Heterogeneous data integration methods for patient similarity networks
Patient similarity networks (PSNs), where patients are represented as nodes and their similarities as weighted edges, are being
increasingly used in clinical research. These networks provide an insightful summary of the relationships among patients and can
be exploited by inductive or transductive learning algorithms for the prediction of patient outcome, phenotype, and disease risk.
PSNs can also be easily visualized, thus offering a natural way to inspect complex heterogeneous patient data, and providing some
level of explainability of the predictions obtained by machine learning algorithms. The advent of high-throughput technologies,
enabling us to acquire high-dimensional views of the same patients (e.g. omics data, laboratory data, imaging data) calls for the
development of data fusion techniques for PSNs in order to leverage this rich heterogeneous information. In this article, we review
existing methods for integrating multiple biomedical data views to construct PSNs, together with the different patient similarity
measures that have been proposed.We also review methods that have appeared in the machine learning literature but have not yet
been applied to PSNs, thus providing a resource to navigate the vast machine learning literature existing on this topic. In particular,
we focus on methods that could be used to integrate very diverse datasets, including multi-omics data as well as data derived from
clinical information and medical imaging.
GLIOZZO Jessica;
MARCO Mesiti;
NOTARO Marco;
PETRINI Alessandro;
PATAK Alex;
PUERTAS GALLARDO Antonio;
PACCANARO Alberto;
VALENTINI Giorgio;
CASIRAGHI Elena;
2023-02-23
OXFORD UNIV PRESS
JRC128703
1467-5463 (online),
https://academic.oup.com/bib/article/23/4/bbac207/6604996?login=true,
https://publications.jrc.ec.europa.eu/repository/handle/JRC128703,
10.1093/bib/bbac207 (online),
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