Ricardo (2022-02-27 22:12):
#paper doi:https://doi.org/10.1038/s41592-020-01008-z nnU-Net: a self-configuring method for deep learning-based biomedical image segmentation 介绍这一篇2020年发表在nature methods上的文章,做医学图像算法的同学估计都知道这个非常牛逼的工作,用一套自己设计的图像分割的pipeline,没有对神经网络结构做什么改进,在23个公开的医学影像数据集上大都获得了非常好的结果。细看文章和源码,可以看到作者在数据集的预处理上、超参数的选择上、模型调优和集成以及后处理等步骤上做了相当多的工作。
IF:36.100Q1 Nature methods, 2021-02. DOI: 10.1038/s41592-020-01008-z PMID: 33288961
nnU-Net: a self-configuring method for deep learning-based biomedical image segmentation
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Abstract:
Biomedical imaging is a driver of scientific discovery and a core component of medical care and is being stimulated by the field of deep learning. While semantic segmentation algorithms enable image analysis and quantification in many applications, the design of respective specialized solutions is non-trivial and highly dependent on dataset properties and hardware conditions. We developed nnU-Net, a deep learning-based segmentation method that automatically configures itself, including preprocessing, network architecture, training and post-processing for any new task. The key design choices in this process are modeled as a set of fixed parameters, interdependent rules and empirical decisions. Without manual intervention, nnU-Net surpasses most existing approaches, including highly specialized solutions on 23 public datasets used in international biomedical segmentation competitions. We make nnU-Net publicly available as an out-of-the-box tool, rendering state-of-the-art segmentation accessible to a broad audience by requiring neither expert knowledge nor computing resources beyond standard network training.
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