Recommendations to improve imaging and analysis of brain lesion load and atrophy in longitudinal studies of multiple sclerosis
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F. Fazekas | J. Ashburner | F. Barkhof | A. Rovira | M. Jenkinson | M. A. Horsfield | E. Rostrup | M. Battaglini | J. Ashburner | M. Jenkinson | M. Horsfield | O. Ciccarelli | F. Barkhof | N. De Stefano | E. Rostrup | M. Rovaris | M. Filippi | D. Miller | A. Zijdenbos | M. Rocca | À. Rovira | X. Montalban | H. Vrenken | F. Fazekas | R. V. van Schijndel | E. Fisher | J. Palace | J. Geurts | J. Frederiksen | E. Fisher | M. Filippi | H. Vrenken | M. Battaglini | R. A. van Schijndel | J. J. G. Geurts | A. Zijdenbos | D. H. Miller | M. Rovaris | N. de Stefano | L. Kappos | N. de Stefano | A. de Stefano | Barkhof | D. Miller | D. Miller | bullet F Barkhof | C. Enzinger | bullet M Jenkinson | B.M. Battaglini | bullet E Rostrup | bullet J J G Geurts | bullet E Fisher | bullet A Zijdenbos | bullet J Ashburner | bullet M Filippi | bullet F Fazekas | bullet M Rovaris | bullet A Rovira | T. H. Yousry | Á. F. Vrenken | J. Palace | T. Yousry | M. Rocca | O. Ciccarelli | X. Montalban | N. De Stefano | bullet M Jenkinson | bullet M Battaglini | bullet E Rostrup | bullet E Fisher | bullet A Zijdenbos | bullet J Ashburner | bullet M Filippi | bullet F Fazekas | bullet M Rovaris | bullet A Rovira | J. Frederiksen | L. Kappos | Á. F. Vrenken | Á. N. De Stefano
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