Patents by Inventor Daniel CRAWFORD

Daniel CRAWFORD 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: 20260154822
    Abstract: There is provided a method for generating a 3D physical model of a patient specific anatomic feature from 2D medical images. The 2D medical images are uploaded by an end-user via a Web Application and sent to a server. The server processes the 2D medical images and automatically generates a 3D printable model of a patient specific anatomic feature from the 2D medical images using a segmentation technique. The 3D printable model is 3D printed as a 3D physical model such that it represents a 1:1 scale of the patient specific anatomic feature. The method includes the step of automatically identifying the patient specific anatomic feature.
    Type: Application
    Filed: April 11, 2025
    Publication date: June 4, 2026
    Applicant: Axial Medical Printing Limited
    Inventors: Daniel CRAWFORD, Niall HASLAM, Lorenzo TROJAN
  • Publication number: 20260049299
    Abstract: The present invention relates, in part, to methods for large-scale purification of mRNA. The method includes, at least, a step of centrifuging an mRNA suspension in a centrifuge comprising a porous substrate at a speed sufficient to remove process contaminants and to precipitate purified mRNA composition onto the porous substrate.
    Type: Application
    Filed: July 18, 2025
    Publication date: February 19, 2026
    Inventors: Frank DeRosa, Michael Heartlein, Jonathan Abysalh, Daniel Crawford, Anusha Dias, Shrirang Karve
  • Publication number: 20260031238
    Abstract: Systems and methods are provided for multi-schema analysis of patient specific anatomical features from medical images. The system may receive medical images of a patient and metadata associated with the medical images indicative of a selected pathology, and automatically classify the medical images using a segmentation algorithm. The system may use an anatomical landmark detection algorithm leveraging Deep Reinforcement Learning (DRL) techniques to automatically locate one or more anatomical landmarks associated with the patient specific anatomical feature within the medical images. A 3D surface mesh model may be generated representing the patient specific anatomical features including the located one or more anatomical landmarks. The located one or more anatomical landmarks may be used to guide placement of a 3D model of a medical device that may be fused with the 3D surface mesh model to generate a patient specific 3D model of the medical device.
    Type: Application
    Filed: October 6, 2025
    Publication date: January 29, 2026
    Applicant: Axial Medical Printing Limited
    Inventors: Rory HANRATTY, Daniel CRAWFORD, Martin JAERE, Luis TRINDADE, Thomas SCHWARZ, Adam HARPUR
  • Patent number: 12530363
    Abstract: Methods and corresponding systems and apparatuses for integrating data from disparate data sources are described. A list of accounts that are accessible to a user of a customer relationship management (CRM) database may be determined. At least one segment may be determined. The at least one segment may represent a group of individuals that satisfy membership criteria associated with the at least one segment. One or more individuals that are (i) associated with a given account in the list of accounts and (ii) included in the at least one segment may be determined based at least in part on one or more queries involving data tables that reside in a data cloud platform separate from the CRM database. Information describing at least the one or more individuals may be provided for presentation in a graphical user interface (GUI).
    Type: Grant
    Filed: December 19, 2024
    Date of Patent: January 20, 2026
    Assignee: Salesforce, Inc.
    Inventors: Christopher Bernt, Arthur Kong, Arie Kusnadi, Daniel Crawford, Christopher Gamble, Darrel Liu, Karthik Balaji Mahadevarao Premnath, Siddharth Patel Aka Khunt, Lingyi Wang
  • Patent number: 12444506
    Abstract: Systems and methods are provided for multi-schema analysis of patient specific anatomical features from medical images. The system may receive medical images of a patient and metadata associated with the medical images indicative of a selected pathology, and automatically classify the medical images using a segmentation algorithm. The system may use an anatomical landmark detection algorithm leveraging Deep Reinforcement Learning (DRL) techniques to automatically locate one or more anatomical landmarks associated with the patient specific anatomical feature within the medical images. A 3D surface mesh model may be generated representing the patient specific anatomical features including the located one or more anatomical landmarks. The located one or more anatomical landmarks may be used to guide placement of a 3D model of a medical device that may be fused with the 3D surface mesh model to generate a patient specific 3D model of the medical device.
    Type: Grant
    Filed: November 25, 2024
    Date of Patent: October 14, 2025
    Assignee: Axial Medical Printing Limited
    Inventors: Rory Hanratty, Daniel Crawford, Martin Jaere, Luis Trindade, Thomas Schwarz, Adam Harpur
  • Publication number: 20250308165
    Abstract: A computer implemented method for generating a 3D printable model of a patient specific anatomic feature from 2D medical images is provided. A 3D image is automatically generated from a set of 2D medical images. A machine learning based image segmentation technique is used to segment the generated 3D image. A 3D printable model of the patient specific anatomic feature is created from the segmented 3D image.
    Type: Application
    Filed: June 11, 2025
    Publication date: October 2, 2025
    Applicant: Axial Medical Printing Limited
    Inventors: Daniel CRAWFORD, Catherine COOMBER, Niall HASLAM
  • Patent number: 12410422
    Abstract: The present invention relates, in part, to methods for large-scale purification of mRNA. The method includes, at least, a step of centrifuging an mRNA suspension in a centrifuge comprising a porous substrate at a speed sufficient to remove process contaminants and to precipitate purified mRNA composition onto the porous substrate.
    Type: Grant
    Filed: December 22, 2020
    Date of Patent: September 9, 2025
    Assignee: TRANSLATE BIO, INC.
    Inventors: Frank DeRosa, Michael Heartlein, Jonathan Abysalh, Daniel Crawford, Anusha Dias, Shrirang Karve
  • Patent number: 12333652
    Abstract: A computer implemented method for generating a 3D printable model of a patient specific anatomic feature from 2D medical images is provided. A 3D image is automatically generated from a set of 2D medical images. A machine learning based image segmentation technique is used to segment the generated 3D image. A 3D printable model of the patient specific anatomic feature is created from the segmented 3D image.
    Type: Grant
    Filed: June 21, 2024
    Date of Patent: June 17, 2025
    Assignee: Axial Medical Printing Limited
    Inventors: Daniel Crawford, Catherine Coomber, Niall Haslam
  • Patent number: 12277712
    Abstract: There is provided a method for generating a 3D physical model of a patient specific anatomic feature from 2D medical images. The 2D medical images are uploaded by an end-user via a Web Application and sent to a server. The server processes the 2D medical images and automatically generates a 3D printable model of a patient specific anatomic feature from the 2D medical images using a segmentation technique. The 3D printable model is 3D printed as a 3D physical model such that it represents a 1:1 scale of the patient specific anatomic feature. The method includes the step of automatically identifying the patient specific anatomic feature.
    Type: Grant
    Filed: March 4, 2024
    Date of Patent: April 15, 2025
    Assignee: Axial Medical Printing Limited
    Inventors: Niall Haslam, Lorenzo Trojan, Daniel Crawford
  • Publication number: 20250095864
    Abstract: Systems and methods are provided for multi-schema analysis of patient specific anatomical features from medical images. The system may receive medical images of a patient and metadata associated with the medical images indicative of a selected pathology, and automatically classify the medical images using a segmentation algorithm. The system may use an anatomical landmark detection algorithm leveraging Deep Reinforcement Learning (DRL) techniques to automatically locate one or more anatomical landmarks associated with the patient specific anatomical feature within the medical images. A 3D surface mesh model may be generated representing the patient specific anatomical features including the located one or more anatomical landmarks. The located one or more anatomical landmarks may be used to guide placement of a 3D model of a medical device that may be fused with the 3D surface mesh model to generate a patient specific 3D model of the medical device.
    Type: Application
    Filed: November 25, 2024
    Publication date: March 20, 2025
    Applicant: Axial Medical Printing Limited
    Inventors: Rory HANRATTY, Daniel CRAWFORD, Martin JAERE, Luis TRINDADE, Thomas SCHWARZ, Adam Harpur
  • Patent number: 12154691
    Abstract: Systems and methods are provided for multi-schema analysis of patient specific anatomical features from medical images. The system may receive medical images of a patient and metadata associated with the medical images indicative of a selected pathology, and automatically classify the medical images using a segmentation algorithm. The system may use an anatomical feature identification algorithm to identify one or more patient specific anatomical features within the medical images by exploring an anatomical knowledge dataset. A 3D surface mesh model may be generated representing the one or more classified patient specific anatomical features, such that information may be extracted from the 3D surface mesh model based on the selected pathology. Physiological information associated with the selected pathology for the 3D surface mesh model may be generated based on the extracted information.
    Type: Grant
    Filed: January 8, 2024
    Date of Patent: November 26, 2024
    Assignee: Axial Medical Printing Limited
    Inventors: Daniel Crawford, Rory Hanratty, Luke Donnelly, Luis Trindade, Thomas Schwarz, Adam Harpur
  • Publication number: 20240346768
    Abstract: A computer implemented method for generating a 3D printable model of a patient specific anatomic feature from 2D medical images is provided. A 3D image is automatically generated from a set of 2D medical images. A machine learning based image segmentation technique is used to segment the generated 3D image. A 3D printable model of the patient specific anatomic feature is created from the segmented 3D image.
    Type: Application
    Filed: June 21, 2024
    Publication date: October 17, 2024
    Applicant: Axial Medical Printing Limited
    Inventors: Daniel CRAWFORD, Catherine Coomber, Niall Haslam
  • Patent number: 12020375
    Abstract: A computer implemented method for generating a 3D printable model of a patient specific anatomic feature from 2D medical images is provided. A 3D image is automatically generated from a set of 2D medical images. A machine learning based image segmentation technique is used to segment the generated 3D image. A 3D printable model of the patient specific anatomic feature is created from the segmented 3D image.
    Type: Grant
    Filed: September 4, 2022
    Date of Patent: June 25, 2024
    Assignee: Axial Medical Printing Limited
    Inventors: Niall Haslam, Daniel Crawford, Catherine Coomber
  • Publication number: 20240202927
    Abstract: There is provided a method for generating a 3D physical model of a patient specific anatomic feature from 2D medical images. The 2D medical images are uploaded by an end-user via a Web Application and sent to a server. The server processes the 2D medical images and automatically generates a 3D printable model of a patient specific anatomic feature from the 2D medical images using a segmentation technique. The 3D printable model is 3D printed as a 3D physical model such that it represents a 1:1 scale of the patient specific anatomic feature. The method includes the step of automatically identifying the patient specific anatomic feature.
    Type: Application
    Filed: March 4, 2024
    Publication date: June 20, 2024
    Applicant: Axial Medical Printing Limited
    Inventors: Niall HASLAM, Lorenzo TROJAN, Daniel CRAWFORD
  • Publication number: 20240153644
    Abstract: Systems and methods are provided for multi-schema analysis of patient specific anatomical features from medical images. The system may receive medical images of a patient and metadata associated with the medical images indicative of a selected pathology, and automatically classify the medical images using a segmentation algorithm. The system may use an anatomical feature identification algorithm to identify one or more patient specific anatomical features within the medical images by exploring an anatomical knowledge dataset. A 3D surface mesh model may be generated representing the one or more classified patient specific anatomical features, such that information may be extracted from the 3D surface mesh model based on the selected pathology. Physiological information associated with the selected pathology for the 3D surface mesh model may be generated based on the extracted information.
    Type: Application
    Filed: January 8, 2024
    Publication date: May 9, 2024
    Applicant: Axial Medical Printing Limited
    Inventors: Daniel CRAWFORD, Rory HANRATTY, Luke DONNELLY, Luis TRINDADE, Thomas SCHWARZ, Adam HARPUR
  • Patent number: 11976272
    Abstract: The present invention relates, in part, to methods for large-scale purification of mRNA. The method includes, at least, steps of forming an mRNA slurry, stirring the slurry, and vacuum or pressure filtering the slurry.
    Type: Grant
    Filed: October 14, 2020
    Date of Patent: May 7, 2024
    Assignee: TRANSLATE BIO, INC.
    Inventors: Jonathan Abysalh, Daniel Crawford, Frank DeRosa, Shrirang Karve, Anusha Dias, Michael Heartlein
  • Patent number: 11922631
    Abstract: There is provided a method for generating a 3D physical model of a patient specific anatomic feature from 2D medical images. The 2D medical images are uploaded by an end-user via a Web Application and sent to a server. The server processes the 2D medical images and automatically generates a 3D printable model of a patient specific anatomic feature from the 2D medical images using a segmentation technique. The 3D printable model is 3D printed as a 3D physical model such that it represents a 1:1 scale of the patient specific anatomic feature. The method includes the step of automatically identifying the patient specific anatomic feature.
    Type: Grant
    Filed: July 26, 2023
    Date of Patent: March 5, 2024
    Assignee: Axial Medical Printing Limited
    Inventors: Niall Haslam, Lorenzo Trojan, Daniel Crawford
  • Publication number: 20240018514
    Abstract: The present invention provides methods for large-scale production of a composition enriched for full-length mRNA molecules using an SP6 RNA polymerase and compositions produced using such methods and uses thereof.
    Type: Application
    Filed: December 14, 2022
    Publication date: January 18, 2024
    Inventors: Jonathan Abysalh, Daniel Crawford, Frank DeRosa, Anusha Dias, Michael Heartlein
  • Patent number: 11869670
    Abstract: Systems and methods are provided for multi-schema analysis of patient specific anatomical features from medical images. The system may receive medical images of a patient and metadata associated with the medical images indicative of a selected pathology, and automatically classify the medical images using a segmentation algorithm. The system may use an anatomical feature identification algorithm to identify one or more patient specific anatomical features within the medical images by exploring an anatomical knowledge dataset. A 3D surface mesh model may be generated representing the one or more classified patient specific anatomical features, such that information may be extracted from the 3D surface mesh model based on the selected pathology. Physiological information associated with the selected pathology for the 3D surface mesh model may be generated based on the extracted information.
    Type: Grant
    Filed: April 6, 2023
    Date of Patent: January 9, 2024
    Assignee: Axial Medical Printing Limited
    Inventors: Daniel Crawford, Rory Hanratty, Luke Donnelly, Luis Trindade, Thomas Schwarz, Adam Harpur
  • Publication number: 20230410317
    Abstract: There is provided a method for generating a 3D physical model of a patient specific anatomic feature from 2D medical images. The 2D medical images are uploaded by an end-user via a Web Application and sent to a server. The server processes the 2D medical images and automatically generates a 3D printable model of a patient specific anatomic feature from the 2D medical images using a segmentation technique. The 3D printable model is 3D printed as a 3D physical model such that it represents a 1:1 scale of the patient specific anatomic feature. The method includes the step of automatically identifying the patient specific anatomic feature.
    Type: Application
    Filed: July 26, 2023
    Publication date: December 21, 2023
    Applicant: Axial Medical Printing Limited
    Inventors: Niall HASLAM, Lorenzo TROJAN, Daniel CRAWFORD