Machine learning can be used to analyse physiological data for several purposes. Detection of cerebral ischemia is an achievement that would have high impact on patient care. We attempted to study if collection of continous physiological data from non-invasive monitors, and analysis with machine learning could detect cerebral ischemia in tho different setting, during surgery for carotid endarterectomy and during endovascular thrombectomy in acute stroke. We compare the results from the two different group and one patient from each group in details. While results from CEA-patients are consistent, those from thrombectomy patients are not and frequently contain extreme values such as 1.0 in accuracy. We conlcude that this is a result of short duration of the procedure and abundance of data with bad quality resulting in small data sets. These results can therefore not be trusted.
翻译:机器学习可用于分析生理数据, 用于多种目的。 脑缺血检测是一个会对病人护理产生重大影响的成就。 我们试图研究从非侵入性监测器收集连续生理数据,并用机器学习进行分析,能否在不同的环境中、 在对颈动脉切除手术期间和在急性中风内心切切切切除手术期间发现脑缺血。 我们详细比较了两个不同组和每个组的一位病人的结果。 虽然CEA-病人的结果是一致的,但脑心血管切除病人的结果并不准确,而且往往含有1.0等极端值。 我们推测,这是程序时间短和大量数据质量差导致小数据集的结果。 因此,这些结果不能令人信服。