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Poster Display

623P - Advances in methylation analysis of liquid biopsy in early cancer detection of colorectal and lung cancer

Date

02 Dec 2023

Session

Poster Display

Presenters

Sam Martin

Citation

Annals of Oncology (2023) 34 (suppl_4): S1707-S1716. 10.1016/annonc/annonc1380

Authors

S. Martin1, H. Kwon1, S.H. Shin2, H.H. Kim3, N.Y. Min1, Y. Lim1, K.J. Lee1, D. Park1, S. Lee1, M.S. Lee4

Author affiliations

  • 1 R&d Department, Eone-Diagnomics Genome Center, Inc., 21999 - Incheon/KR
  • 2 Division Of Pulmonary And Critical Care Medicine, Samsung Medical Center (SMC), 06351 - Seoul/KR
  • 3 Surgery, The Catholic University of Korea - Bucheon St. Mary's Hospital, 420-717 - Bucheon/KR
  • 4 R&d Department, Diagnomics, Inc., 92123 - San Diego/US

Resources

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Abstract 623P

Background

Cancer ranks second globally in causes of death, accounting for 21% of all fatalities. However, many types of cancer can be cured if diagnosed and treated during early stages. We propose a liquid biopsy cancer analysis method that uses deep learning and a methylation-sensitive restriction enzyme digestion followed by sequencing method to detect and classify the most common cancers worldwide at early stages.

Methods

We developed a selective methylation sensitive restriction enzyme sequencing (MRE-Seq) method combined with a prediction model based on deep neural network (DNN) learning on data from 63,266 CpG sites to identify global hypomethylation patterns. The methylation dataset was made from 96 colon cancer samples, 95 lung cancer samples, 122 gastric cancer samples, 136 breast cancer samples, and 183 control samples. To eliminate batch bias, the ANOVA test was performed during feature selection. A DNN was adopted as a classifier, and 5-fold cross validation was performed to verify the classification performance.

Results

Across four cancer types, colorectal cancer had the highest predictive performance at 0.98, followed by breast cancer at 0.97, gastric cancer at 0.96, and lung cancer at 0.93. At 95% specificity, the sensitivity for detecting early-stage cancers varied widely, with lung cancer at 50% and breast cancer at 83%. Two different metrics were used to evaluate the model's performance. The cancer classifier (performance in detecting cancer) had a sensitivity of 95.1% and a specificity of 66.7%, indicating better performance in correctly identifying cancer samples. The cancer type classifier (performance in classifying the cancer type) utilized the precision metric to evaluate the accuracy of cancer classification. Notably, breast cancer achieved the highest precision at 95.8%, followed by lung cancer at 83.3%, gastric cancer at 79.1%, and colon cancer at 69.0%.

Conclusions

The proposed classification model based on the MRE-Seq method can reliably identify cancer and normal samples and differentiate between different cancer types using only methylation information obtained from patient's blood. This approach could be used in clinical practices to help medical experts diagnose cancer earlier and at the individual level.

Clinical trial identification

Editorial acknowledgement

Legal entity responsible for the study

The authors.

Funding

Has not received any funding.

Disclosure

All authors have declared no conflicts of interest.

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