Rethinking Generalization: The Impact of Annotation Style on Medical Image Segmentation

Author:

Nichyporuk Brennan12,Cardinell Jillian21,Szeto Justin21,Mehta Raghav21,Falet Jean-Pierre312,Arnold Douglas L.34,Tsaftaris Sotirios A.56,Arbel Tal21

Affiliation:

1. MILA (Quebec Artificial Intelligence Institute), Montreal, Canada

2. Centre for Intelligent Machines, McGill University, Canada

3. Department of Neurology and Neurosurgery, McGill University, Canada

4. NeuroRx Research, Montreal, Canada

5. School of Engineering, University of Edinburgh, UK

6. The Alan Turing Institute, UK

Abstract

Generalization is an important attribute of machine learning models, particularly for those that are to be deployed in a medical context, where unreliable predictions can have real world consequences. While the failure of models to generalize across datasets is typically attributed to a mismatch in the data distributions, performance gaps are often a consequence of biases in the "ground-truth" label annotations. This is particularly important in the context of medical image segmentation of pathological structures (e.g. lesions), where the annotation process is much more subjective, and affected by a number underlying factors, including the annotation protocol, rater education/experience, and clinical aims, among others. In this paper, we show that modeling annotation biases, rather than ignoring them, poses a promising way of accounting for differences in annotation style across datasets. To this end, we propose a generalized conditioning framework to (1) learn and account for different annotation styles across multiple datasets using a single model, (2) identify similar annotation styles across different datasets in order to permit their effective aggregation, and (3) fine-tune a fully trained model to a new annotation style with just a few samples. Next, we present an image-conditioning approach to model annotation styles that correlate with specific image features, potentially enabling detection biases to be more easily identified.

Publisher

Machine Learning for Biomedical Imaging

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Expert-Adaptive Medical Image Segmentation;2024 IEEE Conference on Artificial Intelligence (CAI);2024-06-25

2. How Inter-rater Variability Relates to Aleatoric and Epistemic Uncertainty: A Case Study with Deep Learning-Based Paraspinal Muscle Segmentation;Uncertainty for Safe Utilization of Machine Learning in Medical Imaging;2023

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