Receive a weekly summary and discussion of the top papers of the week by leading researchers in the field.

In Bioinformatics advances

SUMMARY : Radiographic imaging techniques provide insight into the imaging features of tumor regions of interest, while immunohistochemistry and sequencing techniques performed on biopsy samples yield omics data. Relationships between tumor genotype and phenotype can be identified from these data through traditional correlation analyses and artificial intelligence (AI) models. However, the radiogenomics community lacks a unified software platform with which to conduct such analyses in a reproducible manner. To address this gap, we developed ImaGene, a web-based platform that takes tumor omics and imaging datasets as inputs, performs correlation analysis between them, and constructs AI models. ImaGene has several modifiable configuration parameters and produces a report displaying model diagnostics. To demonstrate the utility of ImaGene, we utilized data for invasive breast carcinoma (IBC) and head and neck squamous cell carcinoma (HNSCC) and identified potential associations between imaging features and nine genes (WT1, LGI3, SP7, DSG1, ORM1, CLDN10, CST1, SMTNL2, and SLC22A31) for IBC and eight genes (NR0B1, PLA2G2A, MAL, CLDN16, PRDM14, VRTN, LRRN1, and MECOM) for HNSCC. ImaGene has the potential to become a standard platform for radiogenomic tumor analyses due to its ease of use, flexibility, and reproducibility, playing a central role in the establishment of an emerging radiogenomic knowledge base.

AVAILABILITY AND IMPLEMENTATION : www.ImaGene.pgxguide.org, https://github.com/skr1/Imagene.git.

SUPPLEMENTARY INFORMATION : Supplementary data are available at https://github.com/skr1/Imagene.git.

Sukhadia Shrey S, Tyagi Aayush, Venkataraman Vivek, Mukherjee Pritam, Prasad Pratosh, Gevaert Olivier, Nagaraj Shivashankar H

2022