Graph embedding techniques are using deep learning algorithms in data analysis to solve problems of such as node classification, link prediction, community detection, and visualization. Although typically used in the context of guessing friendships in social media, several applications for graph embedding techniques in biomedical data analysis have emerged. While these approaches remain computationally demanding, several developments over the last years facilitate their application to study biomedical data and thus may help advance biological discoveries. Therefore, in this review, we discuss the principles of graph embedding techniques and explore the usefulness for understanding biological network data derived from mass spectrometry and sequencing experiments, the current workhorses of systems biology studies. In particular, we focus on recent examples for characterizing protein-protein interaction networks and predicting novel drug functions.
Keyphrases
- data analysis
- deep learning
- social media
- convolutional neural network
- mass spectrometry
- protein protein
- machine learning
- mental health
- liquid chromatography
- electronic health record
- single cell
- big data
- neural network
- healthcare
- artificial intelligence
- high resolution
- lymph node
- gas chromatography
- emergency department
- high performance liquid chromatography
- quantum dots