Development of a machine learning model and a web application for predicting neurological outcome at hospital discharge in spinal cord injury patients
Kyota Kitagawa(Chiba University), Seiji Ohtori(Chiba University), Takeo Furuya(Chiba University), Sumihisa Orita(Chiba University), Juntaro Maruyama(Chiba University), Kazuhide Inage(Chiba University), Satoshi Maki(Chiba University), Yuki Shiratani(Chiba University), Yasunori Toki(Chiba University), Yasuhiro Shiga(Chiba University), Shuhei Iwata(Chiba University), Yuki Nagashima(Chiba University), Masahiro Inoue(Chiba University)
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