Corrigendum to Longitudinal machine learning modeling of MS patient trajectories improves predictions of disability progression: [Computer Methods and Programs in Biomedicine, Volume 208, (September 2021) 106180

  1. De Brouwer, E.
  2. Becker, T.
  3. Moreau, Y.
  4. Havrdova, E.K.
  5. Trojano, M.
  6. Eichau, S.
  7. Ozakbas, S.
  8. Onofrj, M.
  9. Grammond, P.
  10. Kuhle, J.
  11. Kappos, L.
  12. Sola, P.
  13. Cartechini, E.
  14. Lechner-Scott, J.
  15. Alroughani, R.
  16. Gerlach, O.
  17. Kalincik, T.
  18. Granella, F.
  19. Grand'Maison, F.
  20. Bergamaschi, R.
  21. Sá, M.J.
  22. Van Wijmeersch, B.
  23. Soysal, A.
  24. Sanchez-Menoyo, J.L.
  25. Solaro, C.
  26. Boz, C.
  27. Iuliano, G.
  28. Buzzard, K.
  29. Aguera-Morales, E.
  30. Terzi, M.
  31. Trivio, T.C.
  32. Spitaleri, D.
  33. Van Pesch, V.
  34. Shaygannejad, V.
  35. Moore, F.
  36. Oreja-Guevara, C.
  37. Maimone, D.
  38. Gouider, R.
  39. Csepany, T.
  40. Ramo-Tello, C.
  41. Peeters, L.
  42. Show all authors +
Journal:
Computer methods and programs in biomedicine

ISSN: 1872-7565

Year of publication: 2022

Volume: 213

Pages: 106479

Type: Erratum

DOI: 10.1016/J.CMPB.2021.106479 GOOGLE SCHOLAR lock_openOpen access editor