使用机器学习技术预测口罩通气困难

D. K. Sreekantha, Roline Stapny Saldanha, Jotsna Gowda Krishnappa, S. Mehandale, Rodrigues Rhea Carmel Glen, M. Prajna
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引用次数: 1

摘要

在手术室(OT)进行手术时,氧气要通过面罩不断地供应给病人。任何对病人氧气或空气供应的中断都可能导致病人严重的身体损伤甚至死亡。口罩通风可分为易、难、难3个等级。一个专业的麻醉师可以准确地预测口罩通气的困难。目前,专业麻醉师利用他们的经验手动分析患者的特征并预测口罩通气的困难。因此,作者通过应用机器学习算法来预测口罩通气的困难,实现了一种软件解决方案。作者已经确定了患者的12个物理参数,这些参数在预测口罩通气困难方面具有重要意义。从医院收集的具有代表性的患者数据和经验丰富的麻醉师的知识用于综合数据集。数据集是使用机器学习算法挖掘的,即逻辑回归、随机森林、支持向量机、朴素贝叶斯和k近邻。结果表明,Logistic回归算法能较好地预测口罩通气困难程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting difficulties in Mask Ventilation using Machine Learning techniques
The oxygen is to be supplied constantly through the mask to a patient in the Operation Theater (OT) when performing an operation. Any interruption in oxygen or air supply to the patient may lead to severe bodily damage or even death of the patient. The mask ventilation can be categorized into 3 levels namely easy, difficult and impossible mask ventilation. An expert anesthesiologist can accurately predict the difficulties in mask ventilation. Currently, expert anesthesiologists use their experience to manually analyze the patient features and predict the difficulties in mask ventilation. So authors have implemented a software solution by applying machine learning algorithms to predict the difficulties in mask ventilation. Authors have identified twelve physical parameters of the patient that are significant in predicting the difficulties in mask ventilation. The representative patient data collected from hospital and the knowledge of experienced anesthesiologist is used to synthesize the data set. The data set is mined using machine learning algorithms namely Logistic Regression, Random Forest, Support Vector Machine, Naive Bayes and k-Nearest Neighbors. Logistic Regression algorithm is proved to be better in predicting the difficulties in Mask Ventilation.
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