DNA barcoded competitive clone-initiating cell analysis reveals novel features of metastatic growth in a cancer xenograft model.
Syed Mohammed Musheer AalamXiaojia TangJianning SongUpasana RayStephen J RussellS John WerohaJamie Bakkum-GamezViji ShridharMark E ShermanConnie J EavesDavid J H F KnappKrishna R KalariNagarajan KannanPublished in: NAR cancer (2022)
A problematic feature of many human cancers is a lack of understanding of mechanisms controlling organ-specific patterns of metastasis, despite recent progress in identifying many mutations and transcriptional programs shown to confer this potential. To address this gap, we developed a methodology that enables different aspects of the metastatic process to be comprehensively characterized at a clonal resolution. Our approach exploits the application of a computational pipeline to analyze and visualize clonal data obtained from transplant experiments in which a cellular DNA barcoding strategy is used to distinguish the separate clonal contributions of two or more competing cell populations. To illustrate the power of this methodology, we demonstrate its ability to discriminate the metastatic behavior in immunodeficient mice of a well-established human metastatic cancer cell line and its co-transplanted LRRC15 knockdown derivative. We also show how the use of machine learning to quantify clone-initiating cell (CIC) numbers and their subsequent metastatic progeny generated in different sites can reveal previously unknown relationships between different cellular genotypes and their initial sites of implantation with their subsequent respective dissemination patterns. These findings underscore the potential of such combined genomic and computational methodologies to identify new clonally-relevant drivers of site-specific patterns of metastasis.
Keyphrases
- squamous cell carcinoma
- small cell lung cancer
- machine learning
- single cell
- endothelial cells
- cell therapy
- papillary thyroid
- single molecule
- gene expression
- public health
- artificial intelligence
- deep learning
- cell free
- type diabetes
- pluripotent stem cells
- bone marrow
- electronic health record
- transcription factor
- lymph node metastasis
- dna methylation
- genome wide
- nucleic acid
- oxidative stress
- young adults
- data analysis