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ZeroReg3D: A Zero-shot Registration Pipeline for 3D Consecutive Histopathology Image Reconstruction

Journal of Medical Imaging (JMI), 2025
27 June 2025
Juming Xiong
Ruining Deng
Jialin Yue
Siqi Lu
Junlin Guo
Marilyn Lionts
Tianyuan Yao
Can Cui
Junchao Zhu
Chongyu Qu
Mengmeng Yin
H. Yang
Yuankai Huo
ArXiv (abs)PDFHTML
Main:9 Pages
6 Figures
Bibliography:2 Pages
3 Tables
Abstract

Histological analysis plays a crucial role in understanding tissue structure and pathology. While recent advancements in registration methods have improved 2D histological analysis, they often struggle to preserve critical 3D spatial relationships, limiting their utility in both clinical and research applications. Specifically, constructing accurate 3D models from 2D slices remains challenging due to tissue deformation, sectioning artifacts, variability in imaging techniques, and inconsistent illumination. Deep learning-based registration methods have demonstrated improved performance but suffer from limited generalizability and require large-scale training data. In contrast, non-deep-learning approaches offer better generalizability but often compromise on accuracy. In this study, we introduced ZeroReg3D, a novel zero-shot registration pipeline tailored for accurate 3D reconstruction from serial histological sections. By combining zero-shot deep learning-based keypoint matching with optimization-based affine and non-rigid registration techniques, ZeroReg3D effectively addresses critical challenges such as tissue deformation, sectioning artifacts, staining variability, and inconsistent illumination without requiring retraining or fine-tuning. The code has been made publicly available atthis https URL

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