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公开(公告)号:US20230215538A1
公开(公告)日:2023-07-06
申请号:US18148286
申请日:2022-12-29
Applicant: CLARIPI INC.
Inventor: Hyun Sook PARK , Chul Kyun AHN , Tae Jin KIM
CPC classification number: G16H20/17 , G06T7/0012 , G06T2207/10081
Abstract: Disclosed are an optimization method and system for a personalized contrast test based on deep learning, in which a contrast medium optimized for each individual patient is injected to implement optimum pharmacokinetic characteristics in a process of acquiring a medical image, the method including: obtaining drug information of a contrast medium and body information of a patient, in a contrast enhanced computed tomography (CT) scan; generating injection information of the drug to be injected into the patient by a predefined algorithm based on the drug information and the body information; injecting the drug into the patient based on the injection information, and acquiring a medical image by scanning the patient; and amplifying a contrast component in the medical image by inputting the medical image to a deep learning model trained in advance.
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公开(公告)号:US20230214972A1
公开(公告)日:2023-07-06
申请号:US18148267
申请日:2022-12-29
Applicant: CLARIPI INC.
Inventor: Hyun Sook PARK , Tae Jin KIM , Chul Kyun AHN
CPC classification number: G06T5/20 , G06T5/002 , G06T7/20 , G06T2207/20021 , G06T2207/20081 , G06T2207/20221 , G06T2207/20224 , G06T2207/30004
Abstract: Disclosed are a motion compensation processing apparatus and method of medical images, in which motion of organs is corrected, the method including: acquiring the medical image and combining an organ motion component into the medical image; training at least one deep learning model based on the medical image combined with the organ motion component so that the deep learning model can remove the organ motion component; and acquiring a processing medical image, selecting a deep learning model corresponding to an organ included in the processing medical image, and removing a motion component for the organ.
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公开(公告)号:US20220036512A1
公开(公告)日:2022-02-03
申请号:US17505159
申请日:2021-10-19
Applicant: ClariPI Inc. , Seoul National University R&DB Foundation
Inventor: Jong Hyo KIM , Hyun Sook PARK , Tai Chul PARK , Chul Kyun AHN
IPC: G06T5/00 , G01R33/56 , G01R33/565 , G01R33/48
Abstract: Provided is a deep learning based accelerated MRI image quality restoring method. The deep learning based accelerated MRI image quality restoring method includes extracting test information from an input accelerated MRI image, selecting at least one deep learning model corresponding to the test information, among a plurality of previously trained deep learning models, and outputting an MRI image with a restored image quality for the input accelerated MRI image with the input accelerated MRI image as an input of at least one selected deep learning model.
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公开(公告)号:EP4375922A1
公开(公告)日:2024-05-29
申请号:EP23211412.4
申请日:2023-11-22
Applicant: Claripi Inc.
Inventor: KIM, Jong Hyo , KIM, Chang Won , LEE, Je Myoung , KIM, Tae Jin
CPC classification number: G06T2207/3001220130101 , G06T2207/2008420130101 , G06T7/0012 , G06T2207/3000820130101 , G06T7/11
Abstract: The present disclosure provides an apparatus of identifying a vertebral body from a medical image, and the apparatus includes a vertebral bone identification module configured to identify the vertebral body based on a multi-slice medical image provided from an outside, in which the vertebral identification module reconstructs the multi-slice medical image to create a three-dimensional medical image, obtains a coronal projection image for the three-dimensional medical image by projecting the three-dimensional medical image in a coronal plane direction, divides the coronal projection image into a selection area including at least one of a lumbar and a thoracic, obtains area information corresponding to the selection area in the three-dimensional medical image based on the divided selection area, and performs numbering on the vertebral body based on the area information and the three-dimensional medical image.
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公开(公告)号:EP4099042A1
公开(公告)日:2022-12-07
申请号:EP21747142.4
申请日:2021-01-27
Applicant: Claripi Inc. , Seoul National University R & DB Foundation
Inventor: KIM, Jong Hyo , PARK, Hyun Sook , PARK, Tai Chul , AHN, Chul Kyun
Abstract: Provided is a deep learning based accelerated MRI image quality restoring method. The deep learning based accelerated MRI image quality restoring method includes extracting test information from an input accelerated MRI image, selecting at least one deep learning model corresponding to the test information, among a plurality of previously trained deep learning models, and outputting an MRI image with a restored image quality for the input accelerated MRI image with the input accelerated MRI image as an input of at least one selected deep learning model.
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公开(公告)号:EP4205656A1
公开(公告)日:2023-07-05
申请号:EP23150059.6
申请日:2023-01-02
Applicant: Claripi Inc.
Inventor: PARK, Hyun Sook , AHN, Chul Kyun , KIM, Tae Jin
Abstract: Disclosed are an optimization method and system for a personalized contrast scan based on deep learning, in which a contrast medium optimized for each individual patient is injected to implement optimum pharmacokinetic characteristics in a process of acquiring a medical image, the method including: obtaining drug information of a contrast medium and body information of a patient, in a contrast enhanced computed tomography (CT) scan; generating injection information of the drug to be injected into the patient by a predefined algorithm based on the drug information and the body information; injecting the drug into the patient based on the injection information, and acquiring a medical image by scanning the patient; and amplifying a contrast component in the medical image by inputting the medical image to a deep learning model trained in advance.
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公开(公告)号:EP4123584A1
公开(公告)日:2023-01-25
申请号:EP22185320.3
申请日:2022-07-15
Applicant: Claripi Inc.
Inventor: PARK, Hyun Sook , HEO, Chang Yong , KIM, Tae Jin , LIM, Tae Yoon , LEE, Je Myoung
Abstract: Disclosed are an apparatus and method for medical image processing according to pathologic lesion properties, the method including: recognizing a readout area different from an original readout area in a medical image by applying a previously trained deep learning model to the medical image, extracting properties, which include at least one of a location and a size of the readout area, from the medical image, and generating a readout image for the readout area, which is different from the original readout area corresponding to a purpose of taking the medical image, by reconstructing the medical image, thereby having an effect on generating a readout image for a different kind of pathologic lesion from a previously acquired medical image.
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公开(公告)号:EP4066741A1
公开(公告)日:2022-10-05
申请号:EP21908121.3
申请日:2021-02-02
Applicant: Claripi Inc. , Seoul National University R & DB Foundation
Inventor: KIM, Jong Hyo , PARK, Hyun Sook , PARK, Tai Chul , AHN, Chul Kyun
Abstract: Provided is a deep learning based contrast-enhanced (CE) CT image contrast amplifying method and the deep learning based CE CT image contrast amplifying method includes extracting at least one component CT image between a CE component and a non-CE component for an input CE CT image with the input CE CT image as an input to a previously trained deep learning model; and outputting a contrast-amplified CT image with respect to the CE CT image based on the input CE CT image and the at least one extracted component CT image.
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公开(公告)号:EP3869446A1
公开(公告)日:2021-08-25
申请号:EP18937195.8
申请日:2018-12-21
Applicant: Claripi Inc. , Seoul National University R & DB Foundation
Inventor: PARK, Hyun Sook , KIM, Jong Hyo
Abstract: Provided is a deep learning based CT image noise reducing method. The deep learning based CT image noise reducing method includes extracting test information from an input CT image; selecting at least one deep learning model corresponding to the test information, among a plurality of previously trained deep learning models; and outputting a CT image with a reduced noise with respect to the input CT image with the input CT image as an input of the at least one selected deep learning model.
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