14 results on '"Eiichiro Okumura"'
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2. Computerized Analysis of Pneumoconiosis in Digital Chest Radiography: Effect of Artificial Neural Network Trained with Power Spectra.
- Author
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Eiichiro Okumura, Ikuo Kawashita, and Takayuki Ishida
- Published
- 2011
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3. Effect of Color Temperature on Color Scale Test Patterns in Medical Liquid-crystal Display Monitor
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Eiichiro Okumura and Noriyuki Hashimoto
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Quality Control ,Incandescent light bulb ,Liquid-crystal display ,Materials science ,business.industry ,Temperature ,Color ,Illuminance ,General Medicine ,Color temperature ,Grayscale ,Color Scale ,Liquid Crystals ,law.invention ,Optics ,Japan ,law ,Data Display ,Daylight ,Chromaticity ,business - Abstract
In Japan, medical liquid-crystal display (LCD) and general LCD monitors have color temperatures of 7500 and 6500 K, respectively. The differences in color temperature make it difficult for radiologists to judge whether the same color is being displayed on the monitor. Therefore, the radiologist may overlook lesions. We examined chromaticity on a color scale test pattern to determine the relationships between color temperature (6500-12,500 K) of the medical color LCD monitors, there are three types of fluorescent light and three types of illuminance LCD monitors. As the color temperature of the monitor increased, the variation in chromaticity for grayscale test patterns increased and those variations for the blue scale test patterns decreased in a dark room and at 600 lux. In addition, even if the color temperature of the monitor was changed, the variation in chromaticity showed no change under fluorescent lighting with light bulb color and daylight color. The results of this study will be useful for quality control and quality assurance of medical LCD monitors in terms of illuminance and color temperature of the monitor.
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- 2018
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4. Development of CAD based on ANN analysis of power spectra for pneumoconiosis in chest radiographs: effect of three new enhancement methods
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Eiichiro Okumura, Ikuo Kawashita, and Takayuki Ishida
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Artificial neural network ,Abnormal chest ,Pathology ,medicine.medical_specialty ,Radiography ,Chest radiography ,Physical Therapy, Sports Therapy and Rehabilitation ,CAD ,Power spectra ,Article ,Humans ,Medicine ,False Positive Reactions ,Radiology, Nuclear Medicine and imaging ,Diagnosis, Computer-Assisted ,Overall performance ,False Negative Reactions ,Radiation ,business.industry ,Pneumoconiosis ,General Medicine ,medicine.disease ,Cad system ,Computer-aided diagnosis (CAD) ,Radiographic Image Enhancement ,Radiology Nuclear Medicine and imaging ,Image database ,Radiography, Thoracic ,Neural Networks, Computer ,business ,Nuclear medicine - Abstract
We have been developing a computer-aided detection (CAD) scheme for pneumoconiosis based on a rule-based plus artificial neural network (ANN) analysis of power spectra. In this study, we have developed three enhancement methods for the abnormal patterns to reduce false-positive and false-negative values. The image database consisted of 2 normal and 15 abnormal chest radiographs. The International Labour Organization standard chest radiographs with pneumoconiosis were categorized as subcategory, size, and shape of pneumoconiosis. Regions of interest (ROIs) with a matrix size of 32 × 32 were selected from normal and abnormal lungs. Three new enhanced methods were obtained by window function, top-hat transformation, and gray-level co-occurrence matrix analysis. We calculated the power spectrum (PS) of all ROIs by Fourier transform. For the classification between normal and abnormal ROIs, we applied a combined analysis using the ruled-based plus the ANN method. To evaluate the overall performance of this CAD scheme, we employed ROC analysis for distinguishing between normal and abnormal ROIs. On the chest radiographs of the highest categories (severe pneumoconiosis) and the lowest categories (early pneumoconiosis), this CAD scheme achieved area under the curve (AUC) values of 0.93 ± 0.02 and 0.72 ± 0.03. The combined rule-based plus ANN method with the three new enhanced methods obtained the highest classification performance for distinguishing between abnormal and normal ROIs. Our CAD system based on the three new enhanced methods would be useful in assisting radiologists in the classification of pneumoconiosis.
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- 2014
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5. Development of an Automated Patient Recognition Method for Chest CT Images Using a Template-Matching Technique
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Kenji Oda, Keita Nakamura, Chika Iwakiri, Eiichiro Okumura, Kazushige Aridome, and Masateru Yamamoto
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Lung Neoplasms ,Receiver operating characteristic ,Pixel ,Volume of interest ,Artificial neural network ,Computer science ,business.industry ,Template matching ,Chest ct ,Pattern recognition ,General Medicine ,Pattern Recognition, Automated ,Picture archiving and communication system ,Image Processing, Computer-Assisted ,Recognition system ,Humans ,Neural Networks, Computer ,Artificial intelligence ,Radionuclide Imaging ,Tomography, X-Ray Computed ,business - Abstract
If patient information, such as identification number or patient name, has been entered incorrectly in a picture archiving and communication system (PACS) environment, the image may be stored in the wrong place. To prevent such cases of misfiling, we have developed an automated patient recognition system for chest CT images. The image database consisted of 100 cases with present and previous chest CT images. A volume of interest (VOI) measuring 40 × 40 pixels was selected from the left lung region, bronchus region, and right lung region. Next, the overall lung region and these three regions in a current chest CT image were used as a template for determining the residual value with the corresponding four regions in previous chest CT images. To ensure separation between the same and different patients, we applied a combined analysis that employed the ruled-based plus artificial neural network (ANN) method. The overall performance of the method developed was examined in terms of receiver operating characteristic (ROC) curves. The performance of the rule-based plus ANN method using a combination of the four regions was higher than obtained using a rule-based method using these four regions separately. The automated patient recognition system using the rule-based plus ANN method achieved an area under the curve (AUC) value of 0.987. This automated patient recognition method for chest CT images is promising for helping to retrieve misfiled patient images, especially in a PACS environment.
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- 2014
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6. Diagnostic Detection Performance of a Simulated Nodule in Chest Computed Tomography Images and Gray and Color Nuclear Medicine Images: Comparison between a Medical Liquid Crystal Display Monitor and an Ordinary Liquid Crystal Display Monitor
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Natsumi Shirasaka, Kenta Miyashita, Eiichiro Okumura, Riyou Kamimae, Mikayo Kubo, Taiki Takeda, Rina Ueda, Noriyuki Hashimoto, and Yusuke Kanmae
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Grayscale standard display function ,Computed tomography ,Imaging phantom ,law.invention ,law ,medicine ,Humans ,Monochrome ,Tomography, Emission-Computed, Single-Photon ,Liquid-crystal display ,Receiver operating characteristic ,medicine.diagnostic_test ,Phantoms, Imaging ,business.industry ,Nodule (medicine) ,General Medicine ,Liquid Crystals ,Radiographic Image Enhancement ,ROC Curve ,Computer Terminals ,Detection performance ,Radiography, Thoracic ,medicine.symptom ,Tomography, X-Ray Computed ,business ,Nuclear medicine - Abstract
The purpose of this study was to evaluate the detection performance of simulated nodules in chest computed tomography (CT) images and nuclear medicine images with an ordinary liquid crystal display (LCD) and a medical LCD (grayscale standard display function: GSDF) and gamma 2.2. We collected 72 chest CT image slices obtained from an LSCT phantom with simulated signals composed of various sizes and CT values and 78 slices of monochrome and color nuclear medicine images obtained from a digital phantom with a simulated signal composed of various sizes and radiation levels. Six observers performed receiver operating characteristic (ROC) analysis using a continuous scale. The area under the ROC curve (AUC) was calculated for each monitor. The average AUC values for detection of chest CT images on a medical LCD (GSDF), medical LCD (gamma 2.2), and ordinary LCD were 0.71, 0.67, and 0.73, respectively. The average AUC values for detection of monochrome nuclear medicine images using a medical LCD (GSDF), medical LCD (gamma 2.2), and ordinary LCD were 0.81, 0.75, and 0.72, respectively. The average AUC values for detection of color nuclear medicine images on a medical LCD (GSDF), medical LCD (gamma 2.2), and ordinary LCD were 0.88, 0.86, and 0.90, respectively. Observer performance for detection of simulated nodules in chest CT images and nuclear medicine images was not significantly different between the three LCD monitors. We therefore conclude that an ordinary LCD monitor can be used to detect simulated nodules in chest CT images and nuclear medicine images.
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- 2014
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7. Report on RSNA2011 in Chicago
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Naoki Nagasawa, Tatsuro Hayashi, Eiichiro Okumura, Yoshiaki Morishima, and Asumi Yamazaki
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medicine.medical_specialty ,business.industry ,Pneumoconiosis ,Radiography ,False Negative Reactions ,MEDLINE ,Medicine ,Radiographic Image Enhancement ,General Medicine ,Radiology ,business ,medicine.disease - Published
- 2012
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8. Effectiveness of temporal and dynamic subtraction images of the liver for detection of small HCC on abdominal CT images: comparison of 3D nonlinear image-warping and 3D global-matching techniques
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Masayuki Suzuki, Akihiro Takemura, Osamu Matsui, Eiichiro Okumura, and Shigeru Sanada
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Male ,Radiography, Abdominal ,Carcinoma, Hepatocellular ,Computer science ,Image quality ,Subjective rating ,Abdominal ct ,Physical Therapy, Sports Therapy and Rehabilitation ,Temporal subtraction ,Sensitivity and Specificity ,Imaging, Three-Dimensional ,Humans ,Radiology, Nuclear Medicine and imaging ,Computer vision ,Image warping ,Aged ,Radiation ,business.industry ,Liver Neoplasms ,Subtraction ,Reproducibility of Results ,General Medicine ,Middle Aged ,Global matching ,Nonlinear system ,Liver ,Subtraction Technique ,Radiographic Image Interpretation, Computer-Assisted ,Female ,Artificial intelligence ,Tomography, X-Ray Computed ,business - Abstract
Misregistration errors occur at the periphery of the hepatic region due to respiratory- and interval-related changes in hepatic shape. To reduce these misregistration errors, we developed a temporal and dynamic subtraction technique to enhance small hepatocellular carcinoma (HCC) by using a 3D nonlinear image-warping technique. The study population consisted of 21 patients with HCC. We registered the present and previous arterial-phase CT images or the present nonenhanced and arterial-phase CT images obtained in the same position by 3D global-matching plus 3D nonlinear image-warping. Temporal subtraction images were obtained by subtraction of the previous arterial-phase CT image from the warped present arterial-phase CT image. Dynamic subtraction images were obtained by subtraction of the present nonenhanced CT image from the warped present arterial-phase CT image. When we used this new technique, the number of good or excellent cases increased from 14.2% (3/21 cases) to 71.4% (15/21 cases) on temporal subtraction images. With this technique, subjective rating scores for image quality improved in 57.1% of cases (12/21 cases) on temporal subtraction images and 81.0% of cases (17/21 cases) on dynamic subtraction images. The results indicated that the new subtraction images were greatly improved by use of the 3D nonlinear image-warping technique.
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- 2011
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9. A computer-aided temporal and dynamic subtraction technique of the liver for detection of small hepatocellular carcinomas on abdominal CT images
- Author
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Eiichiro Okumura, Osamu Matsui, Masayuki Suzuki, and Shigeru Sanada
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Male ,medicine.medical_specialty ,Carcinoma, Hepatocellular ,Time Factors ,Contrast enhancement ,media_common.quotation_subject ,Abdominal ct ,Temporal subtraction ,behavioral disciplines and activities ,Standard anatomical position ,Image Processing, Computer-Assisted ,medicine ,Humans ,Contrast (vision) ,Radiology, Nuclear Medicine and imaging ,Diagnosis, Computer-Assisted ,Aged ,media_common ,Radiological and Ultrasound Technology ,business.industry ,Liver Neoplasms ,digestive, oral, and skin physiology ,Subtraction ,Middle Aged ,Liver ,Subtraction Technique ,Computer-aided ,Female ,Radiology ,Tomography, X-Ray Computed ,Nuclear medicine ,business ,Algorithms ,Software ,psychological phenomena and processes - Abstract
金沢大学大学院医学系研究科量子医療技術学, It is often difficult for radiologists to identify small hepatocellular carcinomas (HCCs) due to insufficient contrast enhancement. Therefore, we have developed a new computer-aided temporal and dynamic subtraction technique to enhance small HCCs, after automatically selecting images set at the same anatomical position from the present (non-enhanced and arterial-phase CT images) and previous images. The present study was performed with CT images from 14 subjects. First, we used template-matching based on similarities in liver shape between the present (non-enhanced and arterial-phase CT images) and previous arterial-phase CT images at the same position. Temporal subtraction images were then obtained by subtraction of the previous image from the present image taken at the same position of the liver. Dynamic subtraction images were also obtained by subtraction of non-enhanced CT images from arterial-phase CT images taken at the same position of the liver. Twenty-one of 22 nodules (95.5%) with contrast enhancement were visualized in temporal and dynamic subtraction images. Compared with present arterial-phase CT images, increases of 150% and 140% in nodule-to-liver contrast were observed on dynamic and temporal subtraction images, respectively. These subtraction images may be useful as reference images in the detection of small moderately differentiated HCCs. © 2006 IOP Publishing Ltd.
- Published
- 2006
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10. [Computerized classification of pneumoconiosis radiographs based on grey level co-occurrence matrices]
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Ikuo Kawashita, Masamitu Nakajima, Takayuki Ishida, Yoshifumi Masumoto, Yasuhiko Okura, and Eiichiro Okumura
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Pathology ,medicine.medical_specialty ,business.industry ,Validation test ,Pneumoconiosis ,Radiography ,Pattern recognition ,General Medicine ,medicine.disease ,Consistency test ,Support vector machine ,Matrix (mathematics) ,medicine ,Grey level ,Humans ,Radiography, Thoracic ,Artificial intelligence ,Diagnosis, Computer-Assisted ,business ,Line enhancement - Abstract
Pneumoconiosis is diagnosed as categories 0-4 according to the Pneumoconiosis Law. Physicians have difficulty precisely categorizing many chest images. Therefore, we have developed a computerized method for automatically categorizing pneumoconiosis from chest radiographs. First, we extracted the rib edge regions from lung ROIs. Second, texture features were extracted using a dot enhancement filter, line enhancement filter, and grey level co-occurrence matrix. Third, the rib edge regions were removed from these processed images. Finally, we used a support vector machine for feature analysis. In a consistency test, 56 cases (69.7%) were classified correctly, and 45 cases (61.8%) were classified correctly in a validation test. These results show that the proposed features and removal of the rib edge are effective in classifying the profusion of opacities that indicate pneumoconiosis.
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- 2011
11. Computerized analysis of pneumoconiosis in digital chest radiography: effect of artificial neural network trained with power spectra
- Author
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Takayuki Ishida, Eiichiro Okumura, and Ikuo Kawashita
- Subjects
Abnormal chest ,Pathology ,medicine.medical_specialty ,Computer science ,Radiography ,Sensitivity and Specificity ,Article ,Pattern Recognition, Automated ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Computer Simulation ,Diagnosis, Computer-Assisted ,Radiological and Ultrasound Technology ,Artificial neural network ,Receiver operating characteristic ,Fourier Analysis ,business.industry ,Pneumoconiosis ,Computerized analysis ,medicine.disease ,Cad system ,Computer Science Applications ,ROC Curve ,Pattern recognition (psychology) ,Radiographic Image Interpretation, Computer-Assisted ,Radiography, Thoracic ,Neural Networks, Computer ,business ,Nuclear medicine - Abstract
It is difficult for radiologists to classify pneumoconiosis with small nodules on chest radiographs. Therefore, we have developed a computer-aided diagnosis (CAD) system based on the rule-based plus artificial neural network (ANN) method for distinction between normal and abnormal regions of interest (ROIs) selected from chest radiographs with and without pneumoconiosis. The image database consists of 11 normal and 12 abnormal chest radiographs. These abnormal cases included five silicoses, four asbestoses, and three other pneumoconioses. ROIs (matrix size, 32 × 32) were selected from normal and abnormal lungs. We obtained power spectra (PS) by Fourier transform for the frequency analysis. A rule-based method using PS values at 0.179 and 0.357 cycles per millimeter, corresponding to the spatial frequencies of nodular patterns, were employed for identification of obviously normal or obviously abnormal ROIs. Then, ANN was applied for classification of the remaining normal and abnormal ROIs, which were not classified as obviously abnormal or normal by the rule-based method. The classification performance was evaluated by the area under the receiver operating characteristic curve (Az value). The Az value was 0.972 ± 0.012 for the rule-based plus ANN method, which was larger than that of 0.961 ± 0.016 for the ANN method alone (P ≤ 0.15) and that of 0.873 for the rule-based method alone. We have developed a rule-based plus pattern recognition technique based on the ANN for classification of pneumoconiosis on chest radiography. Our CAD system based on PS would be useful to assist radiologists in the classification of pneumoconiosis.
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- 2010
12. Improvement of temporal and dynamic subtraction images on abdominal CT using 3D global image matching and nonlinear image warping techniques
- Author
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Masayuki Suzuki, Akihiro Takemura, Osamu Matsui, Eiichiro Okumura, and Shigeru Sanada
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Male ,Time Factors ,Movement ,Abdominal ct ,Temporal subtraction ,behavioral disciplines and activities ,Imaging, Three-Dimensional ,Humans ,Radiology, Nuclear Medicine and imaging ,Computer vision ,False Positive Reactions ,Image warping ,Mathematics ,Aged ,Models, Statistical ,Radiological and Ultrasound Technology ,Image matching ,business.industry ,musculoskeletal, neural, and ocular physiology ,Respiration ,digestive, oral, and skin physiology ,Subtraction ,Middle Aged ,Global matching ,Nonlinear system ,Ring enhancement ,Liver ,Subtraction Technique ,Radiographic Image Interpretation, Computer-Assisted ,Female ,Artificial intelligence ,business ,Tomography, X-Ray Computed ,human activities ,psychological phenomena and processes - Abstract
Accurate registration of the corresponding non-enhanced and arterial-phase CT images is necessary to create temporal and dynamic subtraction images for the enhancement of subtle abnormalities. However, respiratory movement causes misregistration at the periphery of the liver. To reduce these misregistration errors, we developed a temporal and dynamic subtraction technique to enhance small HCC by 3D global matching and nonlinear image warping techniques. The study population consisted of 21 patients with HCC. Using the 3D global matching and nonlinear image warping technique, we registered current and previous arterial-phase CT images or current non-enhanced and arterial-phase CT images obtained in the same position. The temporal subtraction image was obtained by subtracting the previous arterial-phase CT image from the warped current arterial-phase CT image. The dynamic subtraction image was obtained by the subtraction of the current non-enhanced CT image from the warped current arterial-phase CT image. The percentage of fair or superior temporal subtraction images increased from 52.4% to 95.2% using the new technique, while on the dynamic subtraction images, the percentage increased from 66.6% to 95.2%. The new subtraction technique may facilitate the diagnosis of subtle HCC based on the superior ability of these subtraction images to show nodular and/or ring enhancement.
- Published
- 2007
13. Automated image-matching technique for comparative diagnosis of the liver on CT examination
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Masayuki Suzuki, Eiichiro Okumura, Osamu Matsui, Yoshito Tsushima, and Shigeru Sanada
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Image Series ,Male ,Radiography, Abdominal ,Carcinoma, Hepatocellular ,Computer science ,Image registration ,Standard anatomical position ,Automation ,Ct examination ,Humans ,Computer vision ,Aged ,business.industry ,Image matching ,Liver Neoplasms ,Subtraction ,General Medicine ,Middle Aged ,Fatty Liver ,Liver ,Radiographic Image Interpretation, Computer-Assisted ,Female ,Tomography ,Artificial intelligence ,business ,Tomography, X-Ray Computed ,Automated method - Abstract
When interpreting enhanced computer tomography (CT) images of the upper abdomen, radiologists visually select a set of images of the same anatomical positions from two or more CT image series (i.e., non-enhanced and contrast-enhanced CT images at arterial and delayed phase) to depict and to characterize any abnormalities. The same process is also necessary to create subtraction images by computer. We have developed an automated image selection system using a template-matching technique that allows the recognition of image sets at the same anatomical position from two CT image series. Using the template-matching technique, we compared several anatomical structures in each CT image at the same anatomical position. As the position of the liver may shift according to respiratory movement, not only the shape of the liver but also the gallbladder and other prominent structures included in the CT images were compared to allow appropriate selection of a set of CT images. This novel technique was applied in 11 upper abdominal CT examinations. In CT images with a slice thickness of 7.0 or 7.5 mm, the percentage of image sets selected correctly by the automated procedure was 86.6+/-15.3% per case. In CT images with a slice thickness of 1.25 mm, the percentages of correct selection of image sets by the automated procedure were 79.4+/-12.4% (non-enhanced and arterial-phase CT images) and 86.4+/-10.1% (arterial- and delayed-phase CT images). This automated method is useful for assisting in interpreting CT images and in creating digital subtraction images.
- Published
- 2006
14. [An automated slice-matching technique for plain and contrast-enhanced images of liver in CT examination by using template matching technique]
- Author
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Shigeru Sanada, Eiichiro Okumura, Shintaro Funabasama, and Masayuki Suzuki
- Subjects
Liver Cirrhosis ,Male ,Matching (statistics) ,Carcinoma, Hepatocellular ,Computer science ,business.industry ,Template matching ,media_common.quotation_subject ,Liver Neoplasms ,General Medicine ,Middle Aged ,Text mining ,Liver ,Ct examination ,Image Processing, Computer-Assisted ,Contrast (vision) ,Humans ,Computer vision ,Artificial intelligence ,business ,Tomography, Spiral Computed ,media_common - Published
- 2004
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