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  5. Tumor Mutational Burden as a Potential Biomarker for Immunotherapy in Pancreatic Cancer: Systematic Review and Still-Open Questions

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Article
en
2021

Tumor Mutational Burden as a Potential Biomarker for Immunotherapy in Pancreatic Cancer: Systematic Review and Still-Open Questions

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en
2021
Vol 13 (13)
Vol. 13
DOI: 10.3390/cancers13133119

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Jae Il Shin
Jae Il Shin

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Rita T. Lawlor
Paola Mattiolo
Andrea Mafficini
+13 more

Abstract

Tumor mutational burden (TMB) is a numeric index that expresses the number of mutations per megabase (muts/Mb) harbored by tumor cells in a neoplasm. TMB can be determined using different approaches based on next-generation sequencing. In the case of high values, it indicates a potential response to immunotherapy. In this systematic review, we assessed the potential predictive role of high-TMB in pancreatic ductal adenocarcinoma (PDAC), as well as the histo-molecular features of high-TMB PDAC. High-TMB appeared as a rare but not-negligible molecular feature in PDAC, being present in about 1.1% of cases. This genetic condition was closely associated with mucinous/colloid and medullary histology (p < 0.01). PDAC with high-TMB frequently harbored other actionable alterations, with microsatellite instability/defective mismatch repair as the most common. Immunotherapy has shown promising results in high-TMB PDAC, but the sample size of high-TMB PDAC treated so far is quite small. This study highlights interesting peculiarities of PDAC harboring high-TMB and may represent a reliable starting point for the assessment of TMB in the clinical management of patients affected by pancreatic cancer.

How to cite this publication

Rita T. Lawlor, Paola Mattiolo, Andrea Mafficini, Seung‐Mo Hong, Maria Liliana Piredda, Sergio Vincenzo Taormina, Giuseppe Malleo, Giovanni Marchegiani, Antonio Pea, Roberto Salvia, Valentyna Kryklyva, Jae Il Shin, Lodewijk A.A. Brosens, Michèle Milella, Aldo Scarpa, Claudio Luchini (2021). Tumor Mutational Burden as a Potential Biomarker for Immunotherapy in Pancreatic Cancer: Systematic Review and Still-Open Questions. , 13(13), DOI: https://doi.org/10.3390/cancers13133119.

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Publication Details

Type

Article

Year

2021

Authors

16

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.3390/cancers13133119

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