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Quo Vadis, Atlas-Based Segmentation?

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Rohlfing, T., Brandt, R., Menzel, R., Russakoff, D.B., Maurer, C.R. (2005). Quo Vadis, Atlas-Based Segmentation?. In: Suri, J.S., Wilson, D.L., Laxminarayan, S. (eds) Handbook of Biomedical Image Analysis. Topics in Biomedical Engineering International Book Series. Springer, Boston, MA. https://doi.org/10.1007/0-306-48608-3_11

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