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Pavel Nikulin

Showing results (1-10 of 13) with videos related to

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Physics in Medicine and Biology|February 10, 2026
Erratum: Time efficient scatter correction for time-of-flight PET: the immediate scatter approximation (2019<i>Phys. Med. Biol</i>.<b>64</b>075005)Pavel Nikulin, Jens Maus, Frank Hofheinz, et al.
Physics in Medicine and Biology|March 12, 2019
Time efficient scatter correction for time-of-flight PET: the immediate scatter approximationPavel Nikulin, Jens Maus, Frank Hofheinz, et al.
EJNMMI Physics|July 8, 2024
Deep learning based bilateral filtering for edge-preserving denoising of respiratory-gated PETJens Maus, Pavel Nikulin, Frank Hofheinz, et al.
ACS Measurement Science Au|April 20, 2026
Automatic Delineation of Tumor Spheroids in Microscopic Images Using Deep-LearningJens Maus, Janina Nitschke, Pavel Nikulin, et al.
Scientific Reports|May 24, 2023
Asphericity derived from [<sup>18</sup>F]FDG PET as a new prognostic parameter in cervical cancer patientsPaulina Cegla, Frank Hofheinz, Ewa Burchardt, et al.
European Journal of Nuclear Medicine and Molecular Imaging|October 2, 2020
A convolutional neural network for fully automated blood SUV determination to facilitate SUR computation in oncological FDG-PETPavel Nikulin, Frank Hofheinz, Jens Maus, et al.
European Journal of Nuclear Medicine and Molecular Imaging|March 24, 2026
A convolutional neural network for fully automated total metabolic tumor volume delineation in patients with aggressive Non-Hodgkin lymphomaPavel Nikulin, Sebastian Hoberück, Ivayla Apostolova, et al.
Journal of Nuclear Medicine : Official Publication, Society of Nuclear Medicine|March 13, 2025
Tumor Asphericity in FDG PET Is an Independent Prognostic Parameter Improving Risk Stratification in Patients with Head and Neck Squamous Cell CarcinomaPatrick Hausmann, Sebastian Zschaeck, Christian Furth, et al.
Cancer Imaging : the Official Publication of the International Cancer Imaging Society|April 8, 2025
Correction: Total lesion Glycolysis of primary tumor and lymphnodes is a strong predictor for development of distant metastases in oropharyngeal carcinoma patients with independent validation in automatically delineated lesionsSebastian Zschaeck, Marina Hajiyianni, Patrick Hausmann, et al.
Cancer Imaging : the Official Publication of the International Cancer Imaging Society|February 22, 2025
Total lesion glycolysis of primary tumor and lymphnodes is a strong predictor for development of distant metastases in oropharyngeal carcinoma patients with independent validation in automatically delineated lesionsSebastian Zschaeck, Marina Hajiyianni, Patrick Hausmann, et al.
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Showing results (1-10 of 13) with videos related to

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Pageof 2
Physics in Medicine and Biology|February 10, 2026
Erratum: Time efficient scatter correction for time-of-flight PET: the immediate scatter approximation (2019<i>Phys. Med. Biol</i>.<b>64</b>075005)Pavel Nikulin, Jens Maus, Frank Hofheinz, et al.
Physics in Medicine and Biology|March 12, 2019
Time efficient scatter correction for time-of-flight PET: the immediate scatter approximationPavel Nikulin, Jens Maus, Frank Hofheinz, et al.
EJNMMI Physics|July 8, 2024
Deep learning based bilateral filtering for edge-preserving denoising of respiratory-gated PETJens Maus, Pavel Nikulin, Frank Hofheinz, et al.
ACS Measurement Science Au|April 20, 2026
Automatic Delineation of Tumor Spheroids in Microscopic Images Using Deep-LearningJens Maus, Janina Nitschke, Pavel Nikulin, et al.
Scientific Reports|May 24, 2023
Asphericity derived from [<sup>18</sup>F]FDG PET as a new prognostic parameter in cervical cancer patientsPaulina Cegla, Frank Hofheinz, Ewa Burchardt, et al.
European Journal of Nuclear Medicine and Molecular Imaging|October 2, 2020
A convolutional neural network for fully automated blood SUV determination to facilitate SUR computation in oncological FDG-PETPavel Nikulin, Frank Hofheinz, Jens Maus, et al.
European Journal of Nuclear Medicine and Molecular Imaging|March 24, 2026
A convolutional neural network for fully automated total metabolic tumor volume delineation in patients with aggressive Non-Hodgkin lymphomaPavel Nikulin, Sebastian Hoberück, Ivayla Apostolova, et al.
Journal of Nuclear Medicine : Official Publication, Society of Nuclear Medicine|March 13, 2025
Tumor Asphericity in FDG PET Is an Independent Prognostic Parameter Improving Risk Stratification in Patients with Head and Neck Squamous Cell CarcinomaPatrick Hausmann, Sebastian Zschaeck, Christian Furth, et al.
Cancer Imaging : the Official Publication of the International Cancer Imaging Society|April 8, 2025
Correction: Total lesion Glycolysis of primary tumor and lymphnodes is a strong predictor for development of distant metastases in oropharyngeal carcinoma patients with independent validation in automatically delineated lesionsSebastian Zschaeck, Marina Hajiyianni, Patrick Hausmann, et al.
Cancer Imaging : the Official Publication of the International Cancer Imaging Society|February 22, 2025
Total lesion glycolysis of primary tumor and lymphnodes is a strong predictor for development of distant metastases in oropharyngeal carcinoma patients with independent validation in automatically delineated lesionsSebastian Zschaeck, Marina Hajiyianni, Patrick Hausmann, et al.
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