Benchmark Evaluation of Protein-Protein Interaction Prediction Algorithms.
Brandan DunhamMadhavi K GanapathirajuPublished in: Molecules (Basel, Switzerland) (2021)
Protein-protein interactions (PPIs) perform various functions and regulate processes throughout cells. Knowledge of the full network of PPIs is vital to biomedical research, but most of the PPIs are still unknown. As it is infeasible to discover all of them experimentally due to technical and resource limitations, computational prediction of PPIs is essential and accurately assessing the performance of algorithms is required before further application or translation. However, many published methods compose their evaluation datasets incorrectly, using a higher proportion of positive class data than occuring naturally, leading to exaggerated performance. We re-implemented various published algorithms and evaluated them on datasets with realistic data compositions and found that their performance is overstated in original publications; with several methods outperformed by our control models built on 'illogical' and random number features. We conclude that these methods are influenced by an over-characterization of some proteins in the literature and due to scale-free nature of PPI network and that they fail when tested on all possible protein pairs. Additionally, we found that sequence-only-based algorithms performed worse than those that employ functional and expression features. We present a benchmark evaluation of many published algorithms for PPI prediction. The source code of our implementations and the benchmark datasets created here are made available in open source.
Keyphrases
- protein protein
- machine learning
- small molecule
- deep learning
- big data
- artificial intelligence
- electronic health record
- poor prognosis
- rna seq
- systematic review
- healthcare
- induced apoptosis
- binding protein
- single cell
- cell proliferation
- oxidative stress
- meta analyses
- cell cycle arrest
- cell death
- signaling pathway
- network analysis