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Agata Mosinska

Showing results (1-10 of 10) with videos related to

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IEEE Transactions on Pattern Analysis and Machine Intelligence|June 11, 2019
Joint Segmentation and Path Classification of Curvilinear StructuresAgata Mosinska, Mateusz Kozinski, Pascal Fua
Medical Image Analysis|December 17, 2019
Tracing in 2D to reduce the annotation effort for 3D deep delineation of linear structuresMateusz Koziński, Agata Mosinska, Mathieu Salzmann, et al.
Scientific Reports|November 9, 2021
Fully-automated atrophy segmentation in dry age-related macular degeneration in optical coherence tomographyYasmine Derradji, Agata Mosinska, Stefanos Apostolopoulos, et al.
Graefe'S Archive for Clinical and Experimental Ophthalmology = Albrecht Von Graefes Archiv Fur Klinische Und Experimentelle Ophthalmologie|January 19, 2022
Automated foveal location detection on spectral-domain optical coherence tomography in geographic atrophy patientsAndrea Montesel, Anthony Gigon, Agata Mosinska, et al.
Translational Vision Science & Technology|November 12, 2021
Personalized Atrophy Risk Mapping in Age-Related Macular DegenerationAnthony Gigon, Agata Mosinska, Andrea Montesel, et al.
Translational Vision Science & Technology|May 18, 2021
Automated Quantification of Pathological Fluids in Neovascular Age-Related Macular Degeneration, and Its Repeatability Using Deep LearningIrmela Mantel, Agata Mosinska, Ciara Bergin, et al.
IEEE Transactions on Pattern Analysis and Machine Intelligence|March 24, 2017
Reconstructing Evolving Tree Structures in Time Lapse Sequences by Enforcing Time-ConsistencyPrzemyslaw Glowacki, Miguel Amavel Pinheiro, Agata Mosinska, et al.
Ophthalmology. Retina|May 10, 2021
Machine Learning Can Predict Anti-VEGF Treatment Demand in a Treat-and-Extend Regimen for Patients with Neovascular AMD, DME, and RVO Associated Macular EdemaMathias Gallardo, Marion R Munk, Thomas Kurmann, et al.
Journal of Clinical Medicine|August 23, 2020
Comparison of Drusen Volume Assessed by Two Different OCT DevicesMarco Beck, Devika S Joshi, Lieselotte Berger, et al.
The British Journal of Ophthalmology|January 10, 2023
Artificial intelligence-based fluid quantification and associated visual outcomes in a real-world, multicentre neovascular age-related macular degeneration national databaseRuben Martin-Pinardel, Jordi Izquierdo-Serra, Sandro De Zanet, et al.
Pageof 1

Showing results (1-10 of 10) with videos related to

Sort By:
Pageof 1
IEEE Transactions on Pattern Analysis and Machine Intelligence|June 11, 2019
Joint Segmentation and Path Classification of Curvilinear StructuresAgata Mosinska, Mateusz Kozinski, Pascal Fua
Medical Image Analysis|December 17, 2019
Tracing in 2D to reduce the annotation effort for 3D deep delineation of linear structuresMateusz Koziński, Agata Mosinska, Mathieu Salzmann, et al.
Scientific Reports|November 9, 2021
Fully-automated atrophy segmentation in dry age-related macular degeneration in optical coherence tomographyYasmine Derradji, Agata Mosinska, Stefanos Apostolopoulos, et al.
Graefe'S Archive for Clinical and Experimental Ophthalmology = Albrecht Von Graefes Archiv Fur Klinische Und Experimentelle Ophthalmologie|January 19, 2022
Automated foveal location detection on spectral-domain optical coherence tomography in geographic atrophy patientsAndrea Montesel, Anthony Gigon, Agata Mosinska, et al.
Translational Vision Science & Technology|November 12, 2021
Personalized Atrophy Risk Mapping in Age-Related Macular DegenerationAnthony Gigon, Agata Mosinska, Andrea Montesel, et al.
Translational Vision Science & Technology|May 18, 2021
Automated Quantification of Pathological Fluids in Neovascular Age-Related Macular Degeneration, and Its Repeatability Using Deep LearningIrmela Mantel, Agata Mosinska, Ciara Bergin, et al.
IEEE Transactions on Pattern Analysis and Machine Intelligence|March 24, 2017
Reconstructing Evolving Tree Structures in Time Lapse Sequences by Enforcing Time-ConsistencyPrzemyslaw Glowacki, Miguel Amavel Pinheiro, Agata Mosinska, et al.
Ophthalmology. Retina|May 10, 2021
Machine Learning Can Predict Anti-VEGF Treatment Demand in a Treat-and-Extend Regimen for Patients with Neovascular AMD, DME, and RVO Associated Macular EdemaMathias Gallardo, Marion R Munk, Thomas Kurmann, et al.
Journal of Clinical Medicine|August 23, 2020
Comparison of Drusen Volume Assessed by Two Different OCT DevicesMarco Beck, Devika S Joshi, Lieselotte Berger, et al.
The British Journal of Ophthalmology|January 10, 2023
Artificial intelligence-based fluid quantification and associated visual outcomes in a real-world, multicentre neovascular age-related macular degeneration national databaseRuben Martin-Pinardel, Jordi Izquierdo-Serra, Sandro De Zanet, et al.
Pageof 1