Patents Assigned to COLOR GENOMICS, INC.
  • Patent number: 11599800
    Abstract: Data sets can be processed using machine learning or artificial intelligence models to generate outputs predictive of a degree to which performing a protocol can positively modify an expected result associated with a condition. Generating the output may include accessing a user data set, inputting the user data set into a trained machine learning model to generate an output, and selecting an incomplete subset of a set of genes based on the output.
    Type: Grant
    Filed: January 28, 2020
    Date of Patent: March 7, 2023
    Assignee: Color Genomics, Inc.
    Inventors: Carmen Lai, Jill Hagenkord, Katsuya Noguchi
  • Patent number: 10853130
    Abstract: Embodiments in the disclosure are directed to the use of distributed computing to align reads against multiple portions of a reference dataset. Aligned portions of the reference dataset that correspond with an above-threshold alignment score can be assessed for the presence of sparse indicators that can be categorized and used to influence a determination of a state transition likelihood. Various tasks associated with the processing of reads (e.g., alignment, sparse indicator detection, and/or determination of a state transition likelihood) may be able to take advantage of parallel processing and can be distributed among the machines while considering the resource utilization of those machines. Different load-balancing mechanisms can be employed in order to achieve even resource utilization across the machines, and in some cases may involve assessing various processing characteristics that reflect a predicted resource expenditure and/or time profile for each task to be processed by a machine.
    Type: Grant
    Filed: September 19, 2017
    Date of Patent: December 1, 2020
    Assignee: Color Genomics, Inc.
    Inventors: Ryan Barrett, Taylor Sittler, Krishna Pant, Zhenghua Li, Katsuya Noguchi, Nishant Bhat, Othman Laraki, Jeroen Van den Akker, Kurt Smith
  • Publication number: 20200334497
    Abstract: Techniques, systems, and products for analyzing sparse indicators and sensor data and generating communications are disclosed. The sensors may be associated with or incorporated into devices that may automatically relay sensor data for use in analyses and communication generation.
    Type: Application
    Filed: July 2, 2020
    Publication date: October 22, 2020
    Applicant: Color Genomics, Inc.
    Inventors: Ryan Barrett, Nishant Bhat, Huy Hong, Katsuya Noguchi, Wendy McKennon, Krishna Pant, Taylor Sittler, Othman Laraki, Elad Gil
  • Patent number: 10733476
    Abstract: Techniques, systems, and products for analyzing sparse indicators and sensor data and generating communications are disclosed. The sensors may be associated with or incorporated into devices that may automatically relay sensor data for use in analyses and communication generation.
    Type: Grant
    Filed: August 22, 2017
    Date of Patent: August 4, 2020
    Assignee: Color Genomics, Inc.
    Inventors: Ryan Barrett, Nishant Bhat, Huy Hong, Katsuya Noguchi, Wendy McKennon, Krishna Pant, Taylor Sittler, Othman Laraki, Elad Gil
  • Patent number: 9817866
    Abstract: A read is aligned to a reference data set. It is determined whether the read includes any identifier distinction, the determination being performed using the alignment. If so, positional data corresponding to the identifier distinction(s) are defined. Compressed read data is stored in association with a read identifier of the read. The compressed read data includes alignment information (e.g., a start and/or stop position of the alignment). When the read includes an identifier distinction, the compressed read data further includes the positional data and deviation data characterizing the distinction.
    Type: Grant
    Filed: March 22, 2017
    Date of Patent: November 14, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Othman Laraki
  • Patent number: 9811552
    Abstract: Techniques, systems, and products for analyzing sparse indicators and generating communications based on bucketing of sparse indicators are disclosed.
    Type: Grant
    Filed: April 19, 2016
    Date of Patent: November 7, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Katsuya Noguchi, Krishna Pant, Ryan Barrett, Elad Gil, Othman Laraki
  • Patent number: 9811391
    Abstract: Embodiments in the disclosure are directed to the use of distributed computing to align reads against multiple portions of a reference dataset. Aligned portions of the reference dataset that correspond with an above-threshold alignment score can be assessed for the presence of sparse indicators that can be categorized and used to influence a determination of a state transition likelihood. Various tasks associated with the processing of reads (e.g., alignment, sparse indicator detection, and/or determination of a state transition likelihood) may be able to take advantage of parallel processing and can be distributed among the machines while considering the resource utilization of those machines. Different load-balancing mechanisms can be employed in order to achieve even resource utilization across the machines, and in some cases may involve assessing various processing characteristics that reflect a predicted resource expenditure and/or time profile for each task to be processed by a machine.
    Type: Grant
    Filed: March 3, 2017
    Date of Patent: November 7, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Taylor Sittler, Krishna Pant, Zhenghua Li
  • Patent number: 9813467
    Abstract: Techniques are disclosed for processing and aligning incomplete data. A stream of data is received from a data source including a plurality of reads. While receiving the stream of data and prior to having received all of the plurality of reads, a set of reads is extracted from the plurality of reads. Each of the set of reads is aligned to a corresponding portion of a reference data set. For each particular position of a plurality of particular positions of the reference data set, a subset of reads of the aligned set of reads is identified. A value of a client data set is generated based on the subset of reads. A variable is generated based on the client data set. Data is routed when a condition, based on the variable, is satisfied.
    Type: Grant
    Filed: March 7, 2017
    Date of Patent: November 7, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Taylor Sittler, Krishna Pant, Zhenghua Li, Katsuya Noguchi, Nishant Bhat
  • Patent number: 9811438
    Abstract: Methods and systems disclosed herein relate generally to data processing by applying machine learning techniques to iteration data to identify anomaly subsets of iteration data. More specifically, iteration data for individual iterations of a workflow involving a set of tasks may contain a client data set, client-associated sparse indicators and their classifications, and a set of processing times for the set of tasks performed in that iteration of the workflow. These individual iterations of the workflow may also be associated with particular data sources. Using the iteration data, anomaly subsets within the iteration data can be identified, such as data items resulting from systematic error associated with particular data sources, sets of sparse indicators to be validated or double-checked, or tasks that are associated with long processing times. The anomaly subsets can be provided in a generated communication or report in order to optimize future iterations of the workflow.
    Type: Grant
    Filed: May 11, 2017
    Date of Patent: November 7, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Katsuya Noguchi, Nishant Bhat, Zhengua Li, Kurt Smith
  • Patent number: 9811439
    Abstract: Techniques for using functional testing to detect run-time impacts of code modifications. A method includes accessing a workflow including a plurality of stages for processing reads. The stages are defined based on modifiable code and include a first stage for aligning reads with a corresponding portion of a reference data set and a second stage for collectively analyzing data corresponding to the aligned reads. The method includes identifying functional testing specifications to correspond with the workflow, including a definition of which stages are to be performed during functional testing, a reduced reference data set, and a set of reads. The method includes performing the functional testing using the reduced reference data set and the set of reads, detecting a result generated via the performance, and outputting the result.
    Type: Grant
    Filed: April 17, 2017
    Date of Patent: November 7, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Krishna Pant
  • Patent number: 9785792
    Abstract: Methods and systems disclosed herein relate generally to processing data requests from external assessment systems. More specifically, an interface is availed to external assessment systems that accepts an identification of one or more genes. Upon receiving a request identifying one or more genes, a type of access authorized for the requesting external assessment system is assessed. When it is determined that the type of data access indicates that the external assessment system is authorized to access data for the one or more genes, a data repository is queried to identify client data that corresponds to the one or more genes and that indicates or can be used to detect a presence of client-associated variants. A response data set that includes at least some of the client data is transmitted to the external assessment system.
    Type: Grant
    Filed: May 24, 2016
    Date of Patent: October 10, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Othman Laraki, Wendy McKennon, Katsuya Noguchi, Huy Hong
  • Patent number: 9773031
    Abstract: Techniques for accurately identifying duplications and deletions using depth vectors. A depth vector is generated for each of multiple clients based on a set of reads that is received and aligned to a reference data set. A transformation processing of the depth vectors is performed to produce multiple components. Each of the components is assigned an order based on the extent to which it accounts for cross-client differences in the depth vectors. Each of the components includes an intensity, multiple values, and multiple client weights. A subset of the components is identified based on the order. A sparse indicator and positional data for the sparse indicator can be determined from the components in the subset, and one or more clients can be identified as being associated with the components.
    Type: Grant
    Filed: April 17, 2017
    Date of Patent: September 26, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Krishna Pant, Taylor Sittler, Ryan Barrett
  • Patent number: 9774508
    Abstract: Techniques, systems, and products for analyzing sparse indicators and sensor data and generating communications are disclosed. The sensors may be associated with or incorporated into devices that may automatically relay sensor data for use in analyses and communication generation.
    Type: Grant
    Filed: January 13, 2017
    Date of Patent: September 26, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Nishant Bhat, Huy Hong, Katsuya Noguchi, Wendy McKennon
  • Patent number: 9678794
    Abstract: Methods and systems disclosed herein relate generally to data processing by applying machine learning techniques to iteration data to identify anomaly subsets of iteration data. More specifically, iteration data for individual iterations of a workflow involving a set of tasks may contain a client data set, client-associated sparse indicators and their classifications, and a set of processing times for the set of tasks performed in that iteration of the workflow. These individual iterations of the workflow may also be associated with particular data sources. Using the iteration data, anomaly subsets within the iteration data can be identified, such as data items resulting from systematic error associated with particular data sources, sets of sparse indicators to be validated or double-checked, or tasks that are associated with long processing times. The anomaly subsets can be provided in a generated communication or report in order to optimize future iterations of the workflow.
    Type: Grant
    Filed: December 1, 2016
    Date of Patent: June 13, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Katsuya Noguchi, Nishant Bhat, Zhengua Li, Kurt Smith
  • Patent number: 9584882
    Abstract: Techniques, systems, and products for analyzing sparse indicators and sensor data and generating communications are disclosed. The sensors may be associated with or incorporated into devices that may automatically relay sensor data for use in analyses and communication generation.
    Type: Grant
    Filed: May 31, 2016
    Date of Patent: February 28, 2017
    Assignee: COLOR GENOMICS, INC.
    Inventors: Ryan Barrett, Nish Bhat, Huy Hong, Katsuya Noguchi, Wendy McKennon