Revisiting AI Model Interpretability in Lung Cancer Screening: Challenges in Balancing Predictive Performance and Reliability.
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APA
Oka S, Takefuji Y (2026). Revisiting AI Model Interpretability in Lung Cancer Screening: Challenges in Balancing Predictive Performance and Reliability.. Clinical lung cancer, 27(2), 197-198. https://doi.org/10.1016/j.cllc.2025.09.005
MLA
Oka S, et al.. "Revisiting AI Model Interpretability in Lung Cancer Screening: Challenges in Balancing Predictive Performance and Reliability.." Clinical lung cancer, vol. 27, no. 2, 2026, pp. 197-198.
PMID
41077501 ↗
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