Application of Machine Learning to Predict Dielectric Properties of In Vivo Biological Tissue

Sensors (Basel). 2021 Oct 19;21(20):6935. doi: 10.3390/s21206935.

Abstract

In this paper we revisited a database with measurements of the dielectric properties of rat muscles. Measurements were performed both in vivo and ex vivo; the latter were performed in tissues with varying levels of hydration. Dielectric property measurements were performed with an open-ended coaxial probe between the frequencies of 500 MHz and 50 GHz at a room temperature of 25 °C. In vivo dielectric properties are more valuable for creating realistic electromagnetic models of biological tissue, but these are more difficult to measure and scarcer in the literature. In this paper, we used machine learning models to predict the in vivo dielectric properties of rat muscle from ex vivo dielectric property measurements for varying levels of hydration. We observed promising results that suggest that our model can make a fair estimation of in vivo properties from ex vivo properties.

Keywords: ex vivo and in vivo dielectric properties; machine learning modelling; tissue hydration.

MeSH terms

  • Animals
  • Machine Learning*
  • Muscles*
  • Rats