Lingnan Modern Clinics In Surgery ›› 2026, Vol. 26 ›› Issue (02): 131-139.DOI: 10.3969/j.issn.1009-976X.2026.02.009
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NUERBANNU Tabusibieke, SHAO Guoan*
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* SHAO Guoan, 努尔班努·塔布斯别克, 邵国安*
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*邵国安,Email:3236875377@qq.com
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NUERBANNU Tabusibieke, SHAO Guoan. “Intelligent” treatment for thyroid cancer: application and prospect of artificial intelligence in thyroid cancer diagnosis and treatment[J]. Lingnan Modern Clinics In Surgery, 2026, 26(02): 131-139.
努尔班努·塔布斯别克, 邵国安. “智”疗甲状腺癌:人工智能在甲状腺癌诊疗中的应用与展望[J]. 岭南现代临床外科, 2026, 26(02): 131-139.
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