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A pipeline of machine learning-driven multi-modal data fusion methods for prognostic risk analysis in bevacizumab-treated metastatic colorectal cancer.
Thomas, V. ; Nyamundanda, G. ; Lärkeryd, A. ; Hari, P. S. ; Miller, I. S. ; Venken, T. ; Smeets, D. ; Boeckx, B. ; Betge, J.DKFZ* ; Ebert, M. P. A. ; Gaiser, T. ; Murphy, V. ; Kay, E. ; Verheul, H. M. ; O'Farrell, A. C. ; Cremolini, C. ; Marmorino, F. ; Gallagher, W. M. ; Barat, A. ; Klinger, R. ; Fender, B. ; Ylstra, B. ; van Grieken, N. ; McNamara, D. A. ; Hennessy, B. T. ; Das, S. ; Moran, B. ; O'Connor, D. P. ; Dienstmann, R. ; Lambrechts, D. ; Prehn, J. H. M. ; Sadanandam, A. ; Byrne, A. T.
2026
Springer Nature
[London]
Keyword(s): Biomarkers ; Machine learning ; Metastatic colorectal cancer ; Multi-modal data fusion ; Personalised medicine ; PhenMap ; Prognostic risk analysis
Contributing Institute(s):
- NWG-KKE Translationale Gastrointestinale Onkologie und präklinische Modelle (B440)
Research Program(s):
- 312 - Funktionelle und strukturelle Genomforschung (POF4-312) (POF4-312)
Appears in the scientific report
2026
Database coverage:
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