AI Article Synopsis

  • - Lung cancer is a major cause of cancer deaths, with recent advancements in treatment enabled by genetically engineered mouse models (GEMMs), which better mimic human lung cancer than other methods.
  • - A new deep learning model was created to automate the detection of lung tumors in micro-CT scans, achieving high accuracy comparable to manual analysis and significantly reducing the time needed for segmentation.
  • - This deep learning model effectively tracked tumor progression in a study with mice, showcasing its potential to innovate lung cancer research by providing fast and accurate data analysis.

Article Abstract

Lung cancer remains a leading cause of cancer-related death, but scientists have made great strides in developing new treatments recently, partly owing to the use of genetically engineered mouse models (GEMMs). GEMM tumors represent a translational model that recapitulates human disease better than implanted models because tumors develop spontaneously in the lungs. However, detection of these tumors relies on in vivo imaging tools, specifically micro-Computed Tomography (micro-CT or µCT), and image analysis can be laborious with high inter-user variability. Here we present a deep learning model trained to perform fully automated segmentation of lung tumors without the interference of other soft tissues. Trained and tested on 100 3D µCT images (18,662 slices) that were manually segmented, the model demonstrated a high correlation to manual segmentations on the testing data (r=0.99, DSC=0.78) and on an independent dataset (n = 12 3D scans or 2328 2D slices, r=0.97, DSC=0.73). In a comparison against manual segmentation performed by multiple analysts, the model (r=0.98, DSC=0.78) performed within inter-reader variability (r=0.79, DSC=0.69) and close to intra-reader variability (r=0.99, DSC=0.82), all while completing 5+ hours of manual segmentations in 1 minute. Finally, when applied to a real-world longitudinal study (n = 55 mice), the model successfully detected tumor progression over time and the differences in tumor burden between groups induced with different virus titers, aligning well with more traditional analysis methods. In conclusion, we have developed a deep learning model which can perform fast, accurate, and fully automated segmentation of µCT scans of murine lung tumors.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10776660PMC
http://dx.doi.org/10.1016/j.tranon.2023.101833DOI Listing

Publication Analysis

Top Keywords

deep learning
12
lung tumors
12
murine lung
8
micro-computed tomography
8
learning model
8
fully automated
8
automated segmentation
8
manual segmentations
8
tumors
6
model
6

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!