Abstract 98P
Background
Cell-free DNA (cfDNA) consists of circulating DNA fragments originating from cells throughout the body. It can be found in plasma and urine and is under heavy investigation for its potential to detect cancer both early, and as a minimally invasive biopsy. DNA methylation is strongly associated with tissue and cell type, and in the context of cancer, it is often significantly altered. Tumour derived cfDNA has been shown to contain tumour specific methylation patterns. In this study, we attempt to correlate tissue specific methylation with cfDNA methylation.
Methods
We extracted tumour tissue specific methylation signals from The Cancer Genome Association (TCGA) methylation data and used our RenovaroCube (AI platform) to mine tumour specific CpG sites from Illumina methylation array data. As Illumina methylation array data for liquid biopsies is scarce due to the high input requirements, we investigated an alternative methylation detection method: cell-free Methylation DNA ImmunoPrecipiation (cfMeDIP-seq). cfMeDIP-seq captures solely 5mC methylated cfDNA fragments, which are then sorted into 300bp windows. From 97 publicly available cfDNA plasma cfMeDIP samples (24 control, 23 CRC, 25 lung cancer, 25 BRCA) we extracted the 300bp windows containing mined TCGA CpG sites. Using random forest classifiers, we performed leave-one-out-cross-validations (LOOCV) for the classifcation of cancer types. We further validated the lung cancer model using a cfMeDIP-seq validation set (62 control, 55 lung cancer).
Results
From the TCGA data, we mined 86 NSCLC, 95 BRCA and 139 CRC specific CpG sites, resulting in 72, 74 and 121 300bp panels, respectively. The performance of the panels was evaluated through LOOCV, resulting in (Specificity/Sensitivity/Accuracy): NSCLC model: 0.96/0.59/0.75, BRCA model: 1.00/0.72/0.86, CRC model: 1.00/0.841/0.92. In the validation lung cancer dataset, we obtained a performance of 0.97/0.49/0.74.
Conclusions
It is possible to detect tissue specific methylation levels extracted from methylation array data using RenovaroCube platform in cfDNA using cfMeDIP-seq data.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The author.
Funding
Has not received any funding.
Disclosure
The author has declared no conflicts of interest.
Resources from the same session
21P - DNAJC1 inhibit the ferroptosis of glioma cells through stabilizing GPX4 by competing with TRIM21
Presenter: Min Chao
Session: Poster session 07
Resources:
Abstract
22P - Pre-clinical development of CVGBM: A therapeutic mRNA-based multiepitope vaccine for glioblastoma
Presenter: Ronja Mülfarth
Session: Poster session 07
23P - Germline testing in a selected cohort of non-small cell lung cancer (NSCLC) patients: Final results from the INHERITY LC study
Presenter: Maria Zurera Berjaga
Session: Poster session 07
24P - Assessment of an AI algorithm to classify germline variants in the ATM cancer predisposition gene
Presenter: Nooshin Bayat
Session: Poster session 07
25P - NGS-based identification of novel hereditary breast/ovarian cancer genes in patients with clinical features of genetic predisposition
Presenter: Ekaterina Kuligina
Session: Poster session 07
26P - Multi-feature cell free DNA analysis and ensemble machine learning for early detection of cancer
Presenter: Seongmun Jeong
Session: Poster session 07
27P - Molecular insights on cutaneous melanoma hyperpigmentation and therapy resistance
Presenter: Elena Andreucci
Session: Poster session 07
28P - Targeting YAP1 as a biomarker of resistance and therapeutic strategy in melanoma immunotherapy
Presenter: Szonja Kovács
Session: Poster session 07
29P - Considering intra-patient response variability in clinical trials: Implications for treatment efficacy and survival
Presenter: Caryn Geady
Session: Poster session 07
Resources:
Abstract
30P - CDK4/6 inhibitors dephosphorylate RNF26 to stabilize TSC1 and increase the sensitivity of ccRCC to mTOR inhibitors
Presenter: Yang Zheng
Session: Poster session 07