Patents by Inventor Shyamlal Ramchandani

Shyamlal Ramchandani 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: 11948688
    Abstract: The exemplified methods and systems provide a phase space volumetric object in which the dynamics of a complex, quasi-periodic system, such as the electrical conduction patterns of the heart, or other biophysical-acquired signals of other organs, are represented as an image of a three dimensional volume having both a volumetric structure (e.g., a three dimensional structure) and a color map to which features can be extracted that are indicative the presence and/or absence of pathologies, e.g., ischemia relating to significant coronary arterial disease (CAD). In some embodiments, the phase space volumetric object can be assessed to extract topographic and geometric parameters that are used in models that determine indications of presence or non-presence of significant coronary artery disease.
    Type: Grant
    Filed: September 10, 2021
    Date of Patent: April 2, 2024
    Assignee: Analytics for Life Inc.
    Inventors: Sunny Gupta, Timothy William Fawcett Burton, Shyamlal Ramchandani
  • Patent number: 11918333
    Abstract: The exemplified intrinsic phase space tomography methods and systems facilitate the analysis and evaluation of complex, quasi-periodic system by generating computed phase-space tomographic images as a representation of the dynamics of the quasi-periodic cardiac systems. The computed phase-space tomographic images can be presented to a physician to assist in the assessment of presence or non-presence of disease. In some embodiments, the phase space tomographic images are used as input to a trained neural network classifier configured to assess for presence or non-presence of significant coronary artery disease.
    Type: Grant
    Filed: December 26, 2018
    Date of Patent: March 5, 2024
    Assignee: Analytics For Life Inc.
    Inventors: Paul Grouchy, Meng Lei, Ian Shadforth, Sunny Gupta, Timothy William Fawcett Burton, Shyamlal Ramchandani
  • Publication number: 20230289595
    Abstract: The exemplified methods and systems facilitate the configuration and training of a neural network (e.g., a deep neural network, a convolutional neural network (CNN), etc.), or ensemble(s) thereof, with a biophysical signal data set to ascertain estimate for the presence or non-presence of disease or pathology in a subject as well as to assess and/or classify disease or pathology, including for example in some cases the severity of such disease or pathology, in a subject. In the context of the heart, the methods and systems described herein facilitate the configuration and training of a neural network, or ensemble(s) thereof, with a cardiac signal data set to ascertain estimate for the presence or non-presence of coronary artery disease or coronary pathology.
    Type: Application
    Filed: February 27, 2023
    Publication date: September 14, 2023
    Inventors: Ali Khosousi, Timothy William Fawcett Burton, Horace R. Gillins, Shyamlal Ramchandani, William Sanders, Ian Shadforth
  • Publication number: 20230233089
    Abstract: An exemplary method is disclosed that can be used in the diagnosis of hypertrophic cardiomyopathy (HCM) using a biophysical-sensor system configured to non-invasively and concurrently acquire electrocardiographic signals, seismographic signals, photoplethysmographic, and/or phonocardiographic signals, collectively referred to herein as biophysical signals, from at least the thoracic region of a subject. The acquired biophysical signals may be assessed for one or more conditions or indicators of hypertrophic cardiomyopathy and concurrently with other cardiac diseases, conditions, or indicators of either.
    Type: Application
    Filed: January 23, 2023
    Publication date: July 27, 2023
    Inventors: Charles R. Bridges, Farhad Fathieh, Shyamlal Ramchandani, Jonathan James Woodward
  • Publication number: 20230157618
    Abstract: Phase space tomography methods and systems to facilitate the analysis and evaluation of complex, quasi-periodic system by generating computed phase-space tomographic images and mathematical features as a representation of the dynamics of the quasi-periodic cardiac systems. The computed phase-space tomographic images can be presented to a physician to assist in the assessment of presence or non-presence of disease. In some implementations, the phase space tomographic images are used as input to a trained neural network classifier configured to assess for presence or non-presence of pulmonary hypertension, including pulmonary arterial hypertension.
    Type: Application
    Filed: September 29, 2022
    Publication date: May 25, 2023
    Inventors: Paul Grouchy, Meng Lei, Ian Shadforth, Sunny Gupta, Timothy Burton, Shyamlal Ramchandani
  • Publication number: 20230071467
    Abstract: A clinical evaluation system and method are disclosed that facilitate the use of features or parameters extracted from biophysical signals in a model or classifier (e.g., a machine-learned classifier) to estimate metrics associated with the physiological state of a patient, including for the presence or non-presence of elevated left ventricular end-diastolic pressure (elevated LVEDP), as an example indicator of a disease medical condition that could be assessed by using the system and method described herein.
    Type: Application
    Filed: August 19, 2022
    Publication date: March 9, 2023
    Inventors: Timothy William Fawcett Burton, Shyamlal Ramchandani, Ali Khosousi, Farhad Fathieh, Mohammad Firouzi, Emmanuel Lange, Abhinav Doomra
  • Patent number: 11589829
    Abstract: The exemplified methods and systems facilitate the configuration and training of a neural network (e.g., a deep neural network, a convolutional neural network (CNN), etc.), or ensemble(s) thereof, with a biophysical signal data set to ascertain estimate for the presence or non-presence of disease or pathology in a subject as well as to assess and/or classify disease or pathology, including for example in some cases the severity of such disease or pathology, in a subject. In the context of the heart, the methods and systems described herein facilitate the configuration and training of a neural network, or ensemble(s) thereof, with a cardiac signal data set to ascertain estimate for the presence or non-presence of coronary artery disease or coronary pathology.
    Type: Grant
    Filed: December 23, 2019
    Date of Patent: February 28, 2023
    Assignee: Analytics For Life Inc.
    Inventors: Ali Khosousi, Timothy William Fawcett Burton, Horace R. Gillins, Shyamlal Ramchandani, William Sanders, Ian Shadforth
  • Patent number: 11471090
    Abstract: Phase space tomography methods and systems to facilitate the analysis and evaluation of complex, quasi-periodic system by generating computed phase-space tomographic images and mathematical features as a representation of the dynamics of the quasi-periodic cardiac systems. The computed phase-space tomographic images can be presented to a physician to assist in the assessment of presence or non-presence of disease. In some implementations, the phase space tomographic images are used as input to a trained neural network classifier configured to assess for presence or non-presence of pulmonary hypertension, including pulmonary arterial hypertension.
    Type: Grant
    Filed: June 3, 2019
    Date of Patent: October 18, 2022
    Assignee: Analytics for Life Inc.
    Inventors: Paul Grouchy, Meng Lei, Ian Shadforth, Sunny Gupta, Timothy Burton, Shyamlal Ramchandani
  • Patent number: 11476000
    Abstract: Exemplified method and system facilitates monitoring and/or evaluation of disease or physiological state using mathematical analysis and machine learning analysis of a biopotential signal collected from a single electrode. The exemplified method and system creates, from data of a singularly measured biopotential signal, via a mathematical operation (i.e., via numeric fractional derivative calculation of the signal in the frequency domain), one or more mathematically-derived biopotential signals (e.g., virtual biopotential signals) that is used in combination with the measured biopotential signals to generate a multi-dimensional phase-space representation of the body (e.g., the heart). By mathematically modulating (e.g.
    Type: Grant
    Filed: June 1, 2020
    Date of Patent: October 18, 2022
    Assignee: Analytics For Life Inc.
    Inventors: Timothy Burton, Shyamlal Ramchandani, Sunny Gupta
  • Publication number: 20220304585
    Abstract: The exemplified methods and systems facilitate one or more dynamical analyses that can characterize and identify synchronicity between acquired cardiac signals and photoplethysmographic signals to predict/estimate presence, non-presence, localization, and/or severity of abnormal cardiovascular conditions or disease, including, for example, but not limited to, coronary artery disease, heart failure (including but not limited to indicators of disease or conduction such as abnormal left ventricular end-diastolic pressure disease), and pulmonary hypertension, among others. In some embodiments, statistical properties of the synchronicity between cardiac signals and photoplethysmographic signals are evaluated. In some embodiments, statistical properties of histogram of synchronicity between cardiac signals and photoplethysmographic signals are evaluated.
    Type: Application
    Filed: April 4, 2022
    Publication date: September 29, 2022
    Inventors: Mehdi Paak, Timothy William Fawcett Burton, Shyamlal Ramchandani
  • Patent number: 11395618
    Abstract: The present disclosure facilitates capture of biosignal such as biopotential signals in microvolts, or sub-microvolts, resolutions that are at, or significantly below, the noise-floor of conventional electrocardiographic and biosignal acquisition instruments. In some embodiments, the exemplified system disclosed herein facilitates the acquisition and recording of wide-band phase gradient signals (e.g., wide-band cardiac phase gradient signals, wide-band cerebral phase gradient signals) that are simultaneously sampled, in some embodiments, having a temporal skew less than about 1 ?s, and in other embodiments, having a temporal skew not more than about 10 femtoseconds. Notably, the exemplified system minimizes non-linear distortions (e.g., those that can be introduced via certain filters) in the acquired wide-band phase gradient signal so as to not affect the information therein.
    Type: Grant
    Filed: January 27, 2020
    Date of Patent: July 26, 2022
    Assignee: Analytics For Life Inc.
    Inventors: Sunny Gupta, Don Crawford, Timothy William Fawcett Burton, Shyamlal Ramchandani, Kristine Canavan
  • Publication number: 20220142583
    Abstract: The exemplified methods and systems described herein facilitate the quantification and/or removal of asynchronous noise, such as muscle artifact noise contamination, to more accurately assess complex nonlinear variabilities in quasi-periodic biophysical-signal systems such as those in acquired cardiac signals, brain signals, etc.
    Type: Application
    Filed: October 18, 2021
    Publication date: May 12, 2022
    Inventors: Michael Garrett, Timothy William Fawcett Burton, Shyamlal Ramchandani, Abhinav Doomra
  • Publication number: 20220139555
    Abstract: The exemplified methods and systems provide a phase space volumetric object in which the dynamics of a complex, quasi-periodic system, such as the electrical conduction patterns of the heart, or other biophysical-acquired signals of other organs, are represented as an image of a three dimensional volume having both a volumetric structure (e.g., a three dimensional structure) and a color map to which features can be extracted that are indicative the presence and/or absence of pathologies, e.g., ischemia relating to significant coronary arterial disease (CAD). In some embodiments, the phase space volumetric object can be assessed to extract topographic and geometric parameters that are used in models that determine indications of presence or non-presence of significant coronary artery disease.
    Type: Application
    Filed: September 10, 2021
    Publication date: May 5, 2022
    Inventors: Sunny Gupta, Timothy William Fawcett Burton, Shyamlal Ramchandani
  • Patent number: 11291379
    Abstract: The exemplified methods and systems facilitate one or more dynamical analyses that can characterize and identify synchronicity between the acquired cardiac signals and photoplethysmographic signals to predict/estimate the presence, non-presence, localization, and/or severity of abnormal cardiovascular conditions or disease, including, for example, but not limited to, coronary artery disease, heart failure (including but not limited to indicators of disease or conduction such as abnormal left ventricular end-diastolic pressure disease), and pulmonary hypertension, among others. In some embodiments, statistical properties of the synchronicity between the cardiac signals and photoplethysmographic signals are evaluated. In some embodiments, statistical properties of a histogram of the synchronicity between the cardiac signals and photoplethysmographic signals are evaluated.
    Type: Grant
    Filed: March 26, 2020
    Date of Patent: April 5, 2022
    Assignee: Analytics for Life Inc.
    Inventors: Mehdi Paak, Timothy William Fawcett Burton, Shyamlal Ramchandani
  • Publication number: 20220095955
    Abstract: The exemplified methods and systems (e.g., machine-learned systems) facilitate the acquisition of ballistocardiographic signals and the determination and use of ballistocardiographic signal related features, or parameters, in a model or classifier to estimate metrics associated with the physiological state of a subject, including for the presence or non-presence of a disease, medical condition, or indication of either. The estimated metric may be used to assist a physician or other healthcare provider in diagnosing the presence or non-presence and/or severity and/or localization of diseases, medical condition, or indication of either or in the treatment of said diseases or indicating conditions. In some embodiments, certain ballistocardiographic signals can also be used to remove motion artifacts from biophysical signals used for the estimation.
    Type: Application
    Filed: September 27, 2021
    Publication date: March 31, 2022
    Inventors: Ian Shadforth, Jonathan James Woodward, Shyamlal Ramchandani
  • Publication number: 20210369170
    Abstract: The present disclosure facilitates the evaluation of wide-band phase gradient information of the heart tissue to assess, e.g., the presence of heart ischemic heart disease. Notably, the present disclosure provides an improved and efficient method to identify and risk stratify coronary stenosis of the heart using a high resolution and wide-band cardiac gradient obtained from the patient. The patient data are derived from the cardiac gradient waveforms across one or more leads, in some embodiments, resulting in high-dimensional data and long cardiac gradient records that exhibit complex nonlinear variability. Space-time analysis, via numeric wavelet operators, is used to study the morphology of the cardiac gradient data as a phase space dataset by extracting dynamical and geometrical properties from the phase space dataset.
    Type: Application
    Filed: August 16, 2021
    Publication date: December 2, 2021
    Inventors: Sunny Gupta, Shyamlal Ramchandani, Timothy William Fawcett Burton, William Sanders, Ian Shadforth
  • Patent number: 11147495
    Abstract: The present disclosure generally relates to systems and methods and systems of a noninvasive technique for characterizing cardiac chamber size and cardiac mechanical function. A mathematical analysis of three-dimensional (3D) high resolution data may be used to estimate chamber size and cardiac mechanical function. For example, high-resolution mammalian signals are analyzed across multiple leads, as 3D orthogonal (X,Y,Z), or 10-channel data, for 30 to 800 seconds, to derive estimates of cardiac chamber size and cardiac mechanical function. Multiple mathematical approaches may be used to analyze the dynamical and geometrical properties of the data.
    Type: Grant
    Filed: July 13, 2017
    Date of Patent: October 19, 2021
    Assignee: Analytics for Life
    Inventors: Sunny Gupta, Derek Exner, Mohsen Najafi Yazdi, Timothy William Fawcett Burton, Shyamlal Ramchandani
  • Patent number: 11147516
    Abstract: The exemplified methods and systems described herein facilitate the quantification and/or removal of asynchronous noise, such as muscle artifact noise contamination, to more accurately assess complex nonlinear variabilities in quasi-periodic biophysical-signal systems such as those in acquired cardiac signals, brain signals, etc.
    Type: Grant
    Filed: June 18, 2019
    Date of Patent: October 19, 2021
    Assignee: Analytics For Life Inc.
    Inventors: Michael Garrett, Timothy William Fawcett Burton, Shyamlal Ramchandani, Abhinav Doomra
  • Patent number: 11133109
    Abstract: The exemplified methods and systems provide a phase space volumetric object in which the dynamics of a complex, quasi-periodic system, such as the electrical conduction patterns of the heart, or other biophysical-acquired signals of other organs, are represented as an image of a three dimensional volume having both a volumetric structure (e.g., a three dimensional structure) and a color map to which features can be extracted that are indicative the presence and/or absence of pathologies, e.g., ischemia relating to significant coronary arterial disease (CAD). In some embodiments, the phase space volumetric object can be assessed to extract topographic and geometric parameters that are used in models that determine indications of presence or non-presence of significant coronary artery disease.
    Type: Grant
    Filed: December 26, 2018
    Date of Patent: September 28, 2021
    Assignee: Analytics For Life Inc.
    Inventors: Sunny Gupta, Timothy William Fawcett Burton, Shyamlal Ramchandani
  • Patent number: 11089988
    Abstract: The present disclosure facilitates the evaluation of wide-band phase gradient information of the heart tissue to assess, e.g., the presence of heart ischemic heart disease. Notably, the present disclosure provides an improved and efficient method to identify and risk stratify coronary stenosis of the heart using a high resolution and wide-band cardiac gradient obtained from the patient. The patient data are derived from the cardiac gradient waveforms across one or more leads, in some embodiments, resulting in high-dimensional data and long cardiac gradient records that exhibit complex nonlinear variability. Space-time analysis, via numeric wavelet operators, is used to study the morphology of the cardiac gradient data as a phase space dataset by extracting dynamical and geometrical properties from the phase space dataset.
    Type: Grant
    Filed: July 29, 2019
    Date of Patent: August 17, 2021
    Assignee: Analytics for Life Inc.
    Inventors: Sunny Gupta, Shyamlal Ramchandani, Timothy William Fawcett Burton, William Sanders, Ian Shadforth