User: Guest  Login
Document type:
Zeitschriftenaufsatz
Author(s):
Pölsterl, S.; Conjeti, S.; Navab, N.; Katouzian, A.
Title:
Survival analysis for high-dimensional, heterogeneous medical data: Exploring feature extraction as an alternative to feature selection
Abstract:
Background In clinical research, the primary interest is often the time until occurrence of an adverse event, i.e., survival analysis. Its application to electronic health records is challenging for two main reasons: (1) patient records are comprised of high-dimensional feature vectors, and (2) feature vectors are a mix of categorical and real-valued features, which implies varying statistical properties among features. To learn from high-dimensional data, researchers can choose from a wide ra...     »
Keywords:
CAMP,Machine Learning
Journal title:
Artificial Intelligence in Medicine
Year:
2016
Journal volume:
72
Pages contribution:
1--11
Print-ISSN:
09333657
 BibTeX