Kim Hyun Jin, Kim Manmyung, Zhang Hyunjae, Kim Hae Ri, Jeon Jae Wan, Seo Yuri, Choi Qute
Department of Laboratory Medicine, Chungnam National University School of Medicine, Daejeon, Korea.
Department of Laboratory Medicine, Chungnam National University Sejong Hospital, Sejong, Korea.
Ann Lab Med. 2025 Mar 1;45(2):178-184. doi: 10.3343/alm.2024.0304. Epub 2024 Dec 16.
Urinalysis, an essential diagnostic tool, faces challenges in terms of standardization and accuracy. The use of artificial intelligence (AI) with mobile technology can potentially solve these challenges. Therefore, we investigated the effectiveness and accuracy of an AI-based program in automatically interpreting urine test strips using mobile phone cameras, an approach that may revolutionize point-of-care testing.
We developed novel urine test strips and an AI algorithm for image capture. Sample images from the Chungnam National University Sejong Hospital were collected to train a k-nearest neighbor classification algorithm to read the strips. A mobile application was developed for image capturing and processing. We assessed the accuracy, sensitivity, specificity, and ROC area under the curve for 10 parameters.
In total, 2,612 urine test strip images were collected. The AI algorithm demonstrated 98.7% accuracy in detecting urinary nitrite and 97.3% accuracy in detecting urinary glucose. The sensitivity and specificity were high for most parameters. However, this system could not reliably determine the specific gravity. The optimal time for capturing the test strip results was 75 secs after dipping.
The AI-based program accurately interpreted urine test strips using smartphone cameras, offering an accessible and efficient method for urinalysis. This system can be used for immediate analysis and remote testing. Further research is warranted to refine test parameters such as specific gravity to enhance accuracy and reliability.
尿液分析作为一种重要的诊断工具,在标准化和准确性方面面临挑战。人工智能(AI)与移动技术的结合有可能解决这些挑战。因此,我们研究了一种基于AI的程序使用手机摄像头自动解读尿试纸条的有效性和准确性,这种方法可能会彻底改变即时检验。
我们开发了新型尿试纸条和用于图像采集的AI算法。收集了忠南国立大学世宗医院的样本图像,以训练k近邻分类算法来读取试纸条。开发了一个用于图像采集和处理的移动应用程序。我们评估了10个参数的准确性、敏感性、特异性和曲线下ROC面积。
总共收集了2612张尿试纸条图像。AI算法检测尿亚硝酸盐的准确率为98.7%,检测尿葡萄糖的准确率为97.3%。大多数参数的敏感性和特异性都很高。然而,该系统无法可靠地确定比重。读取试纸条结果的最佳时间是浸入后75秒。
基于AI的程序使用智能手机摄像头准确解读尿试纸条,为尿液分析提供了一种便捷高效的方法。该系统可用于即时分析和远程检测。有必要进一步研究优化诸如比重等检测参数,以提高准确性和可靠性。