Patents by Inventor Evren Asma

Evren Asma has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20240122558
    Abstract: A PET scanner includes gamma-ray detector rings that form a bore through which an imaging subject is translated, a length of the bore defining an axial length of the PET scanner, the gamma-ray detector rings being movable along the axial length, the gamma-ray detector rings including gamma-ray detector modules therein, and processing circuitry configured to receive PET data associated with a plurality of transaxial slices of the imaging subject, the PET data including a first set of spatial information and timing information corresponding to a first data acquisition period for the gamma-ray detector modules in a first axial position and a second set of spatial information and timing information corresponding to a second data acquisition period for the gamma-ray detector modules in a second axial position, and reconstruct a PET image based on the first set of spatial and timing information and the second set of spatial and timing information.
    Type: Application
    Filed: October 11, 2022
    Publication date: April 18, 2024
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Wenyuan QI, Kent C. BURR, Yi QIANG, Evren ASMA, Jeffrey KOLTHAMMER
  • Patent number: 11961209
    Abstract: A system and method for training a neural network to denoise images. One noise realization is paired to an ensemble of training-ready noise realizations, and fed into a neural network for training. Training datasets can also be retrospectively generated based on existing patient studies to increase the number of training datasets.
    Type: Grant
    Filed: September 4, 2020
    Date of Patent: April 16, 2024
    Assignee: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Chung Chan, Jian Zhou, Evren Asma
  • Publication number: 20240037814
    Abstract: A dynamic frame reconstruction apparatus and method for medical image processing is disclosed which reduces the computationally expensive reconstruction of images but which retains the accuracy of the image reconstruction. A convolutional neural network is used to cluster the dynamic data into groups of frames, each group sharing similar radiotracer distribution. In one embodiment, groups of frames that have similar reconstruction parameters are determined, and scatter and random estimations are computed once and shared among each of the frames in the same frame group.
    Type: Application
    Filed: August 1, 2022
    Publication date: February 1, 2024
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Chung CHAN, Li YANG, Xiaoli LI, Wenyuan QI, Evren ASMA, Jeffrey KOLTHAMMER
  • Publication number: 20240008832
    Abstract: A deep learning (DL) convolution neural network (CNN) reduces noise in positron emission tomography (PET) images, and is trained using a range of noise levels for the low-quality images having high noise in the training dataset to produce uniform high-quality images having low noise, independently of the noise level of the input image. The DL-CNN network can be implemented by slicing a three-dimensional (3D) PET image into 2D slices along transaxial, coronal, and sagittal planes, using three separate 2D CNN networks for each respective plane, and averaging the outputs from these three separate 2D CNN networks. Feature-oriented training can be implemented by segmenting each training image into lesion and background regions, and, in the loss function, applying greater weights to voxels in the lesion region. Other medical images (e.g. MRI and CT) can be used to enhance resolution of the PET images and provide partial volume corrections.
    Type: Application
    Filed: September 22, 2023
    Publication date: January 11, 2024
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Chung CHAN, Jian ZHOU, Evren ASMA
  • Patent number: 11835669
    Abstract: A method of normalizing detector elements in an imaging system is described herein. The method includes a line source that is easier to handle for a user, and decouples the normalization of the detector elements into a transaxial domain and an axial domain in order to isolate errors due to positioning of the line source. Additional simulations are performed to augment the real scanner normalization. A simulation of a simulated line source closely matching the real line source can be performed to isolate errors due to physical properties of the crystals and position of the crystals in the system, wherein the simulated detector crystals are otherwise modeled uniformly. A simulation of a simulated cylinder source can be performed to determine errors due to other effects stemming from gaps between the detector crystals.
    Type: Grant
    Filed: December 21, 2021
    Date of Patent: December 5, 2023
    Assignee: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Wenyuan Qi, Yi Qiang, Evren Asma, Xiaoli Li, Li Yang, Peng Peng, Jeffrey Kolthammer
  • Publication number: 20230351646
    Abstract: A method, apparatus, and computer instructions stored on a computer-readable medium perform latent image feature extraction by performing the functions of receiving image data acquired during an imaging of a patient, wherein the image data includes motion by the patient during the imaging; segmenting the image data to include M image data segments corresponding to at least N motion phases having shorter durations than a duration of the motion by the patient during the imaging, wherein M is a positive integer greater than or equal to a positive integer N; producing, from the M image data segments, at least N latent feature vectors corresponding to the motion by the patient during the imaging; and performing a gated reconstruction of the N motion phases by reconstructing the image data based on the at least N latent feature vectors.
    Type: Application
    Filed: October 13, 2022
    Publication date: November 2, 2023
    Applicants: The Regents of the University of California, CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Jinyi QI, Tiantian LI, Zhaoheng XIE, Wenyuan QI, Li YANG, Chung CHAN, Evren ASMA
  • Patent number: 11801029
    Abstract: A deep learning (DL) convolution neural network (CNN) reduces noise in positron emission tomography (PET) images, and is trained using a range of noise levels for the low-quality images having high noise in the training dataset to produce uniform high-quality images having low noise, independently of the noise level of the input image. The DL-CNN network can be implemented by slicing a three-dimensional (3D) PET image into 2D slices along transaxial, coronal, and sagittal planes, using three separate 2D CNN networks for each respective plane, and averaging the outputs from these three separate 2D CNN networks. Feature-oriented training can be implemented by segmenting each training image into lesion and background regions, and, in the loss function, applying greater weights to voxels in the lesion region. Other medical images (e.g. MRI and CT) can be used to enhance resolution of the PET images and provide partial volume corrections.
    Type: Grant
    Filed: December 17, 2021
    Date of Patent: October 31, 2023
    Assignee: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Chung Chan, Jian Zhou, Evren Asma
  • Patent number: 11786205
    Abstract: A deep learning (DL) convolution neural network (CNN) reduces noise in positron emission tomography (PET) images, and is trained using a range of noise levels for the low-quality images having high noise in the training dataset to produceuniform high-quality images having low noise, independently of the noise level of the input image. The DL-CNN network can be implemented by slicing a three-dimensional (3D) PET image into 2D slices along transaxial, coronal, and sagittal planes, using three separate 2D CNN networks for each respective plane, and averaging the outputs from these three separate 2D CNN networks. Feature-oriented training can be implemented by segmenting each training image into lesion and background regions, and, in the loss function, applying greater weights to voxels in the lesion region. Other medical images (e.g. MRI and CT) can be used to enhance resolution of the PET images and provide partial volume corrections.
    Type: Grant
    Filed: December 17, 2021
    Date of Patent: October 17, 2023
    Assignee: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Chung Chan, Jian Zhou, Evren Asma
  • Patent number: 11759162
    Abstract: The present disclosure is related to removing scatter from a SPECT scan by utilizing a radiative transfer equation (RTE) method. An attenuation map and emission map are acquired for generating scatter sources maps and scatter on detectors using the RTE method. The estimated scatter on detectors can be removed to produce an image of a SPECT scan with less scatter. Both first-order and multiple-order scatter can be estimated and removed. Additionally, scatter caused by multiple tracers can be determined and removed.
    Type: Grant
    Filed: June 11, 2021
    Date of Patent: September 19, 2023
    Assignee: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Wenyuan Qi, Yujie Lu, Ryo Okuda, Evren Asma, Manabu Teshigawara, Jeffrey Kolthammer
  • Publication number: 20230260171
    Abstract: Upon receiving list-mode data by detecting radiation emitted from a radiation source positioned with a field of view of a medical imaging scanner, each photon included in the list-mode data can be classified according to one or more interaction properties, such as energy or number of crystals interacted with. Grouped pairs of photons can be generated based on the classifying, and a corresponding interaction-property-specific correction kernel (e.g., a corresponding interaction-property-specific point spread function correction kernel) can be selected for each group. Corresponding interaction-property-specific correction kernels can then be utilized to generate higher quality images.
    Type: Application
    Filed: February 17, 2022
    Publication date: August 17, 2023
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Wenyuan QI, Qiang YI, Evren ASMA, Li YANG, Peng PENG
  • Publication number: 20230237638
    Abstract: A method, apparatus, and non-transitory computer-readable storage medium for image denoising whereby a deep image prior (DIP) neural network is trained to produce a denoised image by inputting the second medical image to the DIP neural network and combining a converging noise and an output of the DIP network during the training such that the converging noise combined with the output of the DIP network approximates the first medical image at the end of the training, wherein the output of the DIP network represents the denoised image.
    Type: Application
    Filed: October 6, 2022
    Publication date: July 27, 2023
    Applicants: The Regents of the University of California, Canon Medical Systems Corporation
    Inventors: Tiantian LI, Zhaoheng XIE, Wenyuan QI, Li YANG, Evren ASMA, Jinyi QI
  • Publication number: 20230206516
    Abstract: A method, system, and computer readable medium to perform nuclear medicine scatter correction estimation, sinogram estimation and image reconstruction from emission and attenuation correction data using deep convolutional neural networks. In one embodiment, a Deep Convolutional Neural network (DCNN) is used, although multiple neural networks can be used (e.g., for angle-specific processing). In one embodiment, a scatter sinogram is directly estimated using a DCNN from emission and attenuation correction data. In another embodiment a DCNN is used to estimate a scatter-corrected image and then the scatter sinogram is computed by a forward projection.
    Type: Application
    Filed: February 28, 2022
    Publication date: June 29, 2023
    Inventors: Jinyi QI, Tiantian LI, Zhaoheng XIE, Wenyuan QI, Li YANG, Chung CHAN, Evren ASMA
  • Publication number: 20230026719
    Abstract: A neural network is initially trained to remove errors and is later fine tuned to remove less-effective portions (e.g., kernels) from the initially trained network and replace them with further trained portions (e.g., kernels) trained with data after the initial training.
    Type: Application
    Filed: September 8, 2021
    Publication date: January 26, 2023
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Chung CHAN, Junyu CHEN, Evren ASMA, Jeffrey KOLTHAMMER
  • Publication number: 20220395246
    Abstract: The present disclosure is related to removing scatter from a SPECT scan by utilizing a radiative transfer equation (RTE) method. An attenuation map and emission map are acquired for generating scatter sources maps and scatter on detectors using the RTE method. The estimated scatter on detectors can be removed to produce an image of a SPECT scan with less scatter. Both first-order and multiple-order scatter can be estimated and removed. Additionally, scatter caused by multiple tracers can be determined and removed.
    Type: Application
    Filed: June 11, 2021
    Publication date: December 15, 2022
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Wenyuan QI, Yujie LU, Ryo OKUDA, Evren ASMA, Manabu TESHIGAWARA, Jeffrey KOLTHAMMER
  • Publication number: 20220335664
    Abstract: A guided pairing method includes generating a singles list by detecting a plurality of singles at a plurality of detector elements in a detector array, the plurality of singles falling within a plurality of detection windows; for each detection window of the plurality of detection windows in the singles list having exactly two singles of the plurality of singles, determining the line of responses (LORs) for each of the two singles of the plurality of singles; for each detection window of the plurality of detection windows in the singles list having more than two singles of the plurality of singles, determining all coincidences possible based on the more than two singles; generating a weight for said each coincidence of the coincidences based on the determined LORs for said each of the two singles of the plurality of singles; and pairing the more than two singles based on the generated weight for said each coincidence of the coincidences.
    Type: Application
    Filed: April 14, 2021
    Publication date: October 20, 2022
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Wenyuan QI, Yi QIANG, Peng PENG, Evren ASMA, Jeffrey KOLTHAMMER
  • Publication number: 20220327665
    Abstract: Existing, low quality images can be restored using reconstruction or a combination of post-reconstruction techniques to generate a real patient phantom. The real patient phantom (RPP) can then be simulated in Monte Carlo simulations of a higher performance system and a lower performance system. Alternatively, the RPP can be simulated in the higher performance system, and a real scan can be performed by an existing, lower performance system. The higher performance system can be differentiated from the lower performance system in a variety of ways, including a higher resolution time of flight measurement capability, a greater sensitivity, smaller detector crystals, or less scattering. A neural network can be trained using the images produce by the higher performance system as the target, and the images produced by the lower performance system as the input.
    Type: Application
    Filed: April 8, 2021
    Publication date: October 13, 2022
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Chung CHAN, Li YANG, Wenyuan Ql, Evren ASMA, Jeffrey KOLTHAMMER, Yi QIANG
  • Publication number: 20220110600
    Abstract: A deep learning (DL) convolution neural network (CNN) reduces noise in positron emission tomography (PET) images, and is trained using a range of noise levels for the low-quality images having high noise in the training dataset to produce uniform high-quality images having low noise, independently of the noise level of the input image. The DL-CNN network can be implemented by slicing a three-dimensional (3D) PET image into 2D slices along transaxial, coronal, and sagittal planes, using three separate 2D CNN networks for each respective plane, and averaging the outputs from these three separate 2D CNN networks. Feature-oriented training can be implemented by segmenting each training image into lesion and background regions, and, in the loss function, applying greater weights to voxels in the lesion region. Other medical images (e.g. MRI and CT) can be used to enhance resolution of the PET images and provide partial volume corrections.
    Type: Application
    Filed: December 17, 2021
    Publication date: April 14, 2022
    Applicant: Canon Medical Systems Corporation
    Inventors: Chung CHAN, Jian ZHOU, Evren ASMA
  • Publication number: 20220113437
    Abstract: A method of normalizing detector elements in an imaging system is described herein. The method includes a line source that is easier to handle for a user, and decouples the normalization of the detector elements into a transaxial domain and an axial domain in order to isolate errors due to positioning of the line source. Additional simulations are performed to augment the real scanner normalization. A simulation of a simulated line source closely matching the real line source can be performed to isolate errors due to physical properties of the crystals and position of the crystals in the system, wherein the simulated detector crystals are otherwise modeled uniformly. A simulation of a simulated cylinder source can be performed to determine errors due to other effects stemming from gaps between the detector crystals.
    Type: Application
    Filed: December 21, 2021
    Publication date: April 14, 2022
    Applicant: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Wenyuan QI, Yi QIANG, Evren ASMA, Xiaoli LI, Li YANG, Peng PENG, Jeffrey KOLTHAMMER
  • Publication number: 20220104787
    Abstract: A deep learning (DL) convolution neural network (CNN) reduces noise in positron emission tomography (PET) images, and is trained using a range of noise levels for the low-quality images having high noise in the training dataset to produceuniform high-quality images having low noise, independently of the noise level of the input image. The DL-CNN network can be implemented by slicing a three-dimensional (3D) PET image into 2D slices along transaxial, coronal, and sagittal planes, using three separate 2D CNN networks for each respective plane, and averaging the outputs from these three separate 2D CNN networks. Feature-oriented training can be implemented by segmenting each training image into lesion and background regions, and, in the loss function, applying greater weights to voxels in the lesion region. Other medical images (e.g. MRI and CT) can be used to enhance resolution of the PET images and provide partial volume corrections.
    Type: Application
    Filed: December 17, 2021
    Publication date: April 7, 2022
    Inventors: Chung CHAN, Jian ZHOU, Evren ASMA
  • Patent number: 11276209
    Abstract: The present disclosure relates to an apparatus for estimating scatter in positron emission tomography, comprising processing circuitry configured to acquire an emission map and an attenuation map, each representing an initial image reconstruction of a positron emission tomography scan, calculate, using a radiative transfer equation (RTE) method, a scatter source map of a subject of the positron emission tomography scan based on the emission map and the attenuation map, estimate, using the RTE method and based on the emission map, the attenuation map, and the scatter source map, scatter, and perform an iterative image reconstruction of the positron emission tomography scan based on the estimated scatter and raw data from the positron emission tomography scan of the subject.
    Type: Grant
    Filed: April 28, 2020
    Date of Patent: March 15, 2022
    Assignee: CANON MEDICAL SYSTEMS CORPORATION
    Inventors: Wenyuan Qi, Yujie Lu, Evren Asma, Yi Qiang, Jeffrey Kolthammer, Zhou Yu