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뇌질환 환자의 로봇 재활치료

Robotics in rehabilitation for patients with brain disease

전민호;이진화
Chun, Min Ho;Yi, Jin Hwa

  • 발행 : 20130100

초록

During recent years, robot-assisted rehabilitation therapies for patients with brain disease have rapidly advanced. However, due to their high cost and lack of evidence of clinical therapeutic effects, applying robot-assisted rehabilitation therapies has been difficult. This study was conducted to help patients understand more about robot-assisted rehabilitation therapies and to suggest various clinical applications. Existing robot therapies are expensive due to the cost needed for initial development. In addition, only clinical trial results of small sample sizes have been published. Therefore, attempts to improve technologies should be encouraged and ongoing research about their therapeutic effects should be performed. These attempts would help to overcome the disadvantages of previous conventional rehabilitation techniques and to optimize rehabilitation therapies. Technology development, active clinical research, and investments should be encouraged for robot-assisted rehabilitation for the future.

키워드

참고문헌

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피인용 문헌

  1. Use of robots in rehabilitative treatment vol.58, pp.2, 2015, https://doi.org/10.5124/jkma.2015.58.2.141
  2. 어깨의 움직임을 중심으로 한 상지재활로봇 NREX의 착용감 개선 vol.14, pp.4, 2019, https://doi.org/10.7746/jkros.2019.14.4.318
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