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You will learn how to define a TTE dataset in Monolix, develop and interpret survival models, take into account censoring, covariates, and variability. In this session, we will shift our focus to modeling time-to-event (TTE) data, which is prevalent in various fields such as survival analysis and adverse events analysis. By the end of this session, you will possess the knowledge and practical skills to confidently tackle challenging PKPD datasets. We will guide you through a complex case study explaining step-by-step: model selection, efficient use of diagnostic tools, model calibration, sensitivity analysis, and much more to ensure optimal performance and predictive accuracy.
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Building upon the fundamentals from Session 1, we will explore various methods, algorithms and their settings and learn how to select the most suitable approach depending on research objectives. For beginners, you will also learn essential knowledge about data visualization, model selection and diagnosis. You will understand different modeling approaches and learn how to apply them. This is a starting point for PKPD modelling in Monolix.
#SLP MICHIGAN VIRTUAL FREE#
This is a FREE and completely ONLINE event. Presentation materials, datasets, Monolix projects and video recordings. Q&A chat during each live session with MonolixSuiteTM experts. Two identical sessions per day – choose the option suitable for your time zone: 9:00 AM or 5:00 PM CET Paris Time. Online live 1.5h lecture each day by a MonolixSuiteTM expert. Scripting MonolixSuite applications with lixoftConenctors to automatize complex modeling&simulations workflows.Īll in five sessions over a week long course with:
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Modeling time-to-event data from data visualization, mlxtran syntax and model diagnosis to predicting survival probabilities.Īnalysis of count and categorical data including theoretical background and mlxtran syntax. Practical guides of model selection, diagnosis and calibration suitable for challenging PKPD models. Modeling approaches and methods for PKPD data. So regardless of your experience, location, or schedule, you can make the most of this opportunity to master complex data modeling in MonolixSuiteTM.
#SLP MICHIGAN VIRTUAL FULL#
This course offers full access to a worldwide audience thanks to two identical live sessions per day, and the sessions recordings. It's free, online and the term “advanced” in the title simply means that if you’re familiar with the Monolix basics, you will seamlessly navigate each session.Ĭoncerned about keeping up? No need to worry, Monolix’s user-friendly nature ensures that even newcomers can learn comfortably. Whether you’re looking to boost your confidence in modeling, explore the full range of Monolix capabilities, or even if you’re just beginning your journey with our software, this course is perfect for you. It offers a free temporary licence for all MonolixSuiteTM applications - a great opportunity to try them on your projects and get immediate help from us with the Q&A chat. It focuses on methods and algorithms, encoding and modeling time-to-event, count and categorical data and automation of workflows with the lixoftConnectors functions. This course provides in-depth understanding of modeling PKPD data, including non-continuous data, and scripting MonolixSuiteTM in R. MX200VR | Advanced Pharmacometrics Autumn School: Mastering Complex Data Modeling with MonolixSuite
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