Kidney and Liver

Ukwatta, Eran

188 188 MaLMIC - Machine Learning in Medical Imaging Consortium

Eran Ukwatta

Email: eukwatta@uoguelph.ca
Role: PhD faculty
Affiliation: University of Guelph
Website: https://www.uoguelph.ca/engineering/people/eranga-ukwatta-phd-peng
Data to Share: Not at the moment
Area(s) for Potential Collaboration: Machine Learning from Medical Image analysis
Modality: Ultrasound, MR, CT, Optical/Microscopy
Organ: Prostate, Cardiac, Lung, Kidney & Liver, Head and Neck
Disease: Heart disease, Stroke and Cardiovascular, Respiratory disease, Cancer, Kidney and Liver disease
Area of Research: Medical Image Analysis

Thornhill, Rebecca

250 250 MaLMIC - Machine Learning in Medical Imaging Consortium

Email: rthornhill@toh.ca
Role: PhD faculty
Affiliation: Department of Radiology, Radiation Oncology, and Medical Physics, University of Ottawa
Website: https://med.uottawa.ca/radiology/people/thornhill-rebecca
Data to Share: Not directly at present, but welcome opportunity to facilitate discussions with my clinical collaborators
Area(s) for Potential Collaboration: cardiac MRI and 1H/31P MRS of cardiovascular and metabolic disorders; brain/heart and liver/heart interactions; developing approaches for evaluating patient and clinician satisfaction with explanations for ML model decisions in medical imaging in cancer and heart disease
Modality: MR, CT
Organ: Cardiac, Brain, Kidney & Liver
Disease: Heart disease, Stroke and Cardiovascular, Cancer
Area of Research: Magnetic resonance imaging and spectroscopy of cardiovascular and metabolic disorders; radiomics and machine learning in medical imaging, including neuroimaging, oncologic, and cardiovascular applications; developing approaches to explainable ML in medical imaging.

Chen, Lina

1024 1024 MaLMIC - Machine Learning in Medical Imaging Consortium

Lina Chen

Email: lina.chen@utoronto.ca
Role: MD faculty
Affiliation: Sunnybrook Health Sciences Center, University of Toronto
Website: https://lmp.utoronto.ca/faculty/lina-chen
Data to Share: digital images of histology slides from all GI sites
Area(s) for Potential Collaboration: Computational pathology
Artificial Intelligence-based algorithm development for digital pathology
Modality: Optical/Microscopy
Organ: Other GI tract, liver and pancreas
Disease: Cancer, Other all diseases in GI tract, liver and pancreas
Area of Research: My research activities include clinical and translational research related to gastrointestinal, hepatobiliary and pancreatic diseases. I has a particular interest in developing and utilizing digital pathology tools to enhance clinical practice.

Singh, Paramdeep

412 412 MaLMIC - Machine Learning in Medical Imaging Consortium

Email: paramdeepdoctor@gmail.com
Role: MD faculty
Affiliation: All India Institute of Medical Sciences, Bathinda (India)
Website: https://orcid.org/0000-0003-4226-201X
Data to Share: MRI, CT, Xrays
Area(s) for Potential Collaboration: Radiomics
Modality: MR, CT, X-ray
Organ: Prostate, Breast, Cardiac, Brain, Lung, Musculoskeletal, Kidney & Liver, Head and Neck
Disease: Stroke and Cardiovascular, Respiratory disease, Cancer, Neurological disease, Kidney and Liver disease, Musculoskeletal disease
Area of Research: Medical Imaging, Global Health, Radiology

Bériault, Silvain

768 1024 MaLMIC - Machine Learning in Medical Imaging Consortium

Email:silvain.beriault@elekta.com
Role: Industry
Affiliation: Elekta
Website: https://www.elekta.com
Data to Share: Contact for information
Area(s) for Potential Collaboration: Motion management and online adaptation in radiotherapy
Modality: MR, CT
Organ: Prostate, Breast, Brain, Lung, Kidney & Liver, Head and Neck
Disease: Cancer
Area of Research: MR-guided adaptive radiotherapy, artificial intelligence, motion management, image registration, auto-contouring, image-to-image translation

Haider, Masoom

768 1024 MaLMIC - Machine Learning in Medical Imaging Consortium

Email: m.haider@utoronto.ca
Role: MD faculty
Affiliation: University of Toronto, Joint Dept of Medical Imaging, UHN, Sinai Health System
Website: https://www.haiderlab.ca/
Data to Share: OPen to multicenter trial in Porstate Cancer and Pancreatic Cancer with MRI and CT
Area(s) for Potential Collaboration: Interested in collaboration that can provide semantic segmentation of medical images to accelerate radiologist annotation of CT and MRI images (Abdominal and Pelvic). Specifically organ segmentation with CT and MRI, and tumor segmentation. Interested in models that combine imaging with prognostication and prediction. Interested in models that allow for predcitoin and prognostication in the cancer setting
Modality: MR, CT
Organ: Prostate, Liver, Kidney, Pancreas
Disease: Cancer
Area of Research: Imaging biomarker discovery using CT and MRI in abdominal and pelvic malignancies with a focus on pancreatic (CT and MRI) and prostate (MRI) cancers and some work in Renal cell carcinoma and HCC (secondary).

Tessier, David

576 576 MaLMIC - Machine Learning in Medical Imaging Consortium

Email: dtessie2@uwo.ca
Role: Research manager
Affiliation: The University of Western Ontario
Website: https://www.uwo.ca/
Data to Share: Ultrasound anatomical or phantom images
Area(s) for Potential Collaboration: Deep or machine learning on 3D ultrasound images, some of which were acquired alongside CT or MR.
Modality: Ultrasound
Organ: Prostate, Liver, Kidney
Disease: Cancer, Neurological disease, Liver disease
Area of Research: Ultrasound guided procedures for improving interventional precision and accuracy.

Martel, Anne

374 374 MaLMIC - Machine Learning in Medical Imaging Consortium

Email: a.martel@utoronto.ca
Role: PhD faculty
Affiliation: Sunnybrook Research Institute / University of Toronto
Website: https://scholar.google.ca/citations?hl=en&user=y7u4Ea8AAAAJ&view_op=list_works&sortby=pubdate
Data to Share: https://wiki.cancerimagingarchive.net/pages/viewpage.action?pageId=52758117
Area(s) for Potential Collaboration: Computational Pathology, AI algorithm development, Survival prediction, Breast imaging
Modality: MR, X-ray, Optical/Microscopy
Organ: Breast, Liver, Other Hematopathology
Disease: Cancer
Area of Research: Medical image and digital pathology analysis, particularly on applications of machine learning for segmentation, diagnosis, and prediction/prognosis. Co-founder of Pathcore, a software company developing complete workflow solutions for digital pathology.

Fenster, Aaron

400 400 MaLMIC - Machine Learning in Medical Imaging Consortium

Email: afenster@robarts.ca
Role: PhD faculty
Affiliation: Western University
Website: https://www.robarts.ca/research/scientists/fenster_aaron.html
Data to Share: 3D ultrasound and MRI images of the prostate
Area(s) for Potential Collaboration: segmentation, classification, and registration of 2D and 3D ultrasound images.
Modality: Ultrasound
Organ: Prostate, Breast, Liver
Disease: Cancer, Musculoskeletal disease
Area of Research: Image-guided intervention, 3D ultrasound

Stanescu, Teo

400 400 MaLMIC - Machine Learning in Medical Imaging Consortium

Email: teodor.stanescu@rmp.uhn.ca
Role: PhD faculty
Affiliation: Princess Margaret Cancer Centre & University of Toronto
Website: http://www.uhnresearch.ca/researcher/teodor
Data to Share: Image data
Area(s) for Potential Collaboration: Image synthesis (MR/CT)
Data classification and prediction
Disease modelling and prediction of outcomes
Management of image quality
Modality: MR, CT, PET, X-ray
Organ: Prostate, Breast, Cardiac, Brain, Lung, Liver, Kidney
Disease: Cancer
Area of Research: Imaging: diagnosis, treatment planning, treatment guidance, follow-up, QA/QC
Radiation Therapy

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