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利用源自临床数据的公式对脑脊液压力估计进行分析。

Analysis of Cerebrospinal Fluid Pressure Estimation Using Formulae Derived From Clinical Data.

作者信息

Fleischman David, Bicket Amanda K, Stinnett Sandra S, Berdahl John P, Jonas Jost B, Wang Ning Li, Fautsch Michael P, Allingham R Rand

机构信息

University of North Carolina, Chapel Hill, North Carolina, United States.

Wilmer Eye Institute, Baltimore, Maryland, United States.

出版信息

Invest Ophthalmol Vis Sci. 2016 Oct 1;57(13):5625-5630. doi: 10.1167/iovs.16-20119.

Abstract

PURPOSE

To evaluate a frequently used regression model and a new, modified regression model to estimate cerebrospinal fluid pressure (CSFP).

METHODS

Datasets from the Beijing iCOP study from Tongren Hospital, Beijing, China, and the Mayo Clinic, Rochester, Minnesota, were tested in this retrospective, case-control study. An often-used regression model derived from the Beijing iCOP dataset, but without radiographic data, was used to predict CSFP by using demographic and physiologic data. A regression model was created using the Mayo Clinic dataset and tested against a validation group. The Mayo Clinic-derived formula was also tested against the Beijing Eye Study population. Intraclass correlation was used to assess predicted versus actual CSFP.

RESULTS

The Beijing-derived regression equation was reported to have an intraclass correlation coefficient (ICC) of 0.71, indicating strong correlation between predicted and actual CSFP in the study population. The Beijing iCOP regression model poorly predicted CSFP in the Mayo Clinic population with an ICC of 0.14. The Mayo Clinic-derived regression model similarly did not predict CSFP in its Mayo Clinic validation group (ICC 0.28 ± 0.04) nor in the Beijing Eye Study population (ICC 0.06).

CONCLUSIONS

Formulae used to predict CSFP derived from clinical data fared poorly against a large retrospective dataset. This may be related to differences in lumbar puncture technique, in the populations tested, or the timing of collection of physiologic variables in the Mayo Clinic dataset. Caution should be used when interpreting results based on formulaic derivation of CSFP.

摘要

目的

评估一种常用的回归模型和一种新的改良回归模型,以估计脑脊液压力(CSFP)。

方法

在中国北京同仁医院开展的北京iCOP研究以及美国明尼苏达州罗切斯特市梅奥诊所的数据集,在这项回顾性病例对照研究中进行了测试。一个源自北京iCOP数据集但无影像学数据的常用回归模型,被用于通过人口统计学和生理学数据预测CSFP。利用梅奥诊所的数据集创建了一个回归模型,并在一个验证组中进行测试。源自梅奥诊所的公式也在北京眼病研究人群中进行了测试。组内相关系数用于评估预测的CSFP与实际CSFP之间的关系。

结果

据报道,源自北京的回归方程的组内相关系数(ICC)为0.71,表明研究人群中预测的CSFP与实际CSFP之间存在强相关性。北京iCOP回归模型在梅奥诊所人群中对CSFP的预测效果较差,ICC为0.14。源自梅奥诊所的回归模型在其梅奥诊所验证组(ICC 0.28±0.04)和北京眼病研究人群中(ICC 0.06)同样无法预测CSFP。

结论

用于从临床数据预测CSFP的公式在一个大型回顾性数据集中表现不佳。这可能与腰椎穿刺技术、测试人群的差异,或梅奥诊所数据集中生理变量的采集时间有关。在基于CSFP的公式推导来解释结果时应谨慎。

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