AI-powered modeling approaches to support the development of new therapies for 
autoimmune diseases
Philippe Moingeon, PhD, MBA, Head of Immuno-inflammation Portfolio, Servier
Wednesday, September 21, 2022, 9:00 to 10:00 am PDT
Register for free at  
www.rosaandco.com/webinars<http://www.rosaandco.com/webinars>
Abstract:
Artificial Intelligence (AI) can support decision-making during drug 
development to select the right target, drug, dosing regimen and patient. AI 
and machine learning (ML) are useful to model disease heterogeneity, identify 
therapeutic targets within dysregulated molecular pathways, design and optimize 
drug-candidates, and evaluate clinical efficacy in silico. By creating 
predictive models on both the patient specificities and drug candidate 
properties, AI fosters the emergence of Computational Precision Medicine to 
better tailor therapies to the characteristics of individual patients in terms 
of their physiology, the pathophysiology of their disease and their 
susceptibilities to genetic and environmental risks.
This webinar will illustrate how, from the perspective of the pharmaceutical 
industry, various computational modeling strategies are being used to support 
the development of new treatments for primary Sjögren Syndrome (pSS) and 
Systemic Lupus Erythematosus (SLE), two autoimmune diseases with significant 
unmet medical needs. Multiomics profiling data of whole blood samples from 
hundreds of pSS patients and matched controls from the PRECISESADs IMI cohort 
were integrated to stratify patients by hierarchical and k-means clustering. A 
parallel modeling of pSS based on Artificial Neural Networks (ANN) data mining 
was undertaken by network computational analyses of transcriptomics data in 
blood and in salivary glands to identify therapeutic targets. In collaboration 
with ROSA, a quantitative system pharmacology (QSP) model of SLE was 
successfully developed to predict in silico the efficacy of the 
pan-neutralizing anti-interferon alpha S95021 monoclonal antibody.
Collectively, these various predictive models emerge as very powerful tools to 
inform drug development and support precision medicine strategies. They also 
provide supportive data to document drug efficacy and increase significantly 
the probability of success in future confirmatory real-world clinical studies.


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