Our focus on cancer is easy to motivate as it impacts the individual, health care, and society. We provide innovative technology for early detection, tumor progression, relapse, and resistance. The ongoing developmental work takes advantage of novel spatial knowledge to identify and understand genomic mutations in cancer.
The main objectives of the proposal are to (i) develop a robust spatial barcoding technology to investigate genomes from a tissue section, mapping the spatial distribution of gains and losses of chromosomal information (copy number variations,CNVs ) and, eventually, point mutations within the same tissue section (ii) develop a computational framework to merge high-resolution microscopy imaging data with molecular data using machine learning and deep learning principles to visualize histology, gene expression profiles, cell types, and genomic alterations (iii) investigate, describe, and compare the genomic landscape in prostate and breast cancer to elucidate the impact of genomic alterations on disease.