Outlier Guided Optimization of Abdominal Segmentation
Yuchen Xu, Olivia Tang, Yucheng Tang, Ho Hin Lee, Yunqiang Chen,, Dashan Gao, Shizhong Han, Riqiang Gao, Michael R. Savona, Richard G., Abramson, Yuankai Huo, Bennett A. Landman

TL;DR
This paper introduces an active learning approach using outlier detection and human QA to enhance abdominal organ segmentation in CT images, demonstrating significant performance improvements with targeted data augmentation.
Contribution
It presents a novel single-pass active learning method that selectively adds outlier data to improve segmentation accuracy efficiently.
Findings
Adding outliers increases Dice scores more than inliers.
Outlier data has higher marginal value for model improvement.
Method improves single-organ segmentation without affecting multi-organ performance.
Abstract
Abdominal multi-organ segmentation of computed tomography (CT) images has been the subject of extensive research interest. It presents a substantial challenge in medical image processing, as the shape and distribution of abdominal organs can vary greatly among the population and within an individual over time. While continuous integration of novel datasets into the training set provides potential for better segmentation performance, collection of data at scale is not only costly, but also impractical in some contexts. Moreover, it remains unclear what marginal value additional data have to offer. Herein, we propose a single-pass active learning method through human quality assurance (QA). We built on a pre-trained 3D U-Net model for abdominal multi-organ segmentation and augmented the dataset either with outlier data (e.g., exemplars for which the baseline algorithm failed) or inliers…
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Taxonomy
TopicsAdvanced Neural Network Applications · COVID-19 diagnosis using AI · Medical Image Segmentation Techniques
MethodsConcatenated Skip Connection · *Communicated@Fast*How Do I Communicate to Expedia? · Max Pooling · Convolution · U-Net
