Patents by Inventor Saurabh JOHRI

Saurabh JOHRI 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: 11379747
    Abstract: A method for providing a computer-implemented medical diagnosis includes receiving an input from a user comprising at least one symptom of the user. The method also includes providing the at least one symptom as an input to a medical model, the medical model being retrieved from memory. The medical model includes a probabilistic graphical model comprising probability distributions and relationships between symptoms and diseases. The method also includes performing inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease. The method also includes outputting an indication that the user has a disease from the Bayesian inference, wherein the inference is performed using a counterfactual measure.
    Type: Grant
    Filed: July 24, 2020
    Date of Patent: July 5, 2022
    Assignee: BABYLON PARTNERS LIMITED
    Inventors: Jonathan George Richens, Ciarán Mark Lee, Saurabh Johri
  • Patent number: 11348022
    Abstract: Methods for providing a computer implemented medical diagnosis are provided. In one aspect, a method includes receiving an input from a user comprising at least one symptom of the user, and providing the at least one symptom as an input to a medical model. The method also includes deriving estimates of the probability of the user having a disease from the discriminative model, inputting the estimates to the inference engine, performing approximate inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease, and outputting the probability of the user having the disease for display by a display device.
    Type: Grant
    Filed: February 15, 2019
    Date of Patent: May 31, 2022
    Assignee: Babylon Partners Limited
    Inventors: Laura Helen Douglas, Pavel Myshkov, Robert Walecki, Iliyan Radev Zarov, Konstantinos Gourgoulias, Christopher Lucas, Christopher Robert Hart, Adam Philip Baker, Maneesh Sahani, Iurii Perov, Saurabh Johri
  • Patent number: 11328215
    Abstract: Methods for providing a computer implemented medical diagnosis are provided. In one aspect, a method includes receiving an input from a user comprising at least one symptom of the user, and providing the at least one symptom as an input to a medical model. The method also includes deriving estimates of the probability of the user having a disease from the discriminative model, inputting the estimates to the inference engine, performing approximate inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease, and outputting the probability of the user having the disease for display by a display device.
    Type: Grant
    Filed: February 15, 2019
    Date of Patent: May 10, 2022
    Assignee: Babylon Partners Limited
    Inventors: Laura Helen Douglas, Pavel Myshkov, Robert Walecki, Iliyan Radev Zarov, Konstantinos Gourgoulias, Christopher Lucas, Christopher Robert Hart, Adam Philip Baker, Maneesh Sahani, Iurii Perov, Saurabh Johri
  • Publication number: 20220076828
    Abstract: A computer implemented method for developing a probabilistic graphical representation, the probabilistic graphical representation comprising nodes and links between the nodes indicating a relationship between the nodes, wherein the nodes represent conditions, the method comprising: using a language model to produce a context aware embedding for said condition; enhancing said embedding with one or more features to produce an enhanced embedded vector; and using a machine learning model to map said enhanced embedded vector to a value, wherein said value is related to the node representing said condition or a neighbouring node, wherein said machine learning model has been trained using said enhanced embedded vectors and observed values corresponding to said enhanced embedded vectors.
    Type: Application
    Filed: September 10, 2020
    Publication date: March 10, 2022
    Inventors: Yuanzhao ZHANG, Robert WALECKI, Iurii PEROV, Adam Philip BAKER, Christopher Robert HART, Sara Marisa da Nazaré LOURENÇO, Joanne Rebecca WINTER, Saurabh JOHRI
  • Publication number: 20210358624
    Abstract: Methods for providing a computer implemented medical diagnosis are provided. In one aspect, a method includes receiving an input from a user comprising at least one symptom of the user, and providing the at least one symptom as an input to a medical model. The method also includes deriving estimates of the probability of the user having a disease from the discriminative model, inputting the estimates to the inference engine, performing approximate inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease, and outputting the probability of the user having the disease for display by a display device.
    Type: Application
    Filed: October 31, 2018
    Publication date: November 18, 2021
    Inventors: Laura Helen DOUGLAS, Pavel MYSHKOV, Robert WALECKI, Iliyan Radev ZAROV, Konstantinos GOURGOULIAS, Christopher LUCAS, Christopher Robert HART, Adam Philip BAKER, Maneesh SAHANI, Iurii PEROV, Saurabh JOHRI
  • Publication number: 20210327578
    Abstract: The present application presents a methodology that applies reinforcement learning to train a neural network to perform medical triage by analyzing medical evidence of a patient (for instance, obtained via an interface with the patient), assigning a triage level to the patient where sufficient evidence has been obtained to make a reliable triage decision, and requesting more evidence where needed. By learning when to ask for more information and when to make a decision, the neural network can be trained to make quicker decisions on fewer pieces of evidence whilst still ensuring an accurate and safe triage level is determined.
    Type: Application
    Filed: April 15, 2020
    Publication date: October 21, 2021
    Inventors: Albert James Thomas Buchard, Baptiste Bouvier, Michail Livieratos, Rory Beard, Kostis Gourgoulias, Saurabh Johri, Giulia Prando
  • Patent number: 11145414
    Abstract: A method for providing a computer implemented medical diagnosis includes receiving an input from a user comprising a symptom of the user. The method also includes providing the symptom as an input to a medical model comprising a probabilistic graphical model comprising probability distributions and relationships between symptoms and diseases, and an inference engine configured to perform Bayesian inference on said probabilistic graphical model. The method also includes generating a question for the user to obtain further information concerning the user to allow a diagnosis, and outputting said question to the user. The method also includes outputting said question to the user, wherein generating a question for the user comprises ranking said questions by determining the utility of the possible questions.
    Type: Grant
    Filed: February 28, 2019
    Date of Patent: October 12, 2021
    Assignee: Babylon Partners Limited
    Inventors: Albert James Thomas Buchard, Konstantinos Gourgoulias, Max Benjamin Zwiessele, Alexandre Khae Wu Navarro, Saurabh Johri
  • Patent number: 11017572
    Abstract: A computer-implemented method of generating a PGM with causal information, said graphical model containing the causal relationship between a first variable and a second variable, the method comprising: receiving data at a processor, said data showing a correlation between the first variable and a second variable; producing a third variable by reducing the dimensionality of the graphical representation of the two dimensional data defined by the first variable and the second variable, determining determine the causal relationship between the first and third variables and the second and third variable, the causal discovery algorithm being able to determine if the first variable causes the third variable, the third variable causes the first variable, the second variable causes the third variable and the third variable causes the second variable; and outputting a graphical model indicating the direction of edges in a graphical representation of said PGM.
    Type: Grant
    Filed: February 28, 2019
    Date of Patent: May 25, 2021
    Assignee: Babylon Partners Limited
    Inventors: Ciarán Mark Lee, Christopher Robert Hart, Jonathan George Richens, Saurabh Johri
  • Patent number: 11017905
    Abstract: A method for providing a computer-implemented medical diagnosis includes receiving an input from a user comprising at least one symptom of the user. The method also includes providing the at least one symptom as an input to a medical model, the medical model being retrieved from memory. The medical model includes a probabilistic graphical model comprising probability distributions and relationships between symptoms and diseases. The method also includes performing inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease. The method also includes outputting an indication that the user has a disease from the Bayesian inference, wherein the inference is performed using a counterfactual measure.
    Type: Grant
    Filed: July 23, 2019
    Date of Patent: May 25, 2021
    Assignee: Babylon Partners Limited
    Inventors: Jonathan George Richens, Ciarán Mark Lee, Saurabh Johri
  • Publication number: 20210110287
    Abstract: A computer implemented method of performing inference on a generative model, wherein the generative model in a probabilistic program form, said probabilistic program form defining variables and probabilistic relationships between variables, the method comprising: providing at least one of observations or interventions to the generative model; selecting an inference method, wherein the inference method is selected from one of: observational inference, interventional inference or counterfactual inference; performing the selected inference method using an approximate inference method on the generative model; and outputting a predicted outcome from the results of the inference; wherein approximate inference is performed by inputting an inference query and the model, observations, interventions and inference query are provided as independent parameters such that they can be iterated over and varied independently of each other.
    Type: Application
    Filed: July 31, 2020
    Publication date: April 15, 2021
    Inventors: Iurii Perov, Logan Christopher Sherwin Graham, Konstantinos Gourgoulias, Jonathan George Richens, Ciarán Mark Lee, Adam Philip Baker, Saurabh Johri
  • Publication number: 20210103807
    Abstract: Methods for performing inference on a generative model are provided. In one aspect, a method includes receiving a generative model in a probabilistic program form defining variables and probabilistic relationships between variables, and producing a neural network to model the behaviour of the generative model. The input layer includes nodes corresponding to the variables of the generative model, and the output layer includes nodes corresponding to a parameter of the conditional marginal of the variables of the input layer. The method also includes training the neural network using samples from the probabilistic program. A loss function is provided for each node of the output layer. The loss function for each output node is independent of the loss functions for the other nodes of the output layer. The method also includes performing amortised inference on the generative model. Systems and machine-readable media are also provided.
    Type: Application
    Filed: October 7, 2019
    Publication date: April 8, 2021
    Inventors: Adam BAKER, Albert BUCHARD, Konstantinos GOURGOULIAS, Christopher HART, Saurabh JOHRI, Maria Dolores Lomeli GARCIA, Christopher LUCAS, Iurii PEROV, Robert WALECKI, Max ZWIESSELE
  • Publication number: 20200279655
    Abstract: A method for providing a computer-implemented medical diagnosis includes receiving an input from a user comprising at least one symptom of the user. The method also includes providing the at least one symptom as an input to a medical model, the medical model being retrieved from memory. The medical model includes a probabilistic graphical model comprising probability distributions and relationships between symptoms and diseases. The method also includes performing inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease. The method also includes outputting an indication that the user has a disease from the Bayesian inference, wherein the inference is performed using a counterfactual measure.
    Type: Application
    Filed: July 23, 2019
    Publication date: September 3, 2020
    Inventors: Jonathan George RICHENS, Ciarán Mark LEE, Saurabh JOHRI
  • Publication number: 20200279647
    Abstract: A method for providing a computer implemented medical diagnosis includes receiving an input from a user comprising a symptom of the user. The method also includes providing the symptom as an input to a medical model comprising a probabilistic graphical model comprising probability distributions and relationships between symptoms and diseases, and an inference engine configured to perform Bayesian inference on said probabilistic graphical model. The method also includes generating a question for the user to obtain further information concerning the user to allow a diagnosis, and outputting said question to the user. The method also includes outputting said question to the user, wherein generating a question for the user comprises ranking said questions by determining the utility of the possible questions.
    Type: Application
    Filed: February 28, 2019
    Publication date: September 3, 2020
    Inventors: Albert James Thomas BUCHARD, Konstantinos GOURGOULIAS, Max Benjamin ZWIESSELE, Alexandre Khae Wu NAVARRO, Saurabh JOHRI
  • Publication number: 20200279417
    Abstract: A computer-implemented method of generating a PGM with causal information, said graphical model containing the causal relationship between a first variable and a second variable, the method comprising: receiving data at a processor, said data showing a correlation between the first variable and a second variable; producing a third variable by reducing the dimensionality of the graphical representation of the two dimensional data defined by the first variable and the second variable, determining determine the causal relationship between the first and third variables and the second and third variable, the causal discovery algorithm being able to determine if the first variable causes the third variable, the third variable causes the first variable, the second variable causes the third variable and the third variable causes the second variable; and outputting a graphical model indicating the direction of edges in a graphical representation of said PGM.
    Type: Application
    Filed: February 28, 2019
    Publication date: September 3, 2020
    Inventors: Ciarán Mark LEE, Christopher Robert HART, Jonathan George RICHENS, Saurabh JOHRI
  • Publication number: 20190251461
    Abstract: Methods for providing a computer implemented medical diagnosis are provided. In one aspect, a method includes receiving an input from a user comprising at least one symptom of the user, and providing the at least one symptom as an input to a medical model. The method also includes deriving estimates of the probability of the user having a disease from the discriminative model, inputting the estimates to the inference engine, performing approximate inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease, and outputting the probability of the user having the disease for display by a display device.
    Type: Application
    Filed: February 15, 2019
    Publication date: August 15, 2019
    Inventors: Laura Helen DOUGLAS, Pavel MYSHKOV, Robert WALECKI, Iliyan Radev ZAROV, Konstantinos GOURGOULIAS, Christopher LUCAS, Christopher Robert HART, Adam Philip BAKER, Maneesh SAHANI, Iurii PEROV, Saurabh JOHRI
  • Publication number: 20190252076
    Abstract: Methods for providing a computer implemented medical diagnosis are provided. In one aspect, a method includes receiving an input from a user comprising at least one symptom of the user, and providing the at least one symptom as an input to a medical model. The method also includes deriving estimates of the probability of the user having a disease from the discriminative model, inputting the estimates to the inference engine, performing approximate inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease, and outputting the probability of the user having the disease for display by a display device.
    Type: Application
    Filed: February 15, 2019
    Publication date: August 15, 2019
    Inventors: Laura Helen DOUGLAS, Pavel MYSHKOV, Robert WALECKI, Iliyan Radev ZAROV, Konstantinos GOURGOULIAS, Christopher LUCAS, Christopher Robert HART, Adam Philip BAKER, Maneesh SAHANI, Iurii PEROV, Saurabh JOHRI
  • Publication number: 20190180841
    Abstract: Methods for providing a computer implemented medical diagnosis are provided. In one aspect, a method includes receiving an input from a user comprising at least one symptom of the user, and providing the at least one symptom as an input to a medical model. The method also includes deriving estimates of the probability of the user having a disease from the discriminative model, inputting the estimates to the inference engine, performing approximate inference on the probabilistic graphical model to obtain a prediction of the probability that the user has that disease, and outputting the probability of the user having the disease for display by a display device.
    Type: Application
    Filed: February 15, 2019
    Publication date: June 13, 2019
    Inventors: Laura Helen DOUGLAS, Pavel MYSHKOV, Robert WALECKI, Iliyan Radev ZAROV, Konstantinos GOURGOULIAS, Christopher LUCAS, Christopher Robert HART, Adam Philip BAKER, Maneesh SAHANI, Iurii PEROV, Saurabh JOHRI