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Learning evaluation of ultrasound image segmentation using combined measures

机译:联合测量对超声图像分割的学习评估

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Objective evaluation of medical image segmentation is one of the important steps for proving its validity and clinical applicability. Although there are many researches presenting segmentation methods on medical image, while with few studying the evaluation methods on their results, this paper presents a learning evaluation method with combined measures to make it as close as possible to the clinicians' judgment. This evaluation method is more quantitative and precise for the clinical diagnose. In our experiment, the same data sets include 120 segmentation results of lumen-intima boundary (LIB) and media-adventitia boundary (MAB) of carotid ultrasound images respectively. And the 15 measures of goodness method and discrepancy method are used to evaluate the different segmentation results alone. Furthermore, the experimental results showed that compared with the discrepancy method, the accuracy with the measures of goodness method is poor. Then, by combining with the measures of two methods, the average accuracy and the area under the receiver operating characteristic (ROC) curve of 2 segmentation groups are higher than 93% and 0.9 respectively. And the results of MAB are better than LIB, which proved that this novel method can effectively evaluate the segmentation results. Moreover, it lays the foundation for the non-supervised segmentation evaluation system.
机译:客观评价医学图像分割是证明其有效性和临床适用性的重要步骤之一。尽管有很多研究提出了医学图像分割方法,但很少研究对其结果进行评估的方法,但本文提出了一种结合了多种措施的学习评估方法,以使其尽可能接近临床医生的判断。对于临床诊断而言,这种评估方法更加定量和精确。在我们的实验中,相同的数据集分别包含120个颈动脉超声图像的内膜-内膜边界(LIB)和中膜-外膜边界(MAB)分割结果。并使用15种优度方法和差异方法分别评估了不同的分割结果。实验结果表明,与差异法相比,采用优度法的准确性较差。然后,结合两种方法的测量,两个细分组的平均准确度和接收器工作特性(ROC)曲线下面积分别高于93%和0.9。并且MAB的结果优于LIB,这证明了该新方法可以有效地评估分割结果。而且,它为无监督的分割评估系统奠定了基础。

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