Patents by Inventor Kunio Doi
Kunio Doi 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).
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Publication number: 20090169087Abstract: A method, system, and computer program product for detecting vertebral fractures, including steps of (1) obtaining a medical image including a plurality of vertebrae; (2) detecting, corresponding edges of the plurality of vertebra using line enhancement and feature analysis; (3) determining the vertebral height of each vertebra based on a location of the detected edges of the vertebra; and (4) analyzing the determined vertebral heights to identify fractured vertebra.Type: ApplicationFiled: September 19, 2006Publication date: July 2, 2009Inventors: Kunio Doi, Satoshi Kasai
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Patent number: 7545965Abstract: A method, system, and computer program product for modifying an appearance of an anatomical structure in a medical image, e.g., rib suppression in a chest radiograph. The method includes: acquiring, using a first imaging modality, a first medical image that includes the anatomical structure; applying the first medical image to a trained image processing device to obtain a second medical image, corresponding to the first medical image, in which the appearance of the anatomical structure is modified; and outputting the second medical image. Further, the image processing device is trained using plural teacher images obtained from a second imaging modality that is different from the first imaging modality.Type: GrantFiled: November 10, 2003Date of Patent: June 9, 2009Assignee: The University of ChicagoInventors: Kenji Suzuki, Kunio Doi
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Publication number: 20090074276Abstract: A method for improving the alignment accuracy between different medical images may be disclosed. A warped or non-warped previous image and a warped or non-warped current image may include a plurality of respective previous and current basic units, for example, pixels in a 2-dimensional image or voxels in a 3-dimensional image. To ensure accurate registration between the previous and current images, a first basic unit from the previous image may be replaced by a second basic unit from the current image if the value of the first and second basic units are identical or nearly identical. The first and second basic units may be selected from a nearly-identical region or “kernel” within the previous and current images.Type: ApplicationFiled: September 18, 2008Publication date: March 19, 2009Applicant: THE UNIVERSITY OF CHICAGOInventors: Kunio Doi, Shigehiko Katsuragawa, Yoshinori Itai, Hyoungseop Kim
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Publication number: 20080298657Abstract: A method of producing an image to aid detection of a change in progress of a disease in a patient is described. In the method, a first image of a distribution of a radioisotope in the patient is obtained. A second image of the distribution of the radioisotope in the patient is also obtained. At least one of the first and second images are then normalized (1:140). One of the images is warped to match the other image using a multiple-segment matching method (1:160). The first image is subtracted from the second image to form a subtraction image (1:220). Finally, the resulting subtraction image is displayed.Type: ApplicationFiled: November 22, 2006Publication date: December 4, 2008Inventors: Junji Shiraishi, Kunio Doi, Daniel Appelbaum, Yonglin Pu, Qiang Li
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Patent number: 7305111Abstract: A method, system, and computer program product for detecting at least one nodule in a medical image of a subject, including identifying, in the medical image, an anatomical region corresponding to at least a portion of an organ of interest; filtering the medical image to obtain a difference image; detecting, in the difference image, a first plurality of nodule candidates within the anatomical region; calculating respective nodule feature values of the first plurality of nodule candidates based on pixel values of at least one of the medical image and the difference image; removing false positive nodule candidates from the first plurality of nodule candidates based on the respective nodule feature values to obtain a second plurality of nodule candidates; and determining the at least one nodule by classifying each of the second plurality of nodule candidates as a nodule or a non-nodule based on at least one of the pixel values and the respective nodule feature values.Type: GrantFiled: January 30, 2004Date of Patent: December 4, 2007Assignee: University of ChicagoInventors: Hidetaka Arimura, Feng Li, Junji Shiraishi, Kunio Doi
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Patent number: 7251353Abstract: A method for determining whether a first medical image and a second medical image are medical images of the same patient, comprising selecting a first region in the first medical image; selecting a second region in the second medical image; determining a common region based on a boundary of the first region and a boundary of the second region; calculating a correlation coefficient based on image data from the first medical image in the common region and image data from the second medical image in the common region; and determining whether the first medical image and the second medical image are medical images of the same patient based on the correlation coefficient. Biological fingerprints from parts of chest radiographs such as thoracic fields, cardiac shadows, lung apices, superior mediastinum, and the right lower lung that includes the costophrenic angle, are used for the purpose of patient recognition and identification.Type: GrantFiled: February 5, 2003Date of Patent: July 31, 2007Assignee: University of ChicagoInventors: Kunio Doi, Junji Morishita, Shigehiko Katsuagawa
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Patent number: 7236619Abstract: An automated computerized scheme for detection and characterization of diffuse lung diseases on high-resolution computed tomography (HRCT) images including obtaining image data including pixels of an organ; segmenting the image data into organ image data and non-organ image data; extracting predetermined features from the organ image data to produce a set of image features; comparing the set of image features against a reference set of organ image features containing image data known to correspond to normal and abnormal conditions; and producing a comparison result.Type: GrantFiled: February 4, 2003Date of Patent: June 26, 2007Assignee: University of ChicagoInventors: Kunio Doi, Yoshikazu Uchiyama, Shigehiko Katsuragawa
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Patent number: 7043066Abstract: A method, system and computer readable medium for computerized processing of chest images including obtaining a digital first image of a chest (S100); producing a second image which is a mirror image (S300) of the first image; performing image warping on one of the first and second images to produce a warped image (S400) which is registered to the other of the first and second images; and subtracting the warped image from the other image to generate a subtraction image (S600).Type: GrantFiled: November 5, 1999Date of Patent: May 9, 2006Assignee: Arch Development CorporationInventors: Kunio Doi, Qiang Li, Shigehiko Katsuragawa, Takayuki Ishida
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Publication number: 20060018524Abstract: A system, method, and computer program product for classifying a target structure in an image into abnormality types. The system has a scanning mechanism that scans a local window across sub-regions of the target structure by moving the local window across the image to obtain sub-region pixel sets. A mechanism inputs the sub-region pixel sets into a classifier to provide output pixel values based on the sub-region pixel sets, each output pixel value representing a likelihood that respective image pixels have a predetermined abnormality, the output pixel values collectively determining a likelihood distribution output image map. A mechanism scores the likelihood distribution map to classify the target structure into abnormality types. The classifier can be, e.g., a single-output or multiple-output massive training artificial neural network (MTANN).Type: ApplicationFiled: July 15, 2005Publication date: January 26, 2006Applicant: UC TechInventors: Kenji Suzuki, Kunio Doi
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Publication number: 20050259854Abstract: A method, system, and computer program product for determining existence of an abnormality in a medical image, including (1) obtaining volume image data corresponding to the medical image; (2) filtering the volume image data using an enhancement filter to produce a filtered image in which a predetermined pattern is enhanced; (3) detecting, in the filtered image, a first plurality of abnormality candidates using multiple gray-level thresholding; (4) grouping, based on size and local structures, the first plurality of abnormality candidates into a plurality of abnormality classes; (5) removing false positive candidates from each abnormality class based on class-specific image features to produce a second plurality of abnormality candidates; and (6) applying the at least one abnormality to a classifier and classifying each candidate in the second plurality of abnormality candidates as a false positive candidate or an abnormality.Type: ApplicationFiled: May 21, 2004Publication date: November 24, 2005Applicant: University of ChicagoInventors: Hidetaka Arimura, Qiang Li, Kunio Doi
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Patent number: 6937776Abstract: A method, system, and computer program product for evaluating an image including an object, including filtering image data derived from the image with a first geometric enhancement filter having magnitude and likelihood filter components so as to produce first filtered image data in which a first geometric pattern is enhanced. Thereafter the filtered image data can be subjected to processing to derive a measure indicative of the presence of the object in the image, including determining a region of interest in the image, extracting at least one feature from the first filtered image data from within the region of interest, and applying the at least one extracted feature to a classifier configured to output the measure indicative of the presence of the object in the image.Type: GrantFiled: January 31, 2003Date of Patent: August 30, 2005Assignee: University of ChicagoInventors: Qiang Li, Kunio Doi
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Publication number: 20050171409Abstract: A method, system, and computer program product for detecting at least one nodule in a medical image of a subject, including identifying, in the medical image, an anatomical region corresponding to at least a portion of an organ of interest; filtering the medical image to obtain a difference image; detecting, in the difference image, a first plurality of nodule candidates within the anatomical region; calculating respective nodule feature values of the first plurality of nodule candidates based on pixel values of at least one of the medical image and the difference image; removing false positive nodule candidates from the first plurality of nodule candidates based on the respective nodule feature values to obtain a second plurality of nodule candidates; and determining the at least one nodule by classifying each of the second plurality of nodule candidates as a nodule or a non-nodule based on at least one of the pixel values and the respective nodule feature values.Type: ApplicationFiled: January 30, 2004Publication date: August 4, 2005Applicant: University of ChicagoInventors: Hidetaka Arimura, Feng Li, Junji Shiraishi, Kunio Doi
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Publication number: 20050100208Abstract: A method, system, and computer program product for modifying an appearance of an anatomical structure in a medical image, e.g., rib suppression in a chest radiograph. The method includes: acquiring, using a first imaging modality, a first medical image that includes the anatomical structure; applying the first medical image to a trained image processing device to obtain a second medical image, corresponding to the first medical image, in which the appearance of the anatomical structure is modified; and outputting the second medical image. Further, the image processing device is trained using plural teacher images obtained from a second imaging modality that is different from the first imaging modality.Type: ApplicationFiled: November 10, 2003Publication date: May 12, 2005Applicant: University of ChicagoInventors: Kenji Suzuki, Kunio Doi
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Patent number: 6891964Abstract: An automated computerized scheme for determination of the likelihood of malignancy in pulmonary nodules. The present invention includes steps of obtaining at least one computed tomography medical image of a pulmonary nodule in determining if the pulmonary nodule is malignant based on the examination of seven patient or image features. The method can be implemented when instructions are loaded into a computer to program the computer. The significance of employing seven patient or image features is that statistically, seven features are the most practical based on the unique implementation of statistical analysis. Out of the seven features that are now analyzed to determine if a pulmonary nodule is malignant, these features are selected to optimize the accuracy of the diagnosis of a pulmonary nodule. Through a unique sampling scheme, different embodiments of the present invention utilize different combinations of features to optimize the accuracy of the method of the present invention.Type: GrantFiled: November 23, 2001Date of Patent: May 10, 2005Assignee: University of ChicagoInventors: Kunio Doi, Masahito Aoyama, Qiang Li
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Patent number: 6836558Abstract: A method, system and computer readable medium for a computer-automated method for identifying given image data, including obtaining template image data corresponding to said given image data; calculating correlation values between the given image data and said template image data; and identifying said image data based on the correlation values calculated in the calculating step.Type: GrantFiled: March 26, 2001Date of Patent: December 28, 2004Assignee: Arch Development CorporationInventors: Kunio Doi, Hidetaka Arimura, Shigehiko Katsuragawa, Junji Morishita
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Patent number: 6819790Abstract: A method of training an artificial neural network (ANN) involves receiving a likelihood distribution map as a teacher image, receiving a training image, moving a local window across sub-regions of the training image to obtain respective sub-region pixel sets, inputting the sub-region pixel sets to the ANN so that it provides output pixel values that are compared to output pixel values of corresponding teacher image pixel values to determine an error, and training the ANN to reduce the error. A method of detecting a target structure in an image involves scanning a local window across sub-regions of the image by moving the local window for each sub-region so as to obtain respective sub-region pixel sets, inputting the sub-region pixel sets to an ANN so that it provides respective output pixel values that represent likelihoods that respective image pixels are part of a target structure, the output pixel values collectively constituting a likelihood distribution map.Type: GrantFiled: April 12, 2002Date of Patent: November 16, 2004Assignee: The University of ChicagoInventors: Kenji Suzuki, Kunio Doi
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Publication number: 20040151356Abstract: A method, system, and computer program product for evaluating an image including an object, including filtering image data derived from the image with a first geometric enhancement filter having magnitude and likelihood filter components so as to produce first filtered image data in which a first geometric pattern is enhanced. Thereafter the filtered image data can be subjected to processing to derive a measure indicative of the presence of the object in the image, including determining a region of interest in the image, extracting at least one feature from the first filtered image data from within the region of interest, and applying the at least one extracted feature to a classifier configured to output the measure indicative of the presence of the object in the image.Type: ApplicationFiled: January 31, 2003Publication date: August 5, 2004Applicant: University of ChicagoInventors: Qiang Li, Kunio Doi
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Patent number: 6754380Abstract: A method, system, and computer program product of selecting a set of training images for a massive training artificial neural network (MTANN). The method comprises selecting the set of training images from a set of domain images; training the MTANN with the set of training images; applying a plurality of images from the set of domain images to the trained MTANN to obtain a corresponding plurality of scores; and determining the set of training images based on the plurality of images, the corresponding plurality of scores, and the set of training images. The method is useful for the reduction of false positives in computerized detection of abnormalities in medical images. In particular, the MTAAN can be used for the detection of lung nodules in low-dose CT (LDCT). The MTANN consists of a modified multilayer artificial neural network capable of operating on image data directly.Type: GrantFiled: February 14, 2003Date of Patent: June 22, 2004Assignee: The University of ChicagoInventors: Kenji Suzuki, Kunio Doi
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Publication number: 20040101180Abstract: A method for determining whether a first medical image and a second medical image are medical images of the same patient, comprising selecting a first region in the first medical image; selecting a second region in the second medical image; determining a common region based on a boundary of the first region and a boundary of the second region; calculating a correlation coefficient based on image data from the first medical image in the common region and image data from the second medical image in the common region; and determining whether the first medical image and the second medical image are medical images of the same patient based on the correlation coefficient. Biological fingerprints from parts of chest radiographs such as thoracic fields, cardiac shadows, lung apices, superior mediastinum, and the right lower lung that includes the costophrenic angle, are used for the purpose of patient recognition and identification.Type: ApplicationFiled: February 5, 2003Publication date: May 27, 2004Applicant: University of ChicagoInventors: Kunio Doi, Junji Morishita, Shigehiko Katsuagawa
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Patent number: 6738499Abstract: A method, computer program product, and system (100) for computerized analysis of the likelihood of malignancy in a pulmonary nodule using artificial neural networks (ANNs) (S4). The method, on which the computer program product and the system is based on, includes obtaining a digital outline of a nodule; generating objective measures corresponding to physical features of the outline of the nodule; applying the generated objective measures to an ANN; and determining a likelihood of malignancy of the nodule based on an output of the ANN. Techniques include novel developments and implementations of artificial neural networks and feature extraction for digital images. Output from the inventive method yields an estimate of the likelihood of malignancy (S7) for a pulmonary nodule.Type: GrantFiled: July 2, 2001Date of Patent: May 18, 2004Assignee: Arch Development CorporationInventors: Kunio Doi, Katsumi Nakamura