Interpretable AI for Lung Cancer Screening

Research Paper#Medical Imaging, AI in Healthcare, Lung Cancer🔬 Research|Analyzed: Jan 3, 2026 16:41
Published: Dec 31, 2025 00:23
1 min read
ArXiv

Analysis

This paper addresses the limitations of current lung cancer screening methods by proposing a novel approach to connect radiomic features with Lung-RADS semantics. The development of a radiological-biological dictionary is a significant step towards improving the interpretability of AI models in personalized medicine. The use of a semi-supervised learning framework and SHAP analysis further enhances the robustness and explainability of the proposed method. The high validation accuracy (0.79) suggests the potential of this approach to improve lung cancer detection and diagnosis.
Reference / Citation
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"The optimal pipeline (ANOVA feature selection with a support vector machine) achieved a mean validation accuracy of 0.79."
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ArXivDec 31, 2025 00:23
* Cited for critical analysis under Article 32.