BriefGPT.xyz
Jan, 2020
病变收割者:大规模迭代挖掘未标记的病变和难负样本
Lesion Harvester: Iteratively Mining Unlabeled Lesions and Hard-Negative Examples at Scale
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Jinzheng Cai, Adam P. Harrison, Youjing Zheng, Ke Yan, Yuankai Huo...
TL;DR
通过使用小规模的医学图像体积样本来智能地从剩下的样本中挖掘出存在的缺失标注,我们提出了一个强大的系统来从DeepLesion数据集中高精度地提取缺失的病变。
Abstract
Acquiring large-scale medical image data, necessary for training
machine learning
algorithms, is frequently intractable, due to prohibitive expert-driven
annotation
costs. Recent datasets extracted from hospital
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