Abstract

Radiogenomics relationships (RRs) aims to identify statistically significant correlations between medical image features and molecular characteristics from analysing tissue samples. Previous radiogenomics studies mainly relied on a single category of image feature extraction techniques (ETs); these are (i) handcrafted ETs that encompass visual imaging characteristics, curated from knowledge of human experts and, (ii) deep ETs that quantify abstract-level imaging characteristics from large data. Prior studies therefore failed to leverage the complementary information that are accessible from fusing the ETs. In this study, we propose a fused feature signature (FFSig): a selection of image features from handcrafted and deep ETs (e.g., transfer learning and fine-tuning of deep learning models). We evaluated the FFSig’s ability to better represent RRs compared to individual ET approaches with two public datasets: the first dataset was used to build the FFSig using 89 patients with non-small cell lung cancer (NSCLC) comprising of gene expression data and CT images of the thorax and the upper abdomen for each patient; the second NSCLC dataset comprising of 117 patients with CT images and RNA-Seq data and was used as the validation set. Our results show that our FFSig encoded complementary imaging characteristics of tumours and identified more RRs with a broader range of genes that are related to important biological functions such as tumourigenesis. We suggest that the FFSig has the potential to identify important RRs that may assist cancer diagnosis and treatment in the future.

Highlights

  • Radiogenomics relationships (RRs) aims to identify statistically significant correlations between medical image features and molecular characteristics from analysing tissue samples

  • We evaluated the performance of ­FFSig by: (i) determining if the proposed ­FFSig can encode complementary medical image visual characteristics when compared with other image feature signatures; (ii) determining if the proposed F­ FSig is relevant to the tumour T stage by using the χ2 test of independence; (iii) assessing the distribution of RRs with genes; (iv) assessing the distribution of RRs with Gene Ontology (GO) terms; (v) determining if the proposed ­FFSig can identify exclusive RRs with genetic biomarkers of nonsmall cell lung cancer (NSCLC) and GO terms that are related to NSCLC

  • F­ FSig is comprised of features that were all extracted from sagittal planes of the 2.5D presentation and has the highest number of features at 7. ­TLSig is comprised of features that were all extracted from sagittal planes and has 6 features

Read more

Summary

Introduction

Radiogenomics relationships (RRs) aims to identify statistically significant correlations between medical image features and molecular characteristics from analysing tissue samples. Previous works showed that image features derived from tumours can predict tumour prognosis and treatment responses for ­NSCLC13,14 These findings contributed to ‘radiogenomics’, a growing research field where the aim is to investigate the relationships between medical imaging features and molecular characteristics. Radiogenomics relationships (RRs) can be determined by identifying statistically significant correlations between image features and gene ­expressions[15,16]. Published studies showed that RRs may predict the mutation status of key genetic biomarkers in NSCLC such as EGFR and ­KRAS18,19 These biomarkers have been shown to have important implications for the treatment of ­NSCLC20

Methods
Results
Discussion
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.