Cancers (Sep 2021)

Machine Learning Incorporating Host Factors for Predicting Survival in Head and Neck Squamous Cell Carcinoma Patients

  • Han Yu,
  • Sung Jun Ma,
  • Mark Farrugia,
  • Austin J. Iovoli,
  • Kimberly E. Wooten,
  • Vishal Gupta,
  • Ryan P. McSpadden,
  • Moni A. Kuriakose,
  • Michael R. Markiewicz,
  • Jon M. Chan,
  • Wesley L. Hicks,
  • Mary E. Platek,
  • Anurag K. Singh

DOI
https://doi.org/10.3390/cancers13184559
Journal volume & issue
Vol. 13, no. 18
p. 4559

Abstract

Read online

Prognostication for cancer patients is integral for patient counseling and treatment planning, yet providing accurate prediction can be challenging using existing patient-specific clinical indicators and host factors. In this work, we evaluated common machine learning models in predicting head and neck squamous cell carcinoma (HNSCC) patients’ overall survival based on demographic, clinical features and host factors. We found random survival forest had best performance among the models evaluated, which achieved a C-index of 0.729 and AUROC of 0.792 in predicting two-year overall survival. In addition, we verified that host factors are independently predictive of HNSCC overall survival, which improved the C-index by a margin of 0.026 and the AUROC by 0.034. Due to the strong correlation among host factors, we showed that proper dimension reduction is an important step before their incorporation into the machine learning models, which provides a host factor score reflecting the patients’ nutrition and inflammation status. The score by itself showed excellent discriminating capacity with the high-risk group having a hazard ratio of 3.76 (1.93–7.32, p p < 0.0001) by the random survival forest model after including demographic and clinical features.

Keywords