Integration of Expert Knowledge for Interpretable Models in Biomedical Data Analysis (Dagstuhl Seminar 16261)

This report documents the talks, discussions and outcome of the Dagstuhl seminar 16261 “Integration of Expert Knowledge for Interpretable Models in Biomedical Data Analysis”. The seminar brought together 37 participants from three diverse disciplines, who would normally not have opportunities to meet in such a forum, let alone discuss common interests and plan joint projects.

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[12]  Bernd Hamann,et al.  Brain Modulyzer: Interactive Visual Analysis of Functional Brain Connectivity , 2017, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

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