Curriculum Vitaes

Syoji Kobashi

  (小橋 昌司)

Profile Information

Affiliation
University of Hyogo
National Cerebral and Cardiovascular Center
Degree
博士(工学)(姫路工業大学)

Researcher number
00332966
ORCID ID
 https://orcid.org/0000-0003-3659-4114
J-GLOBAL ID
200901031674454407
researchmap Member ID
6000003807

External link

Papers

 450
  • Naoya Takashima, Daisuke Fujita, Tsuyoshi Sanuki, Yoshikazu Kinoshita, Syoji Kobashi
    Soft Computing, Mar 17, 2026  Peer-reviewedLast authorCorresponding author
  • Sodai Yokoyama, Takashi Mizobe, Hideo Aihara, Tomokazu Hayashi, Tetsuya Urata, Syoji Kobashi
    International Workshop on Advanced Imaging Technology (IWAIT) 2026, 169-169, Feb 27, 2026  Last authorCorresponding author
  • Shogo Watanabe, Nice Ren, Yukihiro Imaoka, Kento Morita, Syoji Kobashi, Nobutaka Mukae, Koichi Arimura, Kunihiro Nishimura, Koji Iihara
    Journal of the American Heart Association, 15(1) e042387, Dec 30, 2025  Peer-reviewed
    BACKGROUND: Hematoma expansion (HE) is a significant risk factor for poor prognosis in patients with intracerebral hemorrhage (ICH). Accurately predicting HE is crucial for determining optimal treatment strategies. METHODS: This study enrolled 452 patients with ICH from 10 hospitals. To predict HE, 28 clinical variables available on patient arrival (including medical history, ICH location, and ICH volume) and 1142 radiomics features extracted from noncontrast computed tomography images of the ICH regions were used. Clinical variables and radiomics features were selected using gradient boosting and the least absolute shrinkage and selection operator. Three HE prediction models were built on clinical variables alone, radiomics features alone, and a third combining both. The models were compared using 5-fold cross-validation, and the mean area under the receiver operating characteristic curve was calculated for each. Additionally, the important features of HE prediction in the combined model were explored. RESULTS: The combined model demonstrated the highest performance for predicting HE with a 5-fold mean area under the receiver operating characteristic curve of 0.77±0.05, compared with 0.70±0.06 for the clinical variables alone and 0.73±0.04 for the radiomics features alone. Permutation feature importance analysis suggested that anticoagulant treatment was the most predictive of HE. CONCLUSIONS: A predictive model for HE was developed using the medical history, clinical features available on the patient's arrival, imaging, and radiomics features extracted from computed tomography images. This prediction model will assist non-stroke care specialists in making treatment decisions for ICH in emergency settings.
  • Naoya Takashima, Saya Ando, Daisuke Fujita, Manabu Nii, Kumiko Ando, Reiichi Ishikura, Syoji Kobashi
    Lecture Notes in Networks and Systems, 312-321, Dec 2, 2025  Peer-reviewedLast authorCorresponding author
  • Nushrat Afroz Roza, Sayaka Misaki, Syoji Kobashi, Rashedur Rahman, Ayumi Seko, Daisuke Fujita, Yoshiyuki Watanabe
    Lecture Notes in Networks and Systems, 123-132, Dec 2, 2025  Peer-reviewedLast authorCorresponding author

Books and Other Publications

 2

Presentations

 552

Teaching Experience

 17

Research Projects

 25

Academic Activities

 7

Social Activities

 2

Media Coverage

 18