Patents Assigned to ATOMWISE INC.
  • Patent number: 12569495
    Abstract: Disclosed herein are compositions comprising a compound of Formula (I) and methods for treating or prophylaxis of porcine reproductive and respiratory syndrome (PRRS) therewith (I).
    Type: Grant
    Filed: May 28, 2021
    Date of Patent: March 10, 2026
    Assignees: UNIVERSITY OF CONNECTICUT, ATOMWISE INC.
    Inventors: Young Tang, Antonio E. Garmendia, Chang Huang, Denzil Bernard
  • Patent number: 12544375
    Abstract: Methods and compositions are provided for the treatment of Parkinson's Disease. Aspects of the methods include administering Miro1 reducer. Also provided are reagents and kits for practicing the subject methods. In some embodiments, a method is provided for reducing undesirable levels of Miro1 in a cell having depolarized or otherwise damaged mitochondria. In some embodiments the cell is in vivo, e.g. in an animal model for PD, in an individual diagnosed with PD, in a clinical trial for treatment of PD, and the like.
    Type: Grant
    Filed: September 4, 2020
    Date of Patent: February 10, 2026
    Assignees: The Board of Trustees of the Leland Junior University, Atomwise Inc.
    Inventors: Xinnan Wang, Chung-Han Hsieh, Li Li, Kong Nguyen
  • Patent number: 12358904
    Abstract: In exemplary embodiments, inhibitors of Tyrosine Kinase 2 (TYK2), pharmaceutical formulations comprising these compounds, methods of using these compounds to inhibit TYK2, and treat diseases such as autoimmune and inflammatory diseases are provided.
    Type: Grant
    Filed: June 3, 2024
    Date of Patent: July 15, 2025
    Assignee: Atomwise Inc.
    Inventor: Shahab Mortezaei
  • Patent number: 12056607
    Abstract: Systems and methods for classifying a test object are provided. For each respective target object in a plurality of target objects, a first procedure is performed comprising (a) posing the test object against the respective target thereby obtaining an interaction between the test and target, and (b) scoring the interaction with a first classifier. Each such score across the plurality of targets forms a test vector that is inputted into a second classifier thereby obtaining an indication of a target object. The second classifier is trained on training vectors, each being the output from instances of the first classifier after inputting a corresponding training object in a plurality of training objects in accordance with the first procedure. Each object in one subset of the training objects is uniquely associated with one of the targets. Another subset of the training objects is not associated with the targets.
    Type: Grant
    Filed: January 17, 2020
    Date of Patent: August 6, 2024
    Assignee: ATOMWISE INC.
    Inventors: Abraham Samuel Heifets, Izhar Wallach, Kong Thong Nguyen
  • Patent number: 11080570
    Abstract: Systems and methods for test object classification are provided in which the test object is docked with a target object in a plurality of different poses to form voxel maps. The maps are vectorized and fed into a convolutional neural network comprising an input layer, a plurality of individually weighted convolutional layers, and an output scorer. The convolutional layers include initial and final layers. Responsive to vectorized input, the input layer feeds values into the initial convolutional layer. Each respective convolutional layer, other than the final convolutional layer, feeds intermediate values as a function of the weights and input values of the respective layer into another of the convolutional layers. The final convolutional layer feeds values into one or more fully connected layers as a function of the final layer weights and input values. The one or more full connected layers feed values into the scorer which scores each input vector to thereby classify the test object.
    Type: Grant
    Filed: November 6, 2019
    Date of Patent: August 3, 2021
    Assignee: ATOMWISE INC.
    Inventors: Abraham Samuel Heifets, Izhar Wallach, Michael Dzamba
  • Patent number: 10546237
    Abstract: Systems and methods for classifying a test object are provided. For each respective target object in a plurality of target objects, a first procedure is performed comprising (a) posing the test object against the respective target thereby obtaining an interaction between the test and target, and (b) scoring the interaction with a first classifier. Each such score across the plurality of targets forms a test vector that is inputted into a second classifier thereby obtaining an indication of a target object. The second classifier is trained on training vectors, each being the output from instances of the first classifier after inputting a corresponding training object in a plurality of training objects in accordance with the first procedure. Each object in one subset of the training objects is uniquely associated with one of the targets. Another subset of the training objects is not associated with the targets.
    Type: Grant
    Filed: March 30, 2017
    Date of Patent: January 28, 2020
    Assignee: Atomwise Inc.
    Inventors: Abraham Samuel Heifets, Izhar Wallach, Kong Thong Nguyen
  • Patent number: 10482355
    Abstract: Systems and methods for test object classification are provided in which the test object is docked with a target object in a plurality of different poses to form voxel maps. The maps are vectorized and fed into a convolutional neural network comprising an input layer, a plurality of individually weighted convolutional layers, and an output scorer. The convolutional layers include initial and final layers. Responsive to vectorized input, the input layer feeds values into the initial convolutional layer. Each respective convolutional layer, other than the final convolutional layer, feeds intermediate values as a function of the weights and input values of the respective layer into another of the convolutional layers. The final convolutional layer feeds values into one or more fully connected layers as a function of the final layer weights and input values. The one or more full connected layers feed values into the scorer which scores each input vector to thereby classify the test object.
    Type: Grant
    Filed: June 18, 2018
    Date of Patent: November 19, 2019
    Assignee: Atomwise Inc.
    Inventors: Abraham Samuel Heifets, Izhar Wallach, Michael Dzamba
  • Patent number: 10002312
    Abstract: Systems and methods for test object classification are provided in which the test object is docked with a target object in a plurality of different poses to form voxel maps. The maps are vectorized and fed into a convolutional neural network comprising an input layer, a plurality of individually weighted convolutional layers, and an output scorer. The convolutional layers include initial and final layers. Responsive to vectorized input, the input layer feeds values into the initial convolutional layer. Each respective convolutional layer, other than the final convolutional layer, feeds intermediate values as a function of the weights and input values of the respective layer into another of the convolutional layers. The final convolutional layer feeds values into one or more fully connected layers as a function of the final layer weights and input values. The one or more full connected layers feed values into the scorer which scores each input vector to thereby classify the test object.
    Type: Grant
    Filed: June 20, 2016
    Date of Patent: June 19, 2018
    Assignee: Atomwise Inc.
    Inventors: Abraham Samuel Heifets, Izhar Wallach, Michael Dzamba
  • Patent number: 9373059
    Abstract: Systems and methods for test object classification are provided in which the test object is docked with a target object in a plurality of different poses to form voxel maps. The maps are vectorized and fed into a convolutional neural network comprising an input layer, a plurality of individually weighted convolutional layers, and an output scorer. The convolutional layers include initial and final layers. Responsive to vectorized input, the input layer feeds values into the initial convolutional layer. Each respective convolutional layer, other than the final convolutional layer, feeds intermediate values as a function of the weights and input values of the respective layer into another of the convolutional layers. The final convolutional layer feeds values into one or more fully connected layers as a function of the final layer weights and input values. The one or more full connected layers feed values into the scorer which scores each input vector to thereby classify the test object.
    Type: Grant
    Filed: February 23, 2016
    Date of Patent: June 21, 2016
    Assignee: ATOMWISE INC.
    Inventors: Abraham Samuel Heifets, Izhar Wallach, Michael Dzamba