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Imbalance-Aware Self-Supervised Learning for 3D Radiomic Representations

About

Radiomic representations can quantify properties of regions of interest in medical image data. Classically, they account for pre-defined statistics of shape, texture, and other low-level image features. Alternatively, deep learning-based representations are derived from supervised learning but require expensive annotations from experts and often suffer from overfitting and data imbalance issues. In this work, we address the challenge of learning representations of 3D medical images for an effective quantification under data imbalance. We propose a \emph{self-supervised} representation learning framework to learn high-level features of 3D volumes as a complement to existing radiomics features. Specifically, we demonstrate how to learn image representations in a self-supervised fashion using a 3D Siamese network. More importantly, we deal with data imbalance by exploiting two unsupervised strategies: a) sample re-weighting, and b) balancing the composition of training batches. When combining our learned self-supervised feature with traditional radiomics, we show significant improvement in brain tumor classification and lung cancer staging tasks covering MRI and CT imaging modalities.

Hongwei Li, Fei-Fei Xue, Krishna Chaitanya, Shengda Luo, Ivan Ezhov, Benedikt Wiestler, Jianguo Zhang, Bjoern Menze• 2021

Related benchmarks

TaskDatasetResultRank
Brain tumor classificationBraTS full labels (cross-validation)
Sensitivity92
9
Lung cancer stagingLung cancer staging full labels (cross-validation)
Overall Accuracy53.8
9
Lung cancer stagingLung cancer staging 50% labels (cross-validation)
Overall Accuracy51.9
9
Brain tumor classificationBraTS 50% labels (val)
Sensitivity84.8
9
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