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一种基于语音的算法可以预测美国成年人的2型糖尿病状况:Colive Voice研究的结果。

A voice-based algorithm can predict type 2 diabetes status in USA adults: Findings from the Colive Voice study.

作者信息

Elbéji Abir, Pizzimenti Mégane, Aguayo Gloria, Fischer Aurélie, Ayadi Hanin, Mauvais-Jarvis Franck, Riveline Jean-Pierre, Despotovic Vladimir, Fagherazzi Guy

机构信息

Deep Digital Phenotyping Research Unit. Department of Precision Health, Luxembourg Institute of Health, 1 A-B rue Thomas Edison, L-1445 Strassen, Luxembourg.

Section of Endocrinology and Metabolism, Deming Department of Medicine, Tulane University School of Medicine, New Orleans, Louisiana, United States of America.

出版信息

PLOS Digit Health. 2024 Dec 19;3(12):e0000679. doi: 10.1371/journal.pdig.0000679. eCollection 2024 Dec.

Abstract

The pressing need to reduce undiagnosed type 2 diabetes (T2D) globally calls for innovative screening approaches. This study investigates the potential of using a voice-based algorithm to predict T2D status in adults, as the first step towards developing a non-invasive and scalable screening method. We analyzed pre-specified text recordings from 607 US participants from the Colive Voice study registered on ClinicalTrials.gov (NCT04848623). Using hybrid BYOL-S/CvT embeddings, we constructed gender-specific algorithms to predict T2D status, evaluated through cross-validation based on accuracy, specificity, sensitivity, and Area Under the Curve (AUC). The best models were stratified by key factors such as age, BMI, and hypertension, and compared to the American Diabetes Association (ADA) score for T2D risk assessment using Bland-Altman analysis. The voice-based algorithms demonstrated good predictive capacity (AUC = 75% for males, 71% for females), correctly predicting 71% of male and 66% of female T2D cases. Performance improved in females aged 60 years or older (AUC = 74%) and individuals with hypertension (AUC = 75%), with an overall agreement above 93% with the ADA risk score. Our findings suggest that voice-based algorithms could serve as a more accessible, cost-effective, and noninvasive screening tool for T2D. While these results are promising, further validation is needed, particularly for early-stage T2D cases and more diverse populations.

摘要

全球对减少未诊断的2型糖尿病(T2D)的迫切需求促使人们寻求创新的筛查方法。本研究调查了使用基于语音的算法预测成年人T2D状态的潜力,作为开发一种非侵入性且可扩展的筛查方法的第一步。我们分析了来自ClinicalTrials.gov(NCT04848623)上注册的Colive Voice研究的607名美国参与者的预先指定的文本记录。使用混合的BYOL-S/CvT嵌入,我们构建了特定性别的算法来预测T2D状态,并通过基于准确性、特异性、敏感性和曲线下面积(AUC)的交叉验证进行评估。最佳模型按年龄、BMI和高血压等关键因素进行分层,并使用Bland-Altman分析与美国糖尿病协会(ADA)的T2D风险评估评分进行比较。基于语音的算法显示出良好的预测能力(男性AUC = 75%,女性AUC = 71%),正确预测了71%的男性和66%的女性T2D病例。60岁及以上女性(AUC = 74%)和高血压患者(AUC = 75%)的表现有所改善,与ADA风险评分的总体一致性超过93%。我们的研究结果表明,基于语音的算法可以作为一种更易获取、成本效益更高且非侵入性的T2D筛查工具。虽然这些结果很有前景,但仍需要进一步验证,特别是对于早期T2D病例和更多样化的人群。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2e0e/11658629/defebdc7e2fa/pdig.0000679.g001.jpg

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