Cancer Medicine (Apr 2023)

Monocyte chemoattractant protein 1 as a potential biomarker for immune checkpoint inhibitor‐associated neurotoxicity

  • Nora Möhn,
  • Susann Mahjoub,
  • Laura Duzzi,
  • Emily Narten,
  • Lea Grote‐Levi,
  • Gudrun Körner,
  • Tabea Seeliger,
  • Gernot Beutel,
  • Benjamin‐Alexander Bollmann,
  • Thomas Wirth,
  • André Huss,
  • Hayrettin Tumani,
  • Imke Grimmelmann,
  • Ralf Gutzmer,
  • Philipp Ivanyi,
  • Thomas Skripuletz,
  • ICOG‐CCCH (Immune Cooperative Oncology Group; Comprehensive Cancer Center Hannover)

DOI
https://doi.org/10.1002/cam4.5695
Journal volume & issue
Vol. 12, no. 8
pp. 9373 – 9383

Abstract

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Abstract Background Oncological patients can benefit substantially from treatment with immune checkpoint inhibitors (ICI). However, there is a growing awareness of immune‐related adverse events (irAE). Especially ICI‐mediated neurological adverse events (nAE(+)), are tough to diagnose and biomarkers to identify patients at risk are missing. Methods A prospective register with prespecified examinations was established for ICI treated patients in December 2019. At the time of data cut‐off, 110 patients were enrolled and completed the clinical protocol. Herein, cytokines and serum neurofilament light chain (sNFL) from 21 patients were analyzed. Results nAE of any grade were observed in 31% of the patients (n = 34/110). In nAE(+) patients a significant increase in sNFL concentrations over time was observed. Patients with higher‐grade nAE had significantly elevated serum‐concentrations of monocyte chemoattractant protein 1 (MCP‐1) and brain‐derived neurotrophic factor (BDNF) at baseline compared to individuals without any nAE (p < 0.01 and p < 0.05). Conclusion Here, we identified nAE to occur more frequently than previously reported. Increase of sNFL during nAE confirms the clinical diagnosis of neurotoxicity and might be a suitable marker for neuronal damage associated with ICI therapy. Furthermore, MCP‐1 and BDNF are potentially the first clinical‐class nAE predictors for patients under ICI therapy.

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