预测初级物理治疗师教育项目毕业生的首次国家物理治疗考试成绩

Journal, physical therapy education Pub Date : 2023-12-01 Epub Date: 2023-06-22 DOI:10.1097/JTE.0000000000000291
Ryan Dombkowski, Steven Sullivan, Tricia Widenhoefer, Abigail Buckland, Thomas Gus Almonroeder
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引用次数: 0

摘要

简介:全国物理治疗师考试(NPTE)是一项标准化考试,旨在评估入门级物理治疗师教育课程毕业后的能力:以往的研究已经确定了与 NPTE 成绩相关的申请人和学生变量,申请人变量反映了入学前的成绩,学生变量反映了入学后的成绩。然而,很少有文章介绍如何将这些变量结合起来预测 NPTE 成绩。本研究的目的是根据与学业成绩相关的各种申请人和学生变量,开发、评估和描述预测首次 NPTE 分数和 NPTE 结果(通过与未通过)的模型:方法:采用多元线性回归法对 185 名从初级物理治疗师教育项目毕业的学生进行了入学前和入学后数据及 NPTE 分数记录:方法:使用多元线性回归建立预测 NPTE 分数的模型,使用二元逻辑回归建立预测 NPTE 结果(通过与未通过)的模型:结果:一个包括本科先修课程平均学分绩点、项目期间所修基础科学课程平均学分绩点和综合考试成绩的模型可以解释 30.9% 的 NPTE 分数差异,并在 81.1% 的情况下准确预测 NPTE 结果(通过与未通过):总的来说,我们的研究结果支持这样一种观点,即对 NPTE 成绩的预测应基于申请人和学生变量的组合。本文所描述的模型可用于识别可能在 NPTE 考试中遇到困难的学生,从而为这些学生提供额外的支持:结论:与学习成绩相关的各种申请者和学生变量可以结合起来预测 NPTE 成绩。本研究的结果为有意应用模型预测 NPTE 成绩的项目提供了一个框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting First-Time National Physical Therapy Examination Performance for Graduates of an Entry-Level Physical Therapist Education Program.

Introduction: The National Physical Therapy Examination (NPTE) is a standardized examination designed to assess competence after graduation from an entry-level physical therapist education program.

Review of literature: Previous studies have identified applicant and student variables that are related to NPTE performance, with applicant variables reflecting performance before admission and student variables reflecting performance after admission. However, there are very few articles describing how these variables can be combined to predict NPTE performance. The purpose of this study was to develop, evaluate, and describe models to predict first-time NPTE scores and NPTE outcomes (pass vs fail), based on various applicant and student variables related to academic performance.

Subjects: Pre- and postadmission data and NPTE scores were recorded for 185 individuals who graduated from an entry-level physical therapist education program.

Methods: Multiple linear regression was used to develop a model to predict NPTE scores, and binary logistic regression was used to develop a model to predict NPTE outcomes (pass vs fail).

Results: A model including undergraduate prerequisite grade point average, grade point average in basic science courses taken during the program, and comprehensive examination scores combined to explain 30.9% of the variance in NPTE scores and accurately predicted NPTE outcomes (pass vs fail) 81.1% of the time.

Discussion: In general, our findings support the notion that prediction of NPTE performance should be based on a combination of applicant and student variables. The models described in this article could be used to identify students who may be likely to struggle on the NPTE, making it possible to provide additional support to these students.

Conclusion: Various applicant and student variables related to academic performance can be combined to predict NPTE performance. The results of this study provide a framework for programs interested in applying models to predict NPTE performance.

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