Patents by Inventor Miguel Amavel dos Santos PINHEIRO

Miguel Amavel dos Santos PINHEIRO 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: 20230053429
    Abstract: A method of analyzing a patient's mental state, by automatically processing, integrating, and analyzing text-based and audio-based sources from the patient and clinical staff, and generating real-time outcomes and predictions. A system for processing, analyzing, and managing a patient's input including a data pool, model HUB, search service, topic modeling service, mental health related prediction service, and analytics all in electronic communication. A method of analyzing a patient, by processing, analyzing, and managing a patient's and clinical staff's text and audio input, and informing and augmenting diagnostic and prognostic processes, identifying improvement and deterioration of a patient's mental state, and identifying adverse events in psychotherapy, counseling, and other mental health management activities. A system for processing, analyzing, and managing clinical and diagnostic texts, and audio transcripts.
    Type: Application
    Filed: August 17, 2022
    Publication date: February 23, 2023
    Applicant: Mind Medicine, Inc.
    Inventors: Adam KOLAR, Martin MAJERNIK, Miguel Amavel dos Santos PINHEIRO, Daniel R. KARLIN, Robert BARROW
  • Publication number: 20220395222
    Abstract: Disclosed in the present disclosure is a method, system and apparatus for prediction, estimation and prevention of occurrence of agitation episode in a subject predisposed to agitation. The method comprises receiving, from a first monitoring device attached to a subject, physiological data of sympathetic nervous system activity in the subject and activity data of the subject; receiving, from a computing device, a plurality of indications associated with a plurality of agitation episodes of the subject; analyzing, using at least one machine learning model, the physiological data, the activity data, and the plurality of indications to determine a probability of an occurrence of an agitation episode of the subject; and sending a signal to a second monitoring device to notify the second monitoring device of the probability of the occurrence of the agitation episode of the subject such that treatment can be provided to the subject to decrease sympathetic nervous system activity in the subject.
    Type: Application
    Filed: August 11, 2022
    Publication date: December 15, 2022
    Applicant: BioXcel Therapeutics, Inc.
    Inventors: Frank D. YOCCA, Michael DE VIVO, Robert RISINGER, Subhendu SETH, Martin MAJERNIK, Daniel R. KARLIN, Jamileh JEMISON, Alexander WALD, Miguel AMÁVEL DOS SANTOS PINHEIRO
  • Publication number: 20220202373
    Abstract: In some embodiments, a method includes receiving first physiological data of sympathetic nervous system activity and establishing a baseline value of at least one physiological parameter by training at least one machine learning model using the first physiological data. The method further includes receiving, from a first monitoring device attached to a subject, second physiological data of sympathetic nervous system activity in the subject. Using the at least one machine learning model and based on the baseline value of at least one physiological parameter, the method includes analyzing the second physiological data to predict an agitation episode of the subject and sending a signal to a second monitoring device to notify of the prediction of the agitation episode of the subject such that treatment can be provided to the subject to decrease sympathetic nervous system activity in the subject.
    Type: Application
    Filed: March 18, 2022
    Publication date: June 30, 2022
    Applicant: BioXcel Therapeutics, Inc.
    Inventors: Frank D. YOCCA, Michael De Vivo, Robert Risinger, Subhendu Seth, Martin Majernik, Daniel R. Karlin, Jamileh Jemison, Alexander Wald, Miguel Amável Dos Santos Pinheiro