Includes Bulk RNA-Seq
59 Downloadable Samples
Cell
10Xv3
Bulk RNA-seq, CITE-seq
Early T cell precursor acute lymphoblastic leukemia (ETP ALL) is a subtype of T cell acute lymphoblastic leukemia (T-ALL) that arises from an early T cell lineage clone, represents 10-15% of T-ALL cases, and has genetic alterations distinct from non-ETP T-ALL. While the survival for children with ETP ALL is similar to non-ETP T-ALL, the reason for treatment failure differs. Relapse is the most common reason for treatment failure in non-ETP T-ALL, and failure to respond to therapy and attain remission is the most common reason in ETP ALL. It is unknown why ETP ALL responds differently than non-ETP ALL. It is also unknown why some children with ETP ALL are cured, and others are not. The genetic alterations in ETP ALL, as defined by bulk sequencing, are more similar to acute myelogenous leukemia (AML) or T-myeloid mixed-phenotype acute leukemia (TM-MPAL) than T-ALL. We recently received a NIH X01 grant to perform comprehensive genomic profiling on 1262 cases of T-ALL treated on the AALL0434 clinical trial. This sequencing will include whole genome sequencing (WGS), whole exome sequencing (WES), transcriptome profiling (RNA-Seq), and copy number analysis (SNP). Unfortunately, bulk sequencing will not recapitulate clonal architecture or identify rare or heterogeneous cell populations that may help identify high risk patients. Using innovative single cell technologies, we can enhance our understanding of clonal diversity in ETP ALL. We hypothesize that single-cell RNA-Seq will enhance the understanding of the clonal diversity of ETP ALL, improving the understanding of ETP disease biology and allowing for the prospective identification of patients at diagnosis likely to fail conventional therapy who would be better served by alternative approaches. We obtained single-cell RNA-Seq and CITE-seq from 30 cases of ETP ALL, including samples collected at diagnosis from children who responded to treatment, children who failed to respond to treatment, and children who responded to treatment and relapsed. We also obtained scRNA-Seq and CITE-seq on 8 cases of acute myelogenous leukemia, 11 cases of non-ETP T-ALL, and 10 cases of T-myeloid MPAL. This data enables new understanding of leukemogenesis in patients with subtypes of leukemia that have similar immunophenotypes and comparable genomics by bulk sequencing but arise from different hematopoietic progenitors and respond differently to therapy. This work may identify targetable lesions that may be used to tailor future therapy and has the potential to significantly impact the diagnosis and management of patients with ETP ALL, an underserved and understudied population of childhood leukemia.
30 Downloadable Samples
Cell
10Xv2_5prime
CITE-seq
Bulk genomic studies of tens of thousands of acute myeloid leukemia (AML) cells mixed together have cataloged the changes in gene expression and mutations present in at least 10-20% of cells. The discoveries from these studies have implicated a number of new genes in AML formation, progression, and persistence, resulting in further subclassification of the disease. Still, these discoveries have thus far not been translated into improved outcomes for patients. This is in large part due to the heterogeneity of cell types and genomic changes within the cells that are present within a sample. The development of technologies to sequence genomes, quantify transcriptomes and identify surface proteomes of single cells has afforded a new opportunity to dissect and better understand the biology of these distinct cell types. In this study, we perform single-cell RNA sequencing and CITE-seq of 30 AML samples. Using cell types identified from single-cell RNA-sequencing with CITE-seq, cells are sorted based on expression of surface markers unique to phenotypic AML subpopulations. This is followed by whole genome amplification using our newly invented primary template-directed amplification (PTA) to perform accurate variant calling of the 1.2 Mb of the genome most commonly mutated in AML samples, as well as low-pass whole genome sequencing for single cell copy number variation profiling. Data from these studies will be used to identify distinct cell types present in AML samples including cells that appear to be of non-myeloid origin. This data will enable the exploration of transcriptomic changes present in distinct AML subpopulations. We anticipate the new insights afforded by this high-resolution resource will provide a deeper understanding of AML that could uncover new treatment approaches for this deadly pediatric cancer.
25 Downloadable Samples
Cell
10Xv2
Leukemia is the most frequently diagnosed pediatric cancer, accounting for nearly one third of childhood cancer diagnoses. Although outcomes for pediatric leukemia patients have improved significantly with advents in molecular diagnostics and targeted treatments, a number of patients nonetheless have poor outcomes including treatment-resistant recurrence of their disease. In this dataset, we utilized 10X v2 single-cell RNA sequencing to profile the transcriptomes of 25 pediatric leukemia samples collected from patients at Children’s Mercy Kansas City at single-cell resolution. Viably preserved blood and bone marrow samples collected at initial diagnosis, remission, or recurrence were banked in the Children’s Mercy Tumor Bank biorepository, then profiled for this study. Represented leukemias include B-cell Acute Lymphoblastic Leukemia (B-ALL), T-cell Acute Lymphoblastic Leukemia (T-ALL), and Acute Myeloid Leukemia (AML). Profiled samples include those with well-characterized subtypes (e.g. ETV6::RUNX1 B-ALL) as well as those where a subtype was not determined by standard molecular and cytogenetic methods. Characterization of these samples at single-cell resolution provides a unique opportunity to study the heterogeneity of these cancers, identify subpopulations of interest (e.g. leukemic stem cells), and explore transcriptional similarities between patients with unknown leukemic subtypes and those with a confident diagnosis. Furthering our understanding of the cellular environment of these leukemias is vital for improved diagnosis and treatment selection for pediatric patients afflicted by these cancers.
Samples were multiplexed across three pools. Demultiplexing to create sample-specific FASTQ files was performed via demuxlet based on patient-specific VCF files generated from whole genome or whole exome sequencing. These demultiplexed sample-specific FASTQ files were treated as individual libraries for the ScPCA-nf workflow.