APPARATUS AND METHOD FOR AUDITING OF ARTIFICIAL INTELLIGENCE-BASED MEDICAL IMAGE SEGMENTATION

    公开(公告)号:US20250022261A1

    公开(公告)日:2025-01-16

    申请号:US18771443

    申请日:2024-07-12

    Applicant: CLARIPI INC.

    Abstract: Disclosed is a method of auditing of artificial intelligence-based medical image segmentation, including: performing preprocessing to generate a preprocessed segmentation image by receiving an input medical image and an output segmentation image provided from a medical image segmentation device and preprocessing the output segmentation image based on the input medical image; generating a heatmap image to generate a segmentation error heatmap image, which includes a segmentation error region in the preprocessed segmentation image, by inputting the preprocessed segmentation image to a deep learning model trained in advance; calculating an error risk to calculate a segmentation error risk for the segmentation error region based on pixel values of the segmentation error heatmap image; and providing auditing information to provide the auditing information for auditing accuracy of the output segmentation image based on the calculated segmentation error risk to a user.

    APPARATUS AND METHOD FOR AUDITING OF ARTIFICIAL INTELLIGENCE-BASED MEDICAL IMAGE ENHANCEMENT

    公开(公告)号:US20250022134A1

    公开(公告)日:2025-01-16

    申请号:US18771496

    申请日:2024-07-12

    Applicant: CLARIPI INC.

    Abstract: Disclosed is a method of auditing of artificial intelligence-based medical image enhancement, including: performing preprocessing to generate a comparison image based on an input image and an output image received from a medical image enhancement device; generating a heatmap image to generate a hallucination heatmap image including a hallucination region in the comparison image by inputting the comparison image to a deep learning model trained in advance; calculating an error risk to calculate a hallucination risk for the hallucination region based on pixel values of the hallucination heatmap image; and providing auditing information to provide the auditing information for auditing accuracy of the output image based on the calculated hallucination risk to a user.

    APPARATUS AND METHOD FOR MEDICAL IMAGE PROCESSING ACCORDING TO LESION PROPERTY

    公开(公告)号:US20230029394A1

    公开(公告)日:2023-01-26

    申请号:US17868314

    申请日:2022-07-19

    Applicant: CLARIPI INC.

    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.

    APPARATUS AND METHOD FOR DEEP LEARNING-BASED MEDICAL IMAGE STYLE NEUTRALIZATION

    公开(公告)号:US20250022582A1

    公开(公告)日:2025-01-16

    申请号:US18771538

    申请日:2024-07-12

    Applicant: CLARIPI INC.

    Abstract: Disclosed is a method of deep learning-based medical image style neutralization for generating a neutralized image to be input to an artificial intelligence-based diagnosis support program includes: obtaining a medical image for processing from an outside; and generating a neutralized image by inputting the medical image for the processing to a style neutralization deep learning model trained in advance to neutralize imaging characteristics of the medical image for the processing, wherein the style neutralization deep learning model includes a plurality of style neutralization deep learning models, and the style neutralization deep learning model corresponding to the imaging characteristics of the medical image for the processing performs the neutralization of the medical image for the processing.

    APPARATUS AND METHOD FOR IMPROVING INTER-SLICE RESOLUTION IN 3D MEDICAL IMAGING

    公开(公告)号:US20250022130A1

    公开(公告)日:2025-01-16

    申请号:US18771565

    申请日:2024-07-12

    Applicant: Claripi Inc.

    Abstract: According to the disclosure, the image generating module generates a second multi-slice medical image set having a low resolution in a preset direction by reconstructing a first multi-slice medical image set received from an outside to have a cutting plane perpendicular to a slice plane in the preset direction, generates a third multi-slice medical image set, of which a resolution is improved as much as an integer multiple in the preset direction in slice images included in the second multi-slice medical image set through a deep learning model trained in advance by inputting the second multi-slice medical image set to the deep learning model, and generates and outputs a 3D high-resolution image improved in resolution based on the third multi-slice medical image set.

    OPTIMIZATION METHOD AND SYSTEM FOR PERSONALIZED CONTRAST TEST BASED ON DEEP LEARNING

    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.

    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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