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This summary is machine-generated.

Artificial intelligence (AI) enhances oncological hybrid imaging by improving lesion detection and characterization. AI applications promise efficient, quantitative data for evidence-based therapy guidance, though challenges in implementation remain.

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2026-06-19T13:40:23.597899+00:00

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