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Titlebook: Uncertainty for Safe Utilization of Machine Learning in Medical Imaging, and Graphs in Biomedical Im; Second International Carole H. Sudre,

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Improving Pathological Distribution Measurements with Bayesian Uncertainty A typical workflow of such analysis may involve instance segmentation of relevant tissues followed by feature measurements. Inherent segmentation uncertainties produced by these deep models, however, could propagate to the downstream measurements, causing biased distribution estimate of the whole s
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Uncertainty Estimation in Medical Image Denoising with Bayesian Deep Image Priorta sets tend to hallucinate and create artifacts in the reconstructed output that are not anatomically present. We use a randomly initialized convolutional network as parameterization of the reconstructed image and perform gradient descent to match the observation, which is known as deep image prior
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Uncertainty Estimation for Assessment of 3D US Scan Adequacy and DDH Metric Reliability in young adults. Clinical practice for diagnosis remains reliant on manual measurement of pediatric hip joint features from 2D Ultrasound (US) scans, a process plagued with high inter/intra operator and scan variability. Recently, 3D US was shown to be markedly more reliable with deeply-learned ima
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Clustering-Based Deep Brain MultiGraph Integrator Network for Learning Connectional Brain Templatespresentation maps of a population-driven brain connectivity and effective identification of atypical changes in brain connectivity. Ideally, a reliable CBT should satisfy the following criteria: (1) centeredness as it occupies the center of the brain network population, and (2) discriminativeness as
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Graph Domain Adaptation for Alignment-Invariant Brain Surface Segmentationtly across multiple brain surfaces via graph convolutions. However, current graph learning algorithms fail when brain surface data are misaligned across subjects, thereby requiring to apply a costly alignment procedure in pre-processing. Adversarial training is widely used for unsupervised domain ad
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Min-Cut Max-Flow for Network Abnormality Detection: Application to Preterm Birthrk. We propose a new framework for individual brain-network structural abnormality detection. The framework uses a graph-based anomaly detection algorithm that allows to detect abnormal structural connectivity on a subject level. The proposed method is generic and can be adapted for a broad range of
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