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Carlos Milovic

Showing results (11-20 of 23) with videos related to

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Magnetic Resonance Imaging|April 21, 2018
A new discrete dipole kernel for quantitative susceptibility mappingCarlos Milovic, Julio Acosta-Cabronero, José Miguel Pinto, et al.
BMC Bioinformatics|May 18, 2013
Calcium (Ca2+) waves data calibration and analysis using image processing techniquesCarlos Milovic, Carolina Oses, Manuel Villalón, et al.
IEEE Transactions on Pattern Analysis and Machine Intelligence|August 6, 2020
DeepSPIO: Super Paramagnetic Iron Oxide Particle Quantification Using Deep Learning in Magnetic Resonance ImagingGabriel Della Maggiora, Carlos Castillo-Passi, Wenqi Qiu, et al.
Neuroimage|October 3, 2025
Investigating the effect of masking and background field removal algorithms on the quality of QSM reconstructions using a realistic numerical head phantomCarlos Milovic, Patrick S Fuchs, Mathias Lambert, et al.
NMR in Biomedicine|February 21, 2020
Nonlinear dipole inversion (NDI) enables robust quantitative susceptibility mapping (QSM)Daniel Polak, Itthi Chatnuntawech, Jaeyeon Yoon, et al.
Magnetic Resonance in Medicine|February 23, 2020
The 2016 QSM Challenge: Lessons learned and considerations for a future challenge designCarlos Milovic, Cristian Tejos, Julio Acosta-Cabronero, et al.
Magnetic Resonance in Medicine|February 27, 2021
QSM reconstruction challenge 2.0: A realistic in silico head phantom for MRI data simulation and evaluation of susceptibility mapping proceduresJosé P Marques, Jakob Meineke, Carlos Milovic, et al.
Computer Methods and Programs in Biomedicine|September 10, 2025
Interpretable machine learning model for characterizing magnetic susceptibility-based biomarkers in first episode psychosisPamela Franco, Cristian Montalba, Raúl Caulier-Cisterna, et al.
Magnetic Resonance in Medicine|August 2, 2017
Quantitative susceptibility mapping: Report from the 2016 reconstruction challengeChristian Langkammer, Ferdinand Schweser, Karin Shmueli, et al.
Schizophrenia Bulletin|April 8, 2023
Quantitative Susceptibility Mapping MRI in Deep-Brain Nuclei in First-Episode PsychosisMarisleydis García Saborit, Alejandro Jara, Néstor Muñoz, et al.
Pageof 3

Showing results (11-20 of 23) with videos related to

Sort By:
Pageof 3
Magnetic Resonance Imaging|April 21, 2018
A new discrete dipole kernel for quantitative susceptibility mappingCarlos Milovic, Julio Acosta-Cabronero, José Miguel Pinto, et al.
BMC Bioinformatics|May 18, 2013
Calcium (Ca2+) waves data calibration and analysis using image processing techniquesCarlos Milovic, Carolina Oses, Manuel Villalón, et al.
IEEE Transactions on Pattern Analysis and Machine Intelligence|August 6, 2020
DeepSPIO: Super Paramagnetic Iron Oxide Particle Quantification Using Deep Learning in Magnetic Resonance ImagingGabriel Della Maggiora, Carlos Castillo-Passi, Wenqi Qiu, et al.
Neuroimage|October 3, 2025
Investigating the effect of masking and background field removal algorithms on the quality of QSM reconstructions using a realistic numerical head phantomCarlos Milovic, Patrick S Fuchs, Mathias Lambert, et al.
NMR in Biomedicine|February 21, 2020
Nonlinear dipole inversion (NDI) enables robust quantitative susceptibility mapping (QSM)Daniel Polak, Itthi Chatnuntawech, Jaeyeon Yoon, et al.
Magnetic Resonance in Medicine|February 23, 2020
The 2016 QSM Challenge: Lessons learned and considerations for a future challenge designCarlos Milovic, Cristian Tejos, Julio Acosta-Cabronero, et al.
Magnetic Resonance in Medicine|February 27, 2021
QSM reconstruction challenge 2.0: A realistic in silico head phantom for MRI data simulation and evaluation of susceptibility mapping proceduresJosé P Marques, Jakob Meineke, Carlos Milovic, et al.
Computer Methods and Programs in Biomedicine|September 10, 2025
Interpretable machine learning model for characterizing magnetic susceptibility-based biomarkers in first episode psychosisPamela Franco, Cristian Montalba, Raúl Caulier-Cisterna, et al.
Magnetic Resonance in Medicine|August 2, 2017
Quantitative susceptibility mapping: Report from the 2016 reconstruction challengeChristian Langkammer, Ferdinand Schweser, Karin Shmueli, et al.
Schizophrenia Bulletin|April 8, 2023
Quantitative Susceptibility Mapping MRI in Deep-Brain Nuclei in First-Episode PsychosisMarisleydis García Saborit, Alejandro Jara, Néstor Muñoz, et al.
Pageof 3