INTRODUCTION: Gastric cancer is the fifth most common cancer and the third cause of cancer death. The clinical outcomes of the patients are still not encouraging with a low rate of 5 years' survival. Often the disease is diagnosed at advanced stages and this obviously negatively affects patients outcomes. A deep understanding of molecular basis of gastric cancer can lead to the identification of diagnostic, predictive, prognostic, and therapeutic biomarkers. MAIN BODY: This paper aims to give a global view on the molecular classification and mechanisms involved in the development of the tumour and on the biomarkers for gastric cancer. We discuss the role of E-cadherin, HER2, fibroblast growth factor receptor (FGFR), MET, human epidermal growth factor receptor (EGFR), hepatocyte growth factor receptor (HGFR), mammalian target of rapamycin (mTOR), microsatellite instability (MSI), PD-L1, and TP53. We have also considered in this manuscript new emerging biomarkers as matrix metalloproteases (MMPs), microRNAs, and long noncoding RNAs (lncRNAs). CONCLUSIONS: Identifying and validating diagnostic, prognostic, predictive, and therapeutic biomarkers will have a huge impact on patients outcomes as they will allow early detection of tumours and also guide the choice of a targeted therapy based on specific molecular features of the cancer

Diagnostic, Predictive, Prognostic, and Therapeutic Molecular Biomarkers in Third Millennium: A Breakthrough in Gastric Cancer / Carlomagno, Nicola; Incollingo, Paola; Tammaro, Vincenzo; Peluso, Gaia; Rupealta, Niccolã²; Chiacchio, Gaetano; Sandoval Sotelo, Maria Laura; Minieri, Gianluca; Pisani, Antonio; Riccio, Eleonora; Sabbatini, Massimo; Bracale, UMBERTO MARCELLO; Calogero, Armando; Dodaro, CONCETTA ANNA; Santangelo, Michele. - In: BIOMED RESEARCH INTERNATIONAL. - ISSN 2314-6133. - 2017:7869802(2017), pp. 1-11. [10.1155/2017/7869802]

Diagnostic, Predictive, Prognostic, and Therapeutic Molecular Biomarkers in Third Millennium: A Breakthrough in Gastric Cancer

CARLOMAGNO, NICOLA;TAMMARO, VINCENZO;CHIACCHIO, GAETANO;PISANI, ANTONIO;RICCIO, ELEONORA;SABBATINI, MASSIMO;BRACALE, UMBERTO MARCELLO;CALOGERO, ARMANDO;DODARO, CONCETTA ANNA;SANTANGELO, MICHELE
2017

Abstract

INTRODUCTION: Gastric cancer is the fifth most common cancer and the third cause of cancer death. The clinical outcomes of the patients are still not encouraging with a low rate of 5 years' survival. Often the disease is diagnosed at advanced stages and this obviously negatively affects patients outcomes. A deep understanding of molecular basis of gastric cancer can lead to the identification of diagnostic, predictive, prognostic, and therapeutic biomarkers. MAIN BODY: This paper aims to give a global view on the molecular classification and mechanisms involved in the development of the tumour and on the biomarkers for gastric cancer. We discuss the role of E-cadherin, HER2, fibroblast growth factor receptor (FGFR), MET, human epidermal growth factor receptor (EGFR), hepatocyte growth factor receptor (HGFR), mammalian target of rapamycin (mTOR), microsatellite instability (MSI), PD-L1, and TP53. We have also considered in this manuscript new emerging biomarkers as matrix metalloproteases (MMPs), microRNAs, and long noncoding RNAs (lncRNAs). CONCLUSIONS: Identifying and validating diagnostic, prognostic, predictive, and therapeutic biomarkers will have a huge impact on patients outcomes as they will allow early detection of tumours and also guide the choice of a targeted therapy based on specific molecular features of the cancer
2017
Diagnostic, Predictive, Prognostic, and Therapeutic Molecular Biomarkers in Third Millennium: A Breakthrough in Gastric Cancer / Carlomagno, Nicola; Incollingo, Paola; Tammaro, Vincenzo; Peluso, Gaia; Rupealta, Niccolã²; Chiacchio, Gaetano; Sandoval Sotelo, Maria Laura; Minieri, Gianluca; Pisani, Antonio; Riccio, Eleonora; Sabbatini, Massimo; Bracale, UMBERTO MARCELLO; Calogero, Armando; Dodaro, CONCETTA ANNA; Santangelo, Michele. - In: BIOMED RESEARCH INTERNATIONAL. - ISSN 2314-6133. - 2017:7869802(2017), pp. 1-11. [10.1155/2017/7869802]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/691661
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