Data-Driven Radiogenomic Approach for Deciphering Molecular Mechanisms Underlying Imaging Phenotypes in Lung Adenocarcinoma: A Pilot Study.

Int J Mol Sci

Institute for Biostatistics and Informatics in Medicine and Ageing Research, Rostock University Medical Center, Ernst-Heydemannstr. 8, 18057 Rostock, Germany.

Published: March 2023

AI Article Synopsis

  • Lung tumor nodules show various phenotypic characteristics in radiological images, highlighting the need to understand their molecular heterogeneity.
  • The study analyzed 86 imaging features from lung cancer patients and combined them with genomic data to create a radiogenomic association map (RAM), linking tumor attributes to genetic signatures.
  • Findings suggest that specific gene ontology processes and regulatory networks are reflected in CT image phenotypes, indicating that radiogenomics could help identify image biomarkers related to tumor genetics and could be applied to other cancer types for deeper insights.

Article Abstract

The heterogeneity of lung tumor nodules is reflected in their phenotypic characteristics in radiological images. The radiogenomics field employs quantitative image features combined with transcriptome expression levels to understand tumor heterogeneity molecularly. Due to the different data acquisition techniques for imaging traits and genomic data, establishing meaningful connections poses a challenge. We analyzed 86 image features describing tumor characteristics (such as shape and texture) with the underlying transcriptome and post-transcriptome profiles of 22 lung cancer patients (median age 67.5 years, from 42 to 80 years) to unravel the molecular mechanisms behind tumor phenotypes. As a result, we were able to construct a radiogenomic association map (RAM) linking tumor morphology, shape, texture, and size with gene and miRNA signatures, as well as biological correlates of GO terms and pathways. These indicated possible dependencies between gene and miRNA expression and the evaluated image phenotypes. In particular, the gene ontology processes "regulation of signaling" and "cellular response to organic substance" were shown to be reflected in CT image phenotypes, exhibiting a distinct radiomic signature. Moreover, the gene regulatory networks involving the TFs , , and could reflect how the texture of lung tumors is potentially formed. The combined visualization of transcriptomic and image features suggests that radiogenomic approaches could identify potential image biomarkers for underlying genetic variation, allowing a broader view of the heterogeneity of the tumors. Finally, the proposed methodology could also be adapted to other cancer types to expand our knowledge of the mechanistic interpretability of tumor phenotypes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10003564PMC
http://dx.doi.org/10.3390/ijms24054947DOI Listing

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