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.
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Propels: Creating an Impactful CV for Biomedical Engineers
January 28 @ 12:00 pm - 1:30 pm PST
Propels: Creating an Impactful CV for Biomedical Engineers
This workshop will guide participants through the process of crafting a compelling CV that highlights their unique skills and experiences as biomedical engineers. Participants will learn how to effectively showcase their expertise, differentiate themselves from classic engineering graduates, and tailor their CVs for specific job applications in the biomedical field.
Registration is required.
Presenter:
• Luke Penner, Career Educator, UBC Career Centre
Location:
KAIS 2020/2030