A. Nugroho, Budi Sunarko, Hari Wibawanto, Anggraini Mulwinda, Anas Fauzi, Dwi Oktaviyanti, Dina Wulung Savitri
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引用次数: 0
摘要
主动轮廓(AC)是一种广泛用于分割的算法,可用于开发超声成像中的计算机辅助诊断(CAD)系统。现有的 AC 模型仍具有交互性。这是由于大量的参数和系数需要手动调整才能达到稳定。这可能会导致人为错误和超声图像的不均匀性引起的各种问题,如泄漏、虚假区域和局部极小值。本研究开发了一种自动物体分割方法,以协助放射科医生进行高效诊断。所提出的方法被称为自动组合主动轮廓(ACAC),它结合了基于全局区域的 CV(Chan-Vese)简化模型和用于局部分割的改进型 GAC(大地主动轮廓)。50 个数据集的测试结果显示,准确率为 98.83%,精确度为 95.26%,灵敏度为 86.58%,特异度为 99.63%,相似度为 90.58%,IoU(Intersection over Union)为 82.87%。这些定量性能指标表明,ACAC 方法适合在更高效、更准确的 CAD 系统中实施。
Automated Ultrasound Object Segmentation Using Combinatorial Active Contour Method
Active Contour (AC) is an algorithm widely used in segmentation for developing Computer-Aided Diagnosis (CAD) systems in ultrasound imaging. Existing AC models still retain an interactive nature. This is due to the large number of parameters and coefficients that require manual tuning to achieve stability. Which can result in human error and various issues caused by the inhomogeneity of ultrasound images, such as leakage, false areas, and local minima. In this study, an automatic object segmentation method was developed to assist radiologists in an efficient diagnosis process. The proposed method is called Automatic Combinatorial Active Contour (ACAC), which combines the simplification of the global region-based CV (Chan-Vese) model and improved-GAC (Geodesic Active Contour) for local segmentation. The results of testing with 50 datasets showed an accuracy value of 98.83%, precision of 95.26%, sensitivity of 86.58%, specificity of 99.63%, similarity of 90.58%, and IoU (Intersection over Union) of 82.87%. These quantitative performance metrics demonstrate that the ACAC method is suitable for implementation in a more efficient and accurate CAD system.