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HIV Therapy Selection with Incomplete Data
Project funded by own resources
Project title HIV Therapy Selection with Incomplete Data
Principal Investigator(s) Roth, Volker
Project Members Parbhoo, Sonali
Wieser, Mario
Organisation / Research unit Departement Mathematik und Informatik / Biomedical Data Analysis (Roth)
Project start 01.06.2015
Probable end 31.12.2018
Status Completed
Abstract

HIV is the cause of a global pandemic that currently affects more than 36
million people worldwide. Effective treatment is key to combatting the virus
and preventing further infection. Combination therapy is used to overcome
drug-resistance. However, therapy selection is difficult because:
1. There are a large number of drug combinations.
2. Experience using drugs may be limited.
The problem is exacerbated when patient treatment histories are incomplete.
The aim of this project is to demonstrate that machine learning techniques can be used to support
therapy selection and overcome the problems posed by missing data.

 

Financed by University funds
Other funds
   

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