Patents by Inventor Ankur Teredesai

Ankur Teredesai 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).

  • Publication number: 20230139531
    Abstract: An apparatus includes a processor and a non-transitory memory. The processor is configured to receive pre-operative patient specific data. The pre-operative patient specific data is inputted to a first machine learning model to determine a first predicted post-operative joint performance data output including first predicted post-operative outcome metrics. A reconstruction plan of the joint of the patient is generated based on a medical image of the joint, and at least one arthroplasty surgical parameter obtained from the user. The at least one arthroplasty surgical parameter is inputted into a second machine learning model to determine a second predicted post-operative joint performance data output including second predicted post-operative outcome metrics.
    Type: Application
    Filed: October 5, 2022
    Publication date: May 4, 2023
    Inventors: Christopher ROCHE, Vikas KUMAR, Steven OVERMAN, Ankur TEREDESAI, Howard ROUTMAN, Ryan SIMOVITCH, Pierre-Henri FLURIN, Thomas WRIGHT, Joseph ZUCKERMAN
  • Patent number: 11490966
    Abstract: An apparatus includes a processor and a non-transitory memory. The processor is configured to receive pre-operative patient specific data. The pre-operative patient specific data is inputted to a first machine learning model to determine a first predicted post-operative joint performance data output including first predicted post-operative outcome metrics. A reconstruction plan of the joint of the patient is generated based on a medical image of the joint, and at least one arthroplasty surgical parameter obtained from the user. The at least one arthroplasty surgical parameter is inputted into a second machine learning model to determine a second predicted post-operative joint performance data output including second predicted post-operative outcome metrics.
    Type: Grant
    Filed: April 16, 2021
    Date of Patent: November 8, 2022
    Assignee: Exactech, Inc.
    Inventors: Christopher Roche, Vikas Kumar, Steven Overman, Ankur Teredesai, Howard Routman, Ryan Simovitch, Pierre-Henri Flurin, Thomas Wright, Joseph Zuckerman
  • Publication number: 20210322100
    Abstract: An apparatus includes a processor and a non-transitory memory. The processor is configured to receive pre-operative patient specific data. The pre-operative patient specific data is inputted to a first machine learning model to determine a first predicted post-operative joint performance data output including first predicted post-operative outcome metrics. A reconstruction plan of the joint of the patient is generated based on a medical image of the joint, and at least one arthroplasty surgical parameter obtained from the user. The at least one arthroplasty surgical parameter is inputted into a second machine learning model to determine a second predicted post-operative joint performance data output including second predicted post-operative outcome metrics.
    Type: Application
    Filed: April 16, 2021
    Publication date: October 21, 2021
    Applicant: EXACTECH, INC.
    Inventors: Christopher ROCHE, Vikas KUMAR, Steven OVERMAN, Ankur TEREDESAI, Howard ROUTMAN, Ryan SIMOVITCH, Pierre-Henri FLURIN, Thomas WRIGHT, Joseph ZUCKERMAN
  • Publication number: 20200090038
    Abstract: Embodiments are directed towards a machine learning repository for managing machine learning (ML) model envelopes, ML models, model objects, or the like. Questions and model objects may be received by a ML model answer engine. Machine learning (ML) model envelopes may be received based on the questions. The model objects may be compared to parameter models associated with the ML model envelopes. ML model envelopes may be selected based on the comparison such that the model objects satisfy the parameter models of each of the selected ML model envelopes. ML models included in each selected ML model envelope may be executed to provide score values for the model objects and the score values may be included in a report.
    Type: Application
    Filed: April 26, 2019
    Publication date: March 19, 2020
    Inventors: Ankur Teredesai, James Andrew Marquardt, Chris James Rizzuto, Tyler John Hughes
  • Publication number: 20200005180
    Abstract: Embodiments are directed towards classifying data. A machine learning (ML) engine may select an ML model that may employ a cryptographic multi-party computation (MPC) protocol based on model preferences, including a parameter model, provided by a client. A randomness engine may be employed to provide random values and other random values based on the MPC protocol such that the random values may be provided to the client and the other random values may be provided to an answer engine. Input values that correspond to fields in the parameter model may be provided by the client such that the input values may be based on the MPC protocol and the random values. The answer engine may be employed to provide partial results to the question based on the ML model, the input values, and the MPC protocol that may be provided to the client.
    Type: Application
    Filed: February 4, 2019
    Publication date: January 2, 2020
    Inventors: Kyle Josiah Fritchman, Tyler John Hughes, Ankur Teredesai, Martine Ivonne Leo De Cock, Anderson Nascimento
  • Publication number: 20190130262
    Abstract: Embodiments are directed towards a machine learning repository for managing machine learning (ML) model envelopes, ML models, model objects, or the like. Questions and model objects may be received by a ML model answer engine. Machine learning (ML) model envelopes may be received based on the questions. The model objects may be compared to parameter models associated with the ML model envelopes. ML model envelopes may be selected based on the comparison such that the model objects satisfy the parameter models of each of the selected ML model envelopes. ML models included in each selected ML model envelope may be executed to provide score values for the model objects and the score values may be included in a report.
    Type: Application
    Filed: October 31, 2017
    Publication date: May 2, 2019
    Inventors: Ankur Teredesai, James Andrew Marquardt, Chris James Rizzuto, Tyler John Hughes
  • Patent number: 10275710
    Abstract: Embodiments are directed towards a machine learning repository for managing machine learning (ML) model envelopes, ML models, model objects, or the like. Questions and model objects may be received by a ML model answer engine. Machine learning (ML) model envelopes may be received based on the questions. The model objects may be compared to parameter models associated with the ML model envelopes. ML model envelopes may be selected based on the comparison such that the model objects satisfy the parameter models of each of the selected ML model envelopes. ML models included in each selected ML model envelope may be executed to provide score values for the model objects and the score values may be included in a report.
    Type: Grant
    Filed: October 31, 2017
    Date of Patent: April 30, 2019
    Assignee: KenSci Inc.
    Inventors: Ankur Teredesai, James Andrew Marquardt, Chris James Rizzuto, Tyler John Hughes
  • Patent number: 10198399
    Abstract: Embodiments are directed towards classifying data. A machine learning (ML) engine may select an ML model that may employ a cryptographic multi-party computation (MPC) protocol based on model preferences, including a parameter model, provided by a client. A randomness engine may be employed to provide random values and other random values based on the MPC protocol such that the random values may be provided to the client and the other random values may be provided to an answer engine. Input values that correspond to fields in the parameter model may be provided by the client such that the input values may be based on the MPC protocol and the random values. The answer engine may be employed to provide partial results to the question based on the ML model, the input values, and the MPC protocol that may be provided to the client.
    Type: Grant
    Filed: March 6, 2018
    Date of Patent: February 5, 2019
    Assignee: KenSci Inc.
    Inventors: Kyle Josiah Fritchman, Tyler John Hughes, Ankur Teredesai, Martine Ivonne Leo De Cock, Anderson Nascimento