Profiling Blood Cancer Drivers through Large-Scale Genomics

dc.contributor.advisor

Dave, Sandeep S

dc.contributor.author

Kositsky, Rachel

dc.date.accessioned

2023-03-28T21:42:37Z

dc.date.issued

2022

dc.department

Computational Biology and Bioinformatics

dc.description.abstract

There are 140,000 new cases of blood cancers each year in the US and even more worldwide. Understanding the molecular and genomic origins of blood cancers can refine diagnosis, predict survival, and identify appropriate treatment. Large-scale projects profiling cancer genomes prioritized common cancer types, while other blood cancer genomics studies have been completed in an ad-hoc fashion. In this thesis, I will describe advances made to systemic large-scale molecular profiling of blood cancers.

To identify cancer drivers in both protein-coding and noncoding regions of the genome, I designed two novel capture panels. In my second chapter, I describe bioinformatics approaches I developed to identify accidental sample switches, refine alignment methods, and prioritize genes as potential cancer drivers.

Translocations are a major class of blood cancer drivers, which occur when two chromosomes break and repair incorrectly by fusing to each other. Previous studies using sequencing data to identify blood cancer-related translocations had only moderate sensitivity for several of the translocations compared to the clinical test. In my third chapter, I describe the development of a new translocation caller that is more sensitive to translocations in hypermutated regions that may have poor alignment to the reference genome, which is common in B-cell lymphomas.

Many patients with relapsed/refractory large B-cell lymphoma (R/R LBCL) have had success with chimeric antigen receptor T-cell (CAR-T) products approved by the FDA in 2017. However, a significant proportion of patients fail to respond to this highly expensive therapy and suffer from severe side effects while destined for poor survival. In my fourth chapter, I apply the genomic methods described earlier to identify predictors of resistance to CAR-T cell therapy in R/R LBCL. We found that complete response and survival were associated with clinical and molecular factors in the pre-treatment tumor.

dc.identifier.uri

https://hdl.handle.net/10161/26847

dc.subject

Bioinformatics

dc.subject

Oncology

dc.subject

Genetics

dc.subject

Cancer genomics

dc.subject

car-t

dc.subject

non-hodgkin lymphoma

dc.subject

Targeted sequencing

dc.subject

translocations

dc.subject

whole exome sequencing

dc.title

Profiling Blood Cancer Drivers through Large-Scale Genomics

dc.type

Dissertation

duke.embargo.months

10

duke.embargo.release

2024-01-27T00:00:00Z

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
Kositsky_duke_0066D_17053.pdf
Size:
6.16 MB
Format:
Adobe Portable Document Format

Collections