Modelling intracranial pressure with noninvasive physiological measures

J. Hughes, Ethan C. Jackson, Mark Daley
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引用次数: 3

Abstract

Patients who suffered a traumatic brain injury (TBI) require special care, and physicians often monitor intercranial pressure (ICP) as it can greatly aid in management. Although monitoring ICP can be critical, it requires neurosurgery, which presents additional significant risk. Monitoring ICP also aids in clinical situations beyond TBI, however the risk of neurosurgery can prevent physicians from gathering the data. The need for surgery may be eliminated if ICP could be accurately inferred using noninvasive physiological measures. Genetic programming (GP) and linear regression were used to develop nonlinear and linear mathematical models describing the relationships between intercranial pressure and a collection of physiological measurements from noninvasive instruments. Nonlinear models of ICP were generated that not only fit the subjects they were trained on, but generalized well across other subjects. The nonlinear models were analysed and provided insight into the studied underlying system which led to the creation of additional models. The new models were developed with a refined search, and were more accurate and general. It was also found that the relations between the features could be explained effectively with a simple linear model after GP refined the search.
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用无创生理测量模拟颅内压
遭受创伤性脑损伤(TBI)的患者需要特殊护理,医生经常监测颅内压(ICP),因为它可以极大地帮助治疗。虽然监测ICP是至关重要的,但它需要神经外科手术,这带来了额外的重大风险。监测颅内压也有助于创伤性脑损伤以外的临床情况,然而,神经外科手术的风险可能会阻止医生收集数据。如果可以使用无创生理测量准确推断ICP,则无需手术。采用遗传规划(GP)和线性回归建立非线性和线性数学模型,描述颅间压力与非侵入性仪器收集的生理测量值之间的关系。生成的ICP非线性模型不仅适合他们所训练的科目,而且可以很好地推广到其他科目。对非线性模型进行了分析,并提供了对所研究的底层系统的洞察,从而导致了额外模型的创建。新模型是经过精细化的研究开发出来的,更加准确和通用。经过GP优化后,发现特征之间的关系可以用一个简单的线性模型有效地解释。
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