Future Science OA (Jan 2020)

Predictive quantitative ultrasound radiomic markers associated with treatment response in head and neck cancer

  • William T Tran,
  • Harini Suraweera,
  • Karina Quaioit,
  • Daniel Cardenas,
  • Kai X Leong,
  • Irene Karam,
  • Ian Poon,
  • Deok Jang,
  • Lakshmanan Sannachi,
  • Mehrdad Gangeh,
  • Sami Tabbarah,
  • Andrew Lagree,
  • Ali Sadeghi-Naini,
  • Gregory J Czarnota

DOI
https://doi.org/10.2144/fsoa-2019-0048
Journal volume & issue
Vol. 6, no. 1

Abstract

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Aim: We aimed to identify quantitative ultrasound (QUS)-radiomic markers to predict radiotherapy response in metastatic lymph nodes of head and neck cancer. Materials & methods: Node-positive head and neck cancer patients underwent pretreatment QUS imaging of their metastatic lymph nodes. Imaging features were extracted using the QUS spectral form, and second-order texture parameters. Machine-learning classifiers were used for predictive modeling, which included a logistic regression, naive Bayes, and k-nearest neighbor classifiers. Results: There was a statistically significant difference in the pretreatment QUS-radiomic parameters between radiological complete responders versus partial responders (p < 0.05). The univariable model that demonstrated the greatest classification accuracy included: spectral intercept (SI)-contrast (area under the curve = 0.741). Multivariable models were also computed and showed that the SI-contrast + SI-homogeneity demonstrated an area under the curve = 0.870. The three-feature model demonstrated that the spectral slope-correlation + SI-contrast + SI-homogeneity-predicted response with accuracy of 87.5%. Conclusion: Multivariable QUS-radiomic features of metastatic lymph nodes can predict treatment response a priori.

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