Latest Developments in Artificial Intelligence and Machine Learning Models in General Pediatric Surgery.

IF 1.4 3区 医学 Q2 PEDIATRICS
Hesham Elsayed, Georg Singer, Tristan Till, Holger Till
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Abstract

Artificial intelligence (AI) and machine learning (ML) models rapidly transform health care with applications ranging from diagnostic image interpretation, predictive modeling, personalized treatment planning, real-time intraoperative guidance, and outcome prediction. However, their implementation in general pediatric surgery remains limited due to the rarity and complexity of pediatric surgical conditions, small and heterogeneous datasets, and a lack of formal AI training and competencies among pediatric surgeons.This narrative review explores the current landscape of AI and ML applications in general pediatric surgery, focusing on five key conditions: appendicitis, necrotizing enterocolitis, Hirschsprung's disease, congenital diaphragmatic hernia, and biliary atresia. For each, we summarize recent developments, including the use of AI in image analysis, diagnostic support, prediction of disease severity and outcome, postoperative monitoring, and histopathological evaluation. We also highlight novel tools such as explainable AI models, natural language processing, and wearable technologies.Recent findings demonstrate promising diagnostic and prognostic capabilities across multiple conditions. However, most AI/ML models still require external validation and standardization. The review underscores the importance of collaborative, multicenter research based on joint datasets as well as targeted AI education for pediatric surgeons to fully explore the benefits of these technologies in clinical practice.AI and ML offer significant potential to improve pediatric surgical care, but broader implementation will require multicenter collaboration, a robust dataset, and targeted AI education for pediatric surgeons.

人工智能(AI)和机器学习(ML)模型在普通儿科外科中的最新进展。
人工智能(AI)和机器学习(ML)模型迅速改变了医疗保健,其应用范围从诊断图像解释、预测建模、个性化治疗计划、实时术中指导和结果预测。然而,由于儿科手术条件的稀缺性和复杂性,小而异构的数据集,以及儿科外科医生缺乏正式的人工智能培训和能力,它们在普通儿科外科中的实施仍然有限。材料和方法:本综述探讨了人工智能和机器学习在普通儿科手术中的应用现状,重点关注五种关键疾病:阑尾炎、坏死性小肠结肠炎(NEC)、巨结肠病、先天性膈疝(CDH)和胆道闭锁(BA)。对于每一个,我们总结了最近的发展,包括人工智能在图像分析、诊断支持、疾病严重程度和结果预测、术后监测和组织病理学评估中的应用。我们还重点介绍了可解释的人工智能模型、自然语言处理和可穿戴技术等新工具。结果:最近的研究结果表明,在多种情况下,有希望的诊断和预后能力。然而,大多数AI/ML模型仍然需要外部验证和标准化。该综述强调了基于联合数据集的协作多中心研究的重要性,以及对儿科外科医生进行有针对性的人工智能教育,以充分探索这些技术在临床实践中的益处。结论:人工智能和机器学习为改善儿科外科护理提供了巨大的潜力,但更广泛的实施将需要多中心合作、强大的数据集和针对儿科外科医生的人工智能教育。
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来源期刊
CiteScore
3.90
自引率
5.60%
发文量
66
审稿时长
6-12 weeks
期刊介绍: This broad-based international journal updates you on vital developments in pediatric surgery through original articles, abstracts of the literature, and meeting announcements. You will find state-of-the-art information on: abdominal and thoracic surgery neurosurgery urology gynecology oncology orthopaedics traumatology anesthesiology child pathology embryology morphology Written by surgeons, physicians, anesthesiologists, radiologists, and others involved in the surgical care of neonates, infants, and children, the EJPS is an indispensable resource for all specialists.
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