Deep-learning and MR images to target hypoxic habitats with evofosfamide in preclinical models of sarcoma

Theranostics. 2021 Mar 11;11(11):5313-5329. doi: 10.7150/thno.56595. eCollection 2021.

Abstract

Rationale: Hypoxic regions (habitats) within tumors are heterogeneously distributed and can be widely variant. Hypoxic habitats are generally pan-therapy resistant. For this reason, hypoxia-activated prodrugs (HAPs) have been developed to target these resistant volumes. The HAP evofosfamide (TH-302) has shown promise in preclinical and early clinical trials of sarcoma. However, in a phase III clinical trial of non-resectable soft tissue sarcomas, TH-302 did not improve survival in combination with doxorubicin (Dox), possibly due to a lack of patient stratification based on hypoxic status. Therefore, we used magnetic resonance imaging (MRI) to identify hypoxic habitats and non-invasively follow therapies response in sarcoma mouse models. Methods: We developed deep-learning (DL) models to identify hypoxia, using multiparametric MRI and co-registered histology, and monitored response to TH-302 in a patient-derived xenograft (PDX) of rhabdomyosarcoma and a syngeneic model of fibrosarcoma (radiation-induced fibrosarcoma, RIF-1). Results: A DL convolutional neural network showed strong correlations (>0.76) between the true hypoxia fraction in histology and the predicted hypoxia fraction in multiparametric MRI. TH-302 monotherapy or in combination with Dox delayed tumor growth and increased survival in the hypoxic PDX model (p<0.05), but not in the RIF-1 model, which had a lower volume of hypoxic habitats. Control studies showed that RIF-1 resistance was due to hypoxia and not other causes. Notably, PDX tumors developed resistance to TH-302 under prolonged treatment that was not due to a reduction in hypoxic volumes. Conclusion: Artificial intelligence analysis of pre-therapy MR images can predict hypoxia and subsequent response to HAPs. This approach can be used to monitor therapy response and adapt schedules to forestall the emergence of resistance.

Keywords: deep learning; hypoxia; hypoxia-activated prodrugs; in-vivo imaging; tumor microenvironment.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Animals
  • Artificial Intelligence
  • Cell Line, Tumor
  • Deep Learning
  • Disease Models, Animal
  • Doxorubicin / pharmacology
  • Ecosystem
  • Female
  • Humans
  • Hypoxia / drug therapy*
  • Magnetic Resonance Imaging / methods
  • Mice
  • Mice, Inbred C3H
  • Mice, SCID
  • Nitroimidazoles / pharmacology*
  • Phosphoramide Mustards / pharmacology*
  • Prodrugs / pharmacology*
  • Sarcoma / drug therapy*
  • Soft Tissue Neoplasms / drug therapy
  • Xenograft Model Antitumor Assays / methods

Substances

  • Nitroimidazoles
  • Phosphoramide Mustards
  • Prodrugs
  • TH 302
  • Doxorubicin