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混响伪影的弱监督和半监督概率分割与量化

Weakly- and Semisupervised Probabilistic Segmentation and Quantification of Reverberation Artifacts.

作者信息

Hung Alex Ling Yu, Chen Edward, Galeotti John

机构信息

Department of Biomedical Engineering, Carnegie Mellon University, Pittsburgh, PA, USA.

Robotics Institute, Carnegie Mellon University, Pittsburgh, PA, USA.

出版信息

BME Front. 2022 Feb 25;2022:9837076. doi: 10.34133/2022/9837076. eCollection 2022.

Abstract

We propose a weakly- and semisupervised, probabilistic needle-and-reverberation-artifact segmentation algorithm to separate the desired tissue-based pixel values from the superimposed artifacts. Our method models the intensity decay of artifact intensities and is designed to minimize the human labeling error. Ultrasound image quality has continually been improving. However, when needles or other metallic objects are operating inside the tissue, the resulting reverberation artifacts can severely corrupt the surrounding image quality. Such effects are challenging for existing computer vision algorithms for medical image analysis. Needle reverberation artifacts can be hard to identify at times and affect various pixel values to different degrees. The boundaries of such artifacts are ambiguous, leading to disagreement among human experts labeling the artifacts. Our learning-based framework consists of three parts. The first part is a probabilistic segmentation network to generate the soft labels based on the human labels. These soft labels are input into the second part which is the transform function, where the training labels for the third part are generated. The third part outputs the final masks which quantifies the reverberation artifacts. We demonstrate the applicability of the approach and compare it against other segmentation algorithms. Our method is capable of both differentiating between the reverberations from artifact-free patches and modeling the intensity fall-off in the artifacts. Our method matches state-of-the-art artifact segmentation performance and sets a new standard in estimating the per-pixel contributions of artifact vs underlying anatomy, especially in the immediately adjacent regions between reverberation lines. Our algorithm is also able to improve the performance of downstream image analysis algorithms.

摘要

我们提出了一种弱监督和半监督的概率针与混响伪影分割算法,以从叠加的伪影中分离出基于所需组织的像素值。我们的方法对伪影强度的衰减进行建模,旨在将人为标记误差降至最低。超声图像质量一直在不断提高。然而,当针或其他金属物体在组织内部操作时,产生的混响伪影会严重破坏周围的图像质量。这种影响对于现有的用于医学图像分析的计算机视觉算法来说具有挑战性。针混响伪影有时很难识别,并且会不同程度地影响各种像素值。此类伪影的边界不明确,导致人类专家在标记伪影时存在分歧。我们基于学习的框架由三部分组成。第一部分是一个概率分割网络,用于根据人工标记生成软标签。这些软标签被输入到第二部分,即变换函数,在那里生成第三部分的训练标签。第三部分输出最终的掩码,该掩码量化了混响伪影。我们展示了该方法的适用性,并将其与其他分割算法进行了比较。我们的方法能够区分无伪影斑块的混响,并对伪影中的强度衰减进行建模。我们的方法与最先进的伪影分割性能相匹配,并在估计伪影与基础解剖结构的每像素贡献方面树立了新的标准,特别是在混响线之间的紧邻区域。我们的算法还能够提高下游图像分析算法的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5021/10521739/eb0f91d311b9/9837076.fig.001.jpg

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