13 results on '"Gloger O"'
Search Results
2. Cohort profile: The study of health in Pomerania
- Author
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Völzke, H. (Henry), Alte, D. (Dietrich), Schmidt, C.O. (Carsten Oliver), Radke, D. (Dörte), Lorbeer, R. (Roberto), Friedrich, N. (Nele), Aumann, N. (Nicole), Lau, K. (Katharina), Piontek, M. (Michael), Born, G. (Gabriele), Havemann, C. (Christoph), Ittermann, T. (Till), Schipf, S. (Sabine), Haring, R. (Robin), Baumeister, S.E. (Sebastian), Wallaschofski, H. (Henri), Nauck, M. (Matthias), Frick, S. (Stephanie), Arnold, A. (Andreas), Jünger, M. (Michael), Mayerle, J. (Julia), Kraft, M. (Matthias), Lerch, M.M. (Markus), Dörr, M. (Marcus), Reffelmann, T. (Thorsten), Empen, K. (Klaus), Felix, S.B. (Stephan), Obst, A. (Anne), Koch, B. (Beate), Gläser, S. (Sven), Ewert, R. (Ralf), Fietze, I. (Ingo), Penzel, T. (Thomas), Dören, M. (Martina), Rathmann, W. (Wolfgang), Haerting, J. (Johannes), Hannemann, M. (Mario), Röpcke, J. (Jürgen), Schminke, U. (Ulf), Jürgens, C. (Clemens), Tost, F. (Frank), Rettig, R. (Rainer), Kors, J.A. (Jan), Ungerer, S. (Saskia), Hegenscheid, K. (Katrin), Kühn, J.-P., Hosten, N. (Norbert), Puls, R. (Ralf), Henke, J. (Jörg), Gloger, O. (Oliver), Teumer, A. (Alexander), Homuth, G. (Georg), Völker, U. (Uwe), Schwahn, C. (Christian), Holtfreter, B. (Birte), Polzer, I. (Ines), Kohlmann, T. (Thomas), Grabe, H.J. (Hans Jörgen), Rosskopf, D. (Dieter), Kroemer, H.K. (Heyo), Kocher, T. (Thomas), Biffar, R. (Reiner), John, U. (Ulrich), Hoffmann, W. (Wolfgang), Völzke, H. (Henry), Alte, D. (Dietrich), Schmidt, C.O. (Carsten Oliver), Radke, D. (Dörte), Lorbeer, R. (Roberto), Friedrich, N. (Nele), Aumann, N. (Nicole), Lau, K. (Katharina), Piontek, M. (Michael), Born, G. (Gabriele), Havemann, C. (Christoph), Ittermann, T. (Till), Schipf, S. (Sabine), Haring, R. (Robin), Baumeister, S.E. (Sebastian), Wallaschofski, H. (Henri), Nauck, M. (Matthias), Frick, S. (Stephanie), Arnold, A. (Andreas), Jünger, M. (Michael), Mayerle, J. (Julia), Kraft, M. (Matthias), Lerch, M.M. (Markus), Dörr, M. (Marcus), Reffelmann, T. (Thorsten), Empen, K. (Klaus), Felix, S.B. (Stephan), Obst, A. (Anne), Koch, B. (Beate), Gläser, S. (Sven), Ewert, R. (Ralf), Fietze, I. (Ingo), Penzel, T. (Thomas), Dören, M. (Martina), Rathmann, W. (Wolfgang), Haerting, J. (Johannes), Hannemann, M. (Mario), Röpcke, J. (Jürgen), Schminke, U. (Ulf), Jürgens, C. (Clemens), Tost, F. (Frank), Rettig, R. (Rainer), Kors, J.A. (Jan), Ungerer, S. (Saskia), Hegenscheid, K. (Katrin), Kühn, J.-P., Hosten, N. (Norbert), Puls, R. (Ralf), Henke, J. (Jörg), Gloger, O. (Oliver), Teumer, A. (Alexander), Homuth, G. (Georg), Völker, U. (Uwe), Schwahn, C. (Christian), Holtfreter, B. (Birte), Polzer, I. (Ines), Kohlmann, T. (Thomas), Grabe, H.J. (Hans Jörgen), Rosskopf, D. (Dieter), Kroemer, H.K. (Heyo), Kocher, T. (Thomas), Biffar, R. (Reiner), John, U. (Ulrich), and Hoffmann, W. (Wolfgang)
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- 2011
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3. Klinische Bedeutung bildgebender Verfahren in populationsbasierter Forschung
- Author
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Völzke, H, primary, Gloger, O, additional, Ivanovska, T, additional, Schmidt, C, additional, Langanke, M, additional, Assel, H, additional, Hosten, N, additional, and Puls, R, additional
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- 2010
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4. Cohort Profile: The Study of Health in Pomerania
- Author
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Volzke, H., primary, Alte, D., additional, Schmidt, C. O., additional, Radke, D., additional, Lorbeer, R., additional, Friedrich, N., additional, Aumann, N., additional, Lau, K., additional, Piontek, M., additional, Born, G., additional, Havemann, C., additional, Ittermann, T., additional, Schipf, S., additional, Haring, R., additional, Baumeister, S. E., additional, Wallaschofski, H., additional, Nauck, M., additional, Frick, S., additional, Arnold, A., additional, Junger, M., additional, Mayerle, J., additional, Kraft, M., additional, Lerch, M. M., additional, Dorr, M., additional, Reffelmann, T., additional, Empen, K., additional, Felix, S. B., additional, Obst, A., additional, Koch, B., additional, Glaser, S., additional, Ewert, R., additional, Fietze, I., additional, Penzel, T., additional, Doren, M., additional, Rathmann, W., additional, Haerting, J., additional, Hannemann, M., additional, Ropcke, J., additional, Schminke, U., additional, Jurgens, C., additional, Tost, F., additional, Rettig, R., additional, Kors, J. A., additional, Ungerer, S., additional, Hegenscheid, K., additional, Kuhn, J.-P., additional, Kuhn, J., additional, Hosten, N., additional, Puls, R., additional, Henke, J., additional, Gloger, O., additional, Teumer, A., additional, Homuth, G., additional, Volker, U., additional, Schwahn, C., additional, Holtfreter, B., additional, Polzer, I., additional, Kohlmann, T., additional, Grabe, H. J., additional, Rosskopf, D., additional, Kroemer, H. K., additional, Kocher, T., additional, Biffar, R., additional, John, U., additional, and Hoffmann, W., additional
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- 2010
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5. Automatic gallbladder segmentation using combined 2D and 3D shape features to perform volumetric analysis in native and secretin-enhanced MRCP sequences.
- Author
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Gloger O, Bülow R, Tönnies K, and Völzke H
- Subjects
- Cluster Analysis, Contrast Media chemistry, False Positive Reactions, Fourier Analysis, Fuzzy Logic, Gallbladder pathology, Humans, Models, Statistical, Phantoms, Imaging, Principal Component Analysis, Reproducibility of Results, Secretin chemistry, Support Vector Machine, Cholangiopancreatography, Magnetic Resonance, Gallbladder diagnostic imaging, Image Processing, Computer-Assisted, Imaging, Three-Dimensional, Magnetic Resonance Imaging
- Abstract
Objectives: We aimed to develop the first fully automated 3D gallbladder segmentation approach to perform volumetric analysis in volume data of magnetic resonance (MR) cholangiopancreatography (MRCP) sequences. Volumetric gallbladder analysis is performed for non-contrast-enhanced and secretin-enhanced MRCP sequences., Materials and Methods: Native and secretin-enhanced MRCP volume data were produced with a 1.5-T MR system. Images of coronal maximum intensity projections (MIP) are used to automatically compute 2D characteristic shape features of the gallbladder in the MIP images. A gallbladder shape space is generated to derive 3D gallbladder shape features, which are then combined with 2D gallbladder shape features in a support vector machine approach to detect gallbladder regions in MRCP volume data. A region-based level set approach is used for fine segmentation. Volumetric analysis is performed for both sequences to calculate gallbladder volume differences between both sequences., Results: The approach presented achieves segmentation results with mean Dice coefficients of 0.917 in non-contrast-enhanced sequences and 0.904 in secretin-enhanced sequences., Conclusion: This is the first approach developed to detect and segment gallbladders in MR-based volume data automatically in both sequences. It can be used to perform gallbladder volume determination in epidemiological studies and to detect abnormal gallbladder volumes or shapes. The positive volume differences between both sequences may indicate the quantity of the pancreatobiliary reflux.
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- 2018
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6. Automatized spleen segmentation in non-contrast-enhanced MR volume data using subject-specific shape priors.
- Author
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Gloger O, Tönnies K, Bülow R, and Völzke H
- Subjects
- Algorithms, Automation, Humans, Probability, Support Vector Machine, Imaging, Three-Dimensional methods, Magnetic Resonance Imaging, Spleen diagnostic imaging
- Abstract
To develop the first fully automated 3D spleen segmentation framework derived from T1-weighted magnetic resonance (MR) imaging data and to verify its performance for spleen delineation and volumetry. This approach considers the issue of low contrast between spleen and adjacent tissue in non-contrast-enhanced MR images. Native T1-weighted MR volume data was performed on a 1.5 T MR system in an epidemiological study. We analyzed random subsamples of MR examinations without pathologies to develop and verify the spleen segmentation framework. The framework is modularized to include different kinds of prior knowledge into the segmentation pipeline. Classification by support vector machines differentiates between five different shape types in computed foreground probability maps and recognizes characteristic spleen regions in axial slices of MR volume data. A spleen-shape space generated by training produces subject-specific prior shape knowledge that is then incorporated into a final 3D level set segmentation method. Individually adapted shape-driven forces as well as image-driven forces resulting from refined foreground probability maps steer the level set successfully to the segment the spleen. The framework achieves promising segmentation results with mean Dice coefficients of nearly 0.91 and low volumetric mean errors of 6.3%. The presented spleen segmentation approach can delineate spleen tissue in native MR volume data. Several kinds of prior shape knowledge including subject-specific 3D prior shape knowledge can be used to guide segmentation processes achieving promising results.
- Published
- 2017
- Full Text
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7. Fully automatized renal parenchyma volumetry using a support vector machine based recognition system for subject-specific probability map generation in native MR volume data.
- Author
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Gloger O, Tönnies K, Mensel B, and Völzke H
- Subjects
- Computer Simulation, Humans, Imaging, Three-Dimensional, Probability, Sensitivity and Specificity, Algorithms, Image Interpretation, Computer-Assisted methods, Kidney anatomy & histology, Magnetic Resonance Imaging methods, Models, Biological, Pattern Recognition, Automated, Support Vector Machine
- Abstract
In epidemiological studies as well as in clinical practice the amount of produced medical image data strongly increased in the last decade. In this context organ segmentation in MR volume data gained increasing attention for medical applications. Especially in large-scale population-based studies organ volumetry is highly relevant requiring exact organ segmentation. Since manual segmentation is time-consuming and prone to reader variability, large-scale studies need automatized methods to perform organ segmentation. Fully automatic organ segmentation in native MR image data has proven to be a very challenging task. Imaging artifacts as well as inter- and intrasubject MR-intensity differences complicate the application of supervised learning strategies. Thus, we propose a modularized framework of a two-stepped probabilistic approach that generates subject-specific probability maps for renal parenchyma tissue, which are refined subsequently by using several, extended segmentation strategies. We present a three class-based support vector machine recognition system that incorporates Fourier descriptors as shape features to recognize and segment characteristic parenchyma parts. Probabilistic methods use the segmented characteristic parenchyma parts to generate high quality subject-specific parenchyma probability maps. Several refinement strategies including a final shape-based 3D level set segmentation technique are used in subsequent processing modules to segment renal parenchyma. Furthermore, our framework recognizes and excludes renal cysts from parenchymal volume, which is important to analyze renal functions. Volume errors and Dice coefficients show that our presented framework outperforms existing approaches.
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- 2015
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8. Fully Automated Renal Tissue Volumetry in MR Volume Data Using Prior-Shape-Based Segmentation in Subject-Specific Probability Maps.
- Author
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Gloger O, Tönnies K, Laqua R, and Völzke H
- Subjects
- Adult, Aged, Bayes Theorem, Cluster Analysis, Fuzzy Logic, Humans, Middle Aged, Young Adult, Imaging, Three-Dimensional methods, Kidney physiology, Magnetic Resonance Imaging methods
- Abstract
Organ segmentation in magnetic resonance (MR) volume data is of increasing interest in epidemiological studies and clinical practice. Especially in large-scale population-based studies, organ volumetry is highly relevant requiring exact organ segmentation. Since manual segmentation is time consuming and prone to reader variability, large-scale studies need automatic methods to perform organ segmentation. In this paper, we present an automated framework for renal tissue segmentation that computes renal parenchyma, cortex, and medulla volumetry in native MR volume data without any user interaction. We introduce a novel strategy of subject-specific probability map computation for renal tissue types, which takes inter- and intra-MR-intensity variability into account. Several kinds of tissue-related 2-D and 3-D prior-shape knowledge are incorporated in modularized framework parts to segment renal parenchyma in a final level set segmentation strategy. Subject-specific probabilities for medulla and cortex tissue are applied in a fuzzy clustering technique to delineate cortex and medulla tissue inside segmented parenchyma regions. The novel subject-specific computation approach provides clearly improved tissue probability map quality than existing methods. Comparing to existing methods, the framework provides improved results for parenchyma segmentation. Furthermore, cortex and medulla segmentation qualities are very promising but cannot be compared to existing methods since state-of-the art methods for automated cortex and medulla segmentation in native MR volume data are still missing.
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- 2015
- Full Text
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9. Fully automated glottis segmentation in endoscopic videos using local color and shape features of glottal regions.
- Author
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Gloger O, Lehnert B, Schrade A, and Völzke H
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- Bayes Theorem, Glottis physiopathology, Humans, Principal Component Analysis, Video Recording, Voice Disorders physiopathology, Glottis physiology, Image Processing, Computer-Assisted methods, Laryngoscopy methods, Stroboscopy methods
- Abstract
Exact analysis of glottal vibration patterns is indispensable for the assessment of laryngeal pathologies. Increasing demand of voice related examination and large amount of data provided by high-speed laryngoscopy and stroboscopy call for automatic assistance in research and patient care. Automatic glottis segmentation is necessary to assist glottal vibration pattern analysis, but unfortunately proves to be very challenging. Previous glottis segmentation approaches hardly consider characteristic glottis features as well as inhomogeneity of glottal regions and show serious drawbacks in their application for diagnostic purposes. We developed a fully automated glottis segmentation framework that extracts a set of glottal regions in endoscopic videos by using a flexible thresholding technique combined with a refining level set method that incorporates prior glottis shape knowledge. A novel descriptor for glottal regions is presented to remove potential nonglottal fake regions that show glottis-like shape properties. Knowledge of local color distributions is incorporated into Bayesian probability image generation. Glottal regions are then tracked frame-by-frame in probability images with a region-based level set segmentation strategy. Principal component analysis of pixel coordinates is applied to determine glottal orientation in each frame and to remove nonglottal regions if erroneous regions are included. The framework shows very promising results concerning segmentation accuracy and processing times and is applicable for both stroboscopic and high-speed videos.
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- 2015
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10. Prior shape level set segmentation on multistep generated probability maps of MR datasets for fully automatic kidney parenchyma volumetry.
- Author
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Gloger O, Tönies KD, Liebscher V, Kugelmann B, Laqua R, and Völzke H
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- Adult, Aged, Computer Simulation, Female, Humans, Image Enhancement methods, Male, Middle Aged, Models, Anatomic, Models, Biological, Reproducibility of Results, Sensitivity and Specificity, Algorithms, Image Interpretation, Computer-Assisted methods, Imaging, Three-Dimensional methods, Kidney anatomy & histology, Magnetic Resonance Imaging methods, Pattern Recognition, Automated methods, Subtraction Technique
- Abstract
Fully automatic 3-D segmentation techniques for clinical applications or epidemiological studies have proven to be a very challenging task in the domain of medical image analysis. 3-D organ segmentation on magnetic resonance (MR) datasets requires a well-designed segmentation strategy due to imaging artifacts, partial volume effects, and similar tissue properties of adjacent tissues. We developed a 3-D segmentation framework for fully automatic kidney parenchyma volumetry that uses Bayesian concepts for probability map generation. The probability map quality is improved in a multistep refinement approach. An extended prior shape level set segmentation method is then applied on the refined probability maps. The segmentation quality is improved by incorporating an exterior cortex edge alignment technique using cortex probability maps. In contrast to previous approaches, we combine several relevant kidney parenchyma features in a sequence of segmentation techniques for successful parenchyma delineation on native MR datasets. Furthermore, the proposed method is able to recognize and exclude parenchymal cysts from the parenchymal volume. We analyzed four different quality measures showing better results for right parenchymal tissue than for left parenchymal tissue due to an incorporated liver part removal in the segmentation framework. The results show that the outer cortex edge alignment approach successfully improves the quality measures.
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- 2012
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11. Cohort profile: the study of health in Pomerania.
- Author
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Völzke H, Alte D, Schmidt CO, Radke D, Lorbeer R, Friedrich N, Aumann N, Lau K, Piontek M, Born G, Havemann C, Ittermann T, Schipf S, Haring R, Baumeister SE, Wallaschofski H, Nauck M, Frick S, Arnold A, Jünger M, Mayerle J, Kraft M, Lerch MM, Dörr M, Reffelmann T, Empen K, Felix SB, Obst A, Koch B, Gläser S, Ewert R, Fietze I, Penzel T, Dören M, Rathmann W, Haerting J, Hannemann M, Röpcke J, Schminke U, Jürgens C, Tost F, Rettig R, Kors JA, Ungerer S, Hegenscheid K, Kühn JP, Kühn J, Hosten N, Puls R, Henke J, Gloger O, Teumer A, Homuth G, Völker U, Schwahn C, Holtfreter B, Polzer I, Kohlmann T, Grabe HJ, Rosskopf D, Kroemer HK, Kocher T, Biffar R, John U, and Hoffmann W
- Subjects
- Adult, Aged, Cohort Studies, Diagnosis, Oral, Germany, Glucose Tolerance Test, Health Status, Humans, Interviews as Topic, Middle Aged, Physical Examination, Risk Factors, Ultrasonography, Morbidity, Population Surveillance
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- 2011
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12. A fully automatic three-step liver segmentation method on LDA-based probability maps for multiple contrast MR images.
- Author
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Gloger O, Kühn J, Stanski A, Völzke H, and Puls R
- Subjects
- Adult, Aged, Algorithms, Discriminant Analysis, Female, Fourier Analysis, Humans, Image Enhancement methods, Kidney anatomy & histology, Male, Middle Aged, Young Adult, Fatty Liver pathology, Imaging, Three-Dimensional methods, Liver anatomy & histology, Liver pathology, Magnetic Resonance Imaging methods
- Abstract
Automatic 3D liver segmentation in magnetic resonance (MR) data sets has proven to be a very challenging task in the domain of medical image analysis. There exist numerous approaches for automatic 3D liver segmentation on computer tomography data sets that have influenced the segmentation of MR images. In contrast to previous approaches to liver segmentation in MR data sets, we use all available MR channel information of different weightings and formulate liver tissue and position probabilities in a probabilistic framework. We apply multiclass linear discriminant analysis as a fast and efficient dimensionality reduction technique and generate probability maps then used for segmentation. We develop a fully automatic three-step 3D segmentation approach based upon a modified region growing approach and a further threshold technique. Finally, we incorporate characteristic prior knowledge to improve the segmentation results. This novel 3D segmentation approach is modularized and can be applied for normal and fat accumulated liver tissue properties., (Copyright 2010 Elsevier Inc. All rights reserved.)
- Published
- 2010
- Full Text
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13. [Clinical relevance of imaging techniques in population-based research].
- Author
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Völzke H, Gloger O, Ivanovska T, Schmidt CO, Langanke M, Assel H, Hosten N, and Puls R
- Subjects
- Humans, Clinical Trials as Topic methods, Diagnostic Imaging methods, Diagnostic Imaging statistics & numerical data, Epidemiologic Studies
- Abstract
Similar to clinical practise, population-based studies with a clinical-epidemiological focus include imaging techniques to identify manifest disease and to assess subclinical disease. Even population-based cross-sectional studies offer various options to address scientific questions of great clinical relevance, including analysis of reference values, prevalence estimates and association analysis. Further potential values of imaging techniques in population-based studies concern additional information on incidental diseases and mortality rate, which make it possible to investigate the association between imaging findings at baseline and subsequent disease. Modern population-based designs ensure a high degree of being representative and can be generally applied to clinical practise and, as a result, may be highly relevant to daily clinical routine. When imaging techniques are integrated within population-based research, problems of quality control may have to be solved, all probands must give informed consent and a decision made on what findings have to be given to the participants., (Georg Thieme Verlag KG Stuttgart, New York.)
- Published
- 2010
- Full Text
- View/download PDF
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