Patents by Inventor Humberto Andres GONZALEZ CABEZAS
Humberto Andres GONZALEZ CABEZAS 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).
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Publication number: 20240355480Abstract: A system for evaluating mental health of patients includes a memory and a control system. The memory contains executable code storing instructions for performing a method. The control system is coupled to the memory and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to perform the method: A selection of answers associated with a patient is received. The selection of answers corresponds to each question in a series of questions from mental health questionnaires. Unprocessed MRI data are received. The unprocessed MRI data correspond to a set of MRI images of a biological structure associated with the patient. The unprocessed MRI data is processed to output a set of MRI features. Using a machine learning model, the selection of answers and the set of MRI features are processed to output a mental health indication of the patient.Type: ApplicationFiled: February 26, 2024Publication date: October 24, 2024Inventors: Yuelu LIU, Monika Sharma MELLEM, Parvez AHAMMAD, Humberto Andres GONZALEZ CABEZAS, Matthew KOLLADA
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Publication number: 20240197220Abstract: A system includes a display device, a user interface, a memory, and a control system. The memory contains machine readable medium including machine executable code storing instructions for performing a method. The control system is coupled to the memory, and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to display, on the display device, a series of questions from mental health questionnaires. The series of questions includes text and answers for each question. From the user interface, a selection of answers of each of the displayed series of questions is received from a patient. Using a Bayesian Decision List, the received selection of answers is processed to output an indication of mental health of the patient. The indication of mental health identifies a kappa opioid receptor antagonist to which the patient would likely be a higher responder.Type: ApplicationFiled: November 16, 2023Publication date: June 20, 2024Inventors: Qingzhu GAO, Humberto Andres GONZALEZ CABEZAS, Parvez AHAMMAD, Yuelu LIU
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Patent number: 12002590Abstract: Systems and methods for utilizing machine learning to generate a trans-diagnostic classifier that is operative to concurrently diagnose a plurality of different mental health disorders using a single trans-diagnostic questionnaire that includes a plurality of questions (e.g., 17 questions). Machine learning techniques are used to process labeled training data to build statistical models that include trans-diagnostic item-level questions as features to create a screen to classify groups of subjects as either healthy or as possibly having a mental health disorder. A subset of questions is selected from the multiple self-administered mental health questionnaires and used to autonomously screen subjects across multiple mental health disorders without physician involvement, optionally remotely and repeatedly, in a short amount of time.Type: GrantFiled: May 2, 2023Date of Patent: June 4, 2024Assignee: NEUMORA THERAPEUTICS, INC.Inventors: Monika Sharma Mellem, Yuelu Liu, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, William J. Martin, Pablo Christian Gersberg
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Patent number: 11942224Abstract: A system for evaluating mental health of patients includes a memory and a control system. The memory contains executable code storing instructions for performing a method. The control system is coupled to the memory and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to perform the method: A selection of answers associated with a patient is received. The selection of answers corresponds to each question in a series of questions from mental health questionnaires. Unprocessed MRI data are received. The unprocessed MRI data correspond to a set of MRI images of a biological structure associated with the patient. The unprocessed MRI data is processed to output a set of MRI features. Using a machine learning model, the selection of answers and the set of MRI features are processed to output a mental health indication of the patient.Type: GrantFiled: January 3, 2022Date of Patent: March 26, 2024Assignee: NEUMORA THERAPEUTICS, INC.Inventors: Yuelu Liu, Monika Sharma Mellem, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, Matthew Kollada
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Patent number: 11857322Abstract: A system includes a display device, a user interface, a memory, and a control system. The memory contains machine readable medium including machine executable code storing instructions for performing a method. The control system is coupled to the memory, and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to display, on the display device, a series of questions from mental health questionnaires. The series of questions includes text and answers for each question. From the user interface, a selection of answers of each of the displayed series of questions is received from a patient. Using a Bayesian Decision List, the received selection of answers is processed to output an indication of mental health of the patient. The indication of mental health identifies a kappa opioid receptor antagonist to which the patient would likely be a higher responder.Type: GrantFiled: July 26, 2021Date of Patent: January 2, 2024Assignee: NEUMORA THERAPEUTICS, INC.Inventors: Qingzhu Gao, Humberto Andres Gonzalez Cabezas, Parvez Ahammad, Yuelu Liu
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Publication number: 20230343463Abstract: Systems and methods for utilizing machine learning to generate a trans-diagnostic classifier that is operative to concurrently diagnose a plurality of different mental health disorders using a single trans-diagnostic questionnaire that includes a plurality of questions (e.g., 17 questions). Machine learning techniques are used to process labeled training data to build statistical models that include trans-diagnostic item-level questions as features to create a screen to classify groups of subjects as either healthy or as possibly having a mental health disorder. A subset of questions is selected from the multiple self-administered mental health questionnaires and used to autonomously screen subjects across multiple mental health disorders without physician involvement, optionally remotely and repeatedly, in a short amount of time.Type: ApplicationFiled: May 2, 2023Publication date: October 26, 2023Inventors: Monika Sharma MELLEM, Yuelu LIU, Parvez AHAMMAD, Humberto Andres GONZALEZ CABEZAS, William J. MARTIN, Pablo Christian GERSBERG
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Publication number: 20230343461Abstract: Systems and methods for utilizing machine learning to generate a trans-diagnostic classifier that is operative to concurrently diagnose a plurality of different mental health disorders using a single trans-diagnostic questionnaire that includes a plurality of questions (e.g., 17 questions). Machine learning techniques are used to process labeled training data to build statistical models that include trans-diagnostic item-level questions as features to create a screen to classify groups of subjects as either healthy or as possibly having a mental health disorder. A subset of questions are selected from the multiple self-administered mental health questionnaires and used to autonomously screen subjects across multiple mental health disorders without physician involvement, optionally remotely and repeatedly, in a short amount of time.Type: ApplicationFiled: June 14, 2023Publication date: October 26, 2023Inventors: Monika Sharma MELLEM, Yuelu Liu, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, William J. Martin, Pablo Christian Gersberg
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Patent number: 11715564Abstract: Systems and methods for utilizing machine learning to generate a trans-diagnostic classifier that is operative to concurrently diagnose a plurality of different mental health disorders using a single trans-diagnostic questionnaire that includes a plurality of questions (e.g., 17 questions). Machine learning techniques are used to process labeled training data to build statistical models that include trans-diagnostic item-level questions as features to create a screen to classify groups of subjects as either healthy or as possibly having a mental health disorder. A subset of questions are selected from the multiple self-administered mental health questionnaires and used to autonomously screen subjects across multiple mental health disorders without physician involvement, optionally remotely and repeatedly, in a short amount of time.Type: GrantFiled: May 1, 2019Date of Patent: August 1, 2023Assignee: NEUMORA THERAPEUTICS, INC.Inventors: Monika Sharma Mellem, Yuelu Liu, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, William J. Martin, Pablo Christian Gersberg
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Patent number: 11676732Abstract: Systems and methods for utilizing machine learning to generate a trans-diagnostic classifier that is operative to concurrently diagnose a plurality of different mental health disorders using a single trans-diagnostic questionnaire that includes a plurality of questions (e.g., 17 questions). Machine learning techniques are used to process labeled training data to build statistical models that include trans-diagnostic item-level questions as features to create a screen to classify groups of subjects as either healthy or as possibly having a mental health disorder. A subset of questions is selected from the multiple self-administered mental health questionnaires and used to autonomously screen subjects across multiple mental health disorders without physician involvement, optionally remotely and repeatedly, in a short amount of time.Type: GrantFiled: September 1, 2021Date of Patent: June 13, 2023Assignee: NEUMORA THERAPEUTICS, INC.Inventors: Monika Sharma Mellem, Yuelu Liu, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, William J. Martin, Pablo Christian Gersberg
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Publication number: 20220172822Abstract: The method for evaluating mental health of a patient includes displaying a series of inquiries from mental health questionnaires on a display device. Each inquiry of the series of inquiries includes text and a set of answers. A series of selections is received from a user interface. Each selection of the series of selections is representative of an answer of the set of answers for each corresponding inquiry in the series of inquiries. Unprocessed MRI data are received. The unprocessed MRI data correspond to a set of MRI images of a biological structure associated with a patient. Using a machine learning model, the series of selections and the unprocessed MRI data are processed. The series of selections being processed corresponds to the series of inquiries. A symptom severity indicator for a mental health category of the patient is outputted.Type: ApplicationFiled: February 18, 2022Publication date: June 2, 2022Inventors: Monika Sharma Mellem, Yuelu Liu, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, Matthew Kollada
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Publication number: 20220139530Abstract: The present disclosure provides systems and methods for automating the QC of MRI scans. Particularly, the inventors trained machine learning classifiers using features derived from brain MR images and associated processing to predict the quality of those images, which is based on the ground truth of an expert's opinion. In one example, classifiers that utilized features derived from preprocessing log files (textual files output during MRI preprocessing) were particularly accurate and demonstrated an ability to be generalized to new datasets, which allows the disclosed technology to be scalable to new datasets and MRI preprocessing pipelines.Type: ApplicationFiled: April 21, 2020Publication date: May 5, 2022Inventors: Matthew KOLLADA, Humberto Andres GONZALEZ CABEZAS, Yuelu LIU, Monika Sharma MELLEM, Parvez AHAMMAD, Qingzhu GAO
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Publication number: 20220139560Abstract: A system for evaluating mental health of patients includes a memory and a control system. The memory contains executable code storing instructions for performing a method. The control system is coupled to the memory and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to perform the method: A selection of answers associated with a patient is received. The selection of answers corresponds to each question in a series of questions from mental health questionnaires. Unprocessed MRI data are received. The unprocessed MRI data correspond to a set of MRI images of a biological structure associated with the patient. The unprocessed MRI data is processed to output a set of MRI features. Using a machine learning model, the selection of answers and the set of MRI features are processed to output a mental health indication of the patient.Type: ApplicationFiled: January 3, 2022Publication date: May 5, 2022Inventors: Yuelu Liu, Monika Sharma Mellem, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, Matthew Kollada
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Patent number: 11289187Abstract: The method for evaluating mental health of a patient includes displaying a series of inquiries from mental health questionnaires on a display device. Each inquiry of the series of inquiries includes text and a set of answers. A series of selections is received from a user interface. Each selection of the series of selections is representative of an answer of the set of answers for each corresponding inquiry in the series of inquiries. Unprocessed MRI data are received. The unprocessed MRI data correspond to a set of MRI images of a biological structure associated with a patient. Using a machine learning model, the series of selections and the unprocessed MRI data are processed. The series of selections being processed corresponds to the series of inquiries. A symptom severity indicator for a mental health category of the patient is outputted.Type: GrantFiled: August 29, 2019Date of Patent: March 29, 2022Assignee: BLACKTHORN THERAPEUTICS, INC.Inventors: Monika Sharma Mellem, Yuelu Liu, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, Matthew Kollada
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Patent number: 11244762Abstract: A system for evaluating mental health of patients includes a memory and a control system. The memory contains executable code storing instructions for performing a method. The control system is coupled to the memory and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to perform the method: A selection of answers associated with a patient is received. The selection of answers corresponds to each question in a series of questions from mental health questionnaires. Unprocessed MRI data are received. The unprocessed MRI data correspond to a set of MRI images of a biological structure associated with the patient. The unprocessed MRI data is processed to output a set of MRI features. Using a machine learning model, the selection of answers and the set of MRI features are processed to output a mental health indication of the patient.Type: GrantFiled: August 29, 2019Date of Patent: February 8, 2022Assignee: BLACKTHORN THERAPEUTICS, INC.Inventors: Yuelu Liu, Monika Sharma Mellem, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, Matthew Kollada
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Publication number: 20210398685Abstract: Systems and methods for utilizing machine learning to generate a trans-diagnostic classifier that is operative to concurrently diagnose a plurality of different mental health disorders using a single trans-diagnostic questionnaire that includes a plurality of questions (e.g., 17 questions). Machine learning techniques are used to process labeled training data to build statistical models that include trans-diagnostic item-level questions as features to create a screen to classify groups of subjects as either healthy or as possibly having a mental health disorder. A subset of questions is selected from the multiple self-administered mental health questionnaires and used to autonomously screen subjects across multiple mental health disorders without physician involvement, optionally remotely and repeatedly, in a short amount of time.Type: ApplicationFiled: September 1, 2021Publication date: December 23, 2021Inventors: Monika Sharma MELLEM, Yuelu LIU, Parvez AHAMMAD, Humberto Andres GONZALEZ CABEZAS, William J. MARTIN, Pablo Christian GERSBERG
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Publication number: 20210361210Abstract: A system includes a display device, a user interface, a memory, and a control system. The memory contains machine readable medium including machine executable code storing instructions for performing a method. The control system is coupled to the memory, and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to display, on the display device, a series of questions from mental health questionnaires. The series of questions includes text and answers for each question. From the user interface, a selection of answers of each of the displayed series of questions is received from a patient. Using a Bayesian Decision List, the received selection of answers is processed to output an indication of mental health of the patient. The indication of mental health identifies a kappa opioid receptor antagonist to which the patient would likely be a higher responder.Type: ApplicationFiled: July 26, 2021Publication date: November 25, 2021Inventors: Qingzhu Gao, Humberto Andres Gonzalez Cabezas, Parvez Ahammad, Yuelu Liu
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Publication number: 20210358594Abstract: The method for evaluating mental health of a patient includes displaying a series of inquiries from mental health questionnaires on a display device. Each inquiry of the series of inquiries includes text and a set of answers. A series of selections is received from a user interface. Each selection of the series of selections is representative of an answer of the set of answers for each corresponding inquiry in the series of inquiries. Unprocessed MRI data are received. The unprocessed MRI data correspond to a set of MRI images of a biological structure associated with a patient. Using a machine learning model, the series of selections and the unprocessed MRI data are processed. The series of selections being processed corresponds to the series of inquiries. A symptom severity indicator for a mental health category of the patient is outputted.Type: ApplicationFiled: August 29, 2019Publication date: November 18, 2021Inventors: Monika Sharma Mellem, Yuelu Liu, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, Matthew Kollada
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Publication number: 20210319899Abstract: A system for evaluating mental health of patients includes a memory and a control system. The memory contains executable code storing instructions for performing a method. The control system is coupled to the memory and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to perform the method: A selection of answers associated with a patient is received. The selection of answers corresponds to each question in a series of questions from mental health questionnaires. Unprocessed MM data are received. The unprocessed MRI data correspond to a set of MM images of a biological structure associated with the patient. The unprocessed MRI data is processed to output a set of MRI features. Using a machine learning model, the selection of answers and the set of MRI features are processed to output a mental health indication of the patient.Type: ApplicationFiled: August 29, 2019Publication date: October 14, 2021Inventors: Yuelu Liu, Monika Sharma Mellem, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, Matthew Kollada
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Patent number: 11139083Abstract: Systems and methods for utilizing machine learning to generate a trans-diagnostic classifier that is operative to concurrently diagnose a plurality of different mental health disorders using a single trans-diagnostic questionnaire that includes a plurality of questions (e.g., 17 questions). Machine learning techniques are used to process labeled training data to build statistical models that include trans-diagnostic item-level questions as features to create a screen to classify groups of subjects as either healthy or as possibly having a mental health disorder. A subset of questions are selected from the multiple self-administered mental health questionnaires and used to autonomously screen subjects across multiple mental health disorders without physician involvement, optionally remotely and repeatedly, in a short amount of time.Type: GrantFiled: July 17, 2019Date of Patent: October 5, 2021Assignee: BlackThorn Therapeutics, Inc.Inventors: Monika Sharma Mellem, Yuelu Liu, Parvez Ahammad, Humberto Andres Gonzalez Cabezas, William J. Martin, Pablo Christian Gersberg
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Patent number: 11103171Abstract: A system includes a display device, a user interface, a memory, and a control system. The memory contains machine readable medium including machine executable code storing instructions for performing a method. The control system is coupled to the memory, and includes one or more processors. The control system is configured to execute the machine executable code to cause the control system to display, on the display device, a series of questions from mental health questionnaires. The series of questions includes text and answers for each question. From the user interface, a selection of answers of each of the displayed series of questions is received from a patient. Using a Bayesian Decision List, the received selection of answers is processed to output an indication of mental health of the patient. The indication of mental health identifies a kappa opioid receptor antagonist to which the patient would likely be a higher responder.Type: GrantFiled: October 23, 2019Date of Patent: August 31, 2021Assignee: BlackThor Therapeutics, Ine.Inventors: Qingzhu Gao, Humberto Andres Gonzalez Cabezas, Parvez Ahammad, Yuelu Liu