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From Statistical Genetics to Predictive Models in Personalized Medicine

From Statistical Genetics to Predictive Models in Personalized Medicine

17 Videos · Dec 16, 2011

About

The purpose of this cross-discipline workshop is to bring together machine learning and healthcare researchers interested in problems and applications of predictive models in the field of personalized medicine. The goal of the workshop will be to bridge the gap between the theory of predictive models and the applications and needs of the healthcare community. There will be exchange of ideas, identification of important and challenging applications and discovery of possible synergies. Ideally this will spur discussion and collaboration between the two disciplines and result in collaborative grant submissions. The emphasis will be on the mathematical and engineering aspects of predictive models and how it relates to practical medical problems.

Although, predictive modeling for healthcare has been explored by biostatisticians for several decades, this workshop focuses on substantially different needs and problems that are better addressed by modern machine learning technologies. For example, how should we organize clinical trials to validate the clinical utility of predictive models for personalized therapy selection? This workshop does not focus on issues of basic science; rather, we focus on predictive models that combine all available patient data (including imaging, pathology, lab, genomics etc.) to impact point of care decision making.

Workshop homepage: http://agbs.kyb.tuebingen.mpg.de/wikis/bg/NIPSPM11

Videos

Morning Session

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03:09

Learning Classification Trees for Personalized Cardiovascular Risk Stratificatio...

Anima Singh

calendar icon Jan 23, 2012 4295 views

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22:36

Detecting similar high-dimensional responses to experimental factors from human ...

Tommi Suvitaival

calendar icon Jan 23, 2012 3671 views

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02:16

Discovering Latent Structure in Clinical Databases

Jesse Davis

calendar icon Jan 23, 2012 3388 views

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02:27

Visualization and Prediction of Disease Interactions with Continuous-Time Hidden...

Jose M. Leiva-Murillo

calendar icon Jan 23, 2012 3918 views

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53:01

From Genomes to Personalized Medicine: Reverse Engineering Biological Systems

Pierre Baldi

calendar icon Jan 23, 2012 4865 views

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03:23

Patient Surveillance Algorithms for the Emergency Department

Yonatan Halpern

calendar icon Jan 23, 2012 3475 views

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38:36

New advances in the genetics of melanoma: how can it contribute to personalized ...

Florence Demenais

calendar icon Jan 23, 2012 3875 views

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04:10

Welcome and Introduction to the Morning Session

Karsten Michael Borgwardt

calendar icon Jan 23, 2012 3210 views

Afternoon Session

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28:56

Inferring a measure of physiological age from multiple ageing related phenotypes

David Knowles

calendar icon Jan 23, 2012 4060 views

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03:56

Multi-source Survival analysis

Ali Faisal

calendar icon Jan 23, 2012 3570 views

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04:19

Sparse Linear Models Explain Phenotypic Variation and Predict Risk of Complex Di...

Gad Abraham

calendar icon Jan 23, 2012 3959 views

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04:32

Modeling Rate of Change in Renal Function for Individual Patients: A Longitudina...

Norman Poh

calendar icon Jan 23, 2012 3923 views

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32:40

Accuracy test for genome wide selection of bio-markers

Adam Kowalczyk

calendar icon Jan 23, 2012 3463 views

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51:48

Personal genomics in psychiatry - a personal view

Bertram Müller-Myhsok

calendar icon Jan 23, 2012 3789 views

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03:17

On the Promise of Topic Models for Abstracting Complex Medical Data: A Study of ...

Jenna Wiens

calendar icon Jan 23, 2012 4994 views

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02:39

FaST linear mixed models for genome-wide association studies

Christoph Lippert

calendar icon Jan 23, 2012 4962 views

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01:39

Welcome and Introduction to the Afternoon Session

Oliver Stegle

calendar icon Jan 23, 2012 2970 views

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