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Takuma Shibahara

Showing results (1-10 of 8) with videos related to

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Journal of General and Family Medicine|September 4, 2025
Outcomes associated with use of makyokansekito, a Japanese herbal kampo medicine, in outpatients with community-acquired pneumonia: A retrospective cohort studyYuichiro Matsuo, Takuma Shibahara, Hideo Yasunaga
Methods of Information in Medicine|May 8, 2020
A Method to Extract Feature Variables Contributed in Nonlinear Machine Learning PredictionMayumi Suzuki, Takuma Shibahara, Yoshihiro Muragaki
JCO Clinical Cancer Informatics|January 18, 2019
Machine-Learning Approach for Modeling Myelosuppression Attributed to Nimustine HydrochlorideTakuma Shibahara, Soko Ikuta, Yoshihiro Muragaki
Plos One|May 22, 2023
Deep learning generates custom-made logistic regression models for explaining how breast cancer subtypes are classifiedTakuma Shibahara, Chisa Wada, Yasuho Yamashita, et al.
Scientific Reports|September 29, 2022
Potential progression biomarkers of diabetic kidney disease determined using comprehensive machine learning analysis of non-targeted metabolomicsYosuke Hirakawa, Kentaro Yoshioka, Kensuke Kojima, et al.
BMC Medical Informatics and Decision Making|June 23, 2018
A machine learning model to predict the risk of 30-day readmissions in patients with heart failure: a retrospective analysis of electronic medical records dataSara Bersche Golas, Takuma Shibahara, Stephen Agboola, et al.
JMIR Cancer|February 19, 2026
Assessment of Predictive Factors That Shorten Duration of Treatment in Patients With Multiple Myeloma Using AI: Real-World Longitudinal Study Using Data From Medical Data Vision Claims DatabaseHiroshi Handa, Tadao Ishida, Shuji Ozaki, et al.
Nature Immunology|September 2, 2020
The PD-1 expression balance between effector and regulatory T cells predicts the clinical efficacy of PD-1 blockade therapiesShogo Kumagai, Yosuke Togashi, Takahiro Kamada, et al.
Pageof 1

Showing results (1-10 of 8) with videos related to

Sort By:
Pageof 1
Journal of General and Family Medicine|September 4, 2025
Outcomes associated with use of makyokansekito, a Japanese herbal kampo medicine, in outpatients with community-acquired pneumonia: A retrospective cohort studyYuichiro Matsuo, Takuma Shibahara, Hideo Yasunaga
Methods of Information in Medicine|May 8, 2020
A Method to Extract Feature Variables Contributed in Nonlinear Machine Learning PredictionMayumi Suzuki, Takuma Shibahara, Yoshihiro Muragaki
JCO Clinical Cancer Informatics|January 18, 2019
Machine-Learning Approach for Modeling Myelosuppression Attributed to Nimustine HydrochlorideTakuma Shibahara, Soko Ikuta, Yoshihiro Muragaki
Plos One|May 22, 2023
Deep learning generates custom-made logistic regression models for explaining how breast cancer subtypes are classifiedTakuma Shibahara, Chisa Wada, Yasuho Yamashita, et al.
Scientific Reports|September 29, 2022
Potential progression biomarkers of diabetic kidney disease determined using comprehensive machine learning analysis of non-targeted metabolomicsYosuke Hirakawa, Kentaro Yoshioka, Kensuke Kojima, et al.
BMC Medical Informatics and Decision Making|June 23, 2018
A machine learning model to predict the risk of 30-day readmissions in patients with heart failure: a retrospective analysis of electronic medical records dataSara Bersche Golas, Takuma Shibahara, Stephen Agboola, et al.
JMIR Cancer|February 19, 2026
Assessment of Predictive Factors That Shorten Duration of Treatment in Patients With Multiple Myeloma Using AI: Real-World Longitudinal Study Using Data From Medical Data Vision Claims DatabaseHiroshi Handa, Tadao Ishida, Shuji Ozaki, et al.
Nature Immunology|September 2, 2020
The PD-1 expression balance between effector and regulatory T cells predicts the clinical efficacy of PD-1 blockade therapiesShogo Kumagai, Yosuke Togashi, Takahiro Kamada, et al.
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