MedSegBench:多种数据模式下医学图像分割的综合基准

Zeki Kuş, Musa Aydin
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引用次数: 0

摘要

MedSegBench 是一个综合基准,旨在评估各种模式下医学图像分割的深度学习模型。它涵盖多种模式,包括 35 个数据集,包含 60,000 多张超声波、核磁共振成像和 X 光图像。该基准考虑到图像质量的可变性和数据集的不平衡性,提供了具有训练/验证/测试分裂的标准化数据集,从而解决了医学成像中的难题。该基准支持多达 19 个类别的二元和多类别分割任务。它支持多达 19 个类别的二进制和多类分割任务,并使用 U-Net 架构和各种编码器/解码器网络(如 ResNets、EfficientNet 和 DenseNet)进行评估。MedSegBench 是开发稳健灵活的分割算法的宝贵资源,它允许对不同模型进行公平比较,促进了医疗任务通用模型的开发。它是医学分割数据集中最全面的研究。这些数据集和源代码都是公开的,有助于医学图像分析领域的进一步研究和开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MedSegBench: A Comprehensive Benchmark for Medical Image Segmentation in Diverse Data Modalities
MedSegBench is a comprehensive benchmark designed to evaluate deep learning models for medical image segmentation across a wide range of modalities. It covers a wide range of modalities, including 35 datasets with over 60,000 images from ultrasound, MRI, and X-ray. The benchmark addresses challenges in medical imaging by providing standardized datasets with train/validation/test splits, considering variability in image quality and dataset imbalances. The benchmark supports binary and multi-class segmentation tasks with up to 19 classes. It supports binary and multi-class segmentation tasks with up to 19 classes and uses the U-Net architecture with various encoder/decoder networks such as ResNets, EfficientNet, and DenseNet for evaluations. MedSegBench is a valuable resource for developing robust and flexible segmentation algorithms and allows for fair comparisons across different models, promoting the development of universal models for medical tasks. It is the most comprehensive study among medical segmentation datasets. The datasets and source code are publicly available, encouraging further research and development in medical image analysis.
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