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US20230139531A1 - Method and system for modeling predictive outcomes of arthroplasty surgical procedures - Google Patents

Method and system for modeling predictive outcomes of arthroplasty surgical procedures
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Publication number
US20230139531A1
US20230139531A1US17/960,551US202217960551AUS2023139531A1US 20230139531 A1US20230139531 A1US 20230139531A1US 202217960551 AUS202217960551 AUS 202217960551AUS 2023139531 A1US2023139531 A1US 2023139531A1
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United States
Prior art keywords
operative
joint
patient
post
arthroplasty
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US17/960,551
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Christopher Roche
Vikas Kumar
Steven OVERMAN
Ankur Teredesai
Howard ROUTMAN
Ryan SIMOVITCH
Pierre-Henri Flurin
Thomas Wright
Joseph Zuckerman
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Exactech Inc
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Exactech Inc
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Priority to US17/960,551priorityCriticalpatent/US20230139531A1/en
Publication of US20230139531A1publicationCriticalpatent/US20230139531A1/en
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Abstract

An apparatus includes a processor and a non-transitory memory. The processor is configured to receive pre-operative patient specific data. The pre-operative patient specific data is inputted to a first machine learning model to determine a first predicted post-operative joint performance data output including first predicted post-operative outcome metrics. A reconstruction plan of the joint of the patient is generated based on a medical image of the joint, and at least one arthroplasty surgical parameter obtained from the user. The at least one arthroplasty surgical parameter is inputted into a second machine learning model to determine a second predicted post-operative joint performance data output including second predicted post-operative outcome metrics. The second predicted post-operative joint performance data output is updated to include an arthroplasty surgery recommendation, in response to the user varying the at least one arthroplasty surgical parameter, before the arthroplasty surgery, during the arthroplasty surgery, or both.

Description

Claims (25)

23. A system, comprising:
a non-transitory memory storing software instructions;
at least one processor that, when executing the software instructions, is configured to:
receive pre-operative patient specific data for an arthroplasty surgery to be performed on a joint of a patient;
wherein the pre-operative patient specific data comprises:
(i) a medical history of the patient,
(ii) a measured range of movement for at least one type of joint movement of the j oint, and
(iii) at least one pain metric associated with the joint;
receive at least one medical image of the joint obtained from at least one medical imaging procedure performed on the patient;
receive at least one arthroplasty surgical parameter;
wherein the at least one arthroplasty surgical parameter is selected from:
(i) at least one implant,
(ii) at least one implant size,
(iii) at least one arthroplasty surgical procedure,
(iv) at least one position for implanting the at least one implant in the j oint, or
(v) any combination thereof;
generate a reconstruction plan of the joint of the patient based at least in part on the at least one medical image of the joint and the at least one arthroplasty surgical parameter;
input the pre-operative patient specific data and reconstruction plan data into at least one machine learning model to determine a predicted post-operative joint performance data output at a plurality of post-operative timepoints after surgery;
wherein the at least one machine learning model is trained to output data comprising a plurality of values for the predicted post-operative joint performance data output at the plurality of post-operative timepoints after surgery, each value is at a particular timepoint of the plurality of post-operative timepoints after surgery;
wherein input data to train the at least one machine learning model comprises at least:
(i) the pre-operative patient specific data, and
(ii) the reconstruction plan data;
instruct to display the reconstruction plan data and the predicted post-operative joint performance data output at the plurality of post-operative timepoints after surgery via a graphical user interface displayed on a display associated with a user on the display to the user; and
update the predicted post-operative joint performance data output determined from the at least one machine learning model in response to the user varying any parameter of the reconstruction plan data that is then inputted into the at least one machine learning model, before the arthroplasty surgery, during the arthroplasty surgery, or both.
34. The system according toclaim 23, wherein the at least one processor is further configured to:
input the pre-operative patient specific data to at least one second machine learning model to determine a second predicted post-operative joint performance data output at a plurality of second post-operative timepoints after surgery prior to generating the reconstruction plan;
wherein the at least one second machine learning model is trained to output data comprising a plurality of second values for the second predicted post-operative joint performance data output at the plurality of second post-operative timepoints after surgery, each second value is at each particular second timepoint of the plurality of second post-operative timepoints after surgery;
wherein input data to train the at least one second machine learning model comprises at least the pre-operative patient specific data;
display the second predicted post-operative joint performance data output on the display to the user as a displayed second predicted post-operative joint performance data output; and
wherein the at least one processor is further configured to receive from the user, through the graphical user interface displayed on the display, the at least one arthroplasty surgical parameter based on the displayed second predicted post-operative joint performance data output to generate the reconstruction plan.
35. A method, comprising:
receiving, by at least one processor, pre-operative patient specific data for an arthroplasty surgery to be performed on a joint of a patient;
wherein the pre-operative patient specific data comprises:
(i) a medical history of the patient,
(ii) a measured range of movement for at least one type of joint movement of the joint, and
(iii) at least one pain metric associated with the joint;
receiving, by the at least one processor, at least one medical image of the joint obtained from at least one medical imaging procedure performed on the patient;
receiving, by the at least one processor, at least one arthroplasty surgical parameter;
wherein the at least one arthroplasty surgical parameter is selected from:
(i) at least one implant,
(ii) at least one implant size,
(iii) at least one arthroplasty surgical procedure,
(iv) at least one position for implanting the at least one implant in the joint, or
(v) any combination thereof;
generating, by the at least one processor, a reconstruction plan of the joint of the patient based at least in part on the at least one medical image of the joint and the at least one arthroplasty surgical parameter;
inputting, by the at least one processor, the pre-operative patient specific data and reconstruction plan data into at least one machine learning model to determine a predicted post-operative joint performance data output at a plurality of post-operative timepoints after surgery;
wherein the at least one machine learning model is trained to output data comprising a plurality of values for the predicted post-operative joint performance data output at the plurality of post-operative timepoints after surgery, each value is at a particular timepoint of the plurality of post-operative timepoints after surgery;
wherein input data to train the at least one machine learning model comprises at least:
(i) the pre-operative patient specific data, and
(ii) the reconstruction plan data;
instructing, by the at least one processor, to display the reconstruction plan data and the predicted post-operative joint performance data output at the plurality of post-operative timepoints after surgery via a graphical user interface displayed on a display associated with a user; and
updating, by the at least one processor, the predicted post-operative joint performance data output determined from the at least one machine learning model in response to the user varying any parameter of the reconstruction plan data that is then inputted into the at least one machine learning model, before the arthroplasty surgery, during the arthroplasty surgery, or both.
46. The method according toclaim 35, further comprising inputting, by the at least one processor, the pre-operative patient specific data to at least one second machine learning model to determine a second predicted post-operative joint performance data output at a plurality of second post-operative timepoints after surgery prior to generating the reconstruction plan;
wherein the at least one second machine learning model is trained to output data comprising a plurality of second values for the second predicted post-operative joint performance data output at the plurality of second post-operative timepoints after surgery, each second value is at each particular second timepoint of the plurality of second post-operative timepoints after surgery;
wherein input data to train the at least one second machine learning model comprises at least the pre-operative patient specific data;
displaying, by the at least one processor, the second predicted post-operative joint performance data output on the display to the user as a displayed second predicted post-operative joint performance data output; and
wherein the receiving from the user the at least one arthroplasty surgical parameter comprises receiving through the graphical user interface displayed on the display, the at least one arthroplasty surgical parameter based on the displayed second predicted post-operative joint performance data output for generating the reconstruction plan.
US17/960,5512020-04-172022-10-05Method and system for modeling predictive outcomes of arthroplasty surgical proceduresPendingUS20230139531A1 (en)

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US202063011871P2020-04-172020-04-17
US17/233,152US11490966B2 (en)2020-04-172021-04-16Method and system for modeling predictive outcomes of arthroplasty surgical procedures
US17/960,551US20230139531A1 (en)2020-04-172022-10-05Method and system for modeling predictive outcomes of arthroplasty surgical procedures

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EP (1)EP4135620A4 (en)
JP (1)JP2023521912A (en)
KR (1)KR20230003533A (en)
AU (1)AU2021257275A1 (en)
CA (1)CA3180513A1 (en)
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US12051198B2 (en)2019-03-292024-07-30Howmedica Osteonics Corp.Pre-morbid characterization of anatomical object using statistical shape modeling (SSM)
US12070272B2 (en)2013-10-102024-08-27Stryker European Operations LimitedMethods, systems and devices for pre-operatively planned shoulder surgery guides and implants
US12097129B2 (en)2013-11-132024-09-24Tornier SasShoulder patient specific instrument
US12383334B2 (en)2018-12-122025-08-12Howmedica Osteonics Corp.Orthopedic surgical planning based on soft tissue and bone density modeling

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WO2021086687A1 (en)2019-10-292021-05-06Tornier, Inc.Use of bony landmarks in computerized orthopedic surgical planning
WO2022159285A1 (en)*2021-01-202022-07-28Howmedica Osteonics Corp.Computer-assisted recommendation of inpatient or outpatient care for surgery
WO2022192222A1 (en)*2021-03-082022-09-15Agada Medical Ltd.Planning spinal surgery using patient-specific biomechanical parameters
US12239384B2 (en)2021-11-122025-03-04Exactech, Inc.Computer-based platform for implementing an intra-operative surgical plan during a total joint arthroplasty
US20240006083A1 (en)*2022-06-302024-01-04Aetna Inc.Systems and methods for authorization of medical treatments using automated and user feedback processes
KR20240119004A (en)*2023-01-282024-08-06동국대학교 산학협력단Device and method for manufacturing artificial bone model
US11669966B1 (en)*2023-01-312023-06-06Ortho AI LLCSystem and method for predicting a need for total hip arthroplasty
CN116187448B (en)*2023-04-252023-08-01之江实验室 Method, device, storage medium and electronic equipment for displaying information
CN116350349B (en)*2023-05-312023-07-28中日友好医院(中日友好临床医学研究所)Hip-protecting operation treatment system and device based on CJFH typing
CN118197650B (en)*2024-05-172024-07-30长春中医药大学 An intelligent monitoring system for evaluating the safety of minimally invasive gynecological surgery
US12211598B1 (en)*2024-06-212025-01-28nference, inc.Configuring a generative machine learning model using a syntactic interface

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Cited By (8)

* Cited by examiner, † Cited by third party
Publication numberPriority datePublication dateAssigneeTitle
US12070272B2 (en)2013-10-102024-08-27Stryker European Operations LimitedMethods, systems and devices for pre-operatively planned shoulder surgery guides and implants
US12133691B2 (en)2013-10-102024-11-05Stryker European Operations LimitedMethods, systems and devices for pre-operatively planned shoulder surgery guides and implants
US12137982B2 (en)2013-10-102024-11-12Stryker European Operations LimitedMethods, systems and devices for pre-operatively planned shoulder surgery guides and implants
US12097129B2 (en)2013-11-132024-09-24Tornier SasShoulder patient specific instrument
US12383334B2 (en)2018-12-122025-08-12Howmedica Osteonics Corp.Orthopedic surgical planning based on soft tissue and bone density modeling
US12051198B2 (en)2019-03-292024-07-30Howmedica Osteonics Corp.Pre-morbid characterization of anatomical object using statistical shape modeling (SSM)
US12094110B2 (en)2019-03-292024-09-17Howmedica Osteonics Corp.Pre-morbid characterization of anatomical object using statistical shape modeling (SSM)
US12307658B2 (en)2019-03-292025-05-20Howmedica Osteonics Corp.Pre-morbid characterization of anatomical object using statistical shape modeling (SSM)

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Publication numberPublication date
WO2021212040A1 (en)2021-10-21
AU2021257275A1 (en)2022-11-17
JP2023521912A (en)2023-05-25
CA3180513A1 (en)2021-10-21
EP4135620A1 (en)2023-02-22
US11490966B2 (en)2022-11-08
EP4135620A4 (en)2024-06-12
US20210322100A1 (en)2021-10-21
KR20230003533A (en)2023-01-06

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