BMC Cancer (Oct 2022)

Personalized targeted therapy prescription in colorectal cancer using algorithmic analysis of RNA sequencing data

  • Maxim Sorokin,
  • Marianna Zolotovskaia,
  • Daniil Nikitin,
  • Maria Suntsova,
  • Elena Poddubskaya,
  • Alexander Glusker,
  • Andrew Garazha,
  • Alexey Moisseev,
  • Xinmin Li,
  • Marina Sekacheva,
  • David Naskhletashvili,
  • Alexander Seryakov,
  • Ye Wang,
  • Anton Buzdin

DOI
https://doi.org/10.1186/s12885-022-10177-3
Journal volume & issue
Vol. 22, no. 1
pp. 1 – 19

Abstract

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Abstract Background: Overall survival of advanced colorectal cancer (CRC) patients remains poor, and gene expression analysis could potentially complement detection of clinically relevant mutations to personalize CRC treatments. Methods: We performed RNA sequencing of formalin-fixed, paraffin-embedded (FFPE) cancer tissue samples of 23 CRC patients and interpreted the data obtained using bioinformatic method Oncobox for expression-based rating of targeted therapeutics. Oncobox ranks cancer drugs according to the efficiency score calculated using target genes expression and molecular pathway activation data. The patients had primary and metastatic CRC with metastases in liver, peritoneum, brain, adrenal gland, lymph nodes and ovary. Two patients had mutations in NRAS, seven others had mutated KRAS gene. Patients were treated by aflibercept, bevacizumab, bortezomib, cabozantinib, cetuximab, crizotinib, denosumab, panitumumab and regorafenib as monotherapy or in combination with chemotherapy, and information on the success of totally 39 lines of therapy was collected. Results: Oncobox drug efficiency score was effective biomarker that could predict treatment outcomes in the experimental cohort (AUC 0.77 for all lines of therapy and 0.91 for the first line after tumor sampling). Separately for bevacizumab, it was effective in the experimental cohort (AUC 0.87) and in 3 independent literature CRC datasets, n = 107 (AUC 0.84–0.94). It also predicted progression-free survival in univariate (Hazard ratio 0.14) and multivariate (Hazard ratio 0.066) analyses. Difference in AUC scores evidences importance of using recent biosamples for the prediction quality. Conclusion: Our results suggest that RNA sequencing analysis of tumor FFPE materials may be helpful for personalizing prescriptions of targeted therapeutics in CRC.

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