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Reply to letter to editor: “RespOnse Shift ALgorithm in item response theory (ROSALI) for response shift detection with missing data in longitudinal patient-reported outcome studies”

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References

  1. Gunn, H. J. (2020). Letter to Editor Regarding "RespOnse Shift ALgorithm in Item response theory (ROSALI) for response shift detection with missing data in longitidinal payient-reported outcome studies. Quality of Life Research. https://doi.org/10.1007/s11136-020-02526-1.

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Correspondence to Véronique Sébille.

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Sébille, V., Hardouin, JB. & Blanchin, M. Reply to letter to editor: “RespOnse Shift ALgorithm in item response theory (ROSALI) for response shift detection with missing data in longitudinal patient-reported outcome studies”. Qual Life Res 29, 2611–2612 (2020). https://doi.org/10.1007/s11136-020-02592-5

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