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Machine learning models predict the primary sites of head and neck squamous cell carcinoma metastases based on DNA methylationopen access

Authors
Leitheiser, MaximilianCapper, DavidSeegerer, PhilippLehmann, AnnikaSchueller, UlrichMueller, Klaus-RobertKlauschen, FrederickJurmeister, PhilippBockmayr, Michael
Issue Date
Apr-2022
Publisher
WILEY
Keywords
head and neck squamous cell carcinoma; DNA methylation; machine learning; cancer of unknown primary
Citation
JOURNAL OF PATHOLOGY, v.256, no.4, pp.378 - 387
Indexed
SCIE
SCOPUS
Journal Title
JOURNAL OF PATHOLOGY
Volume
256
Number
4
Start Page
378
End Page
387
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/143107
DOI
10.1002/path.5845
ISSN
0022-3417
Abstract
In head and neck squamous cell cancers (HNSCs) that present as metastases with an unknown primary (HNSC-CUPs), the identification of a primary tumor improves therapy options and increases patient survival. However, the currently available diagnostic methods are laborious and do not offer a sufficient detection rate. Predictive machine learning models based on DNA methylation profiles have recently emerged as a promising technique for tumor classification. We applied this technique to HNSC to develop a tool that can improve the diagnostic work-up for HNSC-CUPs. On a reference cohort of 405 primary HNSC samples, we developed four classifiers based on different machine learning models [random forest (RF), neural network (NN), elastic net penalized logistic regression (LOGREG), and support vector machine (SVM)] that predict the primary site of HNSC tumors from their DNA methylation profile. The classifiers achieved high classification accuracies (RF = 83%, NN = 88%, LOGREG = SVM = 89%) on an independent cohort of 64 HNSC metastases. Further, the NN, LOGREG, and SVM models significantly outperformed p16 status as a marker for an origin in the oropharynx. In conclusion, the DNA methylation profiles of HNSC metastases are characteristic for their primary sites, and the classifiers developed in this study, which are made available to the scientific community, can provide valuable information to guide the diagnostic work-up of HNSC-CUP. (c) 2021 The Authors. The Journal of Pathology published by John Wiley & Sons Ltd on behalf of The Pathological Society of Great Britain and Ireland.
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