基于多方法算法的尿石症检测技术的发展与评价。

IF 1.8 3区 医学 Q3 UROLOGY & NEPHROLOGY
Jong Mok Park, Sung-Jong Eun, Yong Gil Na
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引用次数: 1

摘要

目的:在本文中,我们提出了一种利用多种人工智能技术的最佳输尿管结石检测模型。具体而言,所提出的尿路结石检测模型融合了人工智能模型和图像处理模型,形成了多方法方法。方法:提出一种基于人工智能技术的尿路结石检测算法。该方法旨在通过结合深度学习技术(Fast R-CNN)和图像处理技术(Watershed)来提高尿路结石检测的准确性。结果:通过推导混淆矩阵,计算出尿路结石检测的敏感性和特异性分别为0.90和0.91,定位准确率为0.84。该值高于0.8,这是准确性的标准。这一发现证实了当开发的平台用于支持实际手术时,对结石区域的准确指导是可能的。结论:该方法的性能评价表明,在临床可接受的安全范围内,能有效地辅助诊断决策。特别是埋伏性结石或尿路结石伴输尿管息肉时,可在诊断辅助的基础上,评估联合治疗所能获得的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Development and Evaluation of Urolithiasis Detection Technology Based on a Multimethod Algorithm.

Development and Evaluation of Urolithiasis Detection Technology Based on a Multimethod Algorithm.

Development and Evaluation of Urolithiasis Detection Technology Based on a Multimethod Algorithm.

Development and Evaluation of Urolithiasis Detection Technology Based on a Multimethod Algorithm.

Purpose: In this paper, we propose an optimal ureter stone detection model utilizing multiple artificial intelligence technologies. Specifically, the proposed model of urinary tract stone detection merges an artificial intelligence model and an image processing model, resulting in a multimethod approach.

Methods: We propose an optimal urinary tract stone detection algorithm based on artificial intelligence technology. This method was intended to increase the accuracy of urinary tract stone detection by combining deep learning technology (Fast R-CNN) and image processing technology (Watershed).

Results: As a result of deriving the confusion matrix, the sensitivity and specificity of urinary tract stone detection were calculated to be 0.90 and 0.91, and the accuracy for their position was 0.84. This value was higher than 0.8, which is the standard for accuracy. This finding confirmed that accurate guidance to the stones area was possible when the developed platform was used to support actual surgery.

Conclusion: The performance evaluation of the method proposed herein indicated that it can effectively play an auxiliary role in diagnostic decision-making with a clinically acceptable range of safety. In particular, in the case of ambush stones or urinary stones accompanying ureter polyps, the value that could be obtained through combination therapy based on diagnostic assistance could be evaluated.

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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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