低频超声诱导血液参数变化的预测

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2023-10-26 DOI:10.3390/asi6060099
Vytautas Ostasevicius, Agnė Paulauskaite-Taraseviciene, Vaiva Lesauskaite, Vytautas Jurenas, Vacis Tatarunas, Edgaras Stankevicius, Agilė Tunaityte, Mantas Venslauskas, Laura Kizauskiene
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引用次数: 0

摘要

在本研究中,我们揭示了低频超声对红细胞和血小板聚集的影响。此外,我们表明可以使用基于一组显式参数的机器学习技术预测血液样本超声的后果。总共300份血液样本暴露在不同强度的低频超声下,持续时间不同。血样在水浴中用低频超声进行超声处理,频率为46±2 kHz。采用统计分析、方差分析和非参数Kruskal-Wallis方法评价超声对各血液参数的影响。所获得的结果表明,由于超声暴露,特别是暴露于持续180或90秒的高强度信号时,血液参数有统计学上显著的变化。此外,在用于预测超声对血小板计数影响的五种机器学习算法中,支持向量回归(SVR)的预测精度最高,平均MAPE为10.34%。值得注意的是,超声对血红蛋白的影响(p值为<血红蛋白在红细胞中的影响(MCH和MCHC为0.001,HGB参数为0.584)高于其对血小板聚集的影响(p值为0.885),突出了血红蛋白在促进氧气从肺部转移到身体组织中的重要性。
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Prediction of Changes in Blood Parameters Induced by Low-Frequency Ultrasound
In this study, we reveal the influence of low-frequency ultrasound on erythrocyte and platelet aggregation. Furthermore, we show that the consequences of sonication of blood samples can be predicted using machine learning techniques based on a set of explicit parameters. A total of 300 blood samples were exposed to low-frequency ultrasound of varying intensities for different durations. The blood samples were sonicated with low-frequency ultrasound in a water bath, which operated at a frequency of 46 ± 2 kHz. Statistical analyses, an ANOVA, and the non-parametric Kruskal–Wallis method were used to evaluate the effect of ultrasound on various blood parameters. The obtained results suggest that there are statistically significant variations in blood parameters attributed to ultrasound exposure, particularly when exposed to a high-intensity signal lasting 180 or 90 s. Furthermore, among the five machine learning algorithms employed to predict ultrasound’s impact on platelet counts, support vector regression (SVR) exhibited the highest prediction accuracy, yielding an average MAPE of 10.34%. Notably, it was found that the effect of ultrasound on the hemoglobin (with a p-value of < 0.001 for MCH and MCHC and 0.584 for HGB parameters) in red blood cells was higher than its impact on platelet aggregation (with a p-value of 0.885), highlighting the significance of hemoglobin in facilitating the transfer of oxygen from the lungs to bodily tissues.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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