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BMEG 598 Seminar: Special Summer Seminar

SBME Research Seminar - Dr. Hannah Carter

Immune Checkpoint Blockade (ICB) has revolutionized cancer treatment, however mechanisms determining patient response remain poorly understood. We used machine learning to predict ICB response from germline and somatic biomarkers and studied feature usage by the learned model to uncover putative mechanisms driving superior outcomes. Patients with higher T follicular helper infiltrates were robust to defects in the class-I Major Histocompatibility Complex (MHC-I). Further investigation uncovered different ICB responses in MHC-I versus MHC-II neoantigen reliant tumors across patients. Despite similar response rates, MHC-II reliant responses were associated with significantly longer durable clinical benefit (Discovery: Median OS=63.6 vs. 34.5 months P=0.0074; Validation: Median OS=37.5 vs. 33.1 months, P=0.040). Characteristics of the tumor immune microenvironment reflected MHC neoantigen reliance, and analysis of immune checkpoints revealed LAG3 as a potential target in MHC-II but not MHC-I reliant responses. This study highlights the value of interpretable machine learning models in elucidating the biological basis of therapy responses.

SBME Research Seminar: Using interpretable machine learning to study the genetic determinants of immunotherapy response – Dr. Hannah Carter

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BMEG 598 Seminar: Special Summer Seminar

June 27, 2024 @ 11:00 am - 12:00 pm PDT

BMEG 598 Seminar: Special Summer Seminar
Through the BMEG 598: Biomedical Engineering Seminar, Biomedical Engineering graduate students will be exposed to innovative and cutting-edge research happening both on the UBC campus with their colleagues and around the world. This is session is part of a series of sessions during which students will present their research. The students presenting and the title of their presentation can be found below.
 
 
 
 
 
Students Presenting:

• Zachary Vavasour “Combatting bias in small medical imaging datasets with generative deep learning

• Ian Coccimiglio “Fibro-adipogenic progenitor heterogeneity progressively decreases after repeated skeletal muscle damage.

 
Location:
LSC 1003 LT3

Details

Date:
June 27, 2024
Time:
11:00 am - 12:00 pm PDT
Event Categories:
,

Organizer

SBME Communications & Events Coordinator
Email
sarah.robertson@ubc.ca

Venue

UBC Life Sciences Intitute
2350 Health Sciences Mall
Vancouver, BC V6T 1Z3 Canada
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