Prognostic significance of tumor microenvironment assessed by machine learning algorithm in surgically resected non‐small cell lung cancer
Yukihiro Terada,
Mitsuhiro Isaka,
Akira Ono
et al.
Abstract:BackgroundA methodology to assess the immune microenvironment (IME) of non‐small cell lung cancer (NSCLC) has not been established, and the prognostic impact of IME factors is not yet clear.AimsThis study aimed to assess the IME factors and evaluate their prognostic values.Methods and ResultsWe assessed CD8+ tumor‐infiltrating lymphocyte (TIL) density, forkhead box protein P3+ (Foxp3+) TIL density, and programmed death receptor ligand‐1 (PD‐L1) tumor proportion score (TPS) using a machine‐learning algorithm in… Show more
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