用简单模型预测日本患者首次急性中风后的预后

M. Inouye
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引用次数: 29

摘要

Inouye M:用一个简单的模型预测日本患者首次急性中风后的预后。[J]中华医学杂志,2001;16(2):444 - 444。目的:预测患者预后可作为临床决策的辅助手段。许多研究,包括我自己的研究,已经为中风康复治疗后的结果构建了预测的多变量模型,但这些模型通常需要几分钟的工作时间和一个袖式计算器。其目的是开发一个简单,易于使用的模型,具有强大的预测能力。方法:464例连续19个月住院的首次中风患者被纳入研究。性别、年龄、脑卒中类型、入院时功能独立性测量总分(X)、发病至入院间隔(脑卒中发病至康复入院天数)和康复住院时间(入院至出院天数)为自变量。出院时功能独立性测量总分(Y)为因变量。结果:逐步多元回归分析得到了包含年龄(P < 0.0001)、X (P < 0.0001)、发病至入院间隔(P < 0.0001)的模型。方程为:Y = 68.6−0.32(年龄)+ 0.80 X−0.13(发病至入院间隔),多重相关系数(R) = 0.82,多重相关系数平方(R2) = 0.68。简单回归分析显示X与Y的关系:Y = 0.85 X + 37.36, R = 0.80, R2 = 0.64。事实上,X和Y的曲线是非线性的,但似乎可以通过某种形式的方程线性化。结果表明,log X与Y之间存在线性关系,方程为Y = 106.88 X−95.35,其中X = log X, R = 0.84, R2 = 0.70。相关性通过X的自然对数变换的回归分析得到改善(R = 0.84 vs. R = 0.82)。结论:本研究结果证实,采用X的对数变换的简单回归模型(R = 0.84)比简单回归模型(R = 0.80)具有预测能力。该模型得到了很好的验证和临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Outcomes of Patients in Japan After First Acute Stroke Using a Simple Model
Inouye M: Predicting outcomes of patients in Japan after first acute stroke using a simple model. Am J Phys Med Rehabil 2001;80:645–649. Objective: Prediction of patient outcome can be useful as an aid to clinical decision making. Many studies, including my own, have constructed predictive multivariate models for outcome following stroke rehabilitation therapy, but these have often required several minutes work with a pocket calculator. The aim is to develop a simple, easy-to-use model that has strong predictive power. Methods: Four hundred sixty-four consecutive patients with first stroke who were admitted to a rehabilitation hospital during a period of 19 mo were enrolled in the study. Sex, age, the stroke type, Functional Independence Measure total score on admission (X), onset to admission interval (number of days from stroke onset to rehabilitation admission), and length of rehabilitation hospital stay (number of days from hospital admission to discharge) were the independent variables. Functional Independence Measure total score at discharge (Y) was the dependent variable. Results: Stepwise multiple regression analysis resulted in the model containing age (P < 0.0001), X (P < 0.0001), and onset to admission interval (P < 0.0001). The equation was:Y = 68.6 − 0.32 (age) + 0.80 X − 0.13 (onset to admission interval), a multiple correlation coefficient (R) = 0.82, and a multiple correlation coefficient squared (R2) = 0.68. Simple regression analysis revealed the relation between X and Y:Y = 0.85 X + 37.36, and R = 0.80, R2 = 0.64. In fact, plots of X vs. Y were nonlinear, but seemed to be able to be linearized by some form of equation. It was found that there is a linear relation between log X and Y. The equation is Y = 106.88 x − 95.35, where x = log X, R = 0.84, and R2 = 0.70. The correlation is improved by a regression analysis of a natural logarithmic transformation of X (R = 0.84 vs. R = 0.82). Conclusion: The results in this study confirm that the simple regression model using a logarithmic transformation of X (R = 0.84) has predictive power over the simple regression model (R = 0.80). This model is well validated and clinically useful.
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