计算机科学
分割
人工智能
卷积神经网络
概率逻辑
深度学习
计算机视觉
图像分割
一般化
模式识别(心理学)
医学影像学
背景(考古学)
医学超声
人工神经网络
超声波
尺度空间分割
图像(数学)
磁共振弥散成像
散斑噪声
机器学习
作者
Miao Li,Jing Lian,Jizhao Liu,Huaikun Zhang,Bin Shi,Qidong Liu
标识
DOI:10.1016/j.bspc.2026.109709
摘要
In medical ultrasound image segmentation, lesion areas are often blurred, making it difficult to distinguish them from the background, thereby complicating segmentation tasks. In the past decade, deep convolutional neural networks have proven effective for medical image segmentation. However, the inductive biases in convolutional architectures limit their ability to capture long-range dependencies. Recently, denoising diffusion probabilistic models (DDPMs) have emerged as powerful generative frameworks in computer vision. Yet, many diffusion-based segmentation approaches overlook the semantic relationships between lesion regions (foreground) and surrounding normal tissues (background), often resulting in distorted segmentation outputs. To address these limitations, we propose DMUS-Net, a diffusion model-based network for medical ultrasound segmentation. DMUS-Net integrates a Multi-Scale Conditional Guidance Network (MSCGN) and Adaptive Detail-Oriented Attention (AODA) modules. By Leveraging the Transformer network’s global relational capabilities, DMUS-Net effectively balances attention between global context and fine-grained features. Subsequently, it dynamically integrates rich image prior information, enhancing semantic correlations between foreground and background. Additionally, we introduce Context-Aware Cross-Decoding layers (CACD) to capture global features and inter-channel correlations, thereby improving both segmentation accuracy and efficiency. DMUS-Net is applied to ultrasound segmentation tasks, including breast, thyroid, and gallbladder stones, achieving superior results, in comparative experiments. These findings highlight DMUS-Net’s robust generalization ability and potential for practical clinical applications. • We proposed DMUS-Net: a DDPM-based model for ultrasound image segmentation. • We designed a Multi-Scale Conditional Guidance Network (MSCGN) to enhance segmentation performance. • We validated DMUS-Net’s effectiveness and generalization across multiple ultrasound tasks and datasets.
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