Transcriptomic Profiling of Plasma Extracellular Vesicles Enables Reliable Annotation of the Cancer-specific Transcriptome and Molecular Subtype.
Vahid BahrambeigiJaewon J LeeVittorio BranchiKimal I RajapaksheZhichao XuNaishu KuiJason T HenryWang KunBret M StephensSarah DhebatMark W HurdRyan SunPeng YangEytan RuppinWenyi WangEdmund S KopetzAnirban MaitraPaola A GuerreroPublished in: Cancer research (2024)
Longitudinal monitoring of patients with advanced cancers is crucial to evaluate both disease burden and treatment response. Current liquid biopsy approaches mostly rely on the detection of DNA-based biomarkers. However, plasma RNA analysis can unleash tremendous opportunities for tumor state interrogation and molecular subtyping. Through the application of deep learning algorithms to the deconvolved transcriptomes of RNA within plasma extracellular vesicles (evRNA), we successfully predict consensus molecular subtypes in metastatic colorectal cancer patients. We further demonstrate the ability to monitor changes in transcriptomic subtype under treatment selection pressure and identify molecular pathways in evRNA associated with recurrence. Our approach also identified expressed gene fusions and neoepitopes from evRNA. These results demonstrate the feasibility of transcriptomic-based liquid biopsy platforms for precision oncology approaches, spanning from the longitudinal monitoring of tumor subtype changes to identification of expressed fusions and neoantigens as cancer-specific therapeutic targets, sans the need for tissue-based sampling.
Keyphrases
- single cell
- rna seq
- deep learning
- papillary thyroid
- single molecule
- machine learning
- gene expression
- small cell lung cancer
- squamous cell carcinoma
- genome wide
- palliative care
- cross sectional
- nucleic acid
- artificial intelligence
- cell free
- childhood cancer
- young adults
- transcription factor
- fine needle aspiration
- label free