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MediLite3DNet:一种用于鼻咽气道分割的轻量级网络。

MediLite3DNet: A lightweight network for segmentation of nasopharyngeal airways.

作者信息

Dai Yanzhou, Wang Qiang, Cui Shulin, Yin Yang, Song Weibo

机构信息

Dalian Jiaotong University, Dalian, China.

Central Hospital of Dalian University of Technology, Dalian, China.

出版信息

Med Biol Eng Comput. 2025 Apr;63(4):1081-1099. doi: 10.1007/s11517-024-03252-3. Epub 2024 Nov 29.

DOI:10.1007/s11517-024-03252-3
PMID:39612131
Abstract

The precise segmentation and three-dimensional reconstruction of the nasopharyngeal airway are crucial for the diagnosis and treatment of adenoid hypertrophy in children. However, traditional methods face challenges such as information loss and low computational efficiency when addressing this task. To overcome these issues, this paper introduces an innovative lightweight 3D medical image segmentation network-MediLite3DNet. The core of this network is the Parallel Multi-Scale High-Resolution Network (PMHNet), which effectively retains detailed features of the airway and optimizes the fusion of multi-scale features through its parallel structure. In response to the complexity of existing networks and their reliance on vast amounts of training data, this paper presents an efficient Hierarchical Decoupled Convolution Module (EHDC) to reduce computational costs while maintaining efficient feature extraction capabilities. Furthermore, to enhance the accuracy of segmentation, a lightweight Channel and Spatial Attention Mechanism (LCSA) is proposed. This mechanism identifies and emphasizes key channels and spatial features, improving the processing of complex medical images while controlling the increase in the number of parameters. Experiments conducted on a clinical CT dataset demonstrate the network's exceptional performance, with a Dice coefficient of 97.42%, sensitivity of 98.69%, and Jaccard index of 95%. Maintaining high precision, the model has a parameter count of only 0.227M and a floating-point operation count (FLOPs) of 24.526G, proving its computational efficiency. The significance of this study is that it provides a highly efficient and accurate diagnostic tool for children with adenoid hypertrophy. Additionally, with the innovative MediLite3DNet design, it brings a new lightweight solution to the domain of medical image segmentation.

摘要

鼻咽气道的精确分割和三维重建对于儿童腺样体肥大的诊断和治疗至关重要。然而,传统方法在处理这项任务时面临信息丢失和计算效率低等挑战。为了克服这些问题,本文引入了一种创新的轻量级三维医学图像分割网络——MediLite3DNet。该网络的核心是并行多尺度高分辨率网络(PMHNet),它通过其并行结构有效地保留了气道的详细特征,并优化了多尺度特征的融合。针对现有网络的复杂性及其对大量训练数据的依赖,本文提出了一种高效的分层解耦卷积模块(EHDC),以降低计算成本,同时保持高效的特征提取能力。此外,为了提高分割精度,还提出了一种轻量级的通道和空间注意力机制(LCSA)。该机制能够识别并强调关键通道和空间特征,在控制参数数量增加的同时,改善对复杂医学图像的处理。在临床CT数据集上进行的实验证明了该网络的卓越性能,其Dice系数为97.42%,灵敏度为98.69%,Jaccard指数为95%。该模型在保持高精度的同时,参数数量仅为0.227M,浮点运算次数(FLOPs)为24.526G,证明了其计算效率。本研究的意义在于,它为患有腺样体肥大的儿童提供了一种高效准确的诊断工具。此外,凭借创新的MediLite3DNet设计,它为医学图像分割领域带来了一种新的轻量级解决方案。

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本文引用的文献

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Adenoid hypertrophy in children: a narrative review of pathogenesis and clinical relevance.儿童腺样体肥大:发病机制和临床相关性的叙述性综述。
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Privacy in the age of medical big data.医疗大数据时代的隐私问题。
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The effect of adenoid hypertrophy on maxillofacial development: an objective photographic analysis.腺样体肥大对颌面发育的影响:客观摄影分析
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Segmentation of pulmonary nodules in thoracic CT scans: a region growing approach.胸部CT扫描中肺结节的分割:一种区域生长方法。
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A new fully automatic and robust algorithm for fast segmentation of liver tissue and tumors from CT scans.一种用于从CT扫描中快速分割肝脏组织和肿瘤的全新全自动且强大的算法。
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Chronic rhinosinusitis and adenoid hypertrophy in children.儿童慢性鼻-鼻窦炎和腺样体肥大
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