Fully Synthetic Longitudinal Real-World Data From Hearing Aid Wearers for Public Health Policy Modeling

Citation: Christensen JH, Pontoppidan NH, Rossing R, Anisetti M, Bamiou D-E, Spanoudakis G, Murdin L, Bibas T, Kikidiks D, Dimakopoulos N, Giotis G and Ecomomou A (2019) Fully Synthetic Longitudinal Real-World Data From Hearing Aid Wearers for Public Health Policy Modeling. Front. Neurosci. 13:850. doi: 10.3389/fnins.2019.00850 Fully Synthetic Longitudinal Real-World Data From Hearing Aid Wearers for Public Health Policy Modeling

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