Algorithm for detecting potential structural interactions among proteins
This technology is an algorithm that leverages genomic and structural information to detect potential interactions between proteins.
Unmet Need: Identifying potential protein structural interactions from sequence information
The identification of pairs of interacting proteins is essential for understanding cell regulatory mechanisms. However, most known protein-protein interactions have been deduced from exhaustive and time-consuming experimental studies such as the yeast two-hybrid assay, affinity purification, and manual curation. Additionally, while computational approaches have been developed to infer protein-protein interactions, they have failed to yield reliable genome-wide information.
The Technology: Algorithm identifies potential protein-protein interactions without time-consuming experimental studies
This technology is an algorithm that combines known information on the structure and sequence of proteins to predict new protein-protein interactions. Nicknamed PrePPI (predicting protein-protein interactions), this technology compares protein sequences to create structure-based sequence alignments that can be used to create interaction models between each pair of proteins in a dataset. These predicted protein pairs are then scored by the algorithm to yield the probability that the predicted interaction pair is true. By predicting the most likely protein-protein interactions, this technology bypasses the need for exhaustive experimentation, allowing researchers to selectively validate predicted pairs.
A benchmark study revealed that PrePPI provides superior information to that obtained from structural and non-structural evidence alone.
Applications:
- Predicting protein-protein interactions
- Tool for improved drug development
- Research tool for determining protein interactomes
Advantages:
- Improved protein-protein interaction predictions
- Predicts interactions without time-consuming experimental studies
- Outperforms related methods with lower false positive rate and higher true positive rate
Lead Inventor:
Related Publications:
Tech Ventures Reference:
IR CU12266
Licensing Contact: Ron Katz
