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Franziska Weber

franziskaweber

  •  Germany
  •  Friedrich-Alexander-University Erlangen-Nürnberg
  •  Computer Science
Statistics
  • Member for 4 months
  • 1 challenge submissions

Activity Overview

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Task 2: Multi-Abnormality Classification
Challenge User

Given a volumetric chest CT, algorithms must output an 18‑length binary vector indicating the presence of common thoracic conditions (e.g., pleural effusion, lung nodule); evaluation on hidden test cohorts combines AUROC, F1, Precision, Recall, and Accuracy, with point‑based ranking driven by permutation‑test wins.

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Task 3: Self-Supervised Multi-Abnormality Localization
Challenge User

Participants synthesize anatomically plausible 3‑D chest CT volumes directly from radiology text prompts, aiming for high visual fidelity, realistic Hounsfield distributions, and tight semantic alignment; success is measured with CT‑adapted generative metrics (FVDI3D, FVDCT‑Net, CT‑CLIP, FID) and ranked via the same permutation‑based point system.