Amr Magdy , M. Hassaballah , Marghny H. Mohamed , Mohammed M. Abdelsamea , Khalid N. Ismail
{"title":"HMSA-Net:用于多模态生物医学图像分割的分层多尺度聚合网络","authors":"Amr Magdy , M. Hassaballah , Marghny H. Mohamed , Mohammed M. Abdelsamea , Khalid N. Ismail","doi":"10.1016/j.compeleceng.2025.110780","DOIUrl":null,"url":null,"abstract":"<div><div>Medical image segmentation plays a vital role in clinical workflows such as disease diagnosis, treatment planning, and outcome monitoring. However, achieving robust segmentation across different anatomical regions, imaging modalities, and resolution scales remains a significant challenge. This paper presents a novel segmentation model, Hierarchical Multi-Scale Aggregation Network (HMSA-Net), designed to enhance segmentation performance in medical imaging. HMSA-Net follows a hierarchical encoder–decoder structure, where the encoder is built upon Res2Net, leveraging bottleneck layers to effectively extract multi-scale contextual features. The decoder integrates Hierarchical Attention Refinement Blocks (HARBs), which employ convolutional layers and squeeze-and-excitation mechanisms to dynamically recalibrate channel-wise feature responses, improving the model’s ability to emphasize critical anatomical structures. Additionally, HMSA-Net incorporates a multi-scale aggregation module, enabling effective fusion of features at different resolutions, thereby refining segmentation accuracy. Experimental evaluations on the BraTS2020 dataset demonstrate the model’s effectiveness, achieving Dice scores of 0.89 for whole tumor (WT), 0.81 for tumor core (TC), and 0.73 for enhancing tumor (ET). Furthermore, HMSA-Net was assessed on three unimodal medical imaging datasets: CVC ClinicDB, the 2018 Data Science Bowl, and ISIC-2018 skin lesion segmentation, achieving Dice scores of 90.5, 87.8, and 88.2, respectively. These results validate HMSA-Net’s capability to serve as a robust segmentation framework across both 2D and 3D medical imaging modalities.</div></div>","PeriodicalId":50630,"journal":{"name":"Computers & Electrical Engineering","volume":"129 ","pages":"Article 110780"},"PeriodicalIF":4.9000,"publicationDate":"2025-10-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"HMSA-Net: A hierarchical multi-scale aggregation network for multimodal biomedical image segmentation\",\"authors\":\"Amr Magdy , M. Hassaballah , Marghny H. Mohamed , Mohammed M. Abdelsamea , Khalid N. Ismail\",\"doi\":\"10.1016/j.compeleceng.2025.110780\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>Medical image segmentation plays a vital role in clinical workflows such as disease diagnosis, treatment planning, and outcome monitoring. However, achieving robust segmentation across different anatomical regions, imaging modalities, and resolution scales remains a significant challenge. This paper presents a novel segmentation model, Hierarchical Multi-Scale Aggregation Network (HMSA-Net), designed to enhance segmentation performance in medical imaging. HMSA-Net follows a hierarchical encoder–decoder structure, where the encoder is built upon Res2Net, leveraging bottleneck layers to effectively extract multi-scale contextual features. The decoder integrates Hierarchical Attention Refinement Blocks (HARBs), which employ convolutional layers and squeeze-and-excitation mechanisms to dynamically recalibrate channel-wise feature responses, improving the model’s ability to emphasize critical anatomical structures. Additionally, HMSA-Net incorporates a multi-scale aggregation module, enabling effective fusion of features at different resolutions, thereby refining segmentation accuracy. Experimental evaluations on the BraTS2020 dataset demonstrate the model’s effectiveness, achieving Dice scores of 0.89 for whole tumor (WT), 0.81 for tumor core (TC), and 0.73 for enhancing tumor (ET). Furthermore, HMSA-Net was assessed on three unimodal medical imaging datasets: CVC ClinicDB, the 2018 Data Science Bowl, and ISIC-2018 skin lesion segmentation, achieving Dice scores of 90.5, 87.8, and 88.2, respectively. 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HMSA-Net: A hierarchical multi-scale aggregation network for multimodal biomedical image segmentation
Medical image segmentation plays a vital role in clinical workflows such as disease diagnosis, treatment planning, and outcome monitoring. However, achieving robust segmentation across different anatomical regions, imaging modalities, and resolution scales remains a significant challenge. This paper presents a novel segmentation model, Hierarchical Multi-Scale Aggregation Network (HMSA-Net), designed to enhance segmentation performance in medical imaging. HMSA-Net follows a hierarchical encoder–decoder structure, where the encoder is built upon Res2Net, leveraging bottleneck layers to effectively extract multi-scale contextual features. The decoder integrates Hierarchical Attention Refinement Blocks (HARBs), which employ convolutional layers and squeeze-and-excitation mechanisms to dynamically recalibrate channel-wise feature responses, improving the model’s ability to emphasize critical anatomical structures. Additionally, HMSA-Net incorporates a multi-scale aggregation module, enabling effective fusion of features at different resolutions, thereby refining segmentation accuracy. Experimental evaluations on the BraTS2020 dataset demonstrate the model’s effectiveness, achieving Dice scores of 0.89 for whole tumor (WT), 0.81 for tumor core (TC), and 0.73 for enhancing tumor (ET). Furthermore, HMSA-Net was assessed on three unimodal medical imaging datasets: CVC ClinicDB, the 2018 Data Science Bowl, and ISIC-2018 skin lesion segmentation, achieving Dice scores of 90.5, 87.8, and 88.2, respectively. These results validate HMSA-Net’s capability to serve as a robust segmentation framework across both 2D and 3D medical imaging modalities.
期刊介绍:
The impact of computers has nowhere been more revolutionary than in electrical engineering. The design, analysis, and operation of electrical and electronic systems are now dominated by computers, a transformation that has been motivated by the natural ease of interface between computers and electrical systems, and the promise of spectacular improvements in speed and efficiency.
Published since 1973, Computers & Electrical Engineering provides rapid publication of topical research into the integration of computer technology and computational techniques with electrical and electronic systems. The journal publishes papers featuring novel implementations of computers and computational techniques in areas like signal and image processing, high-performance computing, parallel processing, and communications. Special attention will be paid to papers describing innovative architectures, algorithms, and software tools.