Patents Assigned to doc.ai, Inc.
  • Publication number: 20220068463
    Abstract: The technology disclosed relates to a system and method for detecting when to diverge to a tangential conversation from a linearly structured steps of a cognitive behavioral therapy (CBT) session in a series of sessions for a mental health disorder. The system includes logic to determine when to merge the tangential conversation back to flow of linearly structured steps in the therapy session. The system can bookmark the last completed step in the flow of linearly structured steps of the CBT therapy session before starting the tangential conversation. The system can calculate a return to CBT session score after each succeeding utterance from the patient in the tangential conversation. The system resumes flow of the linearly structured steps of the CBT session upon detecting that the return to CBT session score has exceeded a threshold.
    Type: Application
    Filed: August 28, 2020
    Publication date: March 3, 2022
    Applicant: doc.ai, Inc.
    Inventors: Eric William DOLAN, Joel Thomas KAARDAL, Jeremy Fine HARTMAN, Satish Srinivasan BHAT, Srivatsa Akshay SHARMA, Walter Adolf DE BROUWER
  • Publication number: 20220068462
    Abstract: The technology disclosed relates to a system and method for remembering content received from a patient for future use and understood by computerized natural language processing during a chatbot therapy session. The system includes a graph of entities and relationships in an artificial memory graph data structure. The entity nodes in the graph represent entities that are related to a patient root node representing the patient. The entity nodes are connected to patient root node by one or more relationship edges that have named roles. The entity nodes and/or relationship edges can be slotted for at least a distinguishing name, a patient sentiment towards the entity and an entity state.
    Type: Application
    Filed: August 28, 2020
    Publication date: March 3, 2022
    Applicant: doc.ai, Inc.
    Inventors: Eric William DOLAN, Joel Thomas KAARDAL, Jeremy Fine HARTMAN, Satish Srinivasan BHAT, Srivatsa Akshay SHARMA, Walter Adolf DE BROUWER
  • Patent number: 11256801
    Abstract: The technology disclosed relates to authenticating users using a plurality of non-deterministic registration biometric inputs. During registration, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate sets of feature vectors. The non-deterministic biometric inputs can include a plurality of face images and a plurality of voice samples of a user. A characteristic identity vector for the user can be determined by averaging feature vectors. During authentication, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate a set of authentication feature vectors. The sets of feature vectors are projected onto a surface of a hyper-sphere. The system can authenticate the user when a cosine distance between the authentication feature vector and a characteristic identity vector for the user is less than a pre-determined threshold.
    Type: Grant
    Filed: April 20, 2021
    Date of Patent: February 22, 2022
    Assignee: doc.ai, Inc.
    Inventors: Axel Sly, Srivatsa Akshay Sharma, Brett Robert Redinger, Devin Daniel Reich, Geert Trooskens, Meelis Lootus, Young Jin Lee, Ricardo Lopez Arredondo, Frederick Franklin Kautz, IV, Satish Srinivasan Bhat, Scott Michael Kirk, Walter Adolf De Brouwer, Kartik Thakore
  • Publication number: 20210326422
    Abstract: The technology disclosed relates to authenticating users using a plurality of non-deterministic registration biometric inputs. During registration, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate sets of feature vectors. The non-deterministic biometric inputs can include a plurality of face images and a plurality of voice samples of a user. A characteristic identity vector for the user can be determined by averaging feature vectors. During authentication, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate a set of authentication feature vectors. The sets of feature vectors are projected onto a surface of a hyper-sphere. The system can authenticate the user when a cosine distance between the authentication feature vector and a characteristic identity vector for the user is less than a pre-determined threshold.
    Type: Application
    Filed: April 20, 2021
    Publication date: October 21, 2021
    Applicant: doc.ai, Inc.
    Inventors: Axel SLY, Srivatsa Akshay SHARMA, Brett Robert REDINGER, Devin Daniel REICH, Geert TROOSKENS, Meelis LOOTUS, Young Jin LEE, Ricardo Lopez ARREDONDO, Frederick Franklin KAUTZ, IV, Satish Srinivasan BHAT, Scott Michael KIRK, Walter Adolf DE BROUWER, Kartik THAKORE
  • Publication number: 20210328801
    Abstract: The technology disclosed relates to authenticating users using a plurality of non-deterministic registration biometric inputs. During registration, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate sets of feature vectors. The non-deterministic biometric inputs can include a plurality of face images and a plurality of voice samples of a user. A characteristic identity vector for the user can be determined by averaging feature vectors. During authentication, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate a set of authentication feature vectors. The sets of feature vectors are projected onto a surface of a hyper-sphere. The system can authenticate the user when a cosine distance between the authentication feature vector and a characteristic identity vector for the user is less than a pre-determined threshold.
    Type: Application
    Filed: April 20, 2021
    Publication date: October 21, 2021
    Applicant: doc.ai, Inc.
    Inventors: Axel SLY, Srivatsa Akshay SHARMA, Brett Robert REDINGER, Devin Daniel REICH, Geert TROOSKENS, Meelis LOOTUS, Young Jin LEE, Ricardo Lopez ARREDONDO, Frederick Franklin KAUTZ, IV, Satish Srinivasan BHAT, Scott Michael KIRK, Walter Adolf DE BROUWER, Kartik THAKORE
  • Publication number: 20210326433
    Abstract: The technology disclosed relates to authenticating users using a plurality of non-deterministic registration biometric inputs. During registration, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate sets of feature vectors. The non-deterministic biometric inputs can include a plurality of face images and a plurality of voice samples of a user. A characteristic identity vector for the user can be determined by averaging feature vectors. During authentication, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate a set of authentication feature vectors. The sets of feature vectors are projected onto a surface of a hyper-sphere. The system can authenticate the user when a cosine distance between the authentication feature vector and a characteristic identity vector for the user is less than a pre-determined threshold.
    Type: Application
    Filed: April 20, 2021
    Publication date: October 21, 2021
    Applicant: doc.ai, Inc.
    Inventors: Axel SLY, Srivatsa Akshay SHARMA, Brett Robert REDINGER, Devin Daniel REICH, Geert TROOSKENS, Meelis LOOTUS, Young Jin LEE, Ricardo Lopez ARREDONDO, Frederick Franklin KAUTZ, IV, Satish Srinivasan BHAT, Scott Michael KIRK, Walter Adolf DE BROUWER, Kartik THAKORE
  • Publication number: 20210249139
    Abstract: The technology disclosed relates to a system and method of drug adherence. The system includes an optical character recognition engine configured to process at least one image that depicts data characterizing medication-under-analysis and generate text identifying at least a name of the medication-under-analysis. The system comprises a name entity recognition engine to attribute the name of the medication-under-analysis to at least one family of medication. The system comprises a data augmenter engine configured to supplement the attributed medication name with a plurality of multiomics channels and generate an augmented set of channels. The system includes runtime logic to select a drug-specific adverse event mapper from a plurality of drug-specific adverse event mappers.
    Type: Application
    Filed: February 11, 2021
    Publication date: August 12, 2021
    Applicant: doc.ai, Inc.
    Inventors: Kartik THAKORE, Srivatsa Akshay SHARMA, Scott Michael KIRK, Joel Thomas KAARDAL, Axel SLY, Walter Adolf DE BROUWER
  • Publication number: 20210225463
    Abstract: The technology disclosed relates to a system and method of conducting virtual clinical trials. The system comprises a sponsor server configured to specify a target mapping of a clinical trial objective mapper. The target mapping maps participant-specific clinical data to an objective of a virtual clinical trial. The system comprises a plurality of edge devices accessible by respective participants in a plurality of participants. The system comprises a clinical trial conductor server configured to distribute coefficients of the clinical trial objective mapper to respective edge devices to implement distributed training of the clinical trial objective mapper. The clinical trial conductor server is configured to receive participant-specific gradients generated during the distributed training in response to processing participant-specific clinical data.
    Type: Application
    Filed: January 21, 2021
    Publication date: July 22, 2021
    Applicant: doc.ai, Inc.
    Inventors: James Douglas KNIGHTON, JR., Philip Joseph DOW, Marina TITOVA, Srivatsa Akshay SHARMA, Walter Adolf DE BROUWER, Joel Thomas KAARDAL, Gabriel Gabra ZACCAK, Sandra Ann R STEYAERT
  • Publication number: 20210166111
    Abstract: The technology disclosed relates to a system and method for training processing engines. A processing engine can have at least a first processing module and a second processing module. The first processing module in each processing engine is different from a corresponding first processing module in every other processing engine. The second processing module in each processing engine is same as a corresponding second processing module in every other processing engine. The system can include a deployer that deploys each processing engine to a respective hardware module for training. The system can comprise a forward propagator which during forward pass stage can process inputs through first processing modules and produce an intermediate output for each first processing module. The system can comprise a backward propagator which during backward pass stage can determine gradients for each second processing module on corresponding final outputs and ground truths.
    Type: Application
    Filed: December 1, 2020
    Publication date: June 3, 2021
    Applicant: doc.ai, Inc.
    Inventors: James Douglas Knighton, JR., Philip Joseph Dow, Marina Titova, Srivatsa Akshay Sharma, Walter Adolf De Brouwer, Joel Thomas Kaardal, Gabriel Gabra ZACCAK, Salvatore VIVONA, Devin Daniel REICH
  • Publication number: 20210043285
    Abstract: The technology disclosed relates to efficient tertiary analysis of genomic data. The technology disclosed includes splitting a genomic data file into a plurality of segments, and storing segments in the plurality of segments across nodes of a distributed storage system, pushing the segments from the nodes of the distributed storage system to nodes of a distributed, in-memory computing engine, distributing directives of tertiary analysis job contexts for the genomic data file across the nodes of the distributed, in-memory computing engine, directly executing the distributed directives on the segments stored on the nodes of the distributed, in-memory computing engine to cause parallel processing of the segments, and aggregating results of the parallel processing across the nodes of the distributed, in-memory computing engine to produce an output.
    Type: Application
    Filed: August 4, 2020
    Publication date: February 11, 2021
    Applicant: doc.ai, Inc.
    Inventors: Brett Robert REDINGER, Kartik THAKORE, Sandra Ann R STEYAERT, Walter Adolf DE BROUWER, Srivatsa Akshay SHARMA, Lijing GUO
  • Publication number: 20210042645
    Abstract: A federated training system comprises a plurality of models, a plurality of training datasets, and a runtime intermediary. Models in the plurality of models have model coefficients responsive to training. Training datasets in the plurality of training datasets are annotated with ground truth labels to train the models. The training datasets are accompanied with training provisioning parameters and privacy parameters. The runtime intermediary is interposed between the models and the training datasets, and configured to receive requests for training the models on the training datasets, the requests accompanied with training acquisition parameters, to respond to the requests by matching the models with the training datasets based on evaluating the training acquisition parameters against the training provisioning parameters, to train the models on the matched training datasets in accordance with the privacy parameters to generate gradients with respect to the model coefficients.
    Type: Application
    Filed: August 6, 2020
    Publication date: February 11, 2021
    Applicant: doc.ai, Inc.
    Inventors: Srivatsa Akshay SHARMA, Frederick Franklin KAUTZ, IV, Marina TITOVA, Walter Adolf DE BROUWER, Gabriel Gabra ZACCAK, Andrés RODRÍGUEZ ESMERAL
  • Publication number: 20200342987
    Abstract: Method and system for remote medical information exchange are disclosed. The system for information exchange comprises a mirror configured to capture the facial information of a user and display inference information about the user. The system can comprise an image capture module configured to capture the facial information of the user while the user is looking into the mirror. The system can include a displaying module, coupled to a display integrated into the mirror and configured to cause display of inference information about the user. An on-mirror computation device, coupled in communication with the image capture module and the displaying module, is configured to receive and process facial information of the user and produce inference information about the user. The on-mirror computation device can comprise one or more artificial intelligence modules.
    Type: Application
    Filed: April 24, 2020
    Publication date: October 29, 2020
    Applicant: doc.ai, Inc.
    Inventors: Walter Adolf DE BROUWER, Srivatsa Akshay SHARMA, Scott Michael KIRK
  • Publication number: 20200293887
    Abstract: Method and system with federated learning model for health care applications are disclosed. The system for federated learning comprises multiple edge devices of end users, one or more federated learner update repository, and one or more cloud. Each edge device comprises a federated learner model, configured to send tensors to federated learner update repository. Cloud comprises a federated learner model, configured to send tensors to federated learner update repository. Federated learner update repository comprises a back-end configuration, configured to send model updates to edge devices and cloud.
    Type: Application
    Filed: March 11, 2020
    Publication date: September 17, 2020
    Applicant: doc.ai, Inc.
    Inventors: Walter Adolf DE BROUWER, Srivatsa Akshay SHARMA, Neerajshyam Rangan KASHYAP, Kartik THAKORE, Philip Joseph DOW
  • Publication number: 20200279659
    Abstract: Method and system for remote medical information exchanging are disclosed. The system for remote medical information exchanging comprises a computer application program and a data storage server. The computer application program is electrically coupled with a data storage server via communication network, comprising an end user end, configured to capture video stream of face of the end user; and a doctor end, configured to show the video stream of the face of end user and one or more physiological inference in accordance with the video stream. The data storage server, configured to store a scalable video server module, one or more artificial intelligence modules, a poly-omics uni-matrix pipeline, and a combined inference module.
    Type: Application
    Filed: February 26, 2020
    Publication date: September 3, 2020
    Applicant: doc.ai, Inc.
    Inventors: Walter Adolf DE BROUWER, Srivatsa AKSHAY SHARMA
  • Publication number: 20200098447
    Abstract: The technology disclosed generates a reference array of variant data for locations that are shared between read results which are to be compared, and generates hashes over a selected pattern length of positions in the reference array to independently produce non-unique window hashes for base patterns in the read results. It then selects for comparison window hashes that occur less than a ceiling number of times and compares the selected window hashes to identify common window hashes between the read results. It then determines a similarity measure for the read results based on the common window hashes.
    Type: Application
    Filed: September 18, 2019
    Publication date: March 26, 2020
    Applicant: doc.ai, Inc.
    Inventors: Geert TROOSKENS, Wim Maria R. VAN CRIEKINGE
  • Publication number: 20200095628
    Abstract: The technology disclosed generates a reference array of variant data for locations that are shared between read results which are to be compared, and generates hashes over a selected pattern length of positions in the reference array to independently produce non-unique window hashes for base patterns in the read results. It then selects for comparison window hashes that occur less than a ceiling number of times and compares the selected window hashes to identify common window hashes between the read results. It then determines a similarity measure for the read results based on the common window hashes.
    Type: Application
    Filed: September 18, 2019
    Publication date: March 26, 2020
    Applicant: doc.ai, Inc.
    Inventors: Geert Trooskens, Wim Maria R. Van Criekinge
  • Publication number: 20200098446
    Abstract: The technology disclosed generates a reference array of variant data for locations that are shared between read results which are to be compared, and generates hashes over a selected pattern length of positions in the reference array to independently produce non-unique window hashes for base patterns in the read results. It then selects for comparison window hashes that occur less than a ceiling number of times and compares the selected window hashes to identify common window hashes between the read results. It then determines a similarity measure for the read results based on the common window hashes.
    Type: Application
    Filed: September 18, 2019
    Publication date: March 26, 2020
    Applicant: doc.ai, Inc.
    Inventors: Geert TROOSKENS, Wim Maria R. VAN CRIEKINGE