Pattern recognition and direct control home use of a multi-articulating hand prosthesis
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Todd A. Kuiken | Ann M. Simon | Levi J. Hargrove | Laura A. Miller | Kristi L. Turner | A. M. Simon | T. Kuiken | L. Miller | L. Hargrove | Kristi L. Turner
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