Global mapping of cancers: The Cancer Genome Atlas and beyond

Carlo Ganini(University of Rome Tor Vergata), Ivano Amelio(University of Rome Tor Vergata), Riccardo Bertolo(University of Rome Tor Vergata), Pierluigi Bove(University of Rome Tor Vergata), Oreste Claudio Buonomo(University of Rome Tor Vergata), Eleonora Candi(University of Rome Tor Vergata), Chiara Cipriani(University of Rome Tor Vergata), Nicola Di Daniele(University of Rome Tor Vergata), Hartmut Juhl, Alessandro Mauriello(University of Rome Tor Vergata), Carla Marani(University of Rome Tor Vergata), John L. Marshall(Georgetown University), Sonia Melino(University of Rome Tor Vergata), Paolo Marchetti(Azienda Ospedaliera Sant'Andrea), Manuela Montanaro(University of Rome Tor Vergata), Maria Natale(University of Rome Tor Vergata), Flavia Novelli(University of Rome Tor Vergata), Giampiero Palmieri(University of Rome Tor Vergata), Mauro Piacentini(University of Rome Tor Vergata), Erino Angelo Rendina(Azienda Ospedaliera Sant'Andrea), Mario Roselli(University of Rome Tor Vergata), Giuseppe Sica(University of Rome Tor Vergata), Manfredi Tesauro(University of Rome Tor Vergata), Valentina Rovella(University of Rome Tor Vergata), Giuseppe Tisone(University of Rome Tor Vergata), Yufang Shi(University of Rome Tor Vergata), Ying Wang(Shanghai Institute of Nutrition and Health), Gerry Melino(University of Rome Tor Vergata)
Molecular Oncology
July 10, 2021
Cited by 105Open Access
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Abstract

Cancer genomes have been explored from the early 2000s through massive exome sequencing efforts, leading to the publication of The Cancer Genome Atlas in 2013. Sequencing techniques have been developed alongside this project and have allowed scientists to bypass the limitation of costs for whole-genome sequencing (WGS) of single specimens by developing more accurate and extensive cancer sequencing projects, such as deep sequencing of whole genomes and transcriptomic analysis. The Pan-Cancer Analysis of Whole Genomes recently published WGS data from more than 2600 human cancers together with almost 1200 related transcriptomes. The application of WGS on a large database allowed, for the first time in history, a global analysis of features such as molecular signatures, large structural variations and noncoding regions of the genome, as well as the evaluation of RNA alterations in the absence of underlying DNA mutations. The vast amount of data generated still needs to be thoroughly deciphered, and the advent of machine-learning approaches will be the next step towards the generation of personalized approaches for cancer medicine. The present manuscript wants to give a broad perspective on some of the biological evidence derived from the largest sequencing attempts on human cancers so far, discussing advantages and limitations of this approach and its power in the era of machine learning.


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