所提出的内腔分割方法优于最新的基于学习的分段技术。鉴于效率和稳健性,我们的方法在IVUS图像处理和冠状动脉分割和量化方面具有很大的潜力。

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