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Nataliia Molchanova
Nataliia Molchanova
PhD student, University of Lausanne and Lausanne University Hospital, University of Applied Sciences of Western Switzerland
Подтвержден адрес электронной почты в домене unil.ch
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Процитировано
Год
Shifts 2.0: Extending the dataset of real distributional shifts
A Malinin, A Athanasopoulos, M Barakovic, MB Cuadra, MJF Gales, ...
arXiv preprint arXiv:2206.15407, 2022
172022
Novel structural-scale uncertainty measures and error retention curves: application to multiple sclerosis
N Molchanova, V Raina, A Malinin, F La Rosa, H Muller, M Gales, ...
2023 IEEE 20th International Symposium on Biomedical Imaging (ISBI), 1-5, 2023
42023
Tackling bias in the dice similarity coefficient: Introducing nDSC for white matter lesion segmentation
V Raina, N Molchanova, M Graziani, A Malinin, H Muller, MB Cuadra, ...
2023 IEEE 20th International Symposium on Biomedical Imaging (ISBI), 1-5, 2023
32023
Structural-Based Uncertainty in Deep Learning Across Anatomical Scales: Analysis in White Matter Lesion Segmentation
N Molchanova, V Raina, A Malinin, F La Rosa, A Depeursinge, M Gales, ...
arXiv preprint arXiv:2311.08931, 2023
2023
The Normalised Dice Similarity Coefficient for Multiple Sclerosis: tackling lesion load biases in white matter and cortical lesion segmentation
V Raina, N Molchanova, M Graziani, A Malinin, PJ Lu, M Weigel, H Muller, ...
MULTIPLE SCLEROSIS JOURNAL 29, 925-926, 2023
2023
FLAWS against flaws: Improving Automated Cortical Lesion Segmentation
PM Gordaliza, J Muller, C Tsagkas, R Rahmanzadeh, N Molchanova, ...
MULTIPLE SCLEROSIS JOURNAL 29, 921-921, 2023
2023
Fast refacing of MR images with a generative neural network lowers re-identification risk and preserves volumetric consistency
N Molchanova, B Maréchal, JP Thiran, T Kober, T Huelnhagen, ...
arXiv preprint arXiv:2305.16922, 2023
2023
FLAIR vs MPRAGE contribution to white matter lesion automatic segmentation in MS using localized saliency maps
F Spagnolo, R Schaer, V Andrearczyk, N Molchanova, M Graziani, ...
Proceedings of BIAS 2023, 2023
2023
Identification of paramagnetic rim lesions using conventional MRI: a deep learning approach
F Spagnolo, A Depeursinge, V Andrearczyk, P Benkert, S Müller, ...
Multiple Sclerosis Journal 29, pp. 327-329, 2023
2023
Streamline RimNet: a deep learning classification of paramagnetic rim lesions
J Najm, PM Gordaliza, M Wynen, C Vanden Bulcke, A Stolting, ...
Multiple Sclerosis Journal 29, pp. 330-331, 2023
2023
Deep learning uncertainty quantification of cortical lesions in MP2RAGE for missed lesions discovery
N Molchanova, A Cagol, M Ocampo-Pineda, X Chen, M Weigel, ...
Multiple Sclerosis Journal 29, p. 918, 2023
2023
Towards informative uncertainty measures for MRI segmentation in clinical practice: application to multiple sclerosis
N Molchanova, V Raina, F La Rosa, A Malinin, H Müller, M Gales, ...
Proceedings of the 2023 ISMRM & ISMRT Annual Meeting & Exhibition, 2023
2023
Streamline RimNet: Tools for Automatic Classification of Paramagnetic Rim Lesions in MRI of Multiple Sclerosis
J Najm, P Macias Gordaliza, G Barquero, F La Rosa, N Molchanova, ...
EPFL Infoscience, 2023
2023
Preserving Privacy While Maintaining Consistent Postprocessing Results: Fast and Effective Anonymous Refacing using a 3D cGAN
N Molchanova, B Maréchal, JP Thiran, T Kober, J Richiardi, ...
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