通过自动化与基于规则的人工智能优化CAPD患者监测:系统比较回顾。

IF 2.5 Q2 UROLOGY & NEPHROLOGY
Satriyo Dwi Suryantoro, Chastine Fatichah, Dini Adni Navastara, Fiqey Indriati Eka Sari, Muchamad Maroqi Abdul Jalil, Metalia Puspitasari, Imam Manggalya Adhikara, Dwita Dyah Adyarini, Ajeng Ayu Erawati, Bagus Aulia Mahdi
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引用次数: 0

摘要

持续动态腹膜透析(CAPD)是一种灵活的肾脏替代疗法,在发展中国家和中等收入国家广泛使用。尽管CAPD是有益的,但仍然容易出现并发症,如腹膜炎和液体超载。在这篇系统综述中,比较了两种流行的人工智能(AI)范式——基于规则的系统和自动机器学习方法——以增强CAPD监测和决策。对2020年1月1日至2025年5月20日期间发表的文献进行临床有效性、患者依从性、操作效率、成本和可用性评估。还研究了用于透析图像分类的自动人工智能系统。我们的研究结果表明,自动化的人工智能系统提供更高的精度和更早的检测,而基于规则的模型在资源匮乏的结构化环境(如印度尼西亚的医疗保健系统)中具有实际优势。这些发现验证了整合这两种模式的价值,并提出了一种混合整合模型,以实现最高的临床准确性、成本效益和可及性。共鉴定出156篇文章,其中42篇来自PubMed, 37篇来自Scopus, 58篇来自b谷歌Scholar, 19篇来自IEE explore。经过筛选和资格评估,24项研究被纳入全面综合。其中,12项研究了自动化人工智能系统,包括基于机器学习的透析图像分类和预测建模,3项研究使用预定义的临床逻辑评估基于规则的系统。总共有14项研究被确定为合格的研究,评估了人工智能系统对CAPD监测和管理的实施情况。拟议的混合实施模式结合了两种模式的优势,并根据国家临床指南和保险计划进行了调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimizing CAPD Patient Monitoring Through Automated Vs Rule-Based Artificial Intelligence: A Systematic Comparative Review.

Optimizing CAPD Patient Monitoring Through Automated Vs Rule-Based Artificial Intelligence: A Systematic Comparative Review.

Continuous Ambulatory Peritoneal Dialysis (CAPD) is a flexible renal replacement therapy that is widely used in developing and middle-income countries. Despite being beneficial, CAPD remains vulnerable to complications, such as peritonitis and fluid overload. In this systematic review, two prevailing artificial intelligence (AI) paradigms-rule-based systems and automatic machine learning approaches- were compared to enhance CAPD monitoring and decision-making. Literature published between January 1, 2020, to May 20, 2025, was assessed for clinical effectiveness, patient adherence, operational efficiency, cost, and usability. Automated AI systems for dialysate image classification have also been examined. Our findings suggest that automated AI systems provide greater precision and earlier detection, whereas rule-based models offer practical advantages in a low-resource structured environment such as Indonesia's healthcare system. These findings validate the value of integrating both paradigms, and propose a hybrid integration model to achieve the highest clinical accuracy, cost-effectiveness, and accessibility for CAPD monitoring. A total of 156 articles were identified, including 42 from PubMed, 37 from Scopus, 58 from Google Scholar, and 19 from IEE Xplore. Following screening and eligibility assessment, 24 studies were included for full synthesis. Of these, 12 investigated automated AI systems including machine learning based dialysate image classification and predictive modeling while 3 evaluated rule-based systems using predefined clinical logic. Overall 14 studies were identified as eligible studies that assessed the implementation of AI systems for the monitoring and management of CAPD. The proposed hybrid implementation model combines the strengths of both paradigms, tailored to national clinical guidelines and insurance schemes.

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来源期刊
CiteScore
3.90
自引率
5.00%
发文量
40
审稿时长
16 weeks
期刊介绍: International Journal of Nephrology and Renovascular Disease is an international, peer-reviewed, open-access journal focusing on the pathophysiology of the kidney and vascular supply. Epidemiology, screening, diagnosis, and treatment interventions are covered as well as basic science, biochemical and immunological studies. In particular, emphasis will be given to: -Chronic kidney disease- Complications of renovascular disease- Imaging techniques- Renal hypertension- Renal cancer- Treatment including pharmacological and transplantation- Dialysis and treatment of complications of dialysis and renal disease- Quality of Life- Patient satisfaction and preference- Health economic evaluations. The journal welcomes submitted papers covering original research, basic science, clinical studies, reviews & evaluations, guidelines, expert opinion and commentary, case reports and extended reports. The main focus of the journal will be to publish research and clinical results in humans but preclinical, animal and in vitro studies will be published where they shed light on disease processes and potential new therapies and interventions.
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