1. Prediction of Recurrence by Machine Learning in Salivary Gland Cancer Patients After Adjuvant (Chemo)Radiotherapy.
- Author
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De Felice F, Valentini V, De Vincentiis M, Di Gioia CRT, Musio D, Tummolo AA, Ricci LI, Converti V, Mezi S, Messineo D, Tenore G, Della Monaca M, Ralli M, Vullo F, Botticelli A, Brauner E, Priore P, Umberto R, Marchetti P, Della Rocca C, Polimeni A, and Tombolini V
- Subjects
- Chemoradiotherapy, Chemoradiotherapy, Adjuvant, Disease-Free Survival, Humans, Machine Learning, Retrospective Studies, Neoplasm Recurrence, Local, Salivary Gland Neoplasms therapy
- Abstract
Background/aim: To investigate survival outcomes and recurrence patterns using machine learning in patients with salivary gland malignant tumor (SGMT) undergoing adjuvant chemoradiotherapy (CRT)., Patients and Methods: Consecutive SGMT patients were identified, and a data set included nine predictor variables and a dependent variable [disease-free survival (DFS) event] was standardized. The open-source R software was used. Survival outcomes were estimated by the Kaplan-Meier method. The random forest approach was used to select the important explanatory variables. A classification tree that optimally partitioned SGMT patients with different DFS rates was built., Results: In total, 54 SGMT patients were included in the final analysis. Five-year DFS was 62.1%. The top two important variables identified were pathologic node (pN) and pathologic tumor (pT). Based on these explanatory variables, patients were partitioned in three groups, including pN0, pT1-2 pN+ and pT3-4 pN+ with 26%, 38% and 75% probability of recurrence, respectively. Accordingly, 5-year DFS rates were 73.7%, 57.1% and 34.3%, respectively., Conclusion: The proposed decision tree algorithm is an appropriate tool to partition SGMT patients. It can guide decision-making and future research in the SGMT field., (Copyright © 2021 International Institute of Anticancer Research (Dr. George J. Delinasios), All rights reserved.)
- Published
- 2021
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