Machine learning-based extrachromosomal DNA identification in large-scale cohorts reveals its clinical implications in cancer.
Shixiang WangChen-Yi WuMing-Ming HeJia-Xin YongYan-Xing ChenLi-Mei QianJin-Ling ZhangZhao-Lei ZengRui-Hua XuFeng-Hua WangQi ZhaoPublished in: Nature communications (2024)
The clinical implications of extrachromosomal DNA (ecDNA) in cancer therapy remain largely elusive. Here, we present a comprehensive analysis of ecDNA amplification spectra and their association with clinical and molecular features in multiple cohorts comprising over 13,000 pan-cancer patients. Using our developed computational framework, GCAP, and validating it with multifaceted approaches, we reveal a consistent pan-cancer pattern of mutual exclusivity between ecDNA amplification and microsatellite instability (MSI). In addition, we establish the role of ecDNA amplification as a risk factor and refine genomic subtypes in a cohort from 1015 colorectal cancer patients. Importantly, our investigation incorporates data from four clinical trials focused on anti-PD-1 immunotherapy, demonstrating the pivotal role of ecDNA amplification as a biomarker for guiding checkpoint blockade immunotherapy in gastrointestinal cancer. This finding represents clinical evidence linking ecDNA amplification to the effectiveness of immunotherapeutic interventions. Overall, our study provides a proof-of-concept of identifying ecDNA amplification from cancer whole-exome sequencing (WES) data, highlighting the potential of ecDNA amplification as a valuable biomarker for facilitating personalized cancer treatment.
Keyphrases
- nucleic acid
- papillary thyroid
- machine learning
- clinical trial
- squamous cell
- cancer therapy
- randomized controlled trial
- label free
- single molecule
- drug delivery
- squamous cell carcinoma
- big data
- gene expression
- circulating tumor
- risk assessment
- cell cycle
- deep learning
- young adults
- open label
- circulating tumor cells
- bioinformatics analysis