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Deep learning in histopathology images for prediction of oncogenic driver molecular alterations in lung cancer: a systematic review and meta-analysis

Rafael Parra‐Medina, Gabriela Guerron-Gomez, Daniel Mendivelso-González, Javier Hernan Gil-Gómez, Juan Pablo Álzate, Marcela Gomez-Suarez, José Fernando Polo Nieto, John Jaime Sprockel Díaz, Andrés Mosquera‐Zamudio

2025Translational Lung Cancer Research12 citationsDOIOpen Access PDF

Abstract

Background: guiding targeted therapies. Their prevalence varies by ethnicity, smoking status, and gender. Advances in artificial intelligence (AI) enable molecular biomarker prediction from hematoxylin and eosin-stained whole-slide images (H&E WSIs), offering a non-invasive approach to precision oncology. This review assesses deep learning (DL) models predicting oncogenic drivers in NSCLC from H&E WSIs and their diagnostic accuracy. Methods: A systematic review registered in PROSPERO (CRD42024573602) was conducted in Embase, LILACS, Medline, Web of Science, and Cochrane to identify studies on DL models using H&E slides for LC gene alterations. Only English and Spanish studies were included. Key metrics were extracted for meta-analysis. Studies without LC-specific data, missing essential metrics, or with inconsistent results were excluded. Results: [sensitivity and specificity of 70% (95% CI: 65-83%)] were the oncogenic driver molecular alterations that demonstrated the best predictive capability performance. Conclusions: Our results emphasize the potential of these models as screening tools despite H&E WSI.It is necessary to validate these predictive models among diverse populations and clinical outcomes. This approach is crucial and leaves an open door for advances in precision medicine, offering promising avenues for personalized treatment strategies.

Topics & Concepts

Lung cancerHistopathologyMedicineMeta-analysisCancerBioinformaticsPathologyArtificial intelligenceComputational biologyInternal medicineComputer scienceBiologyAI in cancer detectionRadiomics and Machine Learning in Medical ImagingLung Cancer Diagnosis and Treatment