Analysis of 143 completely histologically-normal breast tissues resulted in the identification of a malignancy risk gene signature that may serve as a marker of subsequent risk of breast cancer development.
Proliferative genes dominate malignancy-risk gene signature in histologically-normal breast tissue.
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View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematoipoietic development Overall design: Single cell RNA seq of different hematopoietic populations integrated with Chip seq involving multiple markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
No sample metadata fields
View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematoipoietic development Overall design: Single cell RNA seq of different hematopoietic populations integrated with Chip seq involving multiple markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
No sample metadata fields
View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematoipoietic development Overall design: Single cell RNA seq of different hematopoietic populations integrated with Chip seq involving multiple markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
No sample metadata fields
View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematoipoietic development Overall design: Single cell RNA seq of different hematopoietic populations integrated with Chip seq involving multiple markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
No sample metadata fields
View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematoipoietic development Overall design: Single cell RNA seq of different hematopoietic populations integrated with Chip seq involving multiple markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
No sample metadata fields
View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematoipoietic development Overall design: Single cell RNA seq of different hematopoietic populations integrated with Chip seq involving multiple markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
Specimen part, Cell line, Subject
View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematoipoietic development Overall design: Single cell RNA seq of different hematopoietic populations integrated with Chip seq involving multiple markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
No sample metadata fields
View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematoipoietic development Overall design: Single cell RNA seq of different hematopoietic populations integrated with Chip seq involving multiple markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
No sample metadata fields
View SamplesSingle cell RNA seq and bioinformatic analysis is used to characterize myeloid differentiation to uncover novel transcriptional networks and key drivers of hematopoietic development Overall design: Single-cell RNA Seq of 4 different hematopoietic populations, integrated with ChIP Seq involving 4 different markers
Single-cell analysis of mixed-lineage states leading to a binary cell fate choice.
No sample metadata fields
View Samples