Go to The Journal of Clinical Investigation
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Publication alerts by email
  • Transfers
  • Advertising
  • Job board
  • Contact
  • Physician-Scientist Development
  • Current issue
  • Past issues
  • By specialty
    • COVID-19
    • Cardiology
    • Immunology
    • Metabolism
    • Nephrology
    • Oncology
    • Pulmonology
    • All ...
  • Videos
  • Collections
    • In-Press Preview
    • Resource and Technical Advances
    • Clinical Research and Public Health
    • Research Letters
    • Editorials
    • Perspectives
    • Physician-Scientist Development
    • Reviews
    • Top read articles

  • Current issue
  • Past issues
  • Specialties
  • In-Press Preview
  • Resource and Technical Advances
  • Clinical Research and Public Health
  • Research Letters
  • Editorials
  • Perspectives
  • Physician-Scientist Development
  • Reviews
  • Top read articles
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Publication alerts by email
  • Transfers
  • Advertising
  • Job board
  • Contact
Diagnosis of head and neck cancer by AI-based tumor-educated platelet RNA profiling of liquid biopsies
Niles E. Wondergem, Jos B. Poell, Sjors G.J.G. In ‘t Veld, Edward Post, Steven W. Mes, Myron G. Best, Wessel N. van Wieringen, Thomas Klausch, Robert J. Baatenburg de Jong, Chris H.J. Terhaard, Robert P. Takes, Johannes A. Langendijk, Irma M. Verdonck-de Leeuw, Femke Lamers, C. René Leemans, Elisabeth Bloemena, Thomas Würdinger, Ruud H. Brakenhoff
Niles E. Wondergem, Jos B. Poell, Sjors G.J.G. In ‘t Veld, Edward Post, Steven W. Mes, Myron G. Best, Wessel N. van Wieringen, Thomas Klausch, Robert J. Baatenburg de Jong, Chris H.J. Terhaard, Robert P. Takes, Johannes A. Langendijk, Irma M. Verdonck-de Leeuw, Femke Lamers, C. René Leemans, Elisabeth Bloemena, Thomas Würdinger, Ruud H. Brakenhoff
View: Text | PDF
Research Article Genetics Oncology

Diagnosis of head and neck cancer by AI-based tumor-educated platelet RNA profiling of liquid biopsies

  • Text
  • PDF
Abstract

Over 95% of head and neck cancers are squamous cell carcinoma (HNSCC). HNSCC is mostly diagnosed late, causing a poor prognosis despite the application of invasive treatment protocols. Tumor-educated platelets (TEPs) have been shown to hold promise as a molecular tool for early cancer diagnosis. We sequenced platelet mRNA isolated from blood of 101 patients with HNSCC and 101 propensity-score matched noncancer controls. Two independent machine learning classification strategies were employed using a training and validation approach to identify a cancer predictor: a particle swarm optimized support vector machine (PSO-SVM) and a least absolute shrinkage and selection operator (LASSO) logistic regression model. The best performing PSO-SVM predictor consisted of 245 platelet transcripts and reached a maximum area under the curve (AUC) of 0.87. For the LASSO-based prediction model, 1,198 mRNAs were selected, resulting in a median AUC of 0.84, independent of HPV status. Our data show that TEP RNA classification by different AI tools is promising in the diagnosis of HNSCC.

Authors

Niles E. Wondergem, Jos B. Poell, Sjors G.J.G. In ‘t Veld, Edward Post, Steven W. Mes, Myron G. Best, Wessel N. van Wieringen, Thomas Klausch, Robert J. Baatenburg de Jong, Chris H.J. Terhaard, Robert P. Takes, Johannes A. Langendijk, Irma M. Verdonck-de Leeuw, Femke Lamers, C. René Leemans, Elisabeth Bloemena, Thomas Würdinger, Ruud H. Brakenhoff

×

Figure 2

Performance of LASSO models.

Options: View larger image (or click on image) Download as PowerPoint
Performance of LASSO models.
(A) ROC curve and summary of performance of...
(A) ROC curve and summary of performance of validation series for 1,000 LASSO models on the dataset of HNSCC (n = 101) and matched controls (n = 101). In total, 1,198 genes were selected and used for the prediction models. (B) Box plot of the mean prediction scores of matched controls and HNSCC samples in 1,000 LASSO models. ROC, receiver operator characteristic; LASSO, least absolute shrinkage and selection operator; HNSCC, head and neck squamous cell carcinoma; AUC, area under the curve; CI, confidence interval; Acc., accuracy.

Copyright © 2026 American Society for Clinical Investigation
ISSN 2379-3708

Sign up for email alerts