Patents by Inventor Matthew MCSORLEY
Matthew MCSORLEY 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: 20240153648Abstract: A computational evidence platform extracts clinical concepts from medical evidence sources and creates a database of elemental diagnostic factors and elemental investigations links to medical conditions. Input from a person groups factors and investigations makes corrections and adds a ranking Elemental factors and investigations do not include information specific to their associated conditions but include synonyms and a link to a medical ontology. A patient state is determined by extracting patient known diagnostic factors and investigation results from the patient chart. These known factors and results are matched to the database and a ranking of likely conditions are output. Next-best actions per condition are output by determining factors not yet known and investigations not yet performed. Next-best actions across conditions are determined by performing a recursive tree search of the database and assuming that unknown factors are now known to generate a score for each assumption.Type: ApplicationFiled: January 8, 2024Publication date: May 9, 2024Inventors: Carl BATE, Wian STIPP, Thomas UNGER, David A. EPSTEIN, Matthew MCSORLEY, Fady NAKHLA, David ROBINSON, Jennifer May LEE, Arthur BÖÖK
-
Patent number: 11869674Abstract: A computational evidence platform extracts clinical concepts from medical evidence sources and creates a database of elemental diagnostic factors and elemental investigations links to medical conditions. Input from a person groups factors and investigations makes corrections and adds a ranking. Elemental factors and investigations do not include information specific to their associated conditions but include synonyms and a link to a medical ontology. A patient state is determined by extracting patient known diagnostic factors and investigation results from the patient chart. These known factors and results are matched to the database and a ranking of likely conditions are output. Next-best actions per condition are output by determining factors not yet known and investigations not yet performed. Next-best actions across conditions are determined by performing a recursive tree search of the database and assuming that unknown factors are now known to generate a score for each assumption.Type: GrantFiled: April 14, 2023Date of Patent: January 9, 2024Assignee: Recovery Exploration Technologies Inc.Inventors: Carl Bate Tulley, Wian Stipp, Thomas Unger, David A. Epstein, Matthew McSorley, Fady Nakhla, David Robinson, Jennifer May Lee, Arthur Böök
-
Publication number: 20230386681Abstract: A computational evidence platform extracts clinical concepts from medical evidence sources and creates a database of elemental diagnostic factors and elemental investigations links to medical conditions. Input from a person groups factors and investigations makes corrections and adds a ranking. Elemental factors and investigations do not include information specific to their associated conditions but include synonyms and a link to a medical ontology. A patient state is determined by extracting patient known diagnostic factors and investigation results from the patient chart. These known factors and results are matched to the database and a ranking of likely conditions are output. Next-best actions per condition are output by determining factors not yet known and investigations not yet performed. Next-best actions across conditions are determined by performing a recursive tree search of the database and assuming that unknown factors are now known to generate a score for each assumption.Type: ApplicationFiled: August 9, 2023Publication date: November 30, 2023Inventors: Carl Bate TULLEY, Wian STIPP, Thomas UNGER, David A. EPSTEIN, Matthew MCSORLEY, Fady NAKHLA, David ROBINSON, Jennifer May LEE, Arthur BÖÖK
-
Publication number: 20230335299Abstract: A computational evidence platform extracts clinical concepts from medical evidence sources and creates a database of elemental diagnostic factors and elemental investigations links to medical conditions. Input from a person groups factors and investigations makes corrections and adds a ranking. Elemental factors and investigations do not include information specific to their associated conditions but include synonyms and a link to a medical ontology. A patient state is determined by extracting patient known diagnostic factors and investigation results from the patient chart. These known factors and results are matched to the database and a ranking of likely conditions are output. Next-best actions per condition are output by determining factors not yet known and investigations not yet performed. Next-best actions across conditions are determined by performing a recursive tree search of the database and assuming that unknown factors are now known to generate a score for each assumption.Type: ApplicationFiled: April 14, 2023Publication date: October 19, 2023Inventors: Carl Bate TULLEY, Wian STIPP, Thomas UNGER, David A. EPSTEIN, Matthew MCSORLEY, Fady NAKHLA, David ROBINSON, Jennifer May LEE, Arthur BÖÖK
-
Patent number: 11551813Abstract: A next-best-action system includes real-time operation and off-line training and processes. During off-line training databases of medical conditions and associated diagnostic factors, tests and treatments are used to create models used for later natural language processing of input electronic text. Diagnostic factors are ranked according to the probability that they indicate conditions and are stored in a matrix. Treatments corresponding to conditions are also stored in a matrix. During real-time operation electronic text is received from patient history of an EHR system, from a transcribed conversation between a physician and a patient, or from input that the physician makes in the EHR system or in an overlaid diagnostic user interface. The electronic text is processed by an NLP pipeline that derives clinical diagnostic factors and test results for the patient.Type: GrantFiled: August 3, 2022Date of Patent: January 10, 2023Assignee: Recovery Exploration Technologies Inc.Inventors: Carl Bate Tulley, Robert Derward Rogers, Jennifer May Lee, David A. Epstein, Michelle S. Keller, Wian Stipp, David Robinson, Matthew McSorley
-
Publication number: 20220375614Abstract: A next-best-action system includes real-time operation and off-line training and processes. During off-line training databases of medical conditions and associated diagnostic factors, tests and treatments are used to create models used for later natural language processing of input electronic text. Diagnostic factors are ranked according to the probability that they indicate conditions and are stored in a matrix. Treatments corresponding to conditions are also stored in a matrix. During real-time operation electronic text is received from patient history of an EHR system, from a transcribed conversation between a physician and a patient, or from input that the physician makes in the EHR system or in an overlaid diagnostic user interface. The electronic text is processed by an NLP pipeline that derives clinical diagnostic factors and test results for the patient.Type: ApplicationFiled: August 3, 2022Publication date: November 24, 2022Inventors: Carl Bate TULLEY, Robert Derward ROGERS, Jennifer May LEE, David A. EPSTEIN, Michelle S. KELLER, Wian STIPP, David ROBINSON, Matthew MCSORLEY
-
Patent number: 11437145Abstract: A next-best-action system includes real-time operation and off-line training and processes. During off-line training databases of medical conditions and associated diagnostic factors, tests and treatments are used to create models used for later natural language processing of input electronic text. Diagnostic factors are ranked according to the probability that they indicate conditions and are stored in a matrix. Treatments corresponding to conditions are also stored in a matrix. During real-time operation electronic text is received from patient history of an EHR system, from a transcribed conversation between a physician and a patient, or from input that the physician makes in the EHR system or in an overlaid diagnostic user interface. The electronic text is processed by an NLP pipeline that derives clinical diagnostic factors and test results for the patient.Type: GrantFiled: August 19, 2021Date of Patent: September 6, 2022Assignee: RECOVERY EXPLORATION TECHNOLOGIES INC.Inventors: Carl Bate Tulley, Robert Derward Rogers, Jennifer May Lee, David A. Epstein, Michelle S. Keller, Wian Stipp, David Robinson, Matthew McSorley
-
Publication number: 20220059224Abstract: A next-best-action system includes real-time operation and off-line training and processes. During off-line training databases of medical conditions and associated diagnostic factors, tests and treatments are used to create models used for later natural language processing of input electronic text. Diagnostic factors are ranked according to the probability that they indicate conditions and are stored in a matrix. Treatments corresponding to conditions are also stored in a matrix. During real-time operation electronic text is received from patient history of an EHR system, from a transcribed conversation between a physician and a patient, or from input that the physician makes in the EHR system or in an overlaid diagnostic user interface. The electronic text is processed by an NLP pipeline that derives clinical diagnostic factors and test results for the patient.Type: ApplicationFiled: August 19, 2021Publication date: February 24, 2022Inventors: Carl Bate TULLEY, Robert Derward ROGERS, Jennifer May LEE, David A. EPSTEIN, Michelle S. KELLER, Wian STIPP, David ROBINSON, Matthew MCSORLEY