Patents by Inventor Emma Holdrich Schwager

Emma Holdrich Schwager 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: 20240127951
    Abstract: A method (100) for determining a baseline creatinine value for a subject, comprising: obtaining (130) a set of features about the subject; analyzing (140), using a trained baseline creatinine determination model, the obtained set of features to generate a baseline creatinine value for the subject; reporting (150), via a user interface, the generated baseline creatinine value for the subject.
    Type: Application
    Filed: January 29, 2022
    Publication date: April 18, 2024
    Inventors: Erina Ghosh, Larry Eshelman, Stephanie Lanius, Emma Holdrich Schwager, Kianoush Kashani
  • Patent number: 11925474
    Abstract: The present disclosure is directed to systems and methods for developing an individual-specific patient baseline for a target patient. An exemplary method involves: determining one or more acuity scores for the target patient; identifying patient health data corresponding to one or more low acuity time periods; storing retrospective clinical data from a group of patients in a second database; comparing the patient health data corresponding to the one or more low acuity time periods with retrospective clinical data from a group of patients by identifying one or more patient subgroups; determining the individual-specific patient baseline using an adaptive baseline selection algorithm, wherein the adaptive baseline selection algorithm is used to determine whether to determine the individual-specific patient baseline using patient health data or using retrospective clinical data from one or more patient subgroups; and displaying, using a user interface, the individual-specific patient baseline.
    Type: Grant
    Filed: July 2, 2020
    Date of Patent: March 12, 2024
    Assignee: KONINKLIJKE PHILIPS N.V.
    Inventors: Claire Yunzhu Zhao, Bryan Conroy, Mohammad Shahed Sorower, David Paul Noren, Kailash Swaminathan, Chaitanya Kulkarni, Ting Feng, Kristen Tgavalekos, Emma Holdrich Schwager, Erina Ghosh, Vinod Kumar, Vikram Shivanna, Srinivas Hariharan, Daniel Craig McFarlane
  • Patent number: 11836447
    Abstract: A machine learning model, including: a categorical input feature, having a defined set of values; a plurality of non-categorical input features; a word embedding layer configured to convert the categorical input feature into an output in a word space having two dimensions; and a machine learning network configured to receive the output of the word embedding layer and the plurality of non-categorical input features and to produce a machine learning model output.
    Type: Grant
    Filed: April 13, 2020
    Date of Patent: December 5, 2023
    Assignee: Koninklijke Philips N.V.
    Inventors: Erina Ghosh, Stephanie Lanius, Emma Holdrich Schwager, Larry James Eshelman
  • Publication number: 20230215579
    Abstract: Systems, apparatuses, and methods provide for the monitoring and/or management of acute kidney injury (AKI). For example, an apparatus (100) is configured to determine whether a baseline AKI risk prediction is above a baseline threshold based on patient demographic data and patient medical history data, and perform a continuous AKI risk prediction. The continuous AKI risk prediction includes determining whether an any risk of AKI prediction is above an any AKI threshold based on dynamic intervention data and/or dynamic patient condition data, and determining an AKI stage prediction in response to a determination that the any risk of AKI prediction is above the any AKI threshold based on the dynamic intervention data and/or the dynamic patient condition data.
    Type: Application
    Filed: January 6, 2023
    Publication date: July 6, 2023
    Inventors: Erina Ghosh, Emma Holdrich Schwager, Larry James Eshelman, Kianoush Kashani
  • Publication number: 20220338741
    Abstract: Methods and systems for determining the blood pressure of a patient. The system may include a first device configured to collect a first plurality of blood pressure measurements of the patient, a second device configured to collect a second plurality of blood pressure measurements of the patient, and a processor configured to identify a divergence between the first plurality and the second plurality, retrieve, from a memory, a clinical event, compare the first plurality and the second plurality to the clinical event, and determine that the first plurality is more accurate than the second plurality based on the comparison.
    Type: Application
    Filed: September 1, 2020
    Publication date: October 27, 2022
    Inventors: EMMA HOLDRICH SCHWAGER, ERINA GHOSH, STEPHANIE LANIUS, LARRY JAMES ESHELMAN
  • Patent number: 11475302
    Abstract: A method for training a baseline risk model, including: pre-processing input data by normalizing continuous variable inputs and producing one-hot input features for categorical variables; providing definitions for clean input data and dirty input data based upon various input data related to a patient condition; segmenting the input data into clean input data and dirty input data, wherein the clean input data includes a first subset and a second subset, where the first subset and the second subset include all of the clean input data and are disjoint; training a machine learning model using the first subset of the clean data; and evaluating the performance of the trained machine learning model using the second subset of the clean input data and the dirty input data.
    Type: Grant
    Filed: April 6, 2020
    Date of Patent: October 18, 2022
    Assignee: Koninklijke Philips N.V.
    Inventors: Stephanie Lanius, Erina Ghosh, Emma Holdrich Schwager, Larry James Eshelman
  • Publication number: 20220028533
    Abstract: A method for processing medical information includes identifying a first patient in a first state, identifying a second patient in a second state, calculating a first risk score for the first patient, calculating a first risk score for the second patient, and determining a risk prone area in a medical facility based on the first risk score for the first patient and the first risk score for the second patient. The first state is an infected state and the second state is different from the first state. The first risk score of the first patient provides an indication of a severity of the infected state of the first patient, and the first risk score of the second patient provides an indication of the second patient being infected by the first patient.
    Type: Application
    Filed: April 10, 2020
    Publication date: January 27, 2022
    Inventors: Chaitanya KULKARNI, Mohammad Shahed SOROWER, Bryan CONROY, Claire Yunzhu ZHAO, David Paul NOREN, Kailash SWAMINATHAN, Ting FENG, Kristen TGAVALEKOS, Daniel Craig MCFARLANE, Erina GHOSH, Vinod KUMAR, Vikram SHIVANNA, Shraddha BARODIA, Emma Holdrich SCHWAGER, Prasad RAGHOTHAM VENKAT
  • Publication number: 20210134405
    Abstract: A system for diagnosing pathogenic infection of a person, the system comprising a processor configured for: receiving a trigger comprising data indicative of a possible pathogenic infection; determining, using a risk classifier and medical information about the patient, a risk score for the patient comprising a likelihood that one or more body systems is infected; determining, using a likelihood classifier and the medical information, a likelihood score for the patient comprising an identification of one or more pathogens or pathogen categories that could be causing an infection; determining a relevance score using a relevance classifier and the determined risk and likelihood scores, the relevance score comprising one or more clinical tests relevant to confirming or rejecting the possible pathogenic infection of the person; and reporting, via a user interface, the determined relevance score.
    Type: Application
    Filed: October 15, 2020
    Publication date: May 6, 2021
    Inventors: Ting Feng, Bryan Conroy, David Paul Noren, Daniel Craig McFarlane, Shreyas Ravindranath, Emma Holdrich Schwager
  • Publication number: 20210052217
    Abstract: The present disclosure is directed to systems and methods for developing an individual-specific patient baseline for a target patient. An exemplary method involves: determining one or more acuity scores for the target patient; identifying patient health data corresponding to one or more low acuity time periods; storing retrospective clinical data from a group of patients in a second database; comparing the patient health data corresponding to the one or more low acuity time periods with retrospective clinical data from a group of patients by identifying one or more patient subgroups; determining the individual-specific patient baseline using an adaptive baseline selection algorithm, wherein the adaptive baseline selection algorithm is used to determine whether to determine the individual-specific patient baseline using patient health data or using retrospective clinical data from one or more patient subgroups; and displaying, using a user interface, the individual-specific patient baseline.
    Type: Application
    Filed: July 2, 2020
    Publication date: February 25, 2021
    Inventors: Claire Yunzhu Zhao, Bryan Conroy, Mohammad Shahed Sorower, David Paul Noren, Kailash Swaminathan, Chaitanya Kulkarni, Ting Feng, Kristen Tgavalekos, Emma Holdrich Schwager, Erina Ghosh, Vinod Kumar, Vikram Shivanna, Srinivas Hariharan, Daniel Craig McFarlane
  • Publication number: 20200342261
    Abstract: A machine learning model, including: a categorical input feature, having a defined set of values; a plurality of non-categorical input features; a word embedding layer configured to convert the categorical input feature into an output in a word space having two dimensions; and a machine learning network configured to receive the output of the word embedding layer and the plurality of non-categorical input features and to produce a machine learning model output.
    Type: Application
    Filed: April 13, 2020
    Publication date: October 29, 2020
    Inventors: ERINA GHOSH, STEPHANIE LANIUS, EMMA HOLDRICH SCHWAGER, LARRY JAMES ESHELMAN
  • Publication number: 20200341013
    Abstract: A method and system method for determining a patient's acute kidney injury (AKI) stage, including: receiving a patient's current AKI stage; calculating a patient's new AKI stage; comparing the new AKI stage to the current AKI stage; updating the patient's AKI stage to the new AKI stage when the new AKI stage is greater than the current AKI stage; calculating AKI stage exit criteria and an AKI exit stage value; determining whether the AKI stage exit criteria are satisfied; and reducing the patient's AKI stage to the exit AKI stage when the AKI stage exit criteria are satisfied.
    Type: Application
    Filed: April 21, 2020
    Publication date: October 29, 2020
    Inventors: ERINA GHOSH, LARRY JAMES ESHELMAN, EMMA HOLDRICH SCHWAGER, STEPHANIE LANIUS
  • Publication number: 20200320391
    Abstract: A method for training a baseline risk model, including: pre-processing input data by normalizing continuous variable inputs and producing one-hot input features for categorical variables; providing definitions for clean input data and dirty input data based upon various input data related to a patient condition; segmenting the input data into clean input data and dirty input data, wherein the clean input data includes a first subset and a second subset, where the first subset and the second subset include all of the clean input data and are disjoint; training a machine learning model using the first subset of the clean data; and evaluating the performance of the trained machine learning model using the second subset of the clean input data and the dirty input data.
    Type: Application
    Filed: April 6, 2020
    Publication date: October 8, 2020
    Inventors: Stephanie Lanius, Erina Ghosh, Emma Holdrich Schwager, Larry James Eshelman