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公开(公告)号:US10977841B2
公开(公告)日:2021-04-13
申请号:US16317656
申请日:2017-07-20
Applicant: KONINKLIJKE PHILIPS N.V.
Inventor: Yang-Ming Zhu , Andriy Andreyev , Steven Michael Cochoff
Abstract: An imaging device (1) includes a positron emission tomography (PET) scanner (10) including radiation detectors (12) and coincidence circuitry for detecting electron-positron annihilation events as 511 keV gamma ray pairs defining lines of response (LORs) with each event having a detection time difference At between the 511 keV gamma rays of the pair. At least one processor (30) is programmed to reconstruct a dataset comprising detected electron-positron annihilation events acquired for a region of interest by the PET scanner to form a reconstructed PET image wherein the reconstruction includes TOF localization of the events along respective LORs using a TOF kernel having a location parameter dependent on At and a TOF kernel width or shape that varies over the region of interest. A display device (34) is configured to display the reconstructed PET image.
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公开(公告)号:US11576628B2
公开(公告)日:2023-02-14
申请号:US16959289
申请日:2018-12-26
Applicant: KONINKLIJKE PHILIPS N.V.
Inventor: Sydney Kaplan , Yang-Ming Zhu , Andriy Andreyev , Chuanyong Bai , Steven Michael Cochoff
Abstract: Emission imaging data are reconstructed to generate a low dose reconstructed image. Standardized uptake value (SUV) conversion (30) is applied to convert the low dose reconstructed image to a low dose SUV image. A neural network (46, 48) is applied to the low dose SUV image to generate an estimated full dose SUV image. Prior to applying the neural network the low dose reconstructed image or the low dose SUV image is filtered using a low pass filter (32). The neural network is trained on a set of training low dose SUV images and corresponding training full dose SUV images to transform the training low dose SUV images to match the corresponding training full dose SUV images, using a loss function having a mean square error loss component (34) and a loss component (36) that penalizes loss of image texture and/or a loss component (38) that promotes edge preservation.
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