TACA TRAINING

   www.tacatraining.com <http://www.tacatraining.com>

   PHARMACOMETRIC STATISTICS

   There are still some places available for this *live on-line virtual
   workshop* to be held from 11^th to 18^th March 2024 (weekdays) from
   13:00 to 17:00 UTC. This workshop format has the benefits of a
   classroom setting with live interaction with the instructor in order
   to ask questions and participate in discussions. A further advantage
   is that it avoids the overhead of international travel and all that
   entails.

   The aim of this workshop is to give pharmacometricians a good
   understanding of the statistical concepts upon which their work is
   based and which are of great importance in everything they do. The
   emphasis will be on concepts with an absolute minimum of
   mathematical details.

   Attendees need only have studied statistics at foundation level
   prior to taking this course.

   The topics covered include;

     1) Why use statistics?

     2) Probability and statistical inference.

     3) Laws of probability.

     4) Univariate probability distributions – Expected value and
   variance.

     5) Multivariate probability distributions – joint, marginal and
   conditional distributions. The covariance matrix. Independence and
   conditional independence.

     6) Modelling, estimation, estimators, sampling distributions,
   bias, efficiency, standard error and mean squared error.

     7) Point and interval estimators. Confidence intervals.

     8) Hypothesis testing, null and alternative hypotheses. P-value,
   Type I and Type II errors and power.

     9) Likelihood inference, maximum likelihood estimator (MLE),
   likelihood ratio. BQL and censored data.

     10) Invariance of the likelihood ratio and the MLE.

     11) The score function, hessian, Fisher information, quadratic
   approximation and standard error.

     12) Wald confidence intervals and hypothesis tests.

     13) Likelihood ratio tests.

     14) Profile likelihood.

     15) Model selection, Akaike and Bayesian Information Criteria (AIC
   & BIC).

     16) Maximising the likelihood, Newton’s method.

     17) Mixed effects models.

     18) Estimation of the fixed effects, conditional independence,
   prior and posterior distributions.

     19) Approximating the integrals, Laplace and first order (FO &
   FOCE) approximations, numerical quadrature.

     20) The Expectation Maximisation (EM) algorithm.

     21) MU-Modelling, Iterative Two Stage (ITS)

     22) Monte Carlo EM (MCEM), Importance Sampling, Direct Sampling,
   SAEM, Markov Chain Monte Carlo (MCMC).

     23) Estimating the random effects, empirical bayes estimates (EBE)
   and shrinkage.

     24) Asymptotic properties of the MLE, efficiency, the Cramer-Rao
   Lower Bound (CRLB), normality.

     25) Robustness of the MLE and the Kullback-Liebler distance. The
   robust or sandwich variance estimator.

     For further details and to register please go to our website
   www.tacatraining.com <http://www.tacatraining.com>

     Feedback from previous attendees is also available on our website.

     Early registration is advised because the number of places is limited.

     Adrian Dunne

   adrian.du...@tacatraining.com

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