基于人工智能的病人医疗支持监控系统。

IF 1.8 3区 医学 Q3 UROLOGY & NEPHROLOGY
International Neurourology Journal Pub Date : 2023-12-01 Epub Date: 2023-12-31 DOI:10.5213/inj.2346338.169
Eui-Sun Kim, Sung-Jong Eun, Khae-Hawn Kim
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引用次数: 0

摘要

目的:本文介绍了一种监测系统的开发情况,该系统旨在帮助管理和预防与排尿有关的疾病。该系统采用基于人工智能(AI)的识别技术,可自动记录用户的排尿活动。此外,我们还开发了一种分析动作以预防神经源性膀胱的技术:我们的方法包括创建基于人工智能的识别技术,自动记录用户的排尿活动,以及开发分析动作以预防神经源性膀胱的技术。最初,我们在排尿活动识别技术中采用了循环神经网络模型。为了预测神经源性膀胱的风险,我们采用了基于卷积神经网络(CNN)的人工智能技术:我们以 30 名尿路功能障碍患者为研究对象,收集了他们 60 天内的数据,对所提议系统的性能进行了评估。结果显示,识别尿路活动的平均准确率为 94.2%,从而证实了识别技术的有效性。此外,预防神经源性膀胱的运动分析技术也采用了基于 CNN 的人工智能技术,结果表明该技术具有良好的效果,平均准确率达到 83%:在这项研究中,我们开发了一种排尿疾病监测系统,旨在预测和管理排尿问题患者的风险。该系统利用人工智能技术处理各种图像和信号数据,旨在为患者的整个护理周期提供支持。我们预计,该系统将发展成为数字治疗产品,最终为患者带来治疗益处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence-Based Patient Monitoring System for Medical Support.

Purpose: In this paper, we present the development of a monitoring system designed to aid in the management and prevention of conditions related to urination. The system features an artificial intelligence (AI)-based recognition technology that automatically records a user's urination activity. Additionally, we developed a technology that analyzes movements to prevent neurogenic bladder.

Methods: Our approach included the creation of AI-based recognition technology that automatically logs users' urination activities, as well as the development of technology that analyzes movements to prevent neurogenic bladder. Initially, we employed a recurrent neural network model for the urination activity recognition technology. For predicting the risk of neurogenic bladder, we utilized convolutional neural network (CNN)-based AI technology.

Results: The performance of the proposed system was evaluated using a study population of 30 patients with urinary tract dysfunction, who collected data over a 60-day period. The results demonstrated an average accuracy of 94.2% in recognizing urinary tract activity, thereby confirming the effectiveness of the recognition technology. Furthermore, the motion analysis technology for preventing neurogenic bladder, which also employed CNN-based AI, showed promising results with an average accuracy of 83%.

Conclusion: In this study, we developed a urination disease monitoring system aimed at predicting and managing risks for patients with urination issues. The system is designed to support the entire care cycle of a patient by leveraging AI technology that processes various image and signal data. We anticipate that this system will evolve into digital treatment products, ultimately providing therapeutic benefits to patients.

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来源期刊
International Neurourology Journal
International Neurourology Journal UROLOGY & NEPHROLOGY-
CiteScore
4.40
自引率
21.70%
发文量
41
审稿时长
4 weeks
期刊介绍: The International Neurourology Journal (Int Neurourol J, INJ) is a quarterly international journal that publishes high-quality research papers that provide the most significant and promising achievements in the fields of clinical neurourology and fundamental science. Specifically, fundamental science includes the most influential research papers from all fields of science and technology, revolutionizing what physicians and researchers practicing the art of neurourology worldwide know. Thus, we welcome valuable basic research articles to introduce cutting-edge translational research of fundamental sciences to clinical neurourology. In the editorials, urologists will present their perspectives on these articles. The original mission statement of the INJ was published on October 12, 1997. INJ provides authors a fast review of their work and makes a decision in an average of three to four weeks of receiving submissions. If accepted, articles are posted online in fully citable form. Supplementary issues will be published interim to quarterlies, as necessary, to fully allow berth to accept and publish relevant articles.
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