Cancers (Mar 2024)

Deep-Learning-Based Predictive Imaging Biomarker Model for EGFR Mutation Status in Non-Small Cell Lung Cancer from CT Imaging

  • Abhishek Mahajan,
  • Vatsal Kania,
  • Ujjwal Agarwal,
  • Renuka Ashtekar,
  • Shreya Shukla,
  • Vijay Maruti Patil,
  • Vanita Noronha,
  • Amit Joshi,
  • Nandini Menon,
  • Rajiv Kumar Kaushal,
  • Swapnil Rane,
  • Anuradha Chougule,
  • Suthirth Vaidya,
  • Krishna Kaluva,
  • Kumar Prabhash

DOI
https://doi.org/10.3390/cancers16061130
Journal volume & issue
Vol. 16, no. 6
p. 1130

Abstract

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Purpose: The authors aimed to develop and validate deep-learning-based radiogenomic (DLR) models and radiomic signatures to predict the EGFR mutation in patients with NSCLC, and to assess the semantic and clinical features that can contribute to detecting EGFR mutations. Methods: Using 990 patients from two NSCLC trials, we employed an end-to-end pipeline analyzing CT images without precise segmentation. Two 3D convolutional neural networks segmented lung masses and nodules. Results: The combined radiomics and DLR model achieved an AUC of 0.88 ± 0.03 in predicting EGFR mutation status, outperforming individual models. Semantic features further improved the model’s accuracy, with an AUC of 0.88 ± 0.05. CT semantic features that were found to be significantly associated with EGFR mutations were pure solid tumours with no associated ground glass component (p p p = 0.004), the presence of fissure attachment (p = 0.001), the presence of metastatic nodules in both the tumour-containing lobe (p = 0.001) and the non-tumour-containing lobe (p = 0.001), the presence of ipsilateral pleural effusion (p = 0.04), and average enhancement of the tumour mass above 54 HU (p < 0.001). Conclusions: This AI-based radiomics and DLR model demonstrated high accuracy in predicting EGFR mutation, serving as a non-invasive and user-friendly imaging biomarker for EGFR mutation status prediction.

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