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Prediction of oncogene mutation status in non-small cell lung cancer: a systematic review and meta-analysis with a special focus on artificial intelligence-based methods

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dc.contributor.author Fuster-Matanzo, Almudena
dc.contributor.author Picó-Peris, Alfonso
dc.contributor.author Bellvís-Bataller, Fuensanta
dc.contributor.author Jimenez-Pastor, Ana
dc.contributor.author Weiss, Glen J
dc.contributor.author Martí-Bonmatí, Luis
dc.contributor.author Lázaro-Sánchez, Antonio-David
dc.contributor.author Bazaga, David
dc.contributor.author Banna, Giuseppe L
dc.contributor.author Addeo, Alfredo
dc.contributor.author Camps, Carlos
dc.contributor.author Seijo, Luis M
dc.contributor.author Alberich-Bayarri, Ángel
dc.date.accessioned 2026-04-13T12:21:49Z
dc.date.available 2026-04-13T12:21:49Z
dc.date.issued 2026-03
dc.identifier.citation Abril-Parreño L, Fair S. Cervical artificial insemination with frozen-thawed semen in sheep: the secret is in the cervix of Norwegian ewe breeds. Biology of Reproduction. 18 de febrero de 2026;114(2):432-41. doi:10.1093/biolre/ioaf084
dc.identifier.issn 0938-7994
dc.identifier.uri https://sms.carm.es/ricsmur/handle/123456789/25828
dc.description.abstract OBJECTIVES: In non-small cell lung cancer (NSCLC), non-invasive alternatives to biopsy-dependent driver mutation analysis are needed. We reviewed the effectiveness of radiomics alone or with clinical data and assessed the performance of artificial intelligence (AI) models in predicting oncogene mutation status. MATERIALS AND METHODS: A PRISMA-compliant literature review for studies predicting oncogene mutation status in NSCLC patients using radiomics was conducted by a multidisciplinary team. Meta-analyses evaluating the performance of AI-based models developed with CT-derived radiomics features alone or combined with clinical data were performed. A meta-regression to analyze the influence of different predictors was also conducted. RESULTS: Of 890 studies identified, 124 evaluating models for the prediction of epidermal growth factor-1 (EGFR), anaplastic lymphoma kinase (ALK), and Kirsten rat sarcoma virus (KRAS) mutations were included in the systematic review, of which 51 were meta-analyzed. The AI algorithms' sensitivity/false positive rate (FPR) in predicting mutation status using radiomics-based models was 0.754 (95% CI 0.727-0.780)/0.344 (95% CI 0.308-0.381) for EGFR, 0.754 (95% CI 0.638-0.841)/0.225 (95% CI 0.163-0.302) for ALK and 0.475 (95% CI 0.153-0.820)/0.181 (95% CI 0.054-0.461) for KRAS. A meta-analysis of combined models was possible for EGFR mutation, revealing a sensitivity of 0.806 (95% CI 0.777-0.833) and a FPR of 0.315 (95% CI 0.270-0.364). No statistically significant results were obtained in the meta-regression. CONCLUSIONS: Radiomics-based models may offer a non-invasive alternative for determining oncogene mutation status in NSCLC. Further research is required to analyze whether clinical data might boost their performance. KEY POINTS: Question Can imaging-based radiomics and artificial intelligence non-invasively predict oncogene mutation status to improve diagnosis in non-small cell lung cancer (NSCLC)? Findings Radiomics-based models achieved high performance in predicting mutation status in NSCLC; adding clinical data showed limited improvement in predictive performance. Clinical relevance Radiomics and AI tools offer a non-invasive strategy to support molecular profiling in NSCLC. Validation studies addressing clinical and methodological aspects are essential to ensure their reliability and integration into routine clinical practice.
dc.language.iso eng
dc.publisher SPRINGER NATURE
dc.rights Atribución/Reconocimiento 4.0 Internacional
dc.rights.uri https://creativecommons.org/licenses/by/4.0/deed.es *
dc.subject.mesh Humans
dc.subject.mesh Carcinoma, Non-Small-Cell Lung/genetics/diagnostic imaging
dc.subject.mesh Lung Neoplasms/genetics/diagnostic imaging
dc.subject.mesh Artificial Intelligence
dc.subject.mesh Mutation
dc.subject.mesh Oncogenes/genetics
dc.subject.mesh ErbB Receptors/genetics
dc.subject.mesh Anaplastic Lymphoma Kinase/genetics
dc.subject.mesh Tomography, X-Ray Computed/methods
dc.title Prediction of oncogene mutation status in non-small cell lung cancer: a systematic review and meta-analysis with a special focus on artificial intelligence-based methods
dc.type info:eu-repo/semantics/article
dc.identifier.pmid 40921820
dc.relation.publisherversion https://link.springer.com/10.1007/s00330-025-11962-x
dc.type.version info:eu-repo/semantics/publishedVersion
dc.identifier.doi 10.1007/s00330-025-11962-x
dc.journal.title European radiology
dc.identifier.essn 1432-1084


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