生体医工学
Online ISSN : 1881-4379
Print ISSN : 1347-443X
ISSN-L : 1347-443X
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機械学習を用いた臨床ビッグデータに基づく人工関節置換膝動態予測
小橋 昌司諸岡 孝俊奥野 真起子森本 雅和吉矢 晋一相河 聡
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2016 年 54Annual 巻 26PM-Abstract 号 p. S123

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Total knee Arthroscopy (TKA) is an operation which replaces the damaged knee with an artificial knee implant. There are some kinds of TKA procedures, and various kinds of prosthesis. Thus, it becomes a tough work for surgeons to select an appropriate procedure and prosthesis for individual patients. This study proposes a prediction method of post-operative implanted knee kinematics. It predicts the post-operative kinematics from only pre-operative kinematics using a machine learning method with clinical big data. In 46 TKA subjects, the method predicts the post-operative anterior-posterior translation with a correlation coefficient of 0.77 and a root-mean-squared error of 0.7mm.

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© 2016 社団法人日本生体医工学会
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