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Data Science and Health Workshop Series: An Introductory AI Workshop

JOIN US FOR AN INTRODUCTORY AI WORKSHOP 

November 24th, 2021 | 4pm-5pm, Virtual 

Session Recording

Engineering Perspective

This workshop will cover the basics of AI and its potential and limitations to address clinical problems. We'll cover necessary inputs and feasible outcomes, while clarifying what AI can and can't do. You'll leave this workshop with an understanding of AI's capabilities and limitations and what's required to collaborate on an AI project. 

The workshop will include:

  • An introduction to AI - review the basics

  • Case studies of successful projects between clinicians and engineers

  • An opportunity to engage with AI experts to evaluate potential projects

Our workshop aims to provide a mutual understanding for both clinicians and engineers while building a community to actively support collaboration and matching.

Join us on November 24th and find your new collaborator! 

SPEAKERS

PROF. PURANG ABOLMAESUMI

Electrical & Computer Engineering

Dr. Abolmaesumi is internationally recognized and has received numerous awards for his pioneering developments in medical image analysis and image-guided interventions. He carries out research in medical imaging, machine learning, and image-guided diagnosis and interventions. Artificial intelligence and machine learning techniques are applied to diagnosis in ultrasound, magnetic resonance imaging, digitized pathology slides and other tissue images.

PROF. ROGER TAM

Radiology & Biomedical Engineering

Dr. Tam’s research interests are centered on the application of computer vision and machine learning methods to the quantitative analysis of medical images. The Tam laboratory’s current primary research direction is the use of magnetic resonance images to improve the understanding of neurological disorders such as multiple sclerosis. In general, the projects in the Tam laboratory relate to the following topics in medical imaging: in vivo imaging, imaging biomarkers, machine learning (big data analytics for medical images and personalized medicine), imaging artifacts and their impact on quantitative analysis, computational shape modelling & morphometrics, and medical informatics & distributed medical imaging systems.

PRASHANT PANDEY

Biomedical Engineering 

Prashant is a PhD Vanier Scholar in Biomedical Engineering at UBC, working on ultrasound-based orthopaedic surgical navigation with machine learning. He previously completed a MASc developing real-time ultrasound bone segmentation for pelvic fractures.

ROHIT SINGLA

Electrical & Computer Engineering

Rohit is a 3rd year MD/PhD Vanier Scholar at UBC, working on automated anlaysis of renal ultrasound in his PhD. He previously completed a MASc in Biomedical Engineering at UBC with work in developing augmented reality for surgical guidance.

DELARAM BEHNAMI

Electrical & Computer Engineering

Delaram is a 4th year PhD Candidate at the Robotics and Controls Laboratory (RCL), in the Department of Electrical and Computer Engineering. Her research involves developing artificial intelligence (AI)-based frameworks for analysis, interpretation, and enhancement of medical images of various modalities, including ultrasound, CT and MR.

HODA HASHEMI

Electrical & Computer Engineering

Hoda is a 4th year PhD Candidate at the Robotics and Controls Laboratory (RCL), in the Department of Electrical and Computer Engineering. Her research involves developing Computer Vision-based algorithms for 3D tissue motion estimation and ultrafast elastography to improve the accuracy of the ultrasound image analysis and reduce the patient examination time.

Future Data Science & Health Workshop series

  • November 2021 – Engineering Perspectives: Meet engineers and learn how data science, artificial intelligence, and machine learning have been used to develop solutions in the health care sphere.

  • January 2022 – Clinical Perspectives: Share the clinical challenges you face and get insight on potential data science solutions from a team of engineers focused on health applications.

  • January - June 2022 – Monthly Workshops: Clinicians will be matched with engineers to develop data science solutions to health care challenges. Monthly meetings with mentors and peers will help keep projects on track, enable knowledge sharing, and build collaborative links between our health care and engineering communities. Grant development support is available to prepare for internal and external funding opportunities in Fall 2022.