Ermanno Cordelli
Ricercatore a tempo determinato (L 230/2)
Biografia
Assistant Professor (RTDA) in the Computer Systems and Bioinformatics Lab, he has been at the Campus Bio-Medico University in Rome since 2006.
He is currently researching in different fields of Artificial Intelligence in general, Machine Learning and Deep Learning, such as Precision Medicine, Bit-omics and Embedded Systems with a special focus on Federated Learning.
He has a production of more than 30 scientific articles.
Curriculum
Education:
-(1 January 2022 – current)
Assistant Professor – Università Campus Bio-Medico di Roma – Department of Engineering – Unit of Computer Systems & Bioinformatics.
Main topic: Federated Learning in non-communicable diseases
-(1 October 2019 – current)
Postdoctoral researcher – Università Campus Bio-Medico di Roma – Department of Engineering – Unit of Computer Systems & Bioinformatics.
Topics: Radiomics and Pathomics, machine learning
-(1 October 2018 – 30 June 2019)
Contributor to research – Università Campus Bio-Medico di Roma – Department of Engineering – Unit of Computer Systems & Bioinformatics.
Topics: data scientist, app developer
-(1 November 2015 – 31 October 2018)
PhD student in Bioengineering and Biosciences, Biomedical Engineering curriculum, XXXI cycle, Department of Engineering, University Campus Bio-Medico of Rome. Supervisors: Prof. Paolo Soda.
-(1 January 2015 – 31 December 2015)
Contributor to research – Università Campus Bio-Medico di Roma – Department of Engineering – Unit of Computer Systems & Bioinformatics.
Topics: image processing, development of cellular segmentation algorithms, machine learning application for methods of semantic deconvolution.
-(28 July 2014)
Passed the government exam and licensed as a profession engineer (Section A, Industrial Sector, Class ML-21 or 26/S – Biomedical Engineer).
-(23 May 2014)
Master in Biomedical Engineering. – Università Campus Bio-Medico di Roma.
Thesis title: Planning and test of an analogic measurement chain for the collection of contactless biological signals, with a graphical interface connection to microcontroller.
-(23 May 2009)
Bachelor in Biomedical Engineering. – Università Campus Bio-Medico di Roma.
Thesis title: Computer automation to determine the light intensity in HEp-2 images.
PUBBLICAZIONI
International Journals
- Caruso, C. M., Guarrasi, V., Cordelli, E. et al. (2022). A Multimodal Ensemble Driven by Multiobjective Optimisation to Predict Overall Survival in Non-Small-Cell Lung Cancer. Journal of Imaging, 8(11), 298.
- Santucci, D., Faiella, E., Gravina, M., Cordelli, E., et al. (2022). CNN-Based Approaches with Different Tumor Bounding Options for Lymph Node Status Prediction in Breast DCE-MRI. Cancers, 14(19), 4574.
- Faiella, E., Vertulli, D., Esperto, F., Cordelli, E. et al. (2022). Quantib Prostate Compared to an Expert Radiologist for the Diagnosis of Prostate Cancer on mpMRI: A Single-Center Preliminary Study. Tomography, 8(4), 2010-2019.
- M. Tortora, E. Cordelli and P. Soda (2022). PyTrack: a Map-Matching-based Python Toolbox for Vehicle Trajectory Reconstruction.
- M. Tortora, E. Cordelli et al. (2022). RadioPathomics: Multimodal Learning in Non-Small Cell Lung Cancer for Adaptive Radiotherapy. arXiv preprint arXiv:2204.12423.
- R. Stefanucci, D. Santucci, S. M. Rossi, M. Samarra, E, Faiella, E. Cordelli et al. (2022). A Case of Secretory Carcinoma in a Patient With a History of Contralateral Medullary Carcinoma. Ultrasound, 1(2), 8-10.
- V. Guarrasi, N. C. D’Amico, R. Sicilia, E. Cordelli and P. Soda (2022). Pareto optimization of deep networks for COVID-19 diagnosis from chest X-rays. Pattern Recognition, 121, 108242.
- D. Santucci, E. Faiella, E. Cordelli et al. (2021). 3T MRI-Radiomic Approach to Predict for Lymph Node Status in Breast Cancer Patients. Cancers, 2228, 13092228.
- P. Soda, N. C. D’Amico, J. Tessadori, G. Valbusa, V. Guarrasi, C. Bortolotto, M. U. Akbar, R. Sicilia, E. Cordelli et al. (2021). AIforCOVID: predicting the clinical outcomes in patients with COVID-19 applying AI to chest-X-rays. An Italian multicentre study. Medical image analysis, 102216.
- D. Santucci, E. Faiella, E. Cordelli et al. (2021). The Impact of Tumor Edema on T2-Weighted 3T-MRI Invasive Breast Cancer Histological Characterization: A Pilot Radiomics Study. Cancers, 13(18), 4635.
- M. Tortora, E. Cordelli et al. (2021) Deep Reinforcement Learning for Fractionated Radiotherapy in Non-Small Cell Lung Carcinoma. Artificial Intelligence In Medicine.
- E. Cordelli, P. Soda and G. Iannello (2021). Visual4DTracker: a tool to interact with 3D + t image stacks. BMC bioinformatics, 22(1), 1-15.
- D’Amico, N. C., Sicilia, R., Cordelli, E. et al. (2020). Radiomics-Based Prediction of Overall Survival in Lung Cancer Using Different Volumes-Of-Interest. Applied Sciences, 10(18), 6425.
- N. C. D'Amico, M. Merone, R. Sicilia, E. Cordelli et al. (2019) Tackling imbalance radiomics in acoustic neuroma. In International Journal of Data Mining and Bioinformatics (IJDMB).
- D'Amico, N. C., Sicilia, R., Cordelli, E. et al. (2019). Early radiomics experiences in predicting CyberKnife response in acoustic neuroma. ACM SIGBIO Newsletter, 8(3), 11-13.
- S. Ramella, M. Fiore, C. Greco, E. Cordelli, et al. (2018). A radiomic approach for adaptive radiotherapy in non-small cell lung cancer patients. In PloS one.
- E. Cordelli et al. (2018). A decision support system for type 1 diabetes mellitus diagnostics based on dual channel analysis of red blood cell membrane fluidity. In Computer Methods and Programs in Biomedicine (CMPB), volume 162, pages 263–271.