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1. Co-expression in tissue-specific gene networks links genes in cancer-susceptibility loci to known somatic driver genes

2. Evidence of survival bias in the association between APOE-Є4 and age at ischemic stroke onset

3. The genome-wide mutational consequences of DNA hypomethylation

4. Comprehensive benchmark and architectural analysis of deep learning models for nanopore sequencing basecalling

5. Predicting response to enzalutamide and abiraterone in metastatic prostate cancer using whole-omics machine learning

6. Accurate detection of circulating tumor DNA using nanopore consensus sequencing

8. Predicting pathogenic non-coding SVs disrupting the 3D genome in 1646 whole cancer genomes using multiple instance learning

9. Eleven grand challenges in single-cell data science

10. A deep learning system accurately classifies primary and metastatic cancers using passenger mutation patterns

11. Integration of multiple lineage measurements from the same cell reconstructs parallel tumor evolution

13. Value pluralism in research integrity

14. Evrim Teorisinin Epistemik Statüsü

15. Academia’s Big Five: a normative taxonomy for the epistemic responsibilities of universities [version 2; peer review: 2 approved]

16. sv-callers: a highly portable parallel workflow for structural variant detection in whole-genome sequence data

17. Predicting treatment benefit in multiple myeloma through simulation of alternative treatment effects

18. From squiggle to basepair: computational approaches for improving nanopore sequencing read accuracy

19. Cancer Type Classification in Liquid Biopsies Based on Sparse Mutational Profiles Enabled through Data Augmentation and Integration

20. Mapping and phasing of structural variation in patient genomes using nanopore sequencing

21. Three-dimensional analysis of single molecule FISH in human colon organoids

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

23. A Single Complex Agpat2 Allele in a Patient With Partial Lipodystrophy

24. TargetClone: A multi-sample approach for reconstructing subclonal evolution of tumors.

25. Gamma-Retrovirus Integration Marks Cell Type-Specific Cancer Genes: A Novel Profiling Tool in Cancer Genomics.

26. Hi-C Chromatin Interaction Networks Predict Co-expression in the Mouse Cortex.

27. Genome wide DNA methylation profiles provide clues to the origin and pathogenesis of germ cell tumors.

28. Soft skills: an important asset acquired from organizing regional student group activities.

29. Chromatin landscapes of retroviral and transposon integration profiles.

30. Insertional mutagenesis and deep profiling reveals gene hierarchies and a Myc/p53-dependent bottleneck in lymphomagenesis.

32. Don't Wear Your New Shoes (Yet): Taking the Right Steps to Become a Successful Principal Investigator.

33. Detecting statistically significant common insertion sites in retroviral insertional mutagenesis screens.

35. In Defense of the Netherlands Code of Conduct for Research Integrity: Response to Radder

37. Academia’s Big Five: a normative taxonomy for the epistemic responsibilities of universities [version 1; peer review: 1 approved, 1 approved with reservations]

40. Data from Gene Networks Constructed Through Simulated Treatment Learning can Predict Proteasome Inhibitor Benefit in Multiple Myeloma

42. Supplementary Table 6 from Novel Candidate Cancer Genes Identified by a Large-Scale Cross-Species Comparative Oncogenomics Approach

43. Supplementary Table 4 from Insertional Mutagenesis in Mice Deficient for p15Ink4b, p16Ink4a, p21Cip1, and p27Kip1 Reveals Cancer Gene Interactions and Correlations with Tumor Phenotypes

44. Supplementary Figure 2 from Insertional Mutagenesis in Mice Deficient for p15Ink4b, p16Ink4a, p21Cip1, and p27Kip1 Reveals Cancer Gene Interactions and Correlations with Tumor Phenotypes

45. Data from Novel Candidate Cancer Genes Identified by a Large-Scale Cross-Species Comparative Oncogenomics Approach

46. Supplementary Table 7 from Insertional Mutagenesis in Mice Deficient for p15Ink4b, p16Ink4a, p21Cip1, and p27Kip1 Reveals Cancer Gene Interactions and Correlations with Tumor Phenotypes

47. Supplementary Table 8 from Insertional Mutagenesis in Mice Deficient for p15Ink4b, p16Ink4a, p21Cip1, and p27Kip1 Reveals Cancer Gene Interactions and Correlations with Tumor Phenotypes

48. Supplementary Table 1 from Insertional Mutagenesis in Mice Deficient for p15Ink4b, p16Ink4a, p21Cip1, and p27Kip1 Reveals Cancer Gene Interactions and Correlations with Tumor Phenotypes

49. Supplementary Table 9 from Insertional Mutagenesis in Mice Deficient for p15Ink4b, p16Ink4a, p21Cip1, and p27Kip1 Reveals Cancer Gene Interactions and Correlations with Tumor Phenotypes

50. Supplementary Table 3 from Insertional Mutagenesis in Mice Deficient for p15Ink4b, p16Ink4a, p21Cip1, and p27Kip1 Reveals Cancer Gene Interactions and Correlations with Tumor Phenotypes

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