Comparison of intracranial pressure prediction in hydrocephalus patients among linear, non-linear, and machine learning regression models in Thailand.

IF 1.7 Q3 CRITICAL CARE MEDICINE
Avika Trakulpanitkit, Thara Tunthanathip
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引用次数: 0

Abstract

Background: Hydrocephalus (HCP) is one of the most significant concerns in neurosurgical patients because it can cause increased intracranial pressure (ICP), resulting in mortality and morbidity. To date, machine learning (ML) has been helpful in predicting continuous outcomes. The primary objective of the present study was to identify the factors correlated with ICP, while the secondary objective was to compare the predictive performances among linear, non-linear, and ML regression models for ICP prediction.

Methods: A total of 412 patients with various types of HCP who had undergone ventriculostomy was retrospectively included in the present study, and intraoperative ICP was recorded following ventricular catheter insertion. Several clinical factors and imaging parameters were analyzed for the relationship with ICP by linear correlation. The predictive performance of ICP was compared among linear, non-linear, and ML regression models.

Results: Optic nerve sheath diameter (ONSD) had a moderately positive correlation with ICP (r=0.530, P<0.001), while several ventricular indexes were not statistically significant in correlation with ICP. For prediction of ICP, random forest (RF) and extreme gradient boosting (XGBoost) algorithms had low mean absolute error and root mean square error values and high R2 values compared to linear and non-linear regression when the predictive model included ONSD and ventricular indexes.

Conclusions: The XGBoost and RF algorithms are advantageous for predicting preoperative ICP and establishing prognoses for HCP patients. Furthermore, ML-based prediction could be used as a non-invasive method.

Abstract Image

Abstract Image

Abstract Image

线性、非线性和机器学习回归模型对泰国脑积水患者颅内压预测的比较
背景:脑积水(HCP)是神经外科患者最关注的问题之一,因为它可以引起颅内压(ICP)升高,导致死亡率和发病率。迄今为止,机器学习(ML)在预测连续结果方面很有帮助。本研究的主要目的是确定与ICP相关的因素,而次要目的是比较线性、非线性和ML回归模型对ICP预测的预测性能。方法:回顾性分析412例脑室造口术中不同类型HCP患者,记录术中颅内压(ICP)置入脑室导管。通过线性相关分析几种临床因素和影像学参数与ICP的关系。比较了线性、非线性和ML回归模型对ICP的预测性能。结果:视神经鞘直径(ONSD)与颅内压(ICP)存在中度正相关(r=0.530)。结论:XGBoost和RF算法在预测术前颅内压和建立HCP患者预后方面具有优势。此外,基于ml的预测可以作为一种非侵入性的方法。
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来源期刊
Acute and Critical Care
Acute and Critical Care CRITICAL CARE MEDICINE-
CiteScore
2.80
自引率
11.10%
发文量
87
审稿时长
12 weeks
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