Patents by Inventor Matthew David ESTES

Matthew David ESTES 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: 11566241
    Abstract: Disclosed systems and methods relate to predicting the relative representation of genomic variants in an edited cell population, based on the editing cassette design representation in an editing cassette design library used to generate the edited cell population. A library of editing cassette designs is generated, and a feature vector, or sequence embedding, is developed for each design using natural language processing techniques. The feature vector may be based upon sequence attributes and editing kinetics of each cassette design as well as attributes that describe the library context. Features may include sequence embeddings generated from a neural network, linguistic-type distances, and statistical distance summaries thereof. The feature vectors are classified using one or more machine learning models, and the classified feature vectors are used to predict the representation of each design an edited cell population.
    Type: Grant
    Filed: October 1, 2021
    Date of Patent: January 31, 2023
    Assignee: Inscripta, Inc.
    Inventors: Andrea Halweg-Edwards, Thomas Hraha, Krishna Yerramsetty, Shea Lambert, Miles Gander, Matthew David Estes, Chad Douglas Sanada, Isaac David Wagner, Paul Hardenbol
  • Publication number: 20220106589
    Abstract: Disclosed systems and methods relate to predicting the relative representation of genomic variants in an edited cell population, based on the editing cassette design representation in an editing cassette design library used to generate the edited cell population. A library of editing cassette designs is generated, and a feature vector, or sequence embedding, is developed for each design using natural language processing techniques. The feature vector may be based upon sequence attributes and editing kinetics of each cassette design as well as attributes that describe the library context. Features may include sequence embeddings generated from a neural network, linguistic-type distances, and statistical distance summaries thereof. The feature vectors are classified using one or more machine learning models, and the classified feature vectors are used to predict the representation of each design an edited cell population.
    Type: Application
    Filed: October 1, 2021
    Publication date: April 7, 2022
    Inventors: Andrea HALWEG-EDWARDS, Thomas HRAHA, Krishna YERRAMSETTY, Shea LAMBERT, Miles GANDER, Matthew David ESTES, Chad Douglas SANADA, Isaac David WAGNER, Paul HARDENBOL