A Dynamic Parallel Approach to Recognize Tubular Breast Cancer for TMA Image Building
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Andrea Clematis | Antonella Galizia | Luciano Milanesi | Federica Viti | L. Milanesi | F. Viti | A. Clematis | A. Galizia
[1] P. Rüegsegger,et al. A new method for the model‐independent assessment of thickness in three‐dimensional images , 1997 .
[2] S. Navani,et al. The human protein atlas , 2011 .
[3] Joel H. Saltz,et al. Distributed processing of very large datasets with DataCutter , 2001, Parallel Comput..
[4] Xavier Llorà,et al. Observer-invariant histopathology using genetics-based machine learning , 2009, Natural Computing.
[5] Ivan Merelli,et al. Semi-automatic identification of punching areas for tissue microarray building: the tubular breast cancer pilot study , 2010, BMC Bioinformatics.
[6] Francesco Beltrame,et al. A simple non invasive computerized method for the assessment of bone repair within osteoconductive porous bioceramic grafts. , 2005, Biotechnology and bioengineering.
[7] Andrea Clematis,et al. Enabling Parallel TMA Image Analysis in a Grid Environment , 2008, 2008 International Conference on Complex, Intelligent and Software Intensive Systems.
[8] J. Kononen,et al. Tissue microarrays for high-throughput molecular profiling of tumor specimens , 1998, Nature Medicine.
[9] Raouf N. G. Naguib,et al. A parallel implementation of a genetic algorithm for colonic tissue image classification , 2003, 4th International IEEE EMBS Special Topic Conference on Information Technology Applications in Biomedicine, 2003..
[10] Jun Kong,et al. Computerized Pathological Image Analysis For Neuroblastoma Prognosis , 2007, AMIA.