Title of article :
Dirichlet process mixture models for unsupervised clustering of symptoms in Parkinsonʹs disease
Author/Authors :
C. Nicole White، نويسنده , , Helen Johnson، نويسنده , , Peter Silburn&Kerrie Mengersen، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
In this paper, the goal of identifying disease subgroups based on differences in observed symptom profile
is considered. Commonly referred to as phenotype identification, solutions to this task often involve the
application of unsupervised clustering techniques. In this paper,we investigate the application of a Dirichlet
process mixture model for this task. This model is defined by the placement of the Dirichlet process on the
unknown components of a mixture model, allowing for the expression of uncertainty about the partitioning
of observed data into homogeneous subgroups. To exemplify this approach, an application to phenotype
identification in Parkinson’s disease is considered, with symptom profiles collected using the Unified
Parkinson’s Disease Rating Scale.
Keywords :
Dirichlet process mixture , Clustering , Parkinson’s disease , UPDRS
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS