Patents by Inventor Josh Stephen Tetrick

Josh Stephen Tetrick 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: 11568287
    Abstract: Systems and methods for assaying a test entity for a property, without measuring the property, are provided. Exemplary test entities include proteins, protein mixtures, and protein fragments. Measurements of first features in a respective subset of an N-dimensional space and of second features in a respective subset of an M-dimensional space, is obtained as training data for each reference in a plurality of reference entities. One or more of the second features is a metric for the target property. A subset of first features, or combinations thereof, is identified using feature selection. A model is trained on the subset of first features using the training data. Measurement values for the subset of first features for the test entity are applied to thereby obtaining a model value that is compared to model values obtained using measured values of the subset of first features from reference entities exhibiting the property.
    Type: Grant
    Filed: July 31, 2017
    Date of Patent: January 31, 2023
    Assignee: Just, Inc.
    Inventors: Lee Chae, Josh Stephen Tetrick, Meng Xu, Matthew D. Schultz, Chuan Wang, Nicolas Tilmans, Michael Brzustowicz
  • Publication number: 20170330097
    Abstract: Systems and methods for assaying a test entity for a property, without measuring the property, are provided. Exemplary test entities include proteins, protein mixtures, and protein fragments. Measurements of first features in a respective subset of an N-dimensional space and of second features in a respective subset of an M-dimensional space, is obtained as training data for each reference in a plurality of reference entities. One or more of the second features is a metric for the target property. A subset of first features, or combinations thereof, is identified using feature selection. A model is trained on the subset of first features using the training data. Measurement values for the subset of first features for the test entity are applied to thereby obtaining a model value that is compared to model values obtained using measured values of the subset of first features from reference entities exhibiting the property.
    Type: Application
    Filed: July 31, 2017
    Publication date: November 16, 2017
    Inventors: Lee Chae, Josh Stephen Tetrick, Meng Xu, Matthew D. Schultz, Chuan Wang, Nicolas Tilmans, Michael Brzustowicz
  • Patent number: 9760834
    Abstract: Systems and methods for assaying a test entity for a property, without measuring the property, are provided. Exemplary test entities include proteins, protein mixtures, and protein fragments. Measurements of first features in a respective subset of an N-dimensional space and of second features in a respective subset of an M-dimensional space, is obtained as training data for each reference in a plurality of reference entities. One or more of the second features is a metric for the target property. A subset of first features, or combinations thereof, is identified using feature selection. A model is trained on the subset of first features using the training data. Measurement values for the subset of first features for the test entity are applied to thereby obtaining a model value that is compared to model values obtained using measured values of the subset of first features from reference entities exhibiting the property.
    Type: Grant
    Filed: September 30, 2016
    Date of Patent: September 12, 2017
    Assignee: Hampton Creek, Inc.
    Inventors: Lee Chae, Josh Stephen Tetrick, Meng Xu, Matthew D. Schultz, Chuan Wang, Nicolas Tilmans, Michael Brzustowicz
  • Publication number: 20170091637
    Abstract: Systems and methods for assaying a test entity for a property, without measuring the property, are provided. Exemplary test entities include proteins, protein mixtures, and protein fragments. Measurements of first features in a respective subset of an N-dimensional space and of second features in a respective subset of an M-dimensional space, is obtained as training data for each reference in a plurality of reference entities. One or more of the second features is a metric for the target property. A subset of first features, or combinations thereof, is identified using feature selection. A model is trained on the subset of first features using the training data. Measurement values for the subset of first features for the test entity are applied to thereby obtaining a model value that is compared to model values obtained using measured values of the subset of first features from reference entities exhibiting the property.
    Type: Application
    Filed: September 30, 2016
    Publication date: March 30, 2017
    Inventors: Lee Chae, Josh Stephen Tetrick, Meng Xu, Matthew D. Schultz, Chuan Wang, Nicolas Tilmans, Michael Brzustowicz