人工智能在预测心脏复苏后神经系统预后中的作用。

IF 1.7 Q2 MEDICINE, GENERAL & INTERNAL Annals of Medicine and Surgery Pub Date : 2024-10-22 eCollection Date: 2024-12-01 DOI:10.1097/MS9.0000000000002673
Muhammad Muneeb Khawar, Hafiz Abdus Saboor, Rahul Eric, Nimra R Arain, Saira Bano, Mawada B Mohamed Abaker, Batool I Siddiqui, Reynaldo R Figueroa, Srija R Koppula, Hira Fatima, Afreen Begum, Sana Anwar, Muhammad U Khalid, Usama Jamil, Javed Iqbal
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引用次数: 0

摘要

心脏骤停是一种死亡率极高的疾病,通过各种研究和评分因素对有效的复苏实践和复苏后的神经学结果进行了正确的评估。本文旨在探讨人工智能(AI)在预测心脏复苏后神经预后方面的作用。该方法涉及对人工智能、不同机器学习算法、预测工具的所有相关近期研究的详细回顾,并评估与更传统的预后评分系统和工具相比,人工智能在预测心脏复苏后病例神经预后方面的益处。以前,决定临床、血液和放射学因素的结果容易受到其他因素的影响,如有限的准确性和时间限制。所进行的研究还强调,为了预测不良的神经预后,一种更加多模式的方法有助于调整混杂因素,解释不同的数据集,并提供可靠的预后,这只表明需要人工智能来帮助克服所面临的挑战。先进的机器学习算法,如使用人工智能监督学习的人工神经网络(ANN),提高了预测模型的准确性,优于传统模型。这里引用了几个有效的人工智能算法模型的现实案例。比较机器学习工具(如XGBoost、AI Watson、高光谱成像、ChatGPT-4和基于AI的梯度增强)的研究已经注意到它们的有益用途。人工智能可以帮助减少工作量和医疗成本,帮助个性化护理,处理大量基因和生活方式数据,并帮助减少治疗的副作用。本文广泛讨论了人工智能的局限性,包括数据质量、偏见、隐私问题和透明度。我们的目标应该是使用更多样化的数据源,使用可解释的数据输出给出流程解释,验证方法,并实施策略来保护患者数据。尽管存在局限性,但人工智能已经取得的进步及其在预测心脏复苏后病例的神经系统结果方面的潜力非常有希望,并推动了一个不断改进的系统,尽管需要通过培训和改进模型进行密切的人类监督,并计划教育临床医生、公众和共享收集的数据。
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Role of artificial intelligence in predicting neurological outcomes in postcardiac resuscitation.

Being an extremely high mortality rate condition, cardiac arrest cases have rightfully been evaluated via various studies and scoring factors for effective resuscitative practices and neurological outcomes postresuscitation. This narrative review aims to explore the role of artificial intelligence (AI) in predicting neurological outcomes postcardiac resuscitation. The methodology involved a detailed review of all relevant recent studies of AI, different machine learning algorithms, prediction tools, and assessing their benefit in predicting neurological outcomes in postcardiac resuscitation cases as compared to more traditional prognostic scoring systems and tools. Previously, outcome determining clinical, blood, and radiological factors were prone to other influencing factors like limited accuracy and time constraints. Studies conducted also emphasized that to predict poor neurological outcomes, a more multimodal approach helped adjust for confounding factors, interpret diverse datasets, and provide a reliable prognosis, which only demonstrates the need for AI to help overcome challenges faced. Advanced machine learning algorithms like artificial neural networks (ANN) using supervised learning by AI have improved the accuracy of prognostic models outperforming conventional models. Several real-world cases of effective AI-powered algorithm models have been cited here. Studies comparing machine learning tools like XGBoost, AI Watson, hyperspectral imaging, ChatGPT-4, and AI-based gradient boosting have noted their beneficial uses. AI could help reduce workload, healthcare costs, and help personalize care, process vast genetic and lifestyle data and help reduce side effects from treatments. Limitations of AI have been covered extensively in this article, including data quality, bias, privacy issues, and transparency. Our objectives should be to use more diverse data sources, use interpretable data output giving process explanation, validation method, and implement policies to safeguard patient data. Despite the limitations, the advancements already made by AI and its potential in predicting neurological outcomes in postcardiac resuscitation cases has been quite promising and boosts a continually improving system, albeit requiring close human supervision with training and improving models, with plans to educate clinicians, the public and sharing collected data.

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来源期刊
Annals of Medicine and Surgery
Annals of Medicine and Surgery MEDICINE, GENERAL & INTERNAL-
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5.90%
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