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Graphicalized vision-language modeling for comprehensive lung nodule analysis and risk stratification.

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NPJ digital medicine 📖 저널 OA 98.6% 2024: 1/1 OA 2025: 41/41 OA 2026: 26/27 OA 2024~2026 2026 OA Lung Cancer Diagnosis and Treatment
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PubMed DOI OpenAlex 마지막 보강 2026-04-30
OpenAlex 토픽 · Lung Cancer Diagnosis and Treatment Medical Image Segmentation Techniques AI in cancer detection

Zhao D, Xi J, Guo X, Chai J, Xu Z, Li L

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Lung cancer care involves coupled tasks such as precise nodule detection, patient-level survival risk estimation, and nodule count quantification, typically handled by separate systems despite clear i

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APA Danwen Zhao, Junfeng Xi, et al. (2026). Graphicalized vision-language modeling for comprehensive lung nodule analysis and risk stratification.. NPJ digital medicine. https://doi.org/10.1038/s41746-026-02602-9
MLA Danwen Zhao, et al.. "Graphicalized vision-language modeling for comprehensive lung nodule analysis and risk stratification.." NPJ digital medicine, 2026.
PMID 41965884 ↗

Abstract

Lung cancer care involves coupled tasks such as precise nodule detection, patient-level survival risk estimation, and nodule count quantification, typically handled by separate systems despite clear interdependence. We present VITALIS, a multimodal vision-language framework that fuses CT and PET/CT imaging with structured radiology text using a graph-aware Transformer: Laplacian diffusion enriches token features on an image-text graph, while structural and prior-guided attention focus computation on anatomically and clinically related contexts, followed by bidirectional image-text conditioning to form a fused patient representation. This representation parameterizes a continuous-time latent risk process governed by a context-modulated Neural ODE, enabling individualized continuous-time modeling of time-to-event risk. Task-specific heads decode the latent trajectory into nodule detection, nodule malignancy classification, survival risk estimation, and nodule count prediction. Evaluated on three public cohorts, the framework delivers accurate delineations, low-false-positive localization, calibrated survival risk estimates, and consistent nodule counts across tasks. These findings indicate that coupling graph-aware multimodal encoding with continuous-time latent dynamics provides a coherent basis for integrated diagnostic and prognostic modeling in lung cancer.

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