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1
Introduction
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Outline
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Applications
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Deep approaches
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Data insufficiency
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Shift data examples
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Shift data categories
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Challenges
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Model Exchange
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Pipeline
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Representation
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Architecture
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Intermediate Results
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Clustering
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Elbow Method
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Classification
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Portal
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Shift Data Quantification
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Outlier Sensitive ContentBased Image Retrieval
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Pseudolabel
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Enterprise Differences
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Experimental Results
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Hand Example
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Discussion
Description:
Explore a comprehensive lecture on facilitating the curation and analysis of annotated medical images across institutions. Delve into the challenges of data insufficiency in supervised deep learning approaches for medical imaging tasks and discover innovative solutions. Learn about unsupervised anomaly detection techniques for identifying in-distribution and out-of-distribution data, as well as methods for quantifying dataset quality. Examine a novel content-based medical image retrieval method that balances intra- and inter-class variance for OOD-sensitive retrieval. Gain insights into accelerating the curation process through automatic detection of noisy and under-represented data. Understand the potential applications of these techniques in image annotation, querying, and future analysis of external datasets. Presented by Xiaoyuan Guo, a Computer Science PhD student at Emory University, this talk covers key topics including deep learning approaches, shift data categories, model exchange pipelines, and experimental results in the context of medical image processing and computer vision. Read more

Curation and Analysis of Annotated Medical Images Across Institutions - Xiaoyuan Guo

Stanford University
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