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Briefings in Bioinformatics

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Institución detectada Período Navegá Descargá Solicitá
No detectada desde mar. 2001 / EBSCOHost

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Tipo de recurso:

revistas

ISSN impreso

1467-5463

Editor responsable

Oxford University Press (OUP)

País de edición

Reino Unido

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Unveiling the immune infiltrate modulation in cancer and response to immunotherapy by MIXTURE—an enhanced deconvolution method

Elmer A FernándezORCID; Yamil D MahmoudORCID; Florencia Veigas; Darío Rocha; Matías Miranda; Joaquín Merlo; Mónica Balzarini; Hugo D Lujan; Gabriel A Rabinovich; María Romina Girotti

<jats:title>Abstract</jats:title><jats:p>The accurate quantification of tumor-infiltrating immune cells turns crucial to uncover their role in tumor immune escape, to determine patient prognosis and to predict response to immune checkpoint blockade. Current state-of-the-art methods that quantify immune cells from tumor biopsies using gene expression data apply computational deconvolution methods that present multicollinearity and estimation errors resulting in the overestimation or underestimation of the diversity of infiltrating immune cells and their quantity. To overcome such limitations, we developed MIXTURE, a new ν-support vector regression-based noise constrained recursive feature selection algorithm based on validated immune cell molecular signatures. MIXTURE provides increased robustness to cell type identification and proportion estimation, outperforms the current methods, and is available to the wider scientific community. We applied MIXTURE to transcriptomic data from tumor biopsies and found relevant novel associations between the components of the immune infiltrate and molecular subtypes, tumor driver biomarkers, tumor mutational burden, microsatellite instability, intratumor heterogeneity, cytolytic score, programmed cell death ligand 1 expression, patients’ survival and response to anti-cytotoxic T-lymphocyte-associated antigen 4 and anti-programmed cell death protein 1 immunotherapy.</jats:p>

Palabras clave: Molecular Biology; Information Systems.

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Characterization of gastric cancer stem-like molecular features, immune and pharmacogenomic landscapes

Chen Wei; Mingkai Chen; Wenying Deng; Liangyu Bie; Yijie Ma; Chi Zhang; Kangdong Liu; Wei Shen; Shuyi Wang; Chaogang Yang; Suxia Luo; Ning LiORCID

<jats:title>Abstract</jats:title> <jats:p>Cancer stem cells (CSCs) actively reprogram their tumor microenvironment (TME) to sustain a supportive niche, which may have a dramatic impact on prognosis and immunotherapy. However, our knowledge of the landscape of the gastric cancer stem-like cell (GCSC) microenvironment needs to be further improved. A multi-step process of machine learning approaches was performed to develop and validate the prognostic and predictive potential of the GCSC-related score (GCScore). The high GCScore subgroup was not only associated with stem cell characteristics, but also with a potential immune escape mechanism. Furthermore, we experimentally demonstrated the upregulated infiltration of CD206+ tumor-associated macrophages (TAMs) in the invasive margin region, which in turn maintained the stem cell properties of tumor cells. Finally, we proposed that the GCScore showed a robust capacity for prediction for immunotherapy, and investigated potential therapeutic targets and compounds for patients with a high GCScore. The results indicate that the proposed GCScore can be a promising predictor of prognosis and responses to immunotherapy, which provides new strategies for the precision treatment of GCSCs.</jats:p>

Palabras clave: Molecular Biology; Information Systems.

Pp. No disponible