DmADs-Net: Dense multiscale attention and depth-supervised network for medical image segmentation
Zhaojin Fu, Zheng Chen, Jinjiang Li, Lu Ren

TL;DR
DmADs-Net is a novel deep learning architecture that enhances medical image segmentation by integrating multiscale attention, depth supervision, and feature refinement, leading to superior performance across diverse datasets.
Contribution
The paper introduces DmADs-Net, a new network combining multiscale attention and depth supervision to improve lesion localization and feature extraction in medical images.
Findings
Outperformed mainstream networks on five diverse datasets.
Modules like Multi-scale Convolutional Feature Attention improve focus on weak features.
Ablation studies confirm the effectiveness of each component.
Abstract
Deep learning has made important contributions to the development of medical image segmentation. Convolutional neural networks, as a crucial branch, have attracted strong attention from researchers. Through the tireless efforts of numerous researchers, convolutional neural networks have yielded numerous outstanding algorithms for processing medical images. The ideas and architectures of these algorithms have also provided important inspiration for the development of later technologies.Through extensive experimentation, we have found that currently mainstream deep learning algorithms are not always able to achieve ideal results when processing complex datasets and different types of datasets. These networks still have room for improvement in lesion localization and feature extraction. Therefore, we have created the Dense Multiscale Attention and Depth-Supervised Network (DmADs-Net).We…
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Taxonomy
TopicsBrain Tumor Detection and Classification · AI in cancer detection · Medical Imaging and Analysis
MethodsAverage Pooling · Global Average Pooling · Kaiming Initialization · Max Pooling · Convolution
