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Linköping studies in science and technology. Dissertations. No. 1301

Gene networks from high-throughput data

–Reverse engineering and analysis

Mika Gustafsson

Department of Science and Technology Linköping University, SE-601 74 Norrköping, Sweden

Norrköping 2010 Mika Gustafsson Gene networks fr om high-thr oughput data

–Reverse engineering and analysis

Norrköping 2010

Linköping studies in science and technology. Dissertations. No. 1301

Gene networks from high-throughput data

–Reverse engineering and analysis

Mika Gustafsson

Department of Science and Technology Linköping University, SE-601 74 Norrköping, Sweden

Norrköping 2010

Linköping studies in science and technology. Dissertations

No. 1301

Gene networks from high-throughput data

–Reverse engineering and analysis

Mika Gustafsson

Department of Science and Technology Linköping University, SE-601 74 Norrköping, Sweden

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