Patents by Inventor Peter SCHUEFFLER
Peter SCHUEFFLER 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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Patent number: 12657721Abstract: Systems and methods are disclosed for receiving a digital image corresponding to a target specimen associated with a pathology category, determining a quality control (QC) machine learning model to predict a quality designation based on one or more artifacts, providing the digital image as an input to the QC machine learning model, receiving the quality designation for the digital image as an output from the machine learning model, and outputting the quality designation of the digital image. A quality assurance (QA) machine learning model may predict a disease designation based on one or more biomarkers. The digital image may be provided to the QA model which may output a disease designation. An external designation may be compared to the disease designation and a comparison result may be output.Type: GrantFiled: November 20, 2023Date of Patent: June 16, 2026Assignee: Paige.AI, Inc.Inventors: Jillian Sue, Razik Yousfi, Peter Schueffler, Thomas Fuchs, Leo Grady
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Publication number: 20260073521Abstract: Systems and methods are disclosed for receiving a target electronic image corresponding to a target specimen, the target specimen comprising a tissue sample of a patient, applying a machine learning system to the target electronic image to determine at least one characteristic of the target specimen and/or at least one characteristic of the target electronic image, the machine learning system having been generated by processing a plurality of training images to predict at least one characteristic, the training images comprising images of human tissue and/or images that are algorithmically generated, and outputting the target electronic image identifying an area of interest based on the at least one characteristic of the target specimen and/or the at least one characteristic of the target electronic image.Type: ApplicationFiled: November 20, 2025Publication date: March 12, 2026Inventors: Jason LOCKE, Jillian SUE, Peter SCHUEFFLER, Jose Sebastian IZURIETA-HERRERA
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Patent number: 12505537Abstract: Systems and methods are disclosed for receiving a target electronic image corresponding to a target specimen, the target specimen comprising a tissue sample of a patient, applying a machine learning system to the target electronic image to determine at least one characteristic of the target specimen and/or at least one characteristic of the target electronic image, the machine learning system having been generated by processing a plurality of training images to predict at least one characteristic, the training images comprising images of human tissue and/or images that are algorithmically generated, and outputting the target electronic image identifying an area of interest based on the at least one characteristic of the target specimen and/or the at least one characteristic of the target electronic image.Type: GrantFiled: December 5, 2022Date of Patent: December 23, 2025Assignee: Paige.AI, Inc.Inventors: Jason Locke, Jillian Sue, Peter Schueffler, Jose Sebastian Izurieta-Herrera
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Patent number: 12462921Abstract: The present disclosure relates generally to image viewers, in particular biomedical images viewers that can concurrently render biomedical images at various magnifications or resolutions. The computing system can identify tiles from a first portion of a biomedical image. Each tile can correspond to a magnification level and coordinates in the biomedical image. The computing system can provide the tiles for concurrent display in respective graphical user interface (GUI) elements. The computing system can detect an interaction with a GUI element. The computing system can identify a change in coordinates for a tile displayed in the GUI element based on the interaction. The computing system can determine a second change in the other concurrently displayed tiles based on the change in coordinates. The computing system can update the concurrent display of the tiles based on the changes.Type: GrantFiled: August 24, 2020Date of Patent: November 4, 2025Assignee: MEMORIAL SLOAN KETTERING CANCER CENTERInventors: Peter Schueffler, Thomas Fuchs
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Publication number: 20250201389Abstract: Systems and methods are disclosed for using an integrated computing platform to view and transfer digital pathology slides using artificial intelligence, including receiving, from a bridge, a whole slide image (WSI) and associated information, wherein the WSI is associated with a geographic region and depicts a specimen associated with a patient; storing the received WSI in a first encrypted bucket; determining, by artificial intelligence, whether portions of the specimen are suspicious for disease; generating metadata associated with the WSI based on whether portions of the specimen are suspicious for disease; and storing the metadata in a second encrypted bucket. The bridge may receive the WSI from a WSI system and may receive the associated information from a laboratory information system (LIS), and the WSI system and LIS may or may not be integrated.Type: ApplicationFiled: December 19, 2024Publication date: June 19, 2025Inventors: Razik YOUSFI, Peter SCHUEFFLER, Thomas FRESNEAU, Alexander TSEMA
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Publication number: 20250156987Abstract: A method for processing an electronic image including receiving, by a viewer, the electronic image and a FOV (field of view), wherein the FOV includes at least one coordinate, at least one dimension, and a magnification factor, loading, by the viewer, a plurality of tiles within the FOV, determining, by the viewer, a state of the plurality of tiles in a cache, and in response to determining that the state of the plurality of tiles in the cache is a fully loaded state, rendering, by the viewer, the plurality of tiles to a display.Type: ApplicationFiled: January 17, 2025Publication date: May 15, 2025Inventors: Alexandre KIRSZENBERG, Razik YOUSFI, Thomas FRESNEAU, Peter SCHUEFFLER
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Publication number: 20250157037Abstract: A method may process an electronic image corresponding to a medical sample associated with a patient. The method may include receiving a selection of one or more artificial intelligence (AI) algorithms, receiving one or more whole slide images of a medical sample associated with a patient, performing a task on the whole slide images, using the one or more selected AI algorithms, the whole slide images being stored in a first container, the whole slide images being originated from a first user, the task comprising determining a characteristic of the medical sample in the whole slide images, based on the characteristic of the whole slide image, generating metadata associated with the whole slide image, and storing the metadata in a second container.Type: ApplicationFiled: January 17, 2025Publication date: May 15, 2025Inventors: Razik YOUSFI, Peter SCHUEFFLER, Thomas FRESNEAU, Alexander TSEMA
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Patent number: 12266101Abstract: A method may process an electronic image corresponding to a medical sample associated with a patient. The method may include receiving a selection of one or more artificial intelligence (AI) algorithms, receiving one or more whole slide images of a medical sample associated with a patient, performing a task on the whole slide images, using the one or more selected AI algorithms, the whole slide images being stored in a first container, the whole slide images being originated from a first user, the task comprising determining a characteristic of the medical sample in the whole slide images, based on the characteristic of the whole slide image, generating metadata associated with the whole slide image, and storing the metadata in a second container.Type: GrantFiled: April 26, 2022Date of Patent: April 1, 2025Assignee: Paige.AI, Inc.Inventors: Razik Yousfi, Peter Schueffler, Thomas Fresneau, Alexander Tsema
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Patent number: 12236500Abstract: A method for processing an electronic image including receiving, by a viewer, the electronic image and a FOV (field of view), wherein the FOV includes at least one coordinate, at least one dimension, and a magnification factor, loading, by the viewer, a plurality of tiles within the FOV, determining, by the viewer, a state of the plurality of tiles in a cache, and in response to determining that the state of the plurality of tiles in the cache is a fully loaded state, rendering, by the viewer, the plurality of tiles to a display.Type: GrantFiled: April 9, 2024Date of Patent: February 25, 2025Assignee: Paige.AI, Inc.Inventors: Alexandre Kirszenberg, Razik Yousfi, Thomas Fresneau, Peter Schueffler
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Patent number: 12211610Abstract: Systems and methods are disclosed for using an integrated computing platform to view and transfer digital pathology slides using artificial intelligence, the method including receiving at least one whole slide image in a cloud computing environment located in a first geographic region, the whole slide image depicting a medical sample associated with a patient, the patient being located in the first geographic region; storing the received whole slide image in a first encrypted bucket; applying artificial intelligence to perform a classification of the at least one whole slide image, the classification comprising steps to determine whether portions of the medical sample depicted in the whole slide image are healthy or diseased; based on the classification of the at least one whole slide image, generating metadata associated with the whole slide image; and storing the metadata in a second encrypted bucket.Type: GrantFiled: September 6, 2023Date of Patent: January 28, 2025Assignee: Paige.AI, Inc.Inventors: Razik Yousfi, Peter Schueffler, Thomas Fresneau, Alexander Tsema
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Publication number: 20240257296Abstract: A method for processing an electronic image including receiving, by a viewer, the electronic image and a FOV (field of view), wherein the FOV includes at least one coordinate, at least one dimension, and a magnification factor, loading, by the viewer, a plurality of tiles within the FOV, determining, by the viewer, a state of the plurality of tiles in a cache, and in response to determining that the state of the plurality of tiles in the cache is a fully loaded state, rendering, by the viewer, the plurality of tiles to a display.Type: ApplicationFiled: April 9, 2024Publication date: August 1, 2024Inventors: Alexandre KIRSZENBERG, Razik YOUSFI, Thomas FRESNEAU, Peter SCHUEFFLER
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Patent number: 11983796Abstract: A method for processing an electronic image including receiving, by a viewer, the electronic image and a FOV (field of view), wherein the FOV includes at least one coordinate, at least one dimension, and a magnification factor, loading, by the viewer, a plurality of tiles within the FOV, determining, by the viewer, a state of the plurality of tiles in a cache, and in response to determining that the state of the plurality of tiles in the cache is a fully loaded state, rendering, by the viewer, the plurality of tiles to a display.Type: GrantFiled: August 4, 2022Date of Patent: May 14, 2024Assignee: Paige.AI, Inc.Inventors: Alexandre Kirszenberg, Razik Yousfi, Thomas Fresneau, Peter Schueffler
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Publication number: 20240087124Abstract: Systems and methods are disclosed for receiving a digital image corresponding to a target specimen associated with a pathology category, determining a quality control (QC) machine learning model to predict a quality designation based on one or more artifacts, providing the digital image as an input to the QC machine learning model, receiving the quality designation for the digital image as an output from the machine learning model, and outputting the quality designation of the digital image. A quality assurance (QA) machine learning model may predict a disease designation based on one or more biomarkers. The digital image may be provided to the QA model which may output a disease designation. An external designation may be compared to the disease designation and a comparison result may be output.Type: ApplicationFiled: November 20, 2023Publication date: March 14, 2024Inventors: Jillian SUE, Razik YOUSFI, Peter SCHUEFFLER, Thomas FUCHS, Leo GRADY
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Patent number: 11928820Abstract: Systems and methods are disclosed for receiving a digital image corresponding to a target specimen associated with a pathology category, determining a quality control (QC) machine learning model to predict a quality designation based on one or more artifacts, providing the digital image as an input to the QC machine learning model, receiving the quality designation for the digital image as an output from the machine learning model, and outputting the quality designation of the digital image. A quality assurance (QA) machine learning model may predict a disease designation based on one or more biomarkers. The digital image may be provided to the QA model which may output a disease designation. An external designation may be compared to the disease designation and a comparison result may be output.Type: GrantFiled: February 24, 2023Date of Patent: March 12, 2024Assignee: Paige.AI, Inc.Inventors: Jillian Sue, Razik Yousfi, Peter Schueffler, Thomas Fuchs, Leo Grady
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Publication number: 20230410987Abstract: Systems and methods are disclosed for using an integrated computing platform to view and transfer digital pathology slides using artificial intelligence, the method including receiving at least one whole slide image in a cloud computing environment located in a first geographic region, the whole slide image depicting a medical sample associated with a patient, the patient being located in the first geographic region; storing the received whole slide image in a first encrypted bucket; applying artificial intelligence to perform a classification of the at least one whole slide image, the classification comprising steps to determine whether portions of the medical sample depicted in the whole slide image are healthy or diseased; based on the classification of the at least one whole slide image, generating metadata associated with the whole slide image; and storing the metadata in a second encrypted bucket.Type: ApplicationFiled: September 6, 2023Publication date: December 21, 2023Inventors: Razik YOUSFI, Peter SCHUEFFLER, Thomas FRESNEAU, Alexander TSEMA
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Patent number: 11791036Abstract: Systems and methods are disclosed for using an integrated computing platform to view and transfer digital pathology slides using artificial intelligence, the method including receiving at least one whole slide image in a cloud computing environment located in a first geographic region, the whole slide image depicting a medical sample associated with a patient, the patient being located in the first geographic region; storing the received whole slide image in a first encrypted bucket; applying artificial intelligence to perform a classification of the at least one whole slide image, the classification comprising steps to determine whether portions of the medical sample depicted in the whole slide image are healthy or diseased; based on the classification of the at least one whole slide image, generating metadata associated with the whole slide image; and storing the metadata in a second encrypted bucket.Type: GrantFiled: June 8, 2022Date of Patent: October 17, 2023Assignee: Paige.AI, Inc.Inventors: Razik Yousfi, Peter Schueffler, Thomas Fresneau, Alexander Tsema
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Publication number: 20230222662Abstract: Systems and methods are disclosed for receiving a digital image corresponding to a target specimen associated with a pathology category, determining a quality control (QC) machine learning model to predict a quality designation based on one or more artifacts, providing the digital image as an input to the QC machine learning model, receiving the quality designation for the digital image as an output from the machine learning model, and outputting the quality designation of the digital image. A quality assurance (QA) machine learning model may predict a disease designation based on one or more biomarkers. The digital image may be provided to the QA model which may output a disease designation. An external designation may be compared to the disease designation and a comparison result may be output.Type: ApplicationFiled: February 24, 2023Publication date: July 13, 2023Inventors: Jillian SUE, Razik YOUSFI, Peter SCHUEFFLER, Thomas FUCHS, Leo GRADY
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Publication number: 20230095896Abstract: Systems and methods are disclosed for receiving a target electronic image corresponding to a target specimen, the target specimen comprising a tissue sample of a patient, applying a machine learning system to the target electronic image to determine at least one characteristic of the target specimen and/or at least one characteristic of the target electronic image, the machine learning system having been generated by processing a plurality of training images to predict at least one characteristic, the training images comprising images of human tissue and/or images that are algorithmically generated, and outputting the target electronic image identifying an area of interest based on the at least one characteristic of the target specimen and/or the at least one characteristic of the target electronic image.Type: ApplicationFiled: December 5, 2022Publication date: March 30, 2023Inventors: Jason LOCKE, Jillian SUE, Peter SCHUEFFLER, Jose Sebastian IZURIETA-HERRERA
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Patent number: 11615534Abstract: Systems and methods are disclosed for receiving a digital image corresponding to a target specimen associated with a pathology category, determining a quality control (QC) machine learning model to predict a quality designation based on one or more artifacts, providing the digital image as an input to the QC machine learning model, receiving the quality designation for the digital image as an output from the machine learning model, and outputting the quality designation of the digital image. A quality assurance (QA) machine learning model may predict a disease designation based on one or more biomarkers. The digital image may be provided to the QA model which may output a disease designation. An external designation may be compared to the disease designation and a comparison result may be output.Type: GrantFiled: December 2, 2021Date of Patent: March 28, 2023Assignee: Paige.AI, Inc.Inventors: Jillian Sue, Razik Yousfi, Peter Schueffler, Thomas Fuchs, Leo Grady
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Publication number: 20230021031Abstract: Described herein are systems and methods of determining primary sites from biomedical images. A computing system may identify a first biomedical image of a first sample from one of a primary site or a secondary site associated with a condition in a first subject. The computing system may apply the first biomedical image to a site prediction model comprising a plurality of weights to determine the primary site for the condition. The computing system may store an association between the first biomedical image and the primary site determined using the site prediction model.Type: ApplicationFiled: September 16, 2022Publication date: January 19, 2023Applicant: MEMORIAL SLOAN KETTERING CANCER CENTERInventors: Dig Vijay Kumar YARLAGADDA, Matthew HANNA, Peter SCHUEFFLER, Thomas FUCHS