CCL2 signaling promotes skeletal muscle wasting in non-tumor and breast tumor models

  • Nadia Alissa
  • , Wei Bin Fang
  • , Marcela Medrano
  • , Nick Bergeron
  • , Yuuka Kozai
  • , Qingting Hu
  • , Chloe Redding
  • , John Thyfault
  • , Jill Hamilton-Reeves
  • , Cory Berkland
  • , Nikki Cheng

Research output: Contribution to journalArticlepeer-review

Abstract

Despite advancements in treatment, approximately 25% of patients with breast cancer experience long-term skeletal muscle wasting (SMW), which limits mobility, reduces drug tolerance and adversely impacts survival. By understanding the underlying molecular mechanisms of SMW, we may be able to develop new strategies to alleviate this condition and improve the lives of patients with breast cancer. Chemokines are small soluble factors that regulate homing of immune cells to tissues during inflammation. In breast cancers, overexpression of C-C chemokine ligand 2 (CCL2) correlates with unfavorable prognosis. Elevated levels of CCL2 in peripheral blood indicate possible systemic effects of this chemokine in patients with breast cancer. Here, we investigated the role of CCL2 signaling on SMW in tumor and non-tumor contexts. In vitro, increasing concentrations of CCL2 inhibited myoblast and myotube function through C-C chemokine receptor 2 (CCR2)-dependent mechanisms involving JNK, SMAD3 and AMPK signaling. In healthy mice, delivery of recombinant CCL2 protein promoted SMW in a dose-dependent manner. In vivo knockdown of breast tumor-derived CCL2 partially protected against SMW. Overall, chronic, upregulated CCL2–CCR2 signaling positively regulates SMW, with implications for therapeutic targeting.

Original languageEnglish
Article numberdmm050398
JournalDMM Disease Models and Mechanisms
Volume17
Issue number8
DOIs
StatePublished - Aug 2024

Keywords

  • Breast cancer
  • CCL2
  • Cachexia
  • Chemokine
  • Skeletal muscle wasting

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