A data-driven framework for selecting and validating digital health metrics: use-case in neurological sensorimotor impairments
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Olivier Lambercy | Andreas R. Luft | Christoph M. Kanzler | Mike D. Rinderknecht | Anne Schwarz | Ilse Lamers | Cynthia Gagnon | Jeremia P. O. Held | Peter Feys | Roger Gassert | A. Luft | R. Gassert | O. Lambercy | P. Feys | I. Lamers | J. Held | C. Gagnon | A. Schwarz | C. Kanzler | M. Rinderknecht
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