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Nicola D'Ascenzo
教授
Department of Electronic Engineering and Information Science
School of Information Science and Technology, University of Science and Technology of China;School of Life Science and Technology, Huazhong University of Science and Technology;Wuhan National Laboratory for Optoelectronics;Institute of Artificial Intelligence, Hefei Comprehensive National Science Center
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个人简介
To contrast adverse impact of climate-change-related stressors for sustainable agriculture, Prof. D’Ascenzo explores the frontier of PET setting the theoretical, methodological, and technological fundaments for the transition from a lab-based plant PET imaging to an in-field Agri-PET imaging. In-field measurements obtained with the new portable AGRI-PET system technology developed by Prof. D’Ascenzo, in fact, reflect the complexity of a natural environment, which lab-based experiments can only partially reproduce. The system is equipped with a Kinetically Consistent Data Assimilation (KCDA) signal processing approach for incomplete dynamic crop PET signals, which allows the quantitative interpretation of the PET spatiotemporal signals.
To study brain functionality in neurological diseases, Prof. D’Ascenzo explores the frontier of brain PET technology, investigating the potential of a digital Helmet PET system, which adapts to the head shape with a half-spherical configuration. Its high sensitivity and count-rate capability enable short dynamic frames, opening the possibility of high-resolution dynamic imaging of subjects in free-motion.
To study brain functionality in neurological diseases, Prof. D’Ascenzo explores the frontier of brain PET technology, investigating the potential of a digital Helmet PET system, which adapts to the head shape with a half-spherical configuration. Its high sensitivity and count-rate capability enable short dynamic frames, opening the possibility of high-resolution dynamic imaging of subjects in free-motion.
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论文共 255 篇作者统计合作学者相似作者
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Emanuele Antonecchia,Nicola D'Ascenzo,Silvia Cantalamessa, Weike Chang,Mariachiara Ciardiello, Michelle Kattan, Afsaneh Nematpour,Giancarlo Pagnani, Federica Palazzo, Daniel Punzet, Geer Shen,Feng Zhou,
IEEE TRANSACTIONS ON NUCLEAR SCIENCEno. 1 (2024): 113-120
Lei Fang,Bo Zhang,Bingxuan Li,Xiangsong Zhang, Xiaoyun Zhou,Jigang Yang,Ang Li,Xinchong Shi,Yuqing Liu,Michael Kreissl,Nicola D'Ascenzo,Peng Xiao,
PHYSICS IN MEDICINE AND BIOLOGYno. 2 (2024)
Feng Zhou,Nicola D'Ascenzo,Bo Zhang,Emanuele Antonecchia,Lei Fang,Li Ba, Min Zhang,Xiaohua Zhu,Qiong Liu,Jiazuan Ni, Giacomo Frati,Michael Kreissl,
IEEE TRANSACTIONS ON RADIATION AND PLASMA MEDICAL SCIENCESno. 3 (2024): 287-294
JOURNAL OF MATHEMATICAL ANALYSIS AND APPLICATIONSno. 2 (2024): 127754-127754
Emanuele Antonecchia, Markus Backer,Daniele Cafolla,Mariachiara Ciardiello, Charlotte Kuhl,Giancarlo Pagnani,Jiale Wang,Shuai Wang,Feng Zhou,Nicola D'Ascenzo,Lucio Gialanella,Michele Pisante,
2022 IEEE Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC)pp.1-5, (2022)
2022 IEEE Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC)pp.1-3, (2022)
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