001043527 001__ 1043527
001043527 005__ 20250716202229.0
001043527 037__ $$aFZJ-2025-02903
001043527 041__ $$aEnglish
001043527 1001_ $$0P:(DE-Juel1)171152$$aKropp, Jan-Oliver$$b0$$eCorresponding author$$ufzj
001043527 1112_ $$aHelmholtz AI Conference 2025$$cKarlsruhe$$d2025-06-03 - 2025-06-05$$gHAICON25$$wGermany
001043527 245__ $$aStep by Step: Towards a gapless 1 micron BigBrain with Diffusion Models
001043527 260__ $$c2025
001043527 3367_ $$033$$2EndNote$$aConference Paper
001043527 3367_ $$2BibTeX$$aINPROCEEDINGS
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001043527 520__ $$aAdvances in microscopic imaging and high-performance computing allow analyzing the complex cellular structure of the human brain in great detail. This progress has greatly aided in brain mapping and cell segmentation, and the development of automated analysis methods. However, histological image data can contain data gaps due to inevitable processing artifacts, which, despite careful precautions, may arise during histological lab work, such as missing sections, tissue tears, or inconsistent staining.To address this issue, we presented a convolutional neural network model that reconstructs corrupted data from surrounding tissue, while preserving precise cellular distributions. Our approach uses a denoising diffusion probabilistic model trained on light-microscopy scans of cell-body stained histological sections. We extended this model with the RePaint method to impute corrupted image data. We evaluate its performance with established deep learning models trained on the same type of histological data.A key challenge of our initial model was its difficulty in accurately reconstructing tissue boundaries and larger anatomical structures such as blood vessels. We address these challenges by an enhanced diffusion-based model that incorporates contextual information from adjacent sections of the brain. This model integrates three tissue patches from neighboring sections using a siamese network architecture with cross-attention mechanisms. Leveraging spatially aligned information across consecutive sections, our approach achieves a more anatomically coherent reconstruction.We demonstrate that our model significantly improves realism and anatomical plausibility of reconstructed cellular distributions, as measured by both cell density prediction and brain area classification tasks. The error in predicted cell density was reduced to below 5% across large inpainting regions, marking a notable improvement over previous approaches. The model reliably preserves tissue borders and reconstructs larger structures like blood vessels, which are crucial for accurate cytoarchitectonic mapping.These findings underscore the potential of generative deep learning models for cytoarchitectonic research, opening new avenues for the automated reconstruction of histological data. Beyond inpainting small regions, our approach paves the way for the reconstruction of entirely missing brain slices, offering a powerful tool for bridging data gaps in high-resolution brain mapping efforts.
001043527 536__ $$0G:(DE-HGF)POF4-5254$$a5254 - Neuroscientific Data Analytics and AI (POF4-525)$$cPOF4-525$$fPOF IV$$x0
001043527 536__ $$0G:(DE-Juel-1)E.40401.62$$aHelmholtz AI - Helmholtz Artificial Intelligence  Coordination Unit – Local Unit FZJ (E.40401.62)$$cE.40401.62$$x1
001043527 536__ $$0G:(DE-HGF)InterLabs-0015$$aHIBALL - Helmholtz International BigBrain Analytics and Learning Laboratory (HIBALL) (InterLabs-0015)$$cInterLabs-0015$$x2
001043527 536__ $$0G:(EU-Grant)101147319$$aEBRAINS 2.0 - EBRAINS 2.0: A Research Infrastructure to Advance Neuroscience and Brain Health (101147319)$$c101147319$$fHORIZON-INFRA-2022-SERV-B-01$$x3
001043527 536__ $$0G:(DE-Juel1)JL SMHB-2021-2027$$aJL SMHB - Joint Lab Supercomputing and Modeling for the Human Brain (JL SMHB-2021-2027)$$cJL SMHB-2021-2027$$x4
001043527 7001_ $$0P:(DE-Juel1)170068$$aSchiffer, Christian$$b1$$ufzj
001043527 7001_ $$0P:(DE-Juel1)131631$$aAmunts, Katrin$$b2$$ufzj
001043527 7001_ $$0P:(DE-Juel1)165746$$aDickscheid, Timo$$b3$$ufzj
001043527 909CO $$ooai:juser.fz-juelich.de:1043527$$popenaire$$pVDB$$pec_fundedresources
001043527 9101_ $$0I:(DE-588b)5008462-8$$6P:(DE-Juel1)171152$$aForschungszentrum Jülich$$b0$$kFZJ
001043527 9101_ $$0I:(DE-588b)5008462-8$$6P:(DE-Juel1)170068$$aForschungszentrum Jülich$$b1$$kFZJ
001043527 9101_ $$0I:(DE-588b)5008462-8$$6P:(DE-Juel1)131631$$aForschungszentrum Jülich$$b2$$kFZJ
001043527 9101_ $$0I:(DE-588b)5008462-8$$6P:(DE-Juel1)165746$$aForschungszentrum Jülich$$b3$$kFZJ
001043527 9131_ $$0G:(DE-HGF)POF4-525$$1G:(DE-HGF)POF4-520$$2G:(DE-HGF)POF4-500$$3G:(DE-HGF)POF4$$4G:(DE-HGF)POF$$9G:(DE-HGF)POF4-5254$$aDE-HGF$$bKey Technologies$$lNatural, Artificial and Cognitive Information Processing$$vDecoding Brain Organization and Dysfunction$$x0
001043527 9141_ $$y2025
001043527 920__ $$lyes
001043527 9201_ $$0I:(DE-Juel1)INM-1-20090406$$kINM-1$$lStrukturelle und funktionelle Organisation des Gehirns$$x0
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001043527 980__ $$aI:(DE-Juel1)INM-1-20090406
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