In this work, we introduce an entirely data-driven and automated approach to reveal disease-associated biomarker and risk factor networks from heterogeneous and high-dimensional healthcare data. Our workflow is based on Bayesian networks, which are a popular tool for analyzing the interplay of biomarkers. Usually, data require extensive manual preprocessing and dimension reduction to allow for effective learning of Bayesian networks. For heterogeneous data, this preprocessing is hard to automatize and typically requires domain-specific prior knowledge. We here combine Bayesian network learning with hierarchical variable clustering in order to detect groups of similar features and learn interactions between them entirely automated. We presen...
<div><p>Over the past few decades, the rise of multiple chronic conditions has become a major concer...
We review the applicability of Bayesian networks (BNs) for discovering relations between genes, envi...
Background\ud \ud The problems of correlation and classification are long-standing in the fields of ...
Research into possible risk factors for chronic conditions is a common theme in medical fields. Howe...
OBJECTIVE: Large health care datasets normally have a hierarchical structure, in terms of levels, as...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
This paper focuses on identification of the relationships between a disease and its potential risk f...
Bayesian networks and cluster analysis are widely applied to network construction, data mining and c...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
Abstract Background Discovering the genetic basis of common genetic diseases in the human genome rep...
Over the past few decades, the rise of multiple chronic conditions has become a major concern for cl...
Bayesian network analysis is a form of probabilistic modeling which derives from empirical data a di...
High-throughput technologies have revolutionized the ability to perform systems-level biology and el...
[eng] An extensive, in-depth study of cardiovascular risk factors (CVRF) seems to be of crucial impo...
This is the publisher’s final pdf. The published article is copyrighted by the author(s) and publish...
<div><p>Over the past few decades, the rise of multiple chronic conditions has become a major concer...
We review the applicability of Bayesian networks (BNs) for discovering relations between genes, envi...
Background\ud \ud The problems of correlation and classification are long-standing in the fields of ...
Research into possible risk factors for chronic conditions is a common theme in medical fields. Howe...
OBJECTIVE: Large health care datasets normally have a hierarchical structure, in terms of levels, as...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
This paper focuses on identification of the relationships between a disease and its potential risk f...
Bayesian networks and cluster analysis are widely applied to network construction, data mining and c...
Disease mapping is the field of spatial epidemiology interested in estimating the spatial pattern in...
Abstract Background Discovering the genetic basis of common genetic diseases in the human genome rep...
Over the past few decades, the rise of multiple chronic conditions has become a major concern for cl...
Bayesian network analysis is a form of probabilistic modeling which derives from empirical data a di...
High-throughput technologies have revolutionized the ability to perform systems-level biology and el...
[eng] An extensive, in-depth study of cardiovascular risk factors (CVRF) seems to be of crucial impo...
This is the publisher’s final pdf. The published article is copyrighted by the author(s) and publish...
<div><p>Over the past few decades, the rise of multiple chronic conditions has become a major concer...
We review the applicability of Bayesian networks (BNs) for discovering relations between genes, envi...
Background\ud \ud The problems of correlation and classification are long-standing in the fields of ...