Predicting intratumoral fluid pressure and liposome accumulation using physics informed deep learning

Sci Rep. 2023 Nov 23;13(1):20548. doi: 10.1038/s41598-023-47988-8.

Abstract

Liposome-based anticancer agents take advantage of the increased vascular permeability and transvascular pressure gradients for selective accumulation in tumors, a phenomenon known as the enhanced permeability and retention(EPR) effect. The EPR effect has motivated the clinical use of nano-therapeutics, with mixed results on treatment outcome. High interstitial fluid pressure (IFP) has been shown to limit liposome drug delivery to central tumour regions. Furthermore, high IFP is an independent prognostic biomarker for treatment efficacy in radiation therapy and chemotherapy for some solid cancers. Therefore, accurately measuring spatial liposome accumulation and IFP distribution within a solid tumour is crucial for optimal treatment planning. In this paper, we develop a model capable of predicting voxel-by-voxel intratumoral liposome accumulation and IFP using pre and post administration imaging. Our approach is based on physics informed machine learning, a novel technique combining machine learning and partial differential equations. through application to a set of mouse data and a set of synthetically-generated tumours, we show that our approach accurately predicts the spatial liposome accumulation and IFP for an individual tumour while relying on minimal information. This is an important result with applications for forecasting tumour progression and designing treatment.

MeSH terms

  • Animals
  • Deep Learning*
  • Extracellular Fluid
  • Liposomes / pharmacology
  • Mice
  • Neoplasms* / blood supply
  • Neoplasms* / diagnostic imaging
  • Physics

Substances

  • Liposomes