Computational methods and translational applications for targeted next-generation sequencing platforms.
Anisha LuthraBrooke MastrogiacomoShaleigh A SmithDebyani ChakravartyNikolaus SchultzFrancisco Sanchez-VegaPublished in: Genes, chromosomes & cancer (2022)
During the past decade, next-generation sequencing (NGS) technologies have become widely adopted in cancer research and clinical care. Common applications within the clinical setting include patient stratification into relevant molecular subtypes, identification of biomarkers of response and resistance to targeted and systemic therapies, assessment of heritable cancer risk based on known pathogenic variants, and longitudinal monitoring of treatment response. The need for efficient downstream processing and reliable interpretation of sequencing data has led to the development of novel algorithms and computational pipelines, as well as structured knowledge bases that link genomic alterations to currently available drugs and ongoing clinical trials. Cancer centers around the world use different types of targeted solid-tissue and blood based NGS assays to analyze the genomic and transcriptomic profile of patients as part of their routine clinical care. Recently, cross-institutional collaborations have led to the creation of large pooled datasets that can offer valuable insights into the genomics of rare cancers.
Keyphrases
- copy number
- healthcare
- clinical trial
- papillary thyroid
- cancer therapy
- palliative care
- end stage renal disease
- machine learning
- squamous cell
- ejection fraction
- randomized controlled trial
- peritoneal dialysis
- gene expression
- prognostic factors
- young adults
- drug delivery
- rna seq
- clinical practice
- electronic health record
- phase ii
- pain management
- childhood cancer
- study protocol
- big data
- dna methylation
- open label
- health insurance
- artificial intelligence
- phase iii
- data analysis