Early-stage oral squamous cell carcinoma (OSCC) patients have a one-in-four risk of regional metastasis (LN+), which is also the most significant prognostic factor for survival. As there are no validated biomarkers for predicting LN+ in early-stage OSCC, elective neck dissection often leads to over-treatment and under-treatment. We present a machine-learning-based model using the quantitative nuclear phenotype of cancer cells from the primary tumor to predict the risk of nodal disease.
CITATION STYLE
Yi Ping Liu, K., Zhu, S. Y., Harrison, A., Chen, Z. Y., Guillaud, M., & Poh, C. F. (2021). Quantitative nuclear phenotype signatures predict nodal disease in oral squamous cell carcinoma. PLoS ONE, 16(11 November). https://doi.org/10.1371/journal.pone.0259529
Mendeley helps you to discover research relevant for your work.