A deep learning module for automated detection and reporting of clinically significant lung nodules on low-dose chest CT scans
Author Block: V. Popov1, J. Afnan1, U. Kalabic2, Z. Li3, D. Chen3, D. Hassan2, D. Radisic2; 1Burlington, MA/US, 2Wenham, MA/US, 3East Lansing, MI/US
Purpose: Lung cancer remains the leading cause of cancer death worldwide. Multicentre trials (NLST, NELSON) have proven the efficacy of lung cancer screening in high-risk patients using low-dose, non-contrast chest CT scans. A novel Artificial intelligence (AI) module for automated nodule detection and output to the structured report is proposed, to assist with increasing screening rates while maintaining high levels of diagnostic accuracy.
Methods or Background: The nnDetection framework was applied to train a one-stage detector to segment nodules. Predictions from the nodule detector were fed through an efficient mechanism for reducing overlapping bounding boxes and a separate 3D deep convolutional neural network was trained for false positive reduction (FPR).
The model was then trained on the LUNA16 database (800+ LDCT studies). The model was tested on a holdout subset of LUNA16 (89 studies) and the Cornell ELCAP database (40 studies), for nodules 6 mm or greater.
Results or Findings: LUNA16 dataset: The performance of the nnDetection framework results in a recall of 100%, a precision of 77%, and a false negative rate of 0%. Adding the FPR model, the recall remains at 100%, the precision increases to 84%, and the false negative rate is 0%.
ELCAP dataset: For nodules 6 mm or larger, nnDetection with FPR results in a recall of 100%, a precision of 58%, and a false negative rate of 4%.
Conclusion: nnDetection + FPR performs very well in detecting clinically relevant nodules on the LUNA16 dataset. In addition, the model shows the ability to scale across LDCT datasets without fine tuning when applied to the ELCAP Cornell dataset, detecting all nodules 6 mm or greater.
Limitations: An identified limitation was the small datasets.
Funding for this study: Private funding was obtained for this study.
Has your study been approved by an ethics committee? Not applicable
Ethics committee - additional information: Ethics committee approval was not needed as the study used publicly available datasets.