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用于预测犬类失血的机器学习动脉波形模型的优化

Refinement of machine learning arterial waveform models for predicting blood loss in canines.

作者信息

Gonzalez Jose M, Edwards Thomas H, Hoareau Guillaume L, Snider Eric J

机构信息

U.S. Army Institute of Surgical Research, JBSA Fort Sam Houston, San Antonio, TX, United States.

School of Veterinary Medicine, Texas A&M University, College Station, TX, United States.

出版信息

Front Artif Intell. 2024 Aug 21;7:1408029. doi: 10.3389/frai.2024.1408029. eCollection 2024.

Abstract

INTRODUCTION

Hemorrhage remains a leading cause of death in civilian and military trauma. Hemorrhages also extend to military working dogs, who can experience injuries similar to those of the humans they work alongside. Unfortunately, current physiological monitoring is often inadequate for early detection of hemorrhage. Here, we evaluate if features extracted from the arterial waveform can allow for early hemorrhage prediction and improved intervention in canines.

METHODS

In this effort, we extracted more than 1,900 features from an arterial waveform in canine hemorrhage datasets prior to hemorrhage, during hemorrhage, and during a shock hold period. Different features were used as input to decision tree machine learning (ML) model architectures to track three model predictors-total blood loss volume, estimated percent blood loss, and area under the time versus hemorrhaged blood volume curve.

RESULTS

ML models were successfully developed for total and estimated percent blood loss, with the total blood loss having a higher correlation coefficient. The area predictors were unsuccessful at being directly predicted by decision tree ML models but could be calculated indirectly from the ML prediction models for blood loss. Overall, the area under the hemorrhage curve had the highest sensitivity for detecting hemorrhage at approximately 4 min after hemorrhage onset, compared to more than 45 min before detection based on mean arterial pressure.

CONCLUSION

ML methods successfully tracked hemorrhage and provided earlier prediction in canines, potentially improving hemorrhage detection and objectifying triage for veterinary medicine. Further, its use can potentially be extended to human use with proper training datasets.

摘要

引言

出血仍然是 civilian 和 military 创伤中主要的死亡原因。出血情况也延伸至 military working dogs,它们可能会遭受与并肩工作的人类相似的损伤。不幸的是,当前的生理监测往往不足以早期发现出血情况。在此,我们评估从动脉波形中提取的特征是否能够实现对犬类出血的早期预测并改善干预措施。

方法

在这项研究中,我们在犬类出血数据集的出血前、出血期间以及休克维持期,从动脉波形中提取了超过 1900 个特征。不同特征被用作决策树机器学习(ML)模型架构的输入,以追踪三个模型预测指标——总失血量、估计失血量百分比以及时间与失血量曲线下的面积。

结果

成功开发了针对总失血量和估计失血量百分比的 ML 模型,总失血量的相关系数更高。面积预测指标未能通过决策树 ML 模型直接预测,但可从失血量的 ML 预测模型中间接计算得出。总体而言,与基于平均动脉压在出血发作后超过 45 分钟才能检测到相比,出血曲线下的面积在出血发作后约 4 分钟时检测出血的敏感性最高。

结论

ML 方法成功追踪了犬类的出血情况并提供了更早的预测,这可能改善出血检测并使兽医学的分诊客观化。此外,经过适当的训练数据集,其应用可能会扩展到人类。

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