Patents by Inventor Zhoubing XU

Zhoubing XU 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).

  • Patent number: 10111632
    Abstract: For breast cancer detection with an x-ray scanner, a cascade of multiple classifiers is trained or used. One or more of the classifiers uses a deep-learnt network trained on non-x-ray data, at least initially, to extract features. Alternatively or additionally, one or more of the classifiers is trained using classification of patches rather than pixels and/or classification with regression to create additional cancer-positive partial samples.
    Type: Grant
    Filed: January 31, 2017
    Date of Patent: October 30, 2018
    Assignee: Siemens Healthcare GmbH
    Inventors: Yaron Anavi, Atilla Peter Kiraly, David Liu, Shaohua Kevin Zhou, Zhoubing Xu, Dorin Comaniciu
  • Publication number: 20180276815
    Abstract: A method for training a segmentation correction model includes performing an iterative model training process over a plurality of iterations. During each iteration, an initial segmentation estimate for an image is provided to a human annotators via an annotation interface. The initial segmentation estimate identifies one or more anatomical areas of interest within the image. Interactions with the annotation interface are automatically monitored to record annotation information comprising one or more of (i) segmentation corrections made to the initial segmentation estimate by the annotators via the annotation interface, and (ii) interactions with the annotation interface performed by the annotators while making the corrections. A base segmentation machine learning model is trained to automatically create a base segmentation based on the image. Additionally, a segmentation correction machine learning model is trained to automatically perform the segmentation corrections based on the image.
    Type: Application
    Filed: March 27, 2017
    Publication date: September 27, 2018
    Inventors: Zhoubing Xu, Carol L. Novak, Atilla Peter Kiraly
  • Publication number: 20180260951
    Abstract: A method and apparatus for automated vertebra localization and identification in a 3D computed tomography (CT) volumes is disclosed. Initial vertebra locations in a 3D CT volume of a patient are predicted for a plurality of vertebrae corresponding to a plurality of vertebra labels using a trained deep image-to-image network (DI2IN). The initial vertebra locations for the plurality of vertebrae predicted using the DI2IN are refined using a trained recurrent neural network, resulting in an updated set of vertebra locations for the plurality of vertebrae corresponding to the plurality of vertebrae labels. Final vertebra locations in the 3D CT volume for the plurality of vertebrae corresponding to the plurality of vertebra labels are determined by refining the updated set of vertebra locations using a trained shape-basis deep neural network.
    Type: Application
    Filed: February 2, 2018
    Publication date: September 13, 2018
    Inventors: Dong Yang, Tao Xiong, Daguang Xu, Shaohua Kevin Zhou, Mingqing Chen, Zhoubing Xu, Dorin Comaniciu, Jin-hyeong Park
  • Publication number: 20180225822
    Abstract: Systems and methods are provided for performing medical imaging analysis. Input medical imaging data is received for performing a particular one of a plurality of medical imaging analyses. An output that provides a result of the particular medical imaging analysis on the input medical imaging data is generated using a neural network trained to perform the plurality of medical imaging analyses. The neural network is trained by learning one or more weights associated with the particular medical imaging analysis using one or more weights associated with a different one of the plurality of medical imaging analyses. The generated output is outputted for performing the particular medical imaging analysis.
    Type: Application
    Filed: January 9, 2018
    Publication date: August 9, 2018
    Inventors: Shaohua Kevin Zhou, Mingqing Chen, Daguang Xu, Zhoubing Xu, Shun Miao, Dong Yang, He Zhang
  • Publication number: 20180225823
    Abstract: Methods and apparatus for automated medical image analysis using deep learning networks are disclosed. In a method of automatically performing a medical image analysis task on a medical image of a patient, a medical image of a patient is received. The medical image is input to a trained deep neural network. An output model that provides a result of a target medical image analysis task on the input medical image is automatically estimated using the trained deep neural network. The trained deep neural network is trained in one of a discriminative adversarial network or a deep image-to-image dual inverse network.
    Type: Application
    Filed: January 11, 2018
    Publication date: August 9, 2018
    Inventors: Shaohua Kevin Zhou, Mingqing Chen, Daguang Xu, Zhoubing Xu, Dong Yang
  • Publication number: 20180214105
    Abstract: For breast cancer detection with an x-ray scanner, a cascade of multiple classifiers is trained or used. One or more of the classifiers uses a deep-learnt network trained on non-x-ray data, at least initially, to extract features. Alternatively or additionally, one or more of the classifiers is trained using classification of patches rather than pixels and/or classification with regression to create additional cancer-positive partial samples.
    Type: Application
    Filed: January 31, 2017
    Publication date: August 2, 2018
    Inventors: Yaron Anavi, Atilla Peter Kiraly, David Liu, Shaohua Kevin Zhou, Zhoubing Xu, Dorin Comaniciu
  • Publication number: 20180116620
    Abstract: A method and apparatus for deep learning based automatic bone removal in medical images, such as computed tomography angiography (CTA) volumes, is disclosed. Bone structures are segmented in a 3D medical image of a patient by classifying voxels of the 3D medical image as bone or non-bone voxels using a deep neural network trained for bone segmentation. A 3D visualization of non-bone structures in the 3D medical image is generated by removing voxels classified as bone voxels from a 3D visualization of the 3D medical image.
    Type: Application
    Filed: October 9, 2017
    Publication date: May 3, 2018
    Inventors: Mingqing Chen, Tae Soo Kim, Jan Kretschmer, Sebastian Seifert, Shaohua Kevin Zhou, Max Schöbinger, David Liu, Zhoubing Xu, Sasa Grbic, He Zhang
  • Publication number: 20180096478
    Abstract: Embodiments can provide a method for atlas-based contouring, comprising constructing a relevant atlas database; selecting one or more optimal atlases from the relevant atlas database; propagating one or more atlases; fusing the one or more atlases; and assessing the quality of one or more propagated contours.
    Type: Application
    Filed: June 16, 2017
    Publication date: April 5, 2018
    Inventors: Li Zhang, Shanhui Sun, Shaohua Kevin Zhou, Daguang Xu, Zhoubing Xu, Tommaso Mansi, Ying Chi, Yefeng Zheng, Pavlo Dyban, Nora Hünemohr, Julian Krebs, David Liu
  • Publication number: 20180005381
    Abstract: Systems and methods are provided for segmenting tissue within a computed tomography (CT) scan of a region of interest into one of a plurality of tissue classes. A plurality of atlases are registered to the CT scan to produce a plurality of registered atlases. A context model representing respective likelihoods that each voxel of the CT scan is a member of each of the plurality of tissue classes is determined from the CT scan and a set of associated training data. A proper subset of the plurality of registered at lases is selected according to the context model and the registered atlases. The selected proper subset of registered atlases are fused to produce a combined segmentation.
    Type: Application
    Filed: February 18, 2016
    Publication date: January 4, 2018
    Inventors: Mayur PATEL, Patrick KELLY, Miya SMITH, Andrew PLASSARD, Bennett LANDMAN, Richard G. ABRAMSOM, Zhoubing XU, Benjamin K. POULOSE, Rebeccah B. BAUCOM, Andrew Joseph ASMAN