SOTAVerified

Bridging 3D Deep Learning and Curation for Analysis and High-Quality Segmentation in Practice

2025-11-27Code Available0· sign in to hype

Simon Püttmann, Jonathan Jair Sànchez Contreras, Lennart Kowitz, Peter Lampen, Saumya Gupta, Davide Panzeri, Nina Hagemann, Qiaojie Xiong, Dirk M. Hermann, Cao Chen, Jianxu Chen

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Accurate 3D microscopy image segmentation is critical for quantitative bioimage analysis but even state-of-the-art foundation models yield error-prone results. Therefore, manual curation is still widely used for either preparing high-quality training data or fixing errors before analysis. We present VessQC, an open-source tool for uncertainty-guided curation of large 3D microscopy segmentations. By integrating uncertainty maps, VessQC directs user attention to regions most likely containing biologically meaningful errors. In a preliminary user study uncertainty-guided correction significantly improved error detection recall from 67% to 94.0% (p=0.007) without a significant increase in total curation time. VessQC thus enables efficient, human-in-the-loop refinement of volumetric segmentations and bridges a key gap in real-world applications between uncertainty estimation and practical human-computer interaction. The software is freely available at github.com/MMV-Lab/VessQC.

Reproductions