The future of measuring cancer episode artwork

EPISODE · Mar 15, 2024 · 29 MIN

The future of measuring cancer

from The Future of Everything · host Russ Altman, Olivier Gervaert

Guest Olivier Gevaert is an expert in multi-modal biomedical data modeling and recently developed new methods in the new science of “spatial transcriptomics” that are able to predict how cancer cells present spatially and will behave in the future. Tumors are not monolithic, he says, but made up of various cell types. Spatial transcriptomics measures cells in the undisturbed organization of the tumor itself and enables a more detailed study of tumors. This new technology can be used to determine what type of cells are present spatially and how each cell influences neighboring cells. It paints a picture of tumor heterogeneity, Gevaert tells host Russ Altman on this episode of Stanford Engineering’s The Future of Everything podcast.Episode Reference Links:Olivier Gevaert:  Standford ProfileOlivier Gevaert’s Research LabThe Cancer Genome Atlas Program (TCGA)Connect With Us:Episode Transcripts >>> The Future of Everything WebsiteConnect with Russ >>> Threads / Bluesky / MastodonConnect with School of Engineering >>> Twitter/X / Instagram / LinkedIn / FacebookChapters:(00:00:00) Introduction to Olivier GavaertHis work in the advancement of spatial transcriptomics technologies.(00:02:52) The Basics of TranscriptomicsTranscriptomics’ significance in identifying active genes in cancer cells and the technological advancements enabling this research.(00:05:34) Heterogeneity and Cell interaction in CancerHeterogeneity within cancer cells and the importance of analyzing the interactions between various cell types to develop treatments.(00:07:19) Advancements in Brain Cancer ResearchRecent studies on brain cancer using spatial omics techniques to understand tumor cell types and their spatial organization for prognosis prediction.(00:10:53) AI and Whole Slide Imaging in OncologyHow AI and machine learning are combined with whole slide imaging to enhance data resolution and interpret spatial transcriptomic data.(00:14:49) Enhancing Pathology with AIIntegrating AI with pathology to improve cancer diagnosis and treatment by analyzing whole slide images and predicting cell types.(00:18:40) Multimodal Data Fusion in Cancer TreatmentImportance of combining different data modalities to create comprehensive models for personalized cancer treatment.(00:24:49) The Future of Synthetic Data and Digital TwinsSynthetic data and digital twins in oncology, and how these technologies can simulate treatment outcomes and support personalized medicine.(00:29:16) Conclusion Connect With Us:Episode Transcripts >>> The Future of Everything WebsiteConnect with Russ >>> Threads / Bluesky / MastodonConnect with School of Engineering >>>Twitter/X / Instagram / LinkedIn / Facebook Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

New methods in the new science of “spatial transcriptomics” are able to predict how cancer cells present spatially will behave in the future.

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The future of measuring cancer

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This episode was published on March 15, 2024.

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Guest Olivier Gevaert is an expert in multi-modal biomedical data modeling and recently developed new methods in the new science of “spatial transcriptomics” that are able to predict how cancer cells present spatially and will behave in the...

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