Patents by Inventor {hacek over (Z)}ygimantas Jo{hacek over (c)}ys

{hacek over (Z)}ygimantas Jo{hacek over (c)}ys has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11615324
    Abstract: A system and method for de novo drug discovery using machine learning algorithms. In a preferred embodiment, de novo drug discovery is performed via data enrichment and interpolation/perturbation of molecule models within the latent space, wherein molecules with certain characteristics can be generated and tested in relation to one or more targeted receptors. Filtering methods may be used to determine active novel molecules by filtering out non-active molecules and contain activity predictors to better navigate the molecule-receptor domain. The system may comprise neural networks trained to reconstruct known ligand-receptors pairs and from the reconstruction model interpolate and perturb the model such that novel and unique molecules are discovered. A second preferred embodiment trains a variational autoencoder coupled with a bioactivity model to predict molecules exhibiting a range of desired properties.
    Type: Grant
    Filed: February 12, 2021
    Date of Patent: March 28, 2023
    Assignee: RO5 INC.
    Inventors: Aurimas Pabrinkis, Alwin Bucher, Gintautas Kamuntavi{hacek over (c)}ius, Alvaro Prat, Orestis Bastas, {hacek over (Z)}ygimantas Jo{hacek over (c)}ys, Roy Tal, Charles Dazler Knuff
  • Patent number: 11257594
    Abstract: A system and method for biomarker-outcome prediction and medical literature exploration which utilizes a data platform to analyze, optimize, and explore the knowledge contained in or derived from clinical trials. The system utilizes a knowledge graph and data analysis engine capabilities of the data platform. The knowledge graph may be used to link biomarkers with molecules, proteins, and genetic data to provide insight into the relationship between biomarkers, outcomes, and adverse events. The system uses natural language processing techniques on a large corpus of medical literature to perform advanced text mining to identify biomarkers associated with adverse events and to curate a comprehensive profile of biomarker-outcome associations. These associations may then be ranked to identify the most-common biomarker-outcome association pairs.
    Type: Grant
    Filed: February 17, 2021
    Date of Patent: February 22, 2022
    Assignee: RO5 INC.
    Inventors: Artem Krasnoslobodtsev, Danius Jean Backis, Pouya Babakhani, {hacek over (Z)}ygimantas Jo{hacek over (c)}ys, Roy Tal, Charles Dazler Knuff
  • Patent number: 11256995
    Abstract: A system and method that predicts whether a given protein-ligand pair is active or inactive, the ground-truth protein-ligand complex crystalline-structure similarity, and an associated bioactivity value. The system and method further produce 3-D visualizations of previously unknown protein-ligand pairs that show directly the importance assigned to protein-ligand interactions, the positive/negative-ness of the saliencies, and magnitude. Furthermore, the system and method make enhancements in the art by accurately predicting protein-ligand pair bioactivity from decoupled models, removing the need for docking simulations, as well as restricting attention of the machine learning between protein and ligand atoms only.
    Type: Grant
    Filed: April 22, 2021
    Date of Patent: February 22, 2022
    Assignee: RO5 INC.
    Inventors: Alwin Bucher, Alvaro Prat, Orestis Bastas, Aurimas Pabrinkis, Gintautas Kamuntavi{hacek over (c)}ius, Mikhail Demtchenko, Sam Christian Macer, Zeyu Yang, Cooper Stergis Jamieson, {hacek over (Z)}ygimantas Jo{hacek over (c)}ys, Roy Tal, Charles Dazler Knuff
  • Patent number: 11256994
    Abstract: A system and method that predicts whether a given protein-ligand pair is active or inactive and outputs a pose score classifying the propriety of the pose. A 3D bioactivity platform comprising a 3D bioactivity module and data platform scrapes empirical lab-based data that a docking simulator uses to generate a dataset from which a 3D-CNN model is trained. The model then may receive new protein-ligand pairs and determine a classification for the bioactivity and pose propriety of that protein-ligand pair. Furthermore, gradients relating to the binding affinity in the 3D model of the molecule may be used to generate profiles from which new protein targets may be determined.
    Type: Grant
    Filed: March 16, 2021
    Date of Patent: February 22, 2022
    Assignee: RO5 INC.
    Inventors: Alwin Bucher, Aurimas Pabrinkis, Orestis Bastas, Mikhail Demtchenko, Zeyu Yang, Cooper Stergis Jamieson, {hacek over (Z)}ygimantas Jo{hacek over (c)}ys, Roy Tal, Charles Dazler Knuff
  • Patent number: 11080607
    Abstract: A system and method for an automated pharmaceutical research data platform comprising a data curation platform which searches for and ingests a plurality of unstructured, heterogenous medical data sources, extracts relevant information from the ingested data sources, and creates a massive, custom-built and intricately related knowledge graph using the extracted data, and a data analysis engine which receives data queries from a user interface, conducts analyses in response to queries, and returns results based on the analyses. The system hosts a suite of modules and tools, integrated with the custom knowledge graph and accessible via the user interface, which may provide a plurality of functions such as statistical and graphical analysis, similarity based searching, and edge prediction among others.
    Type: Grant
    Filed: February 3, 2021
    Date of Patent: August 3, 2021
    Assignee: Ro5 Inc.
    Inventors: Mikhail Demtchenko, Sam Christian Macer, Artem Krasnoslobodtsev, {hacek over (Z)}ygimantas Jo{hacek over (c)}ys, Roy Tal, Charles Dazler Knuff