作者
Evan Hann, Ricardo A Gonzales, Iulia A Popescu, Qiang Zhang, Vanessa M Ferreira, Stefan K Piechnik
发表日期
2021/7/6
图书
Annual Conference on Medical Image Understanding and Analysis
页码范围
280-293
出版商
Springer International Publishing
简介
Recent progress on deep learning (DL)-based medical image segmentation can enable fast extraction of clinical parameters for efficient clinical workflows. However, current DL methods can still fail and require manual visual inspection of outputs, which is time-consuming and diminishes the advantages of automation. For clinical applications, it is essential to develop DL approaches that can not only perform accurate segmentation, but also predict the segmentation quality and flag poor-quality results to avoid errors in diagnosis. To achieve robust performance, DL-based methods often require large datasets, which are not always readily available. It would be highly desirable to be able to train DL models using only small datasets, but this requires a quality prediction method to ensure reliability. We present a novel segmentation framework utilizing an ensemble of deep convolutional neural networks with …
引用总数
20212022202320242154