研究者業績

小橋 昌司

コバシ ショウジ  (Syoji Kobashi)

基本情報

所属
兵庫県立大学 工学研究科 教授 (研究所長)
学位
博士(工学)(姫路工業大学)

研究者番号
00332966
ORCID ID
 https://orcid.org/0000-0003-3659-4114
J-GLOBAL ID
200901031674454407
researchmap会員ID
6000003807

外部リンク

論文

 299
  • Rashedur Rahman, Naomi Yagi, Keigo Hayashi, Akihiro Maruo, Hirotsugu Muratsu, Syoji Kobashi
    Scientific Reports 14(1) 8004-8004 2024年12月  査読有り最終著者責任著者
    Pelvic fractures pose significant challenges in medical diagnosis due to the complex structure of the pelvic bones. Timely diagnosis of pelvic fractures is critical to reduce complications and mortality rates. While computed tomography (CT) is highly accurate in detecting pelvic fractures, the initial diagnostic procedure usually involves pelvic X-rays (PXR). In recent years, many deep learning-based methods have been developed utilizing ImageNet-based transfer learning for diagnosing hip and pelvic fractures. However, the ImageNet dataset contains natural RGB images which are different than PXR. In this study, we proposed a two-step transfer learning approach that improved the diagnosis of pelvic fractures in PXR images. The first step involved training a deep convolutional neural network (DCNN) using synthesized PXR images derived from 3D-CT by digitally reconstructed radiographs (DRR). In the second step, the classification layers of the DCNN were fine-tuned using acquired PXR images. The performance of the proposed method was compared with the conventional ImageNet-based transfer learning method. Experimental results demonstrated that the proposed DRR-based method, using 20 synthesized PXR images for each CT, achieved superior performance with the area under the receiver operating characteristic curves (AUROCs) of 0.9327 and 0.8014 for visible and invisible fractures, respectively. The ImageNet-based method yields AUROCs of 0.8908 and 0.7308 for visible and invisible fractures, respectively.
  • Daisuke FUJITA, Yuki ADACHI, Syoji KOBASHI
    Journal of Japan Society for Fuzzy Theory and Intelligent Informatics 36(2) 610-615 2024年5月15日  査読有り最終著者
  • Kenta Takatsuji, Yoshikazu Kida, Kenta Sasaki, Daisuke Fujita, Yusuke Kobayashi, Tsuyoshi Sukenari, Yoshihiro Kotoura, Masataka Minami, Syoji Kobashi, Kenji Takahashi
    The Journal of bone and joint surgery. American volume 2024年5月14日  査読有り
    BACKGROUND: Ultrasonography is used to diagnose osteochondritis dissecans (OCD) of the humerus; however, its reliability depends on the technical proficiency of the examiner. Recently, computer-aided diagnosis (CAD) using deep learning has been applied in the field of medical science, and high diagnostic accuracy has been reported. We aimed to develop a deep learning-based CAD system for OCD detection on ultrasound images and to evaluate the accuracy of OCD detection using the CAD system. METHODS: The CAD process comprises 2 steps: humeral capitellum detection using an object-detection algorithm and OCD classification using an image classification network. Four-directional ultrasound images of the elbow of the throwing arm of 196 baseball players (mean age, 11.2 years), including 104 players with normal findings and 92 with OCD, were used for training and validation. An external dataset of 20 baseball players (10 with normal findings and 10 with OCD) was used to evaluate the accuracy of the CAD system. A confusion matrix and the area under the receiver operating characteristic curve (AUC) were used to evaluate the system. RESULTS: Clinical evaluation using the external dataset resulted in high AUCs in all 4 directions: 0.969 for the anterior long axis, 0.966 for the anterior short axis, 0.996 for the posterior long axis, and 0.993 for the posterior short axis. The accuracy of OCD detection thus exceeded 0.9 in all 4 directions. CONCLUSIONS: We propose a deep learning-based CAD system to detect OCD lesions on ultrasound images. The CAD system achieved high accuracy in all 4 directions of the elbow. This CAD system with a deep learning model may be useful for OCD screening during medical checkups to reduce the probability of missing an OCD lesion. LEVEL OF EVIDENCE: Diagnostic Level II. See Instructions for Authors for a complete description of levels of evidence.
  • Kenta Sasaki, Daisuke Fujita, Kenta Takatsuji, Yoshihiro Kotoura, Masataka Minami, Yusuke Kobayashi, Tsuyoshi Sukenari, Yoshikazu Kida, Kenji Takahashi, Syoji Kobashi
    International Journal of Computer Assisted Radiology and Surgery 2024年1月17日  査読有り最終著者責任著者
    PURPOSE: Osteochondritis dissecans (OCD) of the humeral capitellum is a common cause of elbow disorders, particularly among young throwing athletes. Conservative treatment is the preferred treatment for managing OCD, and early intervention significantly influences the possibility of complete disease resolution. The purpose of this study is to develop a deep learning-based classification model in ultrasound images for computer-aided diagnosis. METHODS: This paper proposes a deep learning-based OCD classification method in ultrasound images. The proposed method first detects the humeral capitellum detection using YOLO and then estimates the OCD probability of the detected region probability using VGG16. We hypothesis that the performance will be improved by eliminating unnecessary regions. To validate the performance of the proposed method, it was applied to 158 subjects (OCD: 67, Normal: 91) using five-fold-cross-validation. RESULTS: The study demonstrated that the humeral capitellum detection achieved a mean average precision (mAP) of over 0.95, while OCD probability estimation achieved an average accuracy of 0.890, precision of 0.888, recall of 0.927, F1 score of 0.894, and an area under the curve (AUC) of 0.962. On the other hand, when the classification model was constructed for the entire image, accuracy, precision, recall, F1 score, and AUC were 0.806, 0.806, 0.932, 0.843, and 0.928, respectively. The findings suggest the high-performance potential of the proposed model for OCD classification in ultrasonic images. CONCLUSION: This paper introduces a deep learning-based OCD classification method. The experimental results emphasize the effectiveness of focusing on the humeral capitellum for OCD classification in ultrasound images. Future work should involve evaluating the effectiveness of employing the proposed method by physicians during medical check-ups for OCD.
  • Kenta Sasaki, Daisuke Fujita, Syoji Kobashi
    The 24th International Symposium on Advanced Intelligent Systems (ISIS), 519-524 2023年12月  査読有り最終著者責任著者

MISC

 238
  • Katsuya Kondo, Syoji Kobashi, Yutaka Hata, Atsushi Goto, Hayao Morinaga
    Proceedings of the First International Conference on Information Technology and Applications (ICITA 2002) 541-544 2002年  
    The information obtained from lacustrine laminated diatomite gives us the environmental records in the past. The varved diatomite is composed of the alternation of light-colored and dark-colored laminae. The lamina thickness has the periodic variation, which is most likely affected by climatic change due to periodic solar activity. In this paper, we propose an effective method for evaluating the space-varying lamina thickness of lacustrine diatomite. The proposed method is achieved by using 2-dimensional(2D) filters and space/spatial-frequency analysis. Through the simulation of lacustrine laminated diatomite, we show that this simple imaging algorithm allows clear and intuitive display of the change in the lamina thickness with respect to space (the distance from the surface).
  • S Kobashi, T Matsumoto, Y Hata, YT Kitamuma, T Yanagida
    MULTIMEDIA, IMAGE PROCESSING AND SOFT COMPUTING: TRENDS, PRINCIPLES AND APPLICATIONS 13 287-292 2002年  
    Near-infrared spectroscopy (NIRS) is a recently developed method, which can investigate the human brain function with noninvasive, high time resolution, and high portability. It has been applied to assessment of language dominance by Watanabe et al, however, it has a risk which some measurement points took other brain activities occurred in like the motor area. This paper improves the method by introducing fuzzy logic. Fuzzy logic is used to giving fuzzy degrees belonging to the speech, motor and other areas for each measurement point. Using the obtained fuzzy degrees, we redefine the laterality index as the fuzzy mean of the laterality indexes for all paired measurement points.
  • Keisuke Sugano, Katsuya Kondo, Syoji Kobashi, Yutaka Hata, Toshiyuki Sawayama, Kazuhiko Taniguchi
    Proceedings of the First International Conference on Information Technology and Applications (ICITA 2002) 529-534 2002年  
    In this paper, we describe a development of a new ultrasonic oscillosensor and its application to recognition of human action. The ultrasonic wave is used in many fields due to its low cost and non-invasiveness. The ultrasonic wave sensitivity catches the difference of the sound property and it propagates in the water. By using this, we develop a new oscillosensor using the ultrasonic wave. Firstly, this paper shows the principle of this new sensor. Secondly, as an example of the practical application, this paper describes a recognition system of human action on the medical bed. From the result, this sensor can monitor the vital action of a patient and it can detect a state that a patient falls into bad condition, such as motionless or suffering.
  • 小橋 昌司, 喜多村 祐里, 近藤 克哉, 畑 豊, 柳田 敏雄
    バイオメディカル・ファジィ・システム学会大会講演論文集 15 51-54 2002年  
    Assessment of language dominance is one of important pre-treatments of brain surgery. The objective of this paper is to propose an estimation method of 'Laterality Index (LI)', which is a measure of language dominance, using near-infrared spectroscopy and imaging (NIRS/I) modality. The proposed method called fuzzy LI is a fuzzy-extension of the conventional estimation method (Watanabe et. al., Neuroscience Letters, 1998) called crisp LI. The benefit of our method is that the fuzzy degree belonging to language area for each measurement point is given, and that the language area is dynamically determined study by study using only NIRS/I. Experimental results on seven normal healthy right-handed volunteers showed that the fuzzy LI was correlated with one's handedness investigated by Edinburgh score at 77%.
  • S Kobashi, T Takae, YT Kitamura, Y Hata, T Yanagida
    2001 INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, VOL III, PROCEEDINGS 3 1095-1098 2001年  
    This paper shows an automated method for segmenting the lateral ventricles from human brain MR images. It enables us to automatically volumetry and construct 3-D rendering images. First of all we segment the whole brain and the cerebrospinal fluid (CSF) by using a 3-D MR image processing software developed by Hata et at Our method for segmenting the lateral ventricles is based on fuzzy inference techniques, which is able to represent expert's knowledge and to introduce the knowledge to image processing The employed knowledge on the lateral ventricles is the location, the intensity, and the shape The proposed method was applied to MR volumes of 20 normal volunteers, 20 Alzheimer disease and 20 hydrocephalus patients The experimental results validated that this method was able to segment the lateral ventricles with high accuracy.
  • S. Kobashi, N. Kamiura, Y. Hata, F. Miyawaki
    Image and Vision Computing 19(4) 185-193 2001年  
    Volume visualization of cerebral blood vessels is highly significant for diagnosis of the cerebral diseases. It is because the automated segmentation of the blood vessels from an MR angiography (MRA) image is a knotty problem that there are few works on it. This paper proposes an automated method to segment the blood vessels from 3D time of flight (TOF) MRA volume data. The method consists of: (1) removing the background, (2) volume quantization by watershed segmentation, and (3) classification of primitives by using an artificial neural network (NN). In the proposed method, the NN classifies each primitive, which is a clump of voxels, by evaluating the intensity and the 3D shape. The method was applied to seven MRA data sets. The evaluation was done by comparing with the manual classification results. The average classification accuracy was 80.8%. The method also showed the volume visualizations using target maximum intensity projection (target MIP) and surface shaded display (SSD). The evaluation by a physician showed that unclear regions on the conventional image were clearly depicted on applying the method, and that the produced images were quite interesting for diagnosis of cerebral diseases such as aneurysm and encephaloma. The quantitative and qualitative evaluations showed that the method was appropriate for blood vessel segmentation.
  • T Zui, S Kobashi, YT Kitamura, Y Hata, T Yanagida
    IEEE WORKSHOP ON MATHEMATICAL METHODS IN BIOMEDICAL IMAGE ANALYSIS, PROCEEDINGS 113-120 2001年  
    Functional magnetic resonance imaging (fMRI) provides high-resolution datasets that allow neuro-scientists to sensitively detect activated region relating to a given task. Cerebral hemodynamic response (HR) of neural activity at the activated region is delayed and dispersed in time. This study proposes a new data-driven analysis for detecting the activated region and measuring the temporal delay of HRs. Our method can be divided into four steps. Firstly, a standard preprocessing (realigning and high pass filtering) is applied to the fMRI data. Secondly, we reconstruct the time course of signal in order to improve the time resolution. Thirdly, we derive the form and the delays of HRs using continuous wavelet transform. Finally, we give wavelet coefficient as the degree of activation. The proposed method has been applied to 7 right-handed subjects on right or left hand-gripping task. Experimental results showed that primary motor cortex (M1) and the supplementary motor area (SMA) were detected as activated region, and means of temporal delays of HRs were right/left = 4.49/4.92 sec at SMA and 5.41/5.46 sec at M1. Consequently, our method could classify the difference of HR delay between M1 and SMA.
  • M Terao, S Kobashi, Y Hata, M Tanaka, Y Tokimoto, O Ishikawa, M Ishikawa
    JOINT 9TH IFSA WORLD CONGRESS AND 20TH NAFIPS INTERNATIONAL CONFERENCE, PROCEEDINGS, VOLS. 1-5 3 1620-1625 2001年  
    Surface rendering of the endorrhachis is one of the effective techniques to diagnose diseases of the endorrhachis caused by spine malformations. It requires a procedure for segmenting the 3D endorrhachis from many MR images consisting the whole human body, however, few automated extraction methods have been developed before. In this paper, we propose a fuzzy rule-based approach for extracting the endorrhachis from MR lumbar images. Our target portion, the endorrhachis, consists of the spinal cord and the nerve roots. This method is based on knowledge of location and knowledge of intensity. They are expressed by fuzzy if-then rules and compiled to a total degree as the measure of extraction. Our extraction method can be divided into two steps. Firstly, the method extracts the spinal cord by using thresholding and labeling. Secondly, our method extracts the nerve roots with the knowledge derived from anatomical information. The experimental results showed that our method successfully extracted the target portion, and that the results were useful to diagnose the compression of the endorrhachis.
  • S Kobashi, T Takae, Y Hata, YT Kitamura, T Yanagida, O Ishikawa, M Ishikawa
    JOINT 9TH IFSA WORLD CONGRESS AND 20TH NAFIPS INTERNATIONAL CONFERENCE, PROCEEDINGS, VOLS. 1-5 4 1961-1966 2001年  
    This paper presents a computer-aided diagnosis (CAD) system, which be able to segment the whole brain, the brain portions, the cerebrospinal fluid (CSF) and the lateral ventricles from human brain MR images, and then to give the volumes and the 3-D volume renderings. In the system, the whole brain and the brain portions are automatically segmented by using previously developed software (Hata et al, IEEE SMC-C, 2000). In this paper, we introduce a new concept of a representative line to segment the CSF and the lateral ventricles. The representative line is automatically detected by inferring its direction with evaluating the location in the head, the position in the CSF, and the shape of the line. The inference is preformed with fuzzy inference technique. The developed system was applied to MR volumes of 20 normal subjects, 20 Alzheimer disease and 20 hydrocephalus patients. The segmentation error ratio was 1.98% in comparison with the volumes of manually delineated region. This allows us to experimentally characterize modes of variation that are indicative of disease processes.
  • S Kobashi, Y Hata, YT Kitamura, T Hayakata, T Yanagida
    COMPUTATIONAL INTELLIGENCE: THEORY AND APPLICATIONS, PROCEEDINGS 2206 124-136 2001年  
    Near-infrared spectroscopy (NIRS) is a recently developed method, which can investigate the human brain function with noninvasive, high time resolution, and high portability. However, there are few discussions on post-processing of time series data taken by the NIRS because of the difficulty of understanding the obtained data and the complexity of the human higher-order brain function. This paper discusses on an analysis of such a time series. The analysis method is based on fuzzy c-means (FCM) clustering and wavelet transform, and it divides the time series of a measurement point into some clusters with respect to wavelet coefficients. To evaluate the performance of the method, it has been applied to four healthy volunteers, and three brain-dead patients. The results showed that the proposed method could segment the NIRS time series into some clusters that may represent brain states, and could estimate the number of clusters.
  • Y Hata, S Kobashi, Y Tokimoto, M Ishikawa, H Ishikawa
    COMPUTATIONAL INTELLIGENCE: THEORY AND APPLICATIONS, PROCEEDINGS 2206 55-58 2001年  
    This paper proposes a computer aided diagnosis system of meniscal tears from 3D human knee MR image with T1-weighted and T2-weighted MR images. The first step of our method is a 3D image registration between both images on the computer display by manual. The second step determines the candidate region of the menisci from T2-weighted MR image aided by fuzzy if then rules with respect to the location and the intensity. The final step determines the voxels in the menisci from the candidate region by using T1-weighted and T2-weighted MR images. We applied this method to several subjects. All voxels in the menisci of each subject were successfully identified and their 3D surfaces were displayed. Thus, our developed system would improve to diagnose the meniscal tears.
  • 小橋 昌司
    日本ファジィ学会誌 13(3) 280-280 2001年  
    <p>現在の医療現場において、MRIやCT装置の利用は必要不可欠な診断手段である。それに伴い計算機による診断支援システムの構築が行われてきたが、画像診断は専門家である医師の知識に負う所が多いため、容積測定や立体表示の自動化は困難であった。そこで、本研究では医師の知識をファジィインフォメーショングラニュレーション(ファジィIG)の概念に基づいてファジィモデル化した医用画像処理法を示した。本論文は、第2章:頭部MR画像からの全脳領域抽出の為のファジィIGによる自動しきい値発見法、第3章および第4章:ニューラルネットワークおよびファジィIGを用いた頭部MR Angiography画像からの脳血管領域抽出法から構成される。さらに第5章で提案した医用画像処理法を核とした脳機能診断支援システムを構築し、実際の臨床例を用いてその有用性を検証した。本研究では、ファジィIGを医用画像処理に応用することで、個人差や症例差が激しい臨床例にも適用できた。</p>
  • 松本 綱紀, 小橋 昌司, 畑 豊, 喜多村 祐里, 柳田 敏雄
    バイオメディカル・ファジィ・システム学会大会講演論文集 14 46-47 2001年  
    Hemispheric dominance for language has been assessed by the Wada test which is an invasive technique with considerable risk of complications. Recently, optical topography system has been used as a non-invasive method which is applicable in detecting the language dominance. Our method can be divided into three steps. Firstly, preprocessing is applied to the data. Secondly, we estimate the degree of the speech area. Finally, we calculate laterality index based on the degree of the speech area. Our results demonstrate that our method is effective for decision of language dominance.
  • 清水 孝, 長宗 高樹, 小橋 昌司, 畑 豊, 谷口 和彦, 澤山 智之
    バイオメディカル・ファジィ・システム学会大会講演論文集 14 60-63 2001年  
    This paper proposes an automated discriminating method of material using ultrasonic imaging that can conform change of tissue elasticity. The proposed method employs fuzzy infernce. Firstly, three attributes are acquired from ultrasonic wave of the known material. Secondly, membership functions are constructed using three attributes automatically. Finally, we presume the material using the function from unknown ultrasonic wave. We apply this method to two situations with bone phantom and without bone phantom. The experimental results on six materials showed that each presumed rates under the two situations were 86.6% and 63.3%.
  • 畑 豊, 小橋 昌司
    バイオメディカル・ファジィ・システム学会誌 3(1) 1-2 2001年  
  • S Kobashi, Y Hata, T Yanagida, Y Kitamura, H Kitagaki, M Ishikawa
    RADIOLOGY 217 209-209 2000年11月  
  • 畑 豊, 小橋 昌司, 喜多村 祐里, 柳田 敏雄
    Medical imaging technology 18(5) 681-687 2000年9月25日  
  • Y Hata, S Kobashi, S Hirano, H Kitagaki, E Mori
    IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS PART C-APPLICATIONS AND REVIEWS 30(3) 381-395 2000年8月  
    This paper proposes an automated procedure for segmenting an MR image of a human brain based on fuzzy logic, An MR volumetric image composed of many slice images consists of several parts: gray matter, white matter, cerebrospinal fluid, and others. Generally, the histogram shapes of MR volumetric images are different from person to person. Fuzzy information granulation of the histograms can lead to a series of histogram peaks. The intensity thresholds for segmenting the whole brain of a subject are automatically determined by finding the peaks of the intensity histogram obtained from the MR images. After these thresholds are evaluated by a procedure called region growing, the whole brain can be identified. A segmentation experiment was done on 50 human brain MR volumes. A statistical analysis showed that the automated segmented volumes were similar to the volumes manually segmented by a physician. Next, we describe a procedure for decomposing the obtained whole brain into the left and right cerebral hemispheres, the cerebellum and the brain stem, Fuzzy if-then rules can represent information on the anatomical locations, segmentation boundaries as well as intensities. Evaluation of the inferred result using the region growing method can then lead to the decomposition of the whole brain. We applied this method to 44 MR volumes, The decomposed portions were statistically compared with those manually decomposed by a physician, Consequently,our method can identify the whole brain, the left cerebral hemisphere, the right cerebral hemisphere, the cerebellum and the brain stem with high accuracy and therefore can provide the three dimensional shapes of these regions.
  • S Kobashi, N Kamiura, Y Hata, F Miyawaki
    INTERNATIONAL JOURNAL OF PATTERN RECOGNITION AND ARTIFICIAL INTELLIGENCE 14(4) 409-425 2000年6月  
    This paper shows an application of fuzzy information granulation (fuzzy IC) to medical image segmentation. Fuzzy IG is to derive fuzzy granules from information. In the case of medical image segmentation, information and fuzzy granules correspond to an image taken from a medical scanner, and anatomical parts, namely region of interests (ROIs), respectively. The proposed method to granulate information is composed of volume quantization and fuzzy merging. Volume quantisation is to gather similar neighboring voxels. The generated quanta are selectively merged according to degrees for pre-defined fuzzy models that represent anatomical knowledge of medical images. The proposed method was applied to blood vessel extraction from three-dimensional time-of-Right (TOF) magnetic resonance angiography (MRA) images of the brain. The volume data studied in this work is composed of about 100 contiguous and volumetric MM images. According to the fuzzy IG concept, information correspond to the volume data, fuzzy granules corresponds to the blood vessels and fat. The qualitative evaluation by a physician was done for two- and three-dimensional images generated from the obtained blood vessels. The evaluation shows that the method can segment MRA volume data, and that fuzzy IG is applicable to, and suitable for medical image segmentation.
  • S Kobashi, Y Hata, Y Tokimoto, M Ishikawa
    MEDICAL IMAGING 2000: IMAGE PROCESSING, PTS 1 AND 2 3979 888-895 2000年  
    This paper presents a fuzzy rule-based region growing method for segmenting two-dimensional (2-D) and three-dimensional (3-D) magnetic resonance (MR) images. The method is an extension of the conventional region growing method. The proposed method evaluates the growing criteria by using fuzzy inference techniques. The use of the fuzzy if then rules is appropriate for describing the knowledge of the legions on the MR images. To evaluate the performance of the proposed method, it was applied to artificially generated images. In comparison with the conventional method, the proposed method shows high robustness for noisy images. The method then applied for segmenting the dynamic MR images of the liver. The dynamic MR imaging has been used for diagnosis of hepatocellular carcinoma (HCC), portal hypertension, and so on. Segmenting the liver, portal vein (PV), and inferior vena cava (IVC) can give useful description for the diagnosis, and is a basis work of a pre-surgery planning system and a virtual endoscope. To apply the proposed method, fuzzy if-then rules are derived from the time-density curve of ROIs. In the experimental results, the 2-D reconstructed and 3-D rendered images of the segmented liver, PV, and IVC are shown. The evaluation by a physician shows that the generated images are comparable to the hepatic anatomy, and they would be useful to understanding, diagnosis, and pre-surgery planning.
  • Y Hata, S Kobashi, N Kamiura, Y Kitamura, T Yanagida
    30TH IEEE INTERNATIONAL SYMPOSIUM ON MULTIPLE-VALUED LOGIC, PROCEEDINGS 273-278 2000年  
    This paper proposes an architecture of a registration system for medical images. Image registration is the process of determining correspondence between all points in two images of the same scene, and is now widely used to medical images. In medical imaging, segmentation, registration and interpolation play primary roles. In those, registration is the most time consuming task because we must compare all voxel data and then evaluate the matching degree many times. Quantitative evaluation criterion of matching degree with multiple-valued coding of the image feature is proposed, and all architecture to save the processing time of the data comparison is described Finally, as a practical application, we described the summary of a registration of human brain MR volume data to diagnose brain disease.
  • Y. Hata, S. Kobashi, S. Hirano, M. Ishikawa
    ICONIP 1999, 6th International Conference on Neural Information Processing - Proceedings 3 878-883 1999年  
    The paper introduces registration systems of multi-modality medical images and describes the practical systems related to brain science. A possibility for applying soft computing techniques is also shown. First we describe a registration system of computed tomography image and magnetic resonance angiography image of a human brain. This registration system is used to demonstrate anatomical location information of vascular lesion from the surface of the human skull. We next describe a registration system of magnetic resonance (MR) image and positron emission transmission (PET) image. The MR image can produce neuroanatomical information, and the PET image quantifies metabolic pathways in vivo. In both systems, we describe a possibility of soft computing techniques.
  • S Kobashi, Y Hata, Y Tokimoto, M Ishikawa
    MEDICAL IMAGING 1999: IMAGE PROCESSING, PTS 1 AND 2 3661 968-976 1999年  
    This paper shows a novel medical image segmentation method applied to blood vessel segmentation from magnetic resonance angiography volume data. The principle idea of the method is fuzzy information granulation concept. The method consists of 2 parts: (1) quantization and feature extraction, (2) iterative fuzzy synthesis. In the first part, volume quantization is performed with watershed segmentation technique. Each quantum is represented by three features, vascularity, narrowness and histogram consistency. Using these features, we estimate the fuzzy degrees of each quantum for knowledge models about MRA volume data. In the second part, the method increases the fuzzy degrees by selectively synthesizing neighboring quantums. As a result, we obtain some synthesized quantums. We regard them as fuzzy granules and classify them into blood vessel or fat by evaluating the fuzzy degrees. In the experimental result, three dimensional images are generated using target maximum intensity projection (MIP) and surface shaded display. The comparison with conventional MIP images shows that the unclarity region in conventional images are clearly depict in our images. The qualitative evaluation done by a physician shows that our method can extract blood vessel region and that the results are useful to diagnose the cerebral diseases.
  • 小橋 昌司, 畑 豊, 浜中 章洋, 時本 康紘, 石川 誠
    バイオメディカル・ファジィ・システム学会大会講演論文集 12 47-48 1999年  
    This article shows a SD-reconstruction method of dynamic MRA images of the liver. The method is based on fuzzy if-then rules that represent expert's knowledge. The membership functions used are determined using accumulative histogram of given images. Thus, each of steps runs automatically with robustness. In the experimental result, the method is applied to three dynamic MRA data sets of the liver. Qualitative evaluation by physicians were done for reconstructed 3D images. It shows that the method segments the hepatic veins precisely, and given images are essentially for surgery planning.
  • Yutaka Hata, Syoji Kobashi, Shoji Hirano
    Proceedings of the IEEE International Conference on Systems, Man and Cybernetics 4 4098-4102 1998年12月1日  
    This paper describes useful fuzzy logic techniques for medical image segmentation. Specific methods to be reviewed include fuzzy information granulation, fuzzy inference and fuzzy cluster identification. Fuzzy information granulation is introduced as a powerful scheme to find the thresholds to obtain the whole brain region in MR data. Fuzzy inference technique succeeds to segment the brain region into the left cerebral hemisphere, right cerebral hemisphere, cerebellum and brain stem. The fuzzy inference aided segmentation procedure is also useful to human foot CT image. Fuzzy cluster identification is adapted to determine the obtained clusters into blood vessel or other tissues in MRA image.
  • Hajime Kitagaki, Etsuro Mori, Shigeru Yamaji, Kazunari Ishii, Nobutsugu Hirono, Syoji Kobashi, Yutaka Hata
    Radiology 208(2) 431-439 1998年  
    PURPOSE: To determine the features of cortical atrophy in frontotemporal dementia (FTD) and Alzheimer disease by using a hemispheric surface display generated with magnetic resonance (MR) images. MATERIALS AND METHODS: The extent of cortical atrophy was evaluated with automated MR hemispheric surface display and volumetry in 18 patients with FTD and in 18 matched patients with Alzheimer disease. Results were compared with those in 18 healthy, matched control subjects. RESULTS: Most cortical regions, were significantly atrophic in FTD and Alzheimer disease. The frontal and anterior temporal lobes were significantly more atrophic in FTD than in Alzheimer disease. The mean hemispheric-to-intracranial volume ratio in patients with FTD (56.2%) and those with Alzheimer disease (58.4%) was significantly smaller than the ratio in the control subjects (66.0%). Asymmetry of hemispheric volume was significantly larger in the FTD group than in Alzheimer disease and control groups. CONCLUSION: Cortical atrophy in FTD is more widespread than was previously thought. Asymmetric frontal and anterior temporal atrophy is a distinctive feature of FTD and distinguishes it from Alzheimer disease. Hemispheric surface display is a useful complement to tomographic images and is useful for the evaluation of focal cortical atrophy in degenerative dementia, especially FTD.
  • 小橋 昌司, 上浦 尚武, 畑 豊
    日本ファジィ学会誌 10(1) 117-125 1998年  
    本文では, ファジィインフォメーショングラニュレーション(fuzzy Information Granulation; fuzzy IG)による, 頭部MR画像からの脳領域抽出の為の濃度しきい値発見法を提案する.Fuzzy IGとは, Zadehが提唱する新しい概念である.ファジィ情報(fuzzy information)は, 幾つかのファジィグラニュール(fuzzy granule)で構成され, fuzzy IGによってfuzzy informationからfuzzy granuleが引き出される.本手法では, fuzzy informationを濃度ヒストグラムとして, fuzzy granuleを脳を構成する白質部, 灰白質部, 脳脊髄液のヒストグラム上のピークとする.Fuzzy IGは, 医師の知識をモデル化したヒストグラムと, 画像の濃度ヒストグラムとのファジィマッチングによって行う.得られたしきい値を用いて自動抽出した脳体積と, 手動で得られた体積とを, 50例のMR画像に対して比較した結果, 平均誤差率は2.3%であった.
  • 小橋 昌司, 上浦 尚武, 畑 豊
    バイオメディカル・ファジィ・システム学会大会講演論文集 11 21-24 1998年  
    This paper shows an application of fuzzy information granulation to medical image segmentation for MR angiography image. The method treats medical image as information, and the granules are the anatomical parts such as blood vessel, fat, etc. Our granulation method consists of two stages : (1) Quantum generation and (2) Integration of them to produce granules. Quantum generation is performed with watershed segmentation. Integration process is achievedby estimating the degree for predefined models. By granulating MR angiography image, we obtain the bloodvessel region. In the experimental results, we show the target M IP and shaded surface display images of the segmented region. They are useful for evaluating the lesions such as the areury.
  • Kobashi, S., Morinaga, N., Hirano, S., Kamiura, N., Hata, Y., Yamato, K.
    Electrical Engineering in Japan (English translation of Denki Gakkai Ronbunshi) 119(4) 32-40 1997年12月1日  
    One of the most serious problems in medical science is an increment of Alzheimer&#039;s disease. It is known that the patient&#039;s brain atrophy is a result of neural cell loss. It is useful for the diagnosis of Alzheimer&#039;s disease to measure the volumes of the brain portions and to display them. We can obtain anatomical information from 2D slice images produced by MRI. We propose a computer-aided system for the diagnosis of Alzheimer&#039;s disease. The system consists of: (1) extraction of the portions from MRI data, (2) measurement of the volumes of the portions and then displaying them, and (3) user interface for a medical doctor. In this paper we describe procedures for the above. For extraction of the brain portions we propose the method based on standard region growing algorithm and the method of figure decomposition using the distance value. Comparison of the volumes of our extracted portions with volumes manually measured by a physician shows that the error rate, on the average, is 1.74% for 48 MRI data. We also discuss the 3D display, the measuring range, and the construction of the user interface for a physician. © 1997 Scripta Technica, Inc.
  • 片岡 照雄, 小橋 昌司, 上浦 尚武, 畑 豊, 大和 一晴
    電子情報通信学会総合大会講演論文集 1997(2) 441-442 1997年3月6日  
    MR脳画像同士の位置あわせは, 同じ脳疾患を持つ複数の患者の脳画像を重ねあわせることによって, 濃度値などの情報から共通する部位の異常を視覚的に捉えることが目的である. しかし, MR脳画像は大局的に見ると一様に見える部分であっても, 局所的には個々により異なる部分が多く, このことがMR脳画像同士の位置あわせを困難としている. 従来, 画像同士の位置あわせの方法がいくつか紹介されている. それらは, 画像の濃度値による相関関係による方法, 輪郭の曲率や変極点の位置情報による方法などである. 相関関係による方法のような対象画像の濃度値をもとに行われる方法は, 濃度値情報を取得するというMR脳画像を位置あわせする目的から使用することができない. また, これらの方法は対象画像の局所的な一致度に基づいて全体の位置あわせを行うものであり, 局所的に多くの部分が異なる脳画像の位置あわせに適用するのは困難である. 本文では, ラバー (ゴム) をモデル化した物理モデルを提案し, このラバーモデルを用いてMR脳画像の位置あわせを行う. ラバーモデルとは, 平面状のゴムを想定し, このゴムに歪みが加わったときのゴム全体の力学的な振る舞いをモデル化したものである. ラバーモデルでは局所的な変位が画像全体に影響を及ぼす構造をしており, 全体として協調しながら画像全体が移動するため, 大局的な位置あわせが可能である.
  • 畑 豊, 小橋 昌司, 上浦 尚武, 大和 一晴
    電子情報通信学会総合大会講演論文集 1997(1) 340-341 1997年3月6日  
    近年, MRやCT装置などの医療機械の発展によって, 人体内部が簡単に撮影できるようになった. また, 最近のコンピュータの高速化, メモリの大容量化によって, それらの情報を解析・可視化し, 評価することが容易になってきた. 一般的には, 興味ある部位をその医療画像から抽出し, それを評価・可視化・解析することが必要である. その際, 抽出目的部位の濃度幅が異なるため単純なしきい値処理では抽出できないのが現状である. そこで, 本稿では, 複数存在する抽出目的部位毎にしきい値処理を行って得られた画像群を, クリーネ代数を用いて統合する方法を示す. 更に, クリーネ代数を用いても解が得られない場合に対して, Brzozowskiの演算を用いることで解が得られることを示す.
  • Y Hata, S Kobashi, N Kamiura, M Ishikawa
    INFORMATION PROCESSING IN MEDICAL IMAGING 1230 387-392 1997年  
    This paper proposes an approach of fuzzy logic to 3D MR image segmentation. We show a fuzzy knowledge representation method to represent the knowledge needed to segment the target portions, and apply our method to 3D MR human brain image segmentation. In it we consider position knowledge, boundary surface knowledge and intensity knowledge. They are expressed by fuzzy if-then rules and compiled to a total degree as the measure of segmentation. The degree is evaluated in region growing technique and which segments the whole brain region into the left cerebral hemisphere, the right cerebral hemisphere, the cerebellum and the brain stem. The experimental result on 36 MR voxel data shows that our method extracted the portions precisely.
  • S Kobashi, N Kamiura, Y Hata, M Ishikawa
    INTERNATIONAL CONFERENCE ON IMAGE PROCESSING - PROCEEDINGS, VOL I 1 711-714 1997年  
    This paper presents a robust automatic threshold finding method for the human brain MR image segmentation. The method is based on fuzzy information granulation shown by Zadeh. The human brain MR image consists of several parts; the gray matter, white matter, cerebrospinal fluid and so on. By treating their parts as the fuzzy granules in the gray level histogram of the image and developing fuzzy matching technique, we can find required thresholds and can segment the brain region from the MR image. An experiment is done on 50 gray level histograms of the human brain MR volumes. To evaluate our method, we extract the brain region using the obtained thresholds. A comparison of the obtained region with canonical atlas images shows that our method find the thresholds of the gray matter and white matter correctly.
  • 小橋 昌司, 上浦 尚武, 畑 豊
    バイオメディカル・ファジィ・システム学会大会講演論文集 10 69-70 1997年  
    In this paper, we show a medical image segmentation for MR angiography images. In it, we introduce a cluster analysis technique aided by fuzzy logic. Our method classifies the clusters into the blood vessels and the others by comparing the intensity histogram with predefined models. In the experimental results, we show the target MIP and volume rendering images of the segmented region. They are useful for evaluating the lesions such as the areury.
  • 小橋 昌司, 森永 法郎, 平野 章二, 上浦 尚武, 畑 豊, 大和 一晴
    電気学会論文誌. C, 電子・情報・システム部門誌 = The transactions of the Institute of Electrical Engineers of Japan. C, A publication of Electronics, Information and System Society 116(11) 1238-1245 1996年10月20日  
  • 森永 法郎, 小橋 昌司, 上浦 尚武, 畑 豊, 大和 一晴
    インテリジェント・システム・シンポジウム講演論文集 = FAN Symposium : fuzzy, artificial intelligence, neural networks and computational intelligence 6 265-266 1996年10月18日  
  • N Morinaga, S Kobashi, N Kamiura, Y Hata, K Yamato
    SOFT COMPUTING IN INTELLIGENT SYSTEMS AND INFORMATION PROCESSING 170-175 1996年  
    The purpose of this paper establishes a method to decompose the brain region into the inherent portions. In it fuzzy inference is used to evaluate what portion each voxel belongs to. We develop a decomposition method based on standard region growing algorithm, which requires the inference results. The comparison of the volumes of our extracted portions with manually measured volumes by a medical doctor shows that on the average, the error rate is 2% for some MRI data.
  • S Kobashi, N Kamiura, Y Hata, K Yamato
    SOFT COMPUTING IN INTELLIGENT SYSTEMS AND INFORMATION PROCESSING 164-169 1996年  
    In the field of medical science, the extraction of the brain regions from MR images is valuable to diagnose: an Alzheimer's disease. We propose here a novel approach to extract the brain region using the fuzzy matching technique. We describe a modeling of the intensity histogram by fuzzy logic and evaluate fuzzy matching techniques for the extraction of the brain region. We develop the extraction algorithm based on a standard region growing technique. An experimental result on 36 MRI data shows that the error rate is 2.4%, on the average, against manually extracted volumes by a medical doctor.

講演・口頭発表等

 197

担当経験のある科目(授業)

 17

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 25

学術貢献活動

 5

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 2

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 11