Past Presentations

Deep Learning for Automated Segmentation of Left Ventricle Myocardium and Myocardial Scar From 3-D MR Images

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

2021-06-18Zabihollahy Open Forum on Machine Learning in Cardiac Imaging Past Event Page Presenter: Fatemeh Zabihollahy Abstract: Deep learning has demonstrated promise for various cardiac imaging applications. However, the performance is…

Deep learning with uncertainty quantification in MRI-guided radiation therapy

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

2021-05-21Hemsley Open Forum on Reproducibility and Good Practices in Machine Learning Research Past Event Page Presenter: Matt Hemsley Abstract: Deep learning methods are able to match or surpass the performance…

Design, conduct, and reporting of radiomic analyses: Let’s not reinvent the wheel

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

2021-05-21Moskowitz Open Forum on Reproducibility and Good Practices in Machine Learning Research Past Event Page Presenter: Chaya Moskowitz Abstract: The number of published papers reporting on radiomic analyses has been…

Improving Peproducibility in Machine Learning Research

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

2021-05-21Haibe-Kains Open Forum on Reproducibility and Good Practices in Machine Learning Research Past Event Page Presenter: Benjamin Haibe-Kains Abstract: While biostatistics and machine learning are essential to analyze biomedical data,…

Introduction to the Ontario Health Data Platform

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

OHDP2021-03-19 Open Forum on Machine Learning in Health Data Integration Platforms Past Event Page Presenter: Amber Simpson Abstract: The Ontario Health Data Platform (OHDP) is a secure, federated high-performance computing…

Brain-CODE

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

Brain-CODE2021-03-19 Open Forum on Machine Learning in Health Data Integration Platforms Past Event Page Presenters: Tom Mikkelsen, Kirk Nylen, Brendan Behan Abstract: The Ontario Brain Institute (OBI) provided an overview…

QIPCM – Advanced Imaging Core Lab

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

QIPCM2021-03-19 Open Forum on Machine Learning in Health Data Integration Platforms Past Event Page Presenter: Julia Publicover Abstract: The QIPCM imaging core lab was conceived for high-quality, auditable and secure…

Deep learning for automatic prostate segmentation in 3D ultrasound

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

Orlando2021-02-19 Open Forum on Machine Learning in Prostate Cancer Past Event Page Presenter: Nathan Orlando Abstract: Nathan discussed the development and validation of a generalizable and efficient deep learning method…

MRI in Prostate Cancer: Opportunities for AI

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

OICR-Prostate-ML-Haider Open Forum on Machine Learning in Prostate Cancer Past Event Page Presenter: Masoom Haider Abstract: MRI has established itself as an adjunctive test in detecting occult prostate cancer. New…

Machine learning for prognostic modelling in head and neck cancer using multimodal data

150 150 MaLMIC - Machine Learning in Medical Imaging Consortium

Kazmierski2021-01-21 Open Forum on Machine Learning in Head and Neck Cancer Past Event Page Presenter: Michal Kazmierski Abstract: Michal discussed the results of a machine learning challenge for head and…

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