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Scailyte's 5th Anniversary Mini-Symposium - Machine Learning Meets Multi-Omics for Precision Medicine

Bringing industry and academia together to discuss the potential impact of single-cell analytics powered by machine learning for precision medicine.

Machine learning meets multi-omics for precision medicine
Machine learning meets multi-omics for precision medicine

Machine learning meets multi-omics for precision medicine

BASEL, Switzerland - April 19, 2022 - (Newswire.com)

Scailyte is happy to announce and invite you to its 5th Anniversary mini-symposium on the subject of "Machine Learning Meets Multi-Omics for Precision Medicine". 

Date: 14.06.2022

Format: Online with panel discussions

Tickets: https://www.eventbrite.com/e/mini-symposium-machine-learning-meets-multi-omics-for-precision-medicine-tickets-304718028827 

Simultaneous analysis of millions of individual cells empowered with machine learning has the potential to revolutionize treatments of many challenging human diseases including cancer, inflammatory and neurological disorders.

Biology has become a data science. For instance, recent single-cell profiling technologies are capable of measuring thousands of variables for each of hundreds of thousands to millions of cells in a single sample. Machine learning models are beginning to provide significant improvements in extracting information sensitively and with speed from such datasets which are often high-dimensional, sparse, and complex. Consequently, last year has seen enormous advances in deep learning applications in a variety of single-cell omics assays including genomics, transcriptomics, proteomics, metabolomics and multi-omics integration. It is highly timely to discuss the potential impact of insights generated by multi-omics machine learning platforms on the patient journey, clinical research and the wider pharmaceutical sector through this mini-conference.

We will cover examples and potential applications of deep learning on single-cell and other high throughput datasets in the context of:

  • Early diagnosis
  • Differential diagnosis against overlapping etiologies
  • Patient stratification for therapy  
  • Design of clinical trials
  • Understanding disease mechanisms
  • Drug discovery and repurposing
  • Lifestyle decisions

Target audience:

  • Drug developers advancing precision medicine and biomarker-driven science
  • Industry and academic partners running clinical trials
  • Bioinformaticians and data scientists in academia and healthcare industries interested in machine learning approaches for multi-omics data
  • Scientists interested in advancing biological understanding of disease and target identification with machine learning, single-cell and other multidimensional data

Programme:

Virtual: Zoom; all Times indicated are CET Times, Lines to open at 14:20 CET time.

TALKS:      

14:30 -14:40            Welcome and objectives; Peter Nestorov, CEO, Scailyte 

14:40 -15:00            Machine learning on Multiomics      

Christopher Yau, Professor of Artificial Intelligence at the University of Oxford and Fellow at the Alan Turing Institute, UK

15:00 -15:20            Multiomics  in industry I   

Asif Jan, Chief Data Officer, Owkin

15:20 -15:40             Clinical applications of Multiomics                                 

Michael Brenner, Elizabeth Fay Brigham Professor of Medicine at Harvard Medical School, USA

15:40 -16:00            Multiomics  in industry II                

Philippe Menu, Chief Medical Officer, Sophia Genetics

16:00 -16:20            Break

BRAINSTORMING SESSIONS:      

16:20 -16:50            Parallel session I (Translating Multiomics discoveries into applications for Pharma industry and Clinic)

Panel members:  Industry: Dr. Philippe Menu (Sophia Genetics), Dr. Marcus Otte (Merck), Dr. Miguel Edwards (DeciBio); Academia: Prof. Michael Brenner (Harvard Medical School), Prof. Marco Ruella (University of Pennsylvania), Prof. Woongyang Park (Sungkyunkwan University, Samsung Genome Institute and Geninus); Dr Diana Stoycheva (moderator, Scailyte) 

16:20 -16:50            Parallel session II (Data Science solutions and future prospects for Multiomics and machine learning)

Panel members:  Industry: Dr. Asif Jan (Owkin), Academia: Prof. Christopher Yau (University of Oxford); Dr. Kieran Campbell (University of Toronto), Dr. Dennis Göhlsdorf (Scailyte); Sarah Carl (moderator, Scailyte) 

16:50 -17:00            Concluding remarks, Corinne Solier, COO, Scailyte 

About Scailyte

Scailyte is an ETH Zürich spin-off with a best-in-class artificial intelligence platform for the discovery of complex disease patterns from single-cell data. Our solution provides unprecedented insight into the disease and patients' biology and enables the discovery of new clinically-relevant biomarker signatures by uncovering human's hidden "single-cell" secrets. 

Scailyte's proprietary best-in-class data analysis platform ScaiVision™ associates multimodal single-cell datasets (RNA-/TCR-/BCR-seq, proteomics, etc.) with clinical endpoints, such as disease diagnosis, progression, severity, treatment response, and toxicity response to identify ultra-sensitive biomarker signatures and cell functionality states. The performance and clinically-relevant applications of Scailyte's platform ScaiVision have been demonstrated in well established CAR-T cell therapies and various clinical projects in Oncology and Immunology. 

For more information, visit www.scailyte.com and connect on social media @LinkedIn and @Twitter.


Related Files
Machine learning meets multi-omics for precision medicine Programme.pdf



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Original Source: Scailyte's 5th Anniversary Mini-Symposium - Machine Learning Meets Multi-Omics for Precision Medicine
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