利用消费级智能手表数据,使用基于加速-减速曲线的神经网络检测心脏病。

IF 3.4 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Heliyon Pub Date : 2024-10-30 eCollection Date: 2024-11-15 DOI:10.1016/j.heliyon.2024.e39927
Arman Naseri, David M J Tax, Marcel Reinders, Ivo van der Bilt
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引用次数: 0

摘要

心血管疾病(CVD)是全球最重要的发病和死亡原因。早期检测、预防甚至预测对减轻心血管疾病负担及其相关费用至关重要。低成本、消费级的智能手表通过实现对心率和活动的连续监测,有可能彻底改变心血管医学。当与机器学习(ML)相结合时,由此产生的大量时间序列数据有望检测或排除心血管疾病。然而,由于信息片段稀少,分析此类大型数据集具有挑战性。有效选择这些片段对于开发用于临床应用的预测模型至关重要。本文旨在研究基于加速-减速曲线的 ML 模型作为检测心血管疾病的新型临床指标的潜力。我们使用的数据来自 ME-TIME 研究;42 名参与者中有 21 人患有心血管疾病,21 人是健康对照组。我们对每个受试者的数据进行了归一化处理,以减少受试者之间的差异。神经网络模型汇总了每周的预测结果。我们的研究表明,根据不活动时曲线的峰值对每个受试者进行归一化处理,将模型预测结果汇总一周,并使用对比损失,最终得出的预测模型在开发集上的特异性为 99 % ± 3 %,灵敏度为 40 % ± 49 %;在测试集上的特异性为 100 %,灵敏度为 67 % ± 47 %。加速-减速曲线是排除心血管疾病的有效模式,但必须小心谨慎地对曲线进行适当的预处理,并仔细选择能减少提取曲线变异性的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heart disease detection using an acceleration-deceleration curve-based neural network with consumer-grade smartwatch data.

Cardiovascular disease (CVD) is the most important cause of morbidity and mortality worldwide. Early detection, prevention or even prediction is of pivotal importance to reduce the burden of cardiovascular disease and its associated costs. Low cost, consumer-grade smartwatches have the potential to revolutionize cardiovascular medicine by enabling continuous monitoring of heart rate and activity. When combined with machine learning(ML), the resulting large amounts of time series data hold the potential of detection, or exclusion of CVD. However, analyzing such large datasets is challenging due to the sparse presence of informative segments. Efficient selection of these segments is essential for developing predictive models for clinical deployment. The objective of this paper was to investigate the potential of an acceleration-deceleration curvebased ML model as a novel clinical indicator for the detection of cardiovascular diseases. We used data from the ME-TIME study; 42 participants from which 21 have a cardiovascular disease and 21 are health controls. Data from each subject was normalized to decrease inter-subject variability. A neural network model aggregated predictions per week. We showed that per-subject normalization by the peak value of curves during inactivity, aggregation of model predictions over a week, and using a contrastive loss, resulted in a predictive model with 99 % ± 3 % specificity and 40 % ± 49 % sensitivity on the development set, and 100 % specificity with 67 % ± 47 % sensitivity on the test set. Acceleration-deceleration curves are effective patterns for ruling out the presence of cardiovascular disease, but caution must be taken to properly pre-process the curves and carefully choosing a model that reduces the variability in the extracted curves.

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来源期刊
Heliyon
Heliyon MULTIDISCIPLINARY SCIENCES-
CiteScore
4.50
自引率
2.50%
发文量
2793
期刊介绍: Heliyon is an all-science, open access journal that is part of the Cell Press family. Any paper reporting scientifically accurate and valuable research, which adheres to accepted ethical and scientific publishing standards, will be considered for publication. Our growing team of dedicated section editors, along with our in-house team, handle your paper and manage the publication process end-to-end, giving your research the editorial support it deserves.
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