作者
Adam P Harrison, Ziyue Xu, Kevin George, Le Lu, Ronald M Summers, Daniel J Mollura
发表日期
2017/9/10
研讨会论文
International Conference on Medical Image Computing and Computer-Assisted Intervention
页码范围
621-629
出版商
Springer, Cham
简介
Pathological lung segmentation (PLS) is an important, yet challenging, medical image application due to the wide variability of pathological lung appearance and shape. Because PLS is often a pre-requisite for other imaging analytics, methodological simplicity and generality are key factors in usability. Along those lines, we present a bottom-up deep-learning based approach that is expressive enough to handle variations in appearance, while remaining unaffected by any variations in shape. We incorporate the deeply supervised learning framework, but enhance it with a simple, yet effective, progressive multi-path scheme, which more reliably merges outputs from different network stages. The result is a deep model able to produce finer detailed masks, which we call progressive holistically-nested networks (P-HNNs). Using extensive cross-validation, our method is tested on a multi-institutional dataset comprising …
引用总数
2017201820192020202120222023202432724353222112
学术搜索中的文章
AP Harrison, Z Xu, K George, L Lu, RM Summers… - Medical Image Computing and Computer Assisted …, 2017