Patents by Inventor Atilla Peter Kiraly

Atilla Peter Kiraly 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: 20230169652
    Abstract: Systems and methods for chest condition determination can leverage one or more machine-learned models to process radiograph data to determine risk data (e.g., a preliminary diagnosis). For example, systems and methods can utilize a pathology model to process a chest x-ray to generate a tuberculosis diagnosis. The one or more machine-learned models can segment the lungs, can detect features in the data, and can pool the segmentation and located features to determine the diagnosis.
    Type: Application
    Filed: May 12, 2022
    Publication date: June 1, 2023
    Inventors: Sahar Kazemzadeh, Dong Jin Yu, Shahar Jamshy, Rory Pilgrim, Zaid Isam Nabulsi, Andrew Beckmann Sellergren, Yun Liu, Shruthi Prabhakara, Atilla Peter Kiraly
  • Patent number: 11393229
    Abstract: Methods and systems for artificial intelligence based medical image segmentation are disclosed. In a method for autonomous artificial intelligence based medical image segmentation, a medical image of a patient is received. A current segmentation context is automatically determined based on the medical image and at least one segmentation algorithm is automatically selected from a plurality of segmentation algorithms based on the current segmentation context. A target anatomical structure is segmented in the medical image using the selected at least one segmentation algorithm.
    Type: Grant
    Filed: November 24, 2020
    Date of Patent: July 19, 2022
    Assignee: Siemens Healthcare GmbH
    Inventors: Shaohua Kevin Zhou, Mingqing Chen, Hui Ding, Bogdan Georgescu, Mehmet Akif Gulsun, Tae Soo Kim, Atilla Peter Kiraly, Xiaoguang Lu, Jin-hyeong Park, Puneet Sharma, Shanhui Sun, Daguang Xu, Zhoubing Xu, Yefeng Zheng
  • Patent number: 11229377
    Abstract: A method of visualizing spinal nerves includes receiving a 3D image volume depicting a spinal cord and a plurality of spinal nerves. For each spinal nerve, a 2D spinal nerve image is generated by defining a surface within the 3D volume comprising the spinal nerve. The surface is curved such that it passes through the spinal cord while encompassing the spinal nerve. Then, the 2D spinal nerve images are generated based on voxels on the surface included in the 3D volume. A visualization of the 2D spinal images is presented in a graphical user interface that allows each 2D spinal image to be viewed simultaneously.
    Type: Grant
    Filed: July 12, 2019
    Date of Patent: January 25, 2022
    Assignee: Siemens Healthcare GmbH
    Inventors: Atilla Peter Kiraly, David Liu, Shaohua Kevin Zhou, Dorin Comaniciu, Gunnar Krüger
  • Publication number: 20210110135
    Abstract: Methods and systems for artificial intelligence based medical image segmentation are disclosed. In a method for autonomous artificial intelligence based medical image segmentation, a medical image of a patient is received. A current segmentation context is automatically determined based on the medical image and at least one segmentation algorithm is automatically selected from a plurality of segmentation algorithms based on the current segmentation context. A target anatomical structure is segmented in the medical image using the selected at least one segmentation algorithm.
    Type: Application
    Filed: November 24, 2020
    Publication date: April 15, 2021
    Inventors: Shaohua Kevin Zhou, Mingqing Chen, Hui Ding, Bogdan Georgescu, Mehmet Akif Gulsun, Tae Soo Kim, Atilla Peter Kiraly, Xiaoguang Lu, Jin-hyeong Park, Puneet Sharma, Shanhui Sun, Daguang Xu, Zhoubing Xu, Yefeng Zheng
  • Patent number: 10896108
    Abstract: In a method, a computer and a medical computer for automatic failure analysis in order to provide a cause of failure of the medical imaging apparatus during operation, input data are read into the computer that include raw data or image data, acquired by the imaging apparatus. A set of performance indicators in the input data is calculated by the computer. A trained neural network system is accessed with the calculated performance indicators, in order to provide result data that, in the case of a failure, identify a failure source.
    Type: Grant
    Filed: November 21, 2018
    Date of Patent: January 19, 2021
    Assignee: Siemens Healthcare GmbH
    Inventors: Andre de Oliveira, Georg Goertler, Atilla Peter Kiraly
  • Patent number: 10878219
    Abstract: Methods and systems for artificial intelligence based medical image segmentation are disclosed. In a method for autonomous artificial intelligence based medical image segmentation, a medical image of a patient is received. A current segmentation context is automatically determined based on the medical image and at least one segmentation algorithm is automatically selected from a plurality of segmentation algorithms based on the current segmentation context. A target anatomical structure is segmented in the medical image using the selected at least one segmentation algorithm.
    Type: Grant
    Filed: July 19, 2017
    Date of Patent: December 29, 2020
    Assignee: Siemens Healthcare GmbH
    Inventors: Shaohua Kevin Zhou, Mingqing Chen, Hui Ding, Bogdan Georgescu, Mehmet Akif Gulsun, Tae Soo Kim, Atilla Peter Kiraly, Xiaoguang Lu, Jin-hyeong Park, Puneet Sharma, Shanhui Sun, Daguang Xu, Zhoubing Xu, Yefeng Zheng
  • Patent number: 10849587
    Abstract: To assist a physician in diagnosis of trauma involving abdominal pain, scan data representing the patient is partitioned by organ and/or region. Separate machine-learnt classifiers are provided for each organ and/or region. The classifiers are trained to indicate a likelihood of cause of the pain. By outputting results from the collection of organ and/or regions specific classifiers, the likeliest causes and associated organs and/or regions may be used by the physician to speed, confirm, or guide diagnosis of the source of abdominal pain.
    Type: Grant
    Filed: March 17, 2017
    Date of Patent: December 1, 2020
    Assignee: Siemens Healthcare GmbH
    Inventors: Alexander Weiss, Atilla Peter Kiraly, David Liu, Bogdan Georgescu
  • Patent number: 10806372
    Abstract: A method of evaluating airway wall density and inflammation including: segmenting a bronchial tree to create an airway wall map; for each branch, taking a set of locations that form the wall of each branch from the map and sampling the value in a virtual non-contrast image of the bronchial tree and, given a set of samples of pre-contrast densities, computing a value to yield a bronchial wall density for each branch to yield density measures; for each branch, taking the set of locations that form the wall of each branch from the map and sampling the value in a contrast agent map of the bronchial tree and, given the set of samples of contrast agent intake, computing a value to yield a bronchial wall uptake for each branch to yield inflammation measures; and using the density and inflammation measures to determine treatment or predict outcome for a patient.
    Type: Grant
    Filed: August 31, 2015
    Date of Patent: October 20, 2020
    Assignee: Siemens Healthcare GmbH
    Inventors: Carol L. Novak, Benjamin L. Odry, Atilla Peter Kiraly
  • Patent number: 10803143
    Abstract: A computer-implemented method for deriving biopsy results in a non-invasive manner includes acquiring a plurality of training data items. Each training data item comprises non-invasive patient data and one or more biopsy derived scores associated with an individual. The method further includes extracting a plurality of features from the non-invasive patient data based on the one or more biopsy derived scores and training a predictive model to generate a predicted biopsy score based on the plurality of features and the one or more biopsy derived scores.
    Type: Grant
    Filed: July 29, 2016
    Date of Patent: October 13, 2020
    Assignee: Siemens Healthcare GmbH
    Inventors: Ali Kamen, Noha El-Zehiry, David Liu, Dorin Comaniciu, Atilla Peter Kiraly
  • Patent number: 10748277
    Abstract: Tissue is characterized using machine-learnt classification. The prognosis, diagnosis or evidence in the form of a similar case is found by machine-learnt classification from features extracted from frames of medical scan data. The texture features for tissue characterization may be learned using deep learning. Using the features, therapy response is predicted from magnetic resonance functional measures before and after treatment in one example. Using the machine-learnt classification, the number of measures after treatment may be reduced as compared to RECIST for predicting the outcome of the treatment, allowing earlier termination or alteration of the therapy.
    Type: Grant
    Filed: September 9, 2016
    Date of Patent: August 18, 2020
    Assignees: Siemens Healthcare GmbH, The Johns Hopkins University
    Inventors: Shaohua Kevin Zhou, David Liu, Berthold Kiefer, Atilla Peter Kiraly, Benjamin L. Odry, Robert Grimm, Li Pan, Ihab Kamel
  • Patent number: 10722200
    Abstract: Apparatuses and methods are provided for projecting a display of information for an x-ray device. The display of information is projected on the patient, on the table 205 area or on a combination thereof. A compact projector 207 is provided to project the display of information on a previously unused region of the patient and table 207, and provides a source of diagnostic and safety information without further crowding the room. The projected display of information may be a system state, a patient state, a surgical tool position or another relevant image. A compact sensor or range scanner 209 may be employed to capture three-dimensional distance information in the x-ray system. The three-dimensional distance information may be used to reduce distortion in the projected image, selectively darken regions of the projected image, automatically configure the x-ray system, capture inputs from the operator and improve safety in the x-ray system.
    Type: Grant
    Filed: June 4, 2015
    Date of Patent: July 28, 2020
    Assignee: Siemens Healthcare GmbH
    Inventor: Atilla Peter Kiraly
  • Patent number: 10643401
    Abstract: A 2D medical image is colorized. In one approach, a deep-learnt classifier is trained to colorize from color 2D medical images. The color 2D medical images for training are cinematically rendered from slabs to add color. In another approach, a deep machine-learnt generator creates slices as if adjacent to the 2D medical image. The slices and 2D medical image form a slab, which is cinematically rendered to add color. The result is a colorized 2D medical image.
    Type: Grant
    Filed: March 7, 2019
    Date of Patent: May 5, 2020
    Assignee: Siemens Healthcare GmbH
    Inventors: Atilla Peter Kiraly, Kaloian Petkov, Jin-hyeong Park
  • Patent number: 10635930
    Abstract: For patient positioning for scanning, a current pose of a patient is compared to a desired pose. The desired pose may be based on a protocol or a pose of the same patient in a previous examination. Any differences in pose, such as arm position, leg position, head orientation, and/or torso orientation (e.g., laying on side, back, or stomach), are communicated. By changing the current pose of the patient to be more similar to the desired pose, a more consistent and/or registerable dataset may be acquired by scanning the patient.
    Type: Grant
    Filed: February 24, 2017
    Date of Patent: April 28, 2020
    Assignee: Siemens Healthcare GmbH
    Inventors: Bernhard Geiger, Atilla Peter Kiraly
  • Patent number: 10607114
    Abstract: A generative network is used for lung lobe segmentation or lung fissure localization, or for training a machine network for lobar segmentation or localization. For segmentation, deep learning is used to better deal with a sparse sampling of training data. To increase the amount of training data available, an image-to-image or generative network localizes fissures in at least some of the samples. The deep-learnt network, fissure localization, or other segmentation may benefit from generative localization of fissures.
    Type: Grant
    Filed: January 16, 2018
    Date of Patent: March 31, 2020
    Assignee: Siemens Healthcare GmbH
    Inventors: Carol L. Novak, Benjamin L. Odry, Atilla Peter Kiraly, Jiancong Wang
  • Patent number: 10489908
    Abstract: A method and apparatus for automated prostate tumor detection and classification in multi-parametric magnetic resonance imaging (MRI) is disclosed. A multi-parametric MRI image set of a patient, including a plurality of different types of MRI images, is received. Simultaneous detection and classification of prostate tumors in the multi-parametric MRI image set of the patient are performed using a trained multi-channel image-to-image convolutional encoder-decoder that inputs multiple MRI images of the multi-parametric MRI image set of the patient and includes a plurality of output channels corresponding to a plurality of different tumor classes. For each output channel, the trained image-to image convolutional encoder-decoder generates a respective response map that provides detected locations of prostate tumors of the corresponding tumor class in the multi-parametric MRI image set of the patient.
    Type: Grant
    Filed: December 5, 2017
    Date of Patent: November 26, 2019
    Assignee: Siemens Healthcare GmbH
    Inventors: Atilla Peter Kiraly, Clement Jad Abi Nader, Robert Grimm, Berthold Kiefer, Ali Kamen
  • Publication number: 20190343418
    Abstract: A method of visualizing spinal nerves includes receiving a 3D image volume depicting a spinal cord and a plurality of spinal nerves. For each spinal nerve, a 2D spinal nerve image is generated by defining a surface within the 3D volume comprising the spinal nerve. The surface is curved such that it passes through the spinal cord while encompassing the spinal nerve. Then, the 2D spinal nerve images are generated based on voxels on the surface included in the 3D volume. A visualization of the 2D spinal images is presented in a graphical user interface that allows each 2D spinal image to be viewed simultaneously.
    Type: Application
    Filed: July 12, 2019
    Publication date: November 14, 2019
    Inventors: Atilla Peter Kiraly, David Liu, Shaohua Kevin Zhou, Dorin Comaniciu, Gunnar Krüger
  • Patent number: 10390726
    Abstract: A method of visualizing spinal nerves includes receiving a 3D image volume depicting a spinal cord and a plurality of spinal nerves. For each spinal nerve, a 2D spinal nerve image is generated by defining a surface within the 3D volume comprising the spinal nerve. The surface is curved such that it passes through the spinal cord while encompassing the spinal nerve. Then, the 2D spinal nerve images are generated based on voxels on the surface included in the 3D volume. A visualization of the 2D spinal images is presented in a graphical user interface that allows each 2D spinal image to be viewed simultaneously.
    Type: Grant
    Filed: March 28, 2017
    Date of Patent: August 27, 2019
    Assignee: Siemens Healthcare GmbH
    Inventors: Atilla Peter Kiraly, David Liu, Shaohua Kevin Zhou, Dorin Comaniciu, Gunnar Krüger
  • Patent number: 10366490
    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: Grant
    Filed: March 27, 2017
    Date of Patent: July 30, 2019
    Assignee: Siemens Healthcare GmbH
    Inventors: Zhoubing Xu, Carol L. Novak, Atilla Peter Kiraly
  • Publication number: 20190220701
    Abstract: A generative network is used for lung lobe segmentation or lung fissure localization, or for training a machine network for lobar segmentation or localization. For segmentation, deep learning is used to better deal with a sparse sampling of training data. To increase the amount of training data available, an image-to-image or generative network localizes fissures in at least some of the samples. The deep-learnt network, fissure localization, or other segmentation may benefit from generative localization of fissures.
    Type: Application
    Filed: January 16, 2018
    Publication date: July 18, 2019
    Inventors: Carol L. Novak, Benjamin L. Odry, Atilla Peter Kiraly, Jiancong Wang
  • Patent number: 10342620
    Abstract: A method for guiding electrophysiology (EP) intervention using a patient-specific electrophysiology model includes acquiring a medical image of a patient subject (S201). Sparse EP signals are acquired over an anatomy using the medical image for guidance (S202). The sparse EP signals are interpolated using a patient specific computational electrophysiology model and a three-dimensional model of EP dynamics is generated therefrom (S203). A rendering of the three-dimensional model is displayed. Candidate intervention sites are received, effects on the EP dynamics resulting from intervention at the candidate intervention sites is simulated using the model, and a rendering of the model showing the simulated effects is displayed (S205).
    Type: Grant
    Filed: April 9, 2015
    Date of Patent: July 9, 2019
    Assignee: Siemens Healthcare GmbH
    Inventors: Atilla Peter Kiraly, Tommaso Mansi, Ali Kamen