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11 results

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1. LOTUS: A single- and multitask machine learning algorithm for the prediction of cancer driver genes.

2. LMTRDA: Using logistic model tree to predict MiRNA-disease associations by fusing multi-source information of sequences and similarities.

3. A data-driven interactome of synergistic genes improves network-based cancer outcome prediction.

4. SFPEL-LPI: Sequence-based feature projection ensemble learning for predicting LncRNA-protein interactions.

5. Predicting B cell receptor substitution profiles using public repertoire data.

6. Systematic discovery of the functional impact of somatic genome alterations in individual tumors through tumor-specific causal inference.

7. Disease gene prediction for molecularly uncharacterized diseases.

8. Pathogenicity and functional impact of non-frameshifting insertion/deletion variation in the human genome.

9. Sparse discriminative latent characteristics for predicting cancer drug sensitivity from genomic features.

10. Systematically benchmarking peptide-MHC binding predictors: From synthetic to naturally processed epitopes.

11. A k-mer-based method for the identification of phenotype-associated genomic biomarkers and predicting phenotypes of sequenced bacteria.