人工智能在小儿先天性畸形诊疗的应用进展
Applications of Artificial Intelligence in the Diagnosis and Treatment of Pediatric Congenital malformations: Recent Advances
摘要: 先天性畸形是小儿外科最常见的疾病之一,也是世界范围内的公共卫生难题。人工智能目前在小儿先天性畸形诊疗中取得了不错的应用进展。体现在疾病的早期筛查与诊断、治疗方案个性化、手术决策与预后各个方面,随着人工智能技术的发展和规范化,AI有望进一步推动小儿先天性畸形的精准医疗和个性化治疗。
Abstract: Congenital malformations are one of the most common diseases in pediatric surgery and a worldwide public health problem. At present, artificial intelligence has made good progress in the diagnosis and treatment of pediatric congenital malformations. With the development and standardization of artificial intelligence technology, AI is expected to further promote precision medicine and personalized treatment of pediatric congenital malformations.
文章引用:王鑫, 王勇. 人工智能在小儿先天性畸形诊疗的应用进展[J]. 临床医学进展, 2025, 15(9): 91-98. https://doi.org/10.12677/acm.2025.1592461

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