AUTOMATIC SLICE SELECTION IN MEDICAL IMAGING

    公开(公告)号:US20210158526A1

    公开(公告)日:2021-05-27

    申请号:US17047102

    申请日:2019-04-12

    Abstract: The invention provides for a medical imaging system (100, 300, 400, 700) comprising: a memory (110) for storing machine executable instructions (120) and a processor (106) for controlling the medical imaging system. Execution of the machine executable instructions causes the processor to: receive (200) three-dimensional medical image data (122) comprising multiple slices; receive (202) an imaging modality (124) of the three-dimensional medical image data; receive (204) an anatomical view classification (126) of the three-dimensional medical image data; select (206) a chosen abnormality detection module (130) from a set of abnormality detection modules (128) using the imaging modality and the anatomical view classification, wherein at least a portion of the abnormality detection modules is a convolution neural network trained for identifying if the at least a portion of the multiple slices as either normal or abnormal; classify (208) the at least a portion of the multiple slices as normal or abnormal using the abnormality detection module; and choose (210) a set of selected slices (136) from the multiple slices according to a predetermined selection criteria (134) if a predetermined number of the multiple slices are classified as abnormal.

    Automatic slice selection in medical imaging

    公开(公告)号:US12165308B2

    公开(公告)日:2024-12-10

    申请号:US17047102

    申请日:2019-04-12

    Abstract: A medical imaging system (100, 300, 400, 700) includes a processor and memory with instructions executable by the processor to receive (200) three-dimensional medical image data (122) comprising multiple slices, receive (202) an imaging modality (124) of the three-dimensional medical image data, receive (204) an anatomical view classification (126) of the three-dimensional medical image data, select (206) a chosen abnormality detection module (130) from a set of abnormality detection modules (128) using the imaging modality and the anatomical view classification, wherein at least a portion of the abnormality detection modules is a convolution neural network trained for identifying if the at least a portion of the multiple slices as either normal or abnormal, classify (208) the at least a portion of the multiple slices as normal or abnormal using the abnormality detection module, and choose (210) a set of selected slices (136) from the multiple slices according to a predetermined selection criteria (134) if a predetermined number of the multiple slices are classified as abnormal.

    MONITORING PERFORMANCE OF A PREDICTIVE COMPUTER-IMPLEMENTED MODEL

    公开(公告)号:US20220375608A1

    公开(公告)日:2022-11-24

    申请号:US17762755

    申请日:2020-10-02

    Abstract: According to an aspect there is provided a computer-implemented method of monitoring performance of a predictive computer-implemented model, PCIM, that is used to monitor the status of a first system. The PCIM receives as inputs observed values for a plurality of features relating to the first system, and the PCIM determines whether to issue status alerts based on the observed values. The method comprises: obtaining reference information for the PCIM, wherein the reference information for the PCIM comprises a first set of values for the plurality of features relating to the first system in a first time period; determining a set of reference probability distributions from the first set of values, the set of reference probability distributions comprising a respective reference probability distribution for each of the features that is determined from the values of the respective feature in the first set of values; obtaining operational information for the PCIM, wherein the operational information for the PCIM comprises a second set of values for the plurality of features relating to the first system in a second time period that is after the first time period; determining a set of operational probability distributions from the second set of values, the set of operational probability distributions comprising a respective operational probability distribution for each of the features that is determined from the values of the respective feature in the second set of values; determining a drift measure for the PCIM representing a measure of drift in performance of the PCIM between the first time period and the second time period, wherein the drift measure is based on a comparison of the set of reference probability distributions and the set of operational probability distributions; and output the drift measure.

    Central signal segregation system

    公开(公告)号:US11270798B2

    公开(公告)日:2022-03-08

    申请号:US16316647

    申请日:2017-07-12

    Abstract: A central signal segregation station (100) employs a signal acquisition controller (103) and a signal segregation controller (104). In operation, the signal acquisition controller (103) receives a plurality of different types of physiological signals from a plurality of unknown physiological sensors (10; 20; 30; 40; 50; 60; 70; 80). For a monitoring of the physiological signals, the signal segregation controller (104) identifies a particular type of each physiological signal based on distinct signal features of each physiological signal corresponding to a different physiological signal model (101) among a plurality of physiological signal models (101) derived from known types of physiological sensors. For analyzing the physiological signals, the station (100) may further employ a signal analyzing controller (105) executing signal quality processing of the physiological signals, providing signal-specific feedback to any physiological sensor(s) communicating low quality physiological signal(s), annotating specific regions of each physiological signal having maximum diagnostic information and/or performing a confirmatory diagnosis of the physiological signals.

    CENTRAL SIGNAL SEGREGATION SYSTEM
    10.
    发明申请

    公开(公告)号:US20190156951A1

    公开(公告)日:2019-05-23

    申请号:US16316647

    申请日:2017-07-12

    Abstract: A central signal segregation station (100) employs a signal acquisition controller (103) and a signal segregation controller (104). In operation, the signal acquisition controller (103) receives a plurality of different types of physiological signals from a plurality of unknown physiological sensors (10; 20; 30; 40; 50; 60; 70; 80). For a monitoring of the physiological signals, the signal segregation controller (104) identifies a particular type of each physiological signal based on distinct signal features of each physiological signal corresponding to a different physiological signal model (101) among a plurality of physiological signal models (101) derived from known types of physiological sensors. For analyzing the physiological signals, the station (100) may further employ a signal analyzing controller (105) executing signal quality processing of the physiological signals, providing signal-specific feedback to any physiological sensor(s) communicating low quality physiological signal(s), annotating specific regions of each physiological signal having maximum diagnostic information and/or performing a confirmatory diagnosis of the physiological signals.

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