Topology‐preserving segmentation of abdominal muscle layers from ultrasound images

Author:

Liao Feiyang12,Li Dongli3,Yang Xiaoyu3,Cao Weiwei12,Xiang Dehui4,Yuan Gang12,Wang Yingwei3,Zheng Jian125

Affiliation:

1. Division of Life Sciences and Medicine School of Biomedical Engineering (Suzhou), University of Science and Technology of China Suzhou China

2. Suzhou Institute of Biomedical Engineering and Technology Chinese Academy of Science Suzhou China

3. Department of Anesthesiology Huashan Hospital, Fudan University Shanghai China

4. School of Electronic and Information Engineering Soochow University Jiangsu China

5. Jinan Guoke Medical Technology Development Co., Ltd Jinan China

Abstract

AbstractBackgroundIn clinical anesthesia, precise segmentation of muscle layers from abdominal ultrasound images is crucial for identifying nerve block locations accurately. Despite deep learning advancements, challenges persist in segmenting muscle layers with accurate topology due to pseudo and weak edges caused by acoustic artifacts in ultrasound imagery.PurposeTo assist anesthesiologists in locating nerve block areas, we have developed a novel deep learning algorithm that can accurately segment muscle layers in abdominal ultrasound images with interference.MethodsWe propose a comprehensive approach emphasizing the preservation of the segmentation's low‐rank property to ensure correct topology. Our methodology integrates a Semantic Feature Extraction (SFE) module for redundant encoding, a Low‐rank Reconstruction (LR) module to compress this encoding, and an Edge Reconstruction (ER) module to refine segmentation boundaries. Our evaluation involved rigorous testing on clinical datasets, comparing our algorithm against seven established deep learning‐based segmentation methods using metrics such as Mean Intersection‐over‐Union (MIoU) and Hausdorff distance (HD). Statistical rigor was ensured through effect size quantification with Cliff's Delta, Multivariate Analysis of Variance (MANOVA) for multivariate analysis, and application of the Holm‐Bonferroni method for multiple comparisons correction.ResultsWe demonstrate that our method outperforms other industry‐recognized deep learning approaches on both MIoU and HD metrics, achieving the best outcomes with 88.21%/4.98 () on the standard test set and 85.48%/6.98 () on the challenging test set. The best&worst results for the other models on the standard test set were (87.20%/5.72)&(83.69%/8.12), and on the challenging test set were (81.25%/10.00)&(71.74%/16.82). Ablation studies further validate the distinct contributions of the proposed modules, which synergistically achieve a balance between maintaining topological integrity and edge precision.ConclusionsOur findings validate the effective segmentation of muscle layers with accurate topology in complex ultrasound images, leveraging low‐rank constraints. The proposed method not only advances the field of medical imaging segmentation but also offers practical benefits for clinical anesthesia by improving the reliability of nerve block localization.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Shandong Province

Publisher

Wiley

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