Patents by Inventor Rebecca Mieloszyk

Rebecca Mieloszyk 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: 11972843
    Abstract: Systems and methods are disclosed herein for quantitatively identifying a patient's sedation level and predicting adverse events, based on one or more capnograms or outputs from a pharmacokinetic, pharmacodynamic, or ventilatory model. A sensor measures a carbon dioxide concentration of air exhaled by a patient into a breath receiver. A processor processes the sensor data to generate a capnogram including one or more respiratory cycles, computes the outputs of pharmacokinetic, pharmacodynamic, or ventilatory models, and extracts one or more of the resulting features from the capnogram and pharmacokinetic, pharmacodynamic, or ventilatory model outputs. A multi-parameter metric is computed based on the one or more extracted features and estimates the current or predicted sedation level of the patient.
    Type: Grant
    Filed: June 26, 2019
    Date of Patent: April 30, 2024
    Assignees: Massachusetts Institute of Technology, Children's Medical Center Corporation
    Inventors: George Cheeran Verghese, Margaret Gan Guo, Rebecca Mieloszyk, Thomas Heldt, Baruch Shlomo Krauss
  • Publication number: 20220139512
    Abstract: Embodiments described herein relate to generating and using mappings between entities and entity features extracted from pathology and radiology reports. In various embodiments, a radiology report (102) associated with a subject (127) may be analyzed (602) to identify lesion(s); each of the lesion(s) may have lesion attribute(s). Likewise, a pathology report (112) associated with the subject may also be analyzed (604) to identify sample(s) extracted from the subject; each of the sample(s) may have sample attribute(s). Mapping(s) may be generated (606) between the one or more lesions and the one or more samples based at least in part on correlation between the lesion attributes and the sample attributes. Visual output about the radiology report and the pathology report may then be provided (608) simultaneously, and may visually emphasize a correlation between at least one of the lesions and at least one of the samples.
    Type: Application
    Filed: February 11, 2020
    Publication date: May 5, 2022
    Inventors: VADIRAJ HOMBAL, REBECCA MIELOSZYK, SANDEEP MADHUKAR DALAL, PRESCOTT PETER KLASSEN
  • Publication number: 20190378595
    Abstract: Systems and methods are disclosed herein for quantitatively identifying a patient's sedation level and predicting adverse events, based on one or more capnograms or outputs from a pharmacokinetic, pharmacodynamic, or ventilatory model. A sensor measures a carbon dioxide concentration of air exhaled by a patient into a breath receiver. A processor processes the sensor data to generate a capnogram including one or more respiratory cycles, computes the outputs of pharmacokinetic, pharmacodynamic, or ventilatory models, and extracts one or more of the resulting features from the capnogram and pharmacokinetic, pharmacodynamic, or ventilatory model outputs. A multi-parameter metric is computed based on the one or more extracted features and estimates the current or predicted sedation level of the patient.
    Type: Application
    Filed: June 26, 2019
    Publication date: December 12, 2019
    Applicants: Massachusetts Institute of Technology, Children's Medical Center Corporation
    Inventors: George Cheeran Verghese, Margaret Gan Guo, Rebecca Mieloszyk, Thomas Heldt, Baruch Shlomo Krauss
  • Patent number: 10388405
    Abstract: Systems and methods are disclosed herein for quantitatively identifying a patient's sedation level and predicting adverse events, based on one or more capnograms or outputs from a pharmacokinetic, pharmacodynamic, or ventilatory model. A sensor measures a carbon dioxide concentration of air exhaled by a patient into a breath receiver. A processor processes the sensor data to generate a capnogram including one or more respiratory cycles, computes the outputs of pharmacokinetic, pharmacodynamic, or ventilatory models, and extracts one or more of the resulting features from the capnogram and pharmacokinetic, pharmacodynamic, or ventilatory model outputs. A multi-parameter metric is computed based on the one or more extracted features and estimates the current or predicted sedation level of the patient.
    Type: Grant
    Filed: August 12, 2016
    Date of Patent: August 20, 2019
    Assignees: Massachusetts Institute of Technology, Children's Medical Center Corporation
    Inventors: George Cheeran Verghese, Margaret Gan Guo, Rebecca Mieloszyk, Thomas Heldt, Baruch Shlomo Krauss
  • Publication number: 20170042475
    Abstract: Systems and methods are disclosed herein for quantitatively identifying a patient's sedation level and predicting adverse events, based on one or more capnograms or outputs from a pharmacokinetic, pharmacodynamic, or ventilatory model. A sensor measures a carbon dioxide concentration of air exhaled by a patient into a breath receiver. A processor processes the sensor data to generate a capnogram including one or more respiratory cycles, computes the outputs of pharmacokinetic, pharmacodynamic, or ventilatory models, and extracts one or more of the resulting features from the capnogram and pharmacokinetic, pharmacodynamic, or ventilatory model outputs. A multi-parameter metric is computed based on the one or more extracted features and estimates the current or predicted sedation level of the patient.
    Type: Application
    Filed: August 12, 2016
    Publication date: February 16, 2017
    Inventors: George Cheeran Verghese, Margaret Gan Guo, Rebecca Mieloszyk, Thomas Heldt, Baruch Shlomo Krauss