Patents by Inventor Ray Nagatani

Ray Nagatani 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: 11906518
    Abstract: Methods described herein include receiving data from flowing a plurality of aptamers over a sample of tumor cells randomly affixed to a surface of a microfluidic device. The tumor cells may include one or more unknown tumor subtypes of cells. The plurality of aptamers may include a plurality of aptamer families. Each aptamer family of the plurality of aptamer families may be determined to bind to at least one possible subtype of the tumor cells. The data may include a measure of binding affinity of each aptamer family to the tumor cells. The method may include analyzing the measure of the binding affinity of each aptamer family to the tumor cells. The analyzing may include classifying the binding affinity. The method may also include determining one or more aptamer families that characterize the one or more unknown tumor subtypes of cells based on the classifying.
    Type: Grant
    Filed: April 21, 2021
    Date of Patent: February 20, 2024
    Assignee: X Development LLC
    Inventors: Ivan Grubisic, Ray Nagatani
  • Publication number: 20230101523
    Abstract: The present disclosure relates to in vitro experiments and in silico computation and machine-learning based techniques to iteratively improve a process for identifying binders that can bind a target. Particularly, aspects of the present disclosure are directed to obtaining initial sequence data, identifying, by a first machine-learning model having model parameters learned from the initial sequence data, a first set of aptamer sequences, obtaining, using an in vitro binding selection process, subsequent sequence data including sequences from the first set of aptamer sequences, identifying, by a second machine-learning model having model parameters learned from the subsequent sequence data, a second set of aptamer sequences, determining, using one or more in vitro assays, analytical data for aptamers synthesized from the second set of aptamer sequences, and identifying a final set of aptamer sequences from the second set of aptamer sequences based on the analytical data associated with each aptamer.
    Type: Application
    Filed: September 28, 2022
    Publication date: March 30, 2023
    Applicant: X Development LLC
    Inventors: Ryan Poplin, Lance Co Ting Keh, Ivan Grubisic, Ray Nagatani
  • Publication number: 20230081439
    Abstract: A latent space is defined to represent sequences using training data and a machine-learning model. The training data identifies sequences of molecules and binding-approximation metrics that characterizes whether the molecules bind to a particular target and/or that approximate an extent to which the molecule is more likely to bind to the particular target than some other molecules. Supplemental training data is accessed that identifies other sequences of other molecules and binding affinity scores quantifying binding strengths between the molecules and the particular target. Projections of representations of the other sequences in the supplemental training data are projected in the latent space using the binding affinity scores. An area or position of interest within the latent space is identified based on the projections. A particular sequence represented within or at the area or position of interest or at the position of interest is identified for downstream processing.
    Type: Application
    Filed: September 10, 2021
    Publication date: March 16, 2023
    Applicant: X Development LLC
    Inventors: Ryan Poplin, Ivan Grubisic, Lance Co Ting Keh, Ray Nagatani
  • Publication number: 20220383981
    Abstract: The present disclosure relates to in vitro experiments and in silico computation and machine-learning based techniques to iteratively improve a process for identifying binders that can bind any given molecular target. Particularly, aspects of the present disclosure are directed to obtaining initial sequence data for aptamers that bind to a target, measuring a first signal to noise ratio within the initial sequence data, provisioning, based on the first signal to noise ratio, a first machine-learning system, generating, by the first machine-learning system, a first set of aptamer sequences, obtaining subsequent sequence data for aptamers that bind to the target, measuring a second signal to noise ratio within the subsequent sequence data, provisioning, based on the second signal to noise ratio, a second machine-learning system, generating, by the second machine-learning system, a second set of aptamer sequences, and outputting the second set of aptamer sequences.
    Type: Application
    Filed: May 28, 2021
    Publication date: December 1, 2022
    Applicant: X Development LLC
    Inventors: Ivan Grubisic, Ray Nagatani, Lance Co Ting Keh, Andrew Weitz, Kenneth Jung, Ryan Poplin
  • Publication number: 20220380753
    Abstract: The present disclosure relates to in vitro experiments and in silico computation and machine-learning based techniques to iteratively improve a process for identifying binders that can bind any given molecular target. Particularly, aspects of the present disclosure are directed to obtaining sequence data for aptamers that bind to a target, where the sequence data has a first signal to noise ratio, generating, by a search process, a first set of aptamer sequences derived from the sequence data, obtaining subsequent sequence data for subsequent aptamers that bind to the target, where the subsequent aptamers includes aptamers synthesized from the first set of aptamer sequences, and the subsequent sequence data has a second signal to noise ratio greater than the first signal to noise ratio, generating, by a linear machine-learning model, a second set of aptamer sequences derived from the subsequent sequence data, and outputting the second set of aptamer sequences.
    Type: Application
    Filed: May 28, 2021
    Publication date: December 1, 2022
    Applicant: X Development LLC
    Inventors: Ivan Grubisic, Ray Nagatani, Lance Co Ting Keh, Andrew Weitz, Kenneth Jung, Ryan Poplin
  • Publication number: 20220341934
    Abstract: Methods described herein include receiving data from flowing a plurality of aptamers over a sample of tumor cells randomly affixed to a surface of a microfluidic device. The tumor cells may include one or more unknown tumor subtypes of cells. The plurality of aptamers may include a plurality of aptamer families. Each aptamer family of the plurality of aptamer families may be determined to bind to at least one possible subtype of the tumor cells. The data may include a measure of binding affinity of each aptamer family to the tumor cells. The method may include analyzing the measure of the binding affinity of each aptamer family to the tumor cells. The analyzing may include classifying the binding affinity. The method may also include determining one or more aptamer families that characterize the one or more unknown tumor subtypes of cells based on the classifying.
    Type: Application
    Filed: April 21, 2021
    Publication date: October 27, 2022
    Applicant: X Development LLC
    Inventors: Ivan Grubisic, Ray Nagatani
  • Publication number: 20210363528
    Abstract: The present disclosure relates to a biologics development platform that derives biologics from aptamers found to bind to a target. Particularly, aspects of the present disclosure are directed to generating sequencing data and analysis data for each unique aptamer of an aptamer library that binds to a target within a monoclonal compartment, inferring aptamer sequences derived from the sequencing data and the analysis data, identifying interaction points between the aptamer sequences and epitopes of the target based on structure or sequence motifs of the aptamer sequences, modeling molecular dynamics of interactions between the aptamer sequences and the epitopes to identify characteristics of the interaction points as requirements or restraints for the interactions, and inferring one or more amino acid sequences based on the characteristics of the interaction points derived from the interactions between aptamer sequences and the epitopes.
    Type: Application
    Filed: May 19, 2020
    Publication date: November 25, 2021
    Inventors: Ivan Grubisic, Ray Nagatani