Remote sensing of alcohol consumption using machine learning speckle pattern analysis.

IF 3 3区 医学 Q2 BIOCHEMICAL RESEARCH METHODS
Journal of Biomedical Optics Pub Date : 2025-03-01 Epub Date: 2025-03-04 DOI:10.1117/1.JBO.30.3.037001
Doron Duadi, Avraham Yosovich, Marianna Beiderman, Sergey Agdarov, Nisan Ozana, Yevgeny Beiderman, Zeev Zalevsky
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引用次数: 0

Abstract

Significance: Alcohol consumption monitoring is essential for forensic and healthcare applications. While breath and blood alcohol concentration sensors are currently the most common methods, there is a growing need for faster, non-invasive, and more efficient assessment techniques. The rationale for our binary classification relates to law enforcement applications in countries with strict limits on alcohol consumption such as China, which seeks to prevent driving with even the smallest amount of alcohol in the bloodstream.

Aim: We propose a remote optical technique for assessing alcohol consumption using speckle pattern analysis, enhanced by machine learning for binary classification. This method offers remote and fast alcohol consumption evaluation without requiring before and after comparisons.

Approach: Our experimental setup includes a laser directed toward the subject's radial artery, a camera capturing defocused speckle pattern images of the illuminated area, and a computer. Participants consumed alcohol and were tested periodically. We developed a machine learning classification model that performs automatic feature selection based on temporal analysis of the speckle patterns. The model was evaluated using various labeling schemes: classification with five labels, consolidation to three labels by merging similar labels, and three different binary classifications cases ("Alcohol" or "No alcohol").

Results: Our classification models showed improving accuracy as we reduced the number of labels. The initial five-label model achieved 61% accuracy. When consolidated into three labels, the models achieved accuracies of 74% and 85% for the two cases. The binary classification models performed best, with model A achieving 91% accuracy and 97% specificity, model B achieving 83% accuracy, and model C achieving 88% accuracy with 99% sensitivity.

Conclusions: Our binary classification model C can successfully distinguish between pre- and post-alcohol consumption with high sensitivity and accuracy. This performance is particularly valuable for clinical and forensic applications, where minimizing false negatives is crucial.

使用机器学习斑点模式分析的酒精消费遥感。
意义:酒精消耗监测对法医和医疗保健应用至关重要。虽然呼吸和血液酒精浓度传感器是目前最常见的方法,但对更快、非侵入性和更有效的评估技术的需求日益增长。我们的二元分类的基本原理与中国等严格限制酒精消费的国家的执法应用有关,中国试图防止血液中酒精含量最低的情况下驾驶。目的:我们提出了一种远程光学技术,利用斑点模式分析来评估酒精消耗,并通过机器学习进行二元分类。该方法提供了远程、快速的酒精消耗量评估,无需前后比较。方法:我们的实验装置包括一个激光指向受试者的桡动脉,一个相机捕捉被照亮区域的散焦斑图案图像,和一台计算机。参与者饮酒并定期接受测试。我们开发了一个机器学习分类模型,该模型基于散斑模式的时间分析进行自动特征选择。使用各种标记方案对模型进行评估:用五个标签进行分类,通过合并相似的标签合并为三个标签,以及三种不同的二元分类情况(“酒精”或“无酒精”)。结果:随着标签数量的减少,我们的分类模型显示出更高的准确性。最初的五标签模型达到了61%的准确率。当合并成三个标签时,两种情况下模型的准确率分别为74%和85%。二元分类模型表现最好,模型A的准确率为91%,特异性为97%,模型B的准确率为83%,模型C的准确率为88%,敏感性为99%。结论:本文建立的二元分类模型C能较好地区分饮酒前后,具有较高的灵敏度和准确性。这种性能对于临床和法医应用特别有价值,在这些应用中,最大限度地减少假阴性是至关重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.40
自引率
5.70%
发文量
263
审稿时长
2 months
期刊介绍: The Journal of Biomedical Optics publishes peer-reviewed papers on the use of modern optical technology for improved health care and biomedical research.
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