Machine Learning of Three-Dimensional Protein Structures to Predict the Functional Impacts of Genome Variation.
Kriti ShuklaKelvin IdanwekhaiMartin NaradikianStephanie TingStephen P SchoenbergerElizabeth BrunkPublished in: Journal of chemical information and modeling (2024)
Research in the human genome sciences generates a substantial amount of genetic data for hundreds of thousands of individuals, which concomitantly increases the number of variants of unknown significance (VUS). Bioinformatic analyses can successfully reveal rare variants and variants with clear associations with disease-related phenotypes. These studies have had a significant impact on how clinical genetic screens are interpreted and how patients are stratified for treatment. There are few, if any, computational methods for variants comparable to biological activity predictions. To address this gap, we developed a machine learning method that uses protein three-dimensional structures from AlphaFold to predict how a variant will influence changes to a gene's downstream biological pathways. We trained state-of-the-art machine learning classifiers to predict which protein regions will most likely impact transcriptional activities of two proto-oncogenes, nuclear factor erythroid 2 (NFE2L2)-related factor 2 (NRF2) and c-Myc. We have identified classifiers that attain accuracies higher than 80%, which have allowed us to identify a set of key protein regions that lead to significant perturbations in c-Myc or NRF2 transcriptional pathway activities.
Keyphrases
- copy number
- machine learning
- genome wide
- nuclear factor
- protein protein
- big data
- gene expression
- artificial intelligence
- oxidative stress
- endothelial cells
- amino acid
- end stage renal disease
- toll like receptor
- binding protein
- transcription factor
- high resolution
- ejection fraction
- high throughput
- deep learning
- prognostic factors
- mass spectrometry
- combination therapy
- drug induced
- smoking cessation
- high intensity