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Machine Learning Quantification of Intraepithelial Tumor-Infiltrating Lymphocytes as a Significant Prognostic Factor in High-Grade Serous Ovarian Carcinomas.

Jesús Machuca AguadoAntonio Félix Conde-MartínAlejandro Alvarez-MuñozEnrique Rodríguez-ZarcoAlfredo Polo-VelascoAntonio Rueda-RamosRosa Rendón-GarcíaJuan José Ríos-MartinMiguel A Idoate
Published in: International journal of molecular sciences (2023)
The prognostic and predictive role of tumor-infiltrating lymphocytes (TILs) has been demonstrated in various neoplasms. The few publications that have addressed this topic in high-grade serous ovarian carcinoma (HGSOC) have approached TIL quantification from a semiquantitative standpoint. Clinical correlation studies, therefore, need to be conducted based on more accurate TIL quantification. We created a machine learning system based on H&E-stained sections using 76 molecularly and clinically well-characterized advanced HGSOC. This system enabled immune cell classification. These immune parameters were subsequently correlated with overall survival (OS) and progression-free survival (PFI). An intense colonization of the tumor cords by TILs was associated with a better prognosis. Moreover, the multivariate analysis showed that the intraephitelial (ie) TILs concentration was an independent and favorable prognostic factor both for OS ( p = 0.02) and PFI ( p = 0.001). A synergistic effect between complete surgical cytoreduction and high levels of ieTILs was evidenced, both in terms of OS ( p = 0.0005) and PFI ( p = 0.0008). We consider that digital analysis with machine learning provided a more accurate TIL quantification in HGSOC. It has been demonstrated that ieTILs quantification in H&E-stained slides is an independent prognostic parameter. It is possible that intraepithelial TIL quantification could help identify candidate patients for immunotherapy.
Keyphrases
  • high grade
  • prognostic factors
  • machine learning
  • low grade
  • free survival
  • deep learning
  • end stage renal disease
  • peripheral blood
  • big data
  • chronic kidney disease
  • high resolution
  • newly diagnosed
  • mass spectrometry