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Uncertainty Quantification using Variational Inference for Biomedical Image Segmentation

Abhinav Sagar

202218 citationsDOI

Abstract

Deep learning motivated by convolutional neural networks has been highly successful in a range of medical imaging problems like image classification, image segmentation, image synthesis etc. However for validation and interpretability, not only do we need the predictions made by the model but also how confident it is while making those predictions. This is important in safety critical applications for the people to accept it. In this work, we used an encoder decoder architecture based on variational inference techniques for segmenting brain tumour images. We evaluate our work on the publicly available BRATS dataset using Dice Similarity Coefficient (DSC) and Intersection Over Union (IOU) as the evaluation metrics. Our model is able to segment brain tumours while taking into account both aleatoric uncertainty and epistemic uncertainty in a principled bayesian manner.

Topics & Concepts

InterpretabilityArtificial intelligenceComputer scienceInferenceConvolutional neural networkSegmentationIntersection (aeronautics)Image segmentationMachine learningBayesian inferenceDeep learningSimilarity (geometry)Pattern recognition (psychology)Bayesian probabilityUncertainty quantificationRange (aeronautics)Image (mathematics)Composite materialEngineeringAerospace engineeringMaterials scienceAI in cancer detectionRadiomics and Machine Learning in Medical ImagingBrain Tumor Detection and Classification
Uncertainty Quantification using Variational Inference for Biomedical Image Segmentation | Litcius