人工智能和机器学习用于急性胰腺炎的精准医学:叙述综述。

IF 2.4 4区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Sandra López Gordo, Elena Ramirez-Maldonado, Maria Teresa Fernandez-Planas, Ernest Bombuy, Robert Memba, Rosa Jorba
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引用次数: 0

摘要

急性胰腺炎(AP)由于其严重程度范围广泛,从轻度病例到危及生命的并发症,如严重急性胰腺炎(SAP),坏死和多器官衰竭,给临床带来了重大挑战。传统的评分系统,如Ranson和BISAP,提供了风险分层的基础工具,但往往缺乏早期的准确性。本文旨在探讨人工智能(AI)和机器学习(ML)在AP管理中的变革作用,重点介绍它们在诊断、严重程度预测、并发症管理和治疗优化方面的应用。对最近的研究进行了全面的分析,突出了机器学习模型,如XGBoost、神经网络和多模态方法。这些模型整合了临床、实验室和影像学数据,包括放射组学特征,对AP的诊断和预后准确性非常有用。特别注意的是针对SAP、急性肾损伤和急性呼吸窘迫综合征等并发症、死亡率和复发的模型。基于人工智能的模型在预测急性胰腺炎预后方面比传统模型获得更高的AUC值。XGBoost对SAP早期预测的AUC为0.93,高于BISAP (AUC 0.74)和APACHE II (AUC 0.81)。综合多模态数据的PrismSAP的AUC最高,为0.916。人工智能模型在死亡率预测(AUC 0.975)和ARDS检测(AUC 0.891)方面也显示出卓越的准确性。人工智能和机器学习代表了AP管理的革命性进步,促进了个性化治疗,早期风险分层,并允许优化资源利用。通过解决模型通用性、伦理考虑和临床采用等挑战,人工智能有可能显著改善患者的治疗效果,并重新定义全球AP护理标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

AI and Machine Learning for Precision Medicine in Acute Pancreatitis: A Narrative Review.

AI and Machine Learning for Precision Medicine in Acute Pancreatitis: A Narrative Review.

Acute pancreatitis (AP) presents a significant clinical challenge due to its wide range of severity, from mild cases to life-threatening complications such as severe acute pancreatitis (SAP), necrosis, and multi-organ failure. Traditional scoring systems, such as Ranson and BISAP, offer foundational tools for risk stratification but often lack early precision. This review aims to explore the transformative role of artificial intelligence (AI) and machine learning (ML) in AP management, focusing on their applications in diagnosis, severity prediction, complication management, and treatment optimization. A comprehensive analysis of recent studies was conducted, highlighting ML models such as XGBoost, neural networks, and multimodal approaches. These models integrate clinical, laboratory, and imaging data, including radiomics features, and are useful in diagnostic and prognostic accuracy in AP. Special attention was given to models addressing SAP, complications like acute kidney injury and acute respiratory distress syndrome, mortality, and recurrence. AI-based models achieved higher AUC values than traditional models in predicting acute pancreatitis outcomes. XGBoost reached an AUC of 0.93 for early SAP prediction, higher than BISAP (AUC 0.74) and APACHE II (AUC 0.81). PrismSAP, integrating multimodal data, achieved the highest AUC of 0.916. AI models also demonstrated superior accuracy in mortality prediction (AUC 0.975) and ARDS detection (AUC 0.891) AI and ML represent a transformative advance in AP management, facilitating personalized treatment, early risk stratification, and allowing resource utilization to be optimized. By addressing challenges such as model generalizability, ethical considerations, and clinical adoption, AI has the potential to significantly improve patient outcomes and redefine AP care standards globally.

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来源期刊
Medicina-Lithuania
Medicina-Lithuania 医学-医学:内科
CiteScore
3.30
自引率
3.80%
发文量
1578
审稿时长
25.04 days
期刊介绍: The journal’s main focus is on reviews as well as clinical and experimental investigations. The journal aims to advance knowledge related to problems in medicine in developing countries as well as developed economies, to disseminate research on global health, and to promote and foster prevention and treatment of diseases worldwide. MEDICINA publications cater to clinicians, diagnosticians and researchers, and serve as a forum to discuss the current status of health-related matters and their impact on a global and local scale.
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