Transfer Learning for Effective Urolithiasis Detection.

IF 1.8 3区 医学 Q3 UROLOGY & NEPHROLOGY
International Neurourology Journal Pub Date : 2023-05-01 Epub Date: 2023-05-31 DOI:10.5213/inj.2346110.055
Hyoung-Sun Choi, Jae-Seoung Kim, Taeg-Keun Whangbo, Khae Hawn Kim
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引用次数: 0

Abstract

Purpose: Urolithiasis is a common disease that can cause acute pain and complications. The objective of this study was to develop a deep learning model utilizing transfer learning for the rapid and accurate detection of urinary tract stones. By employing this method, we aim to improve the efficiency of medical staff and contribute to the progress of deep learning-based medical image diagnostic technology.

Methods: The ResNet50 model was employed to develop feature extractors for detecting urinary tract stones. Transfer learning was applied by utilizing the weights of pretrained models as initial values, and the models were fine-tuned with the provided data. The model's performance was evaluated using accuracy, precision-recall, and receiver operating characteristic curve metrics.

Results: The ResNet-50-based deep learning model demonstrated high accuracy and sensitivity, outperforming traditional methods. Specifically, it enabled a rapid diagnosis of the presence or absence of urinary tract stones, thereby assisting doctors in their decision-making process.

Conclusion: This research makes a meaningful contribution by accelerating the clinical implementation of urinary tract stone detection technology utilizing ResNet-50. The deep learning model can swiftly identify the presence or absence of urinary tract stones, thereby enhancing the efficiency of medical staff. We expect that this study will contribute to the advancement of medical imaging diagnostic technology based on deep learning.

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有效检测尿路结石的迁移学习
目的:尿路结石是一种常见疾病,可导致急性疼痛和并发症。本研究旨在开发一种利用迁移学习快速准确检测尿路结石的深度学习模型。通过采用这种方法,我们希望提高医务人员的工作效率,并为基于深度学习的医学图像诊断技术的进步做出贡献:方法:采用 ResNet50 模型开发用于检测尿路结石的特征提取器。方法:采用 ResNet50 模型开发用于检测尿路结石的特征提取器,利用预训练模型的权重作为初始值进行迁移学习,并利用提供的数据对模型进行微调。使用准确率、精确度-召回率和接收者操作特征曲线指标对模型的性能进行了评估:结果:基于 ResNet-50 的深度学习模型表现出较高的准确性和灵敏度,优于传统方法。结果:基于 ResNet-50 的深度学习模型表现出较高的准确性和灵敏度,优于传统方法,特别是能够快速诊断是否存在尿路结石,从而帮助医生做出决策:这项研究利用 ResNet-50 加快了尿路结石检测技术的临床应用,做出了有意义的贡献。深度学习模型能迅速识别尿路结石的存在与否,从而提高医务人员的工作效率。我们期待这项研究能为基于深度学习的医学影像诊断技术的发展做出贡献。
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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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