了解统计群体和推论。

IF 1.5 4区 医学 Q4 CLINICAL NEUROLOGY
Jean Raymond , Tim E. Darsaut
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引用次数: 0

摘要

背景:临床研究和统计学中经常使用 "人群 "一词,但其概念繁多,容易混淆。人群是一种迂回的分类、概括和归纳推理的概念。如果使用不当,该术语可能会导致研究设计、分析和解释出现严重错误:我们回顾了各种人群概念,它们与统计推论的关系,以及它们是指人、变量还是理论构造:统计推论分为基于设计的推论和基于模型的推论。最简单的基于设计的推论是从一个有代表性的随机样本到一个真正确定的人群,但这在临床研究中很少可能,甚至不相关。人群一词很少涉及病人。超群是试图解释变量分布和关系的统计模型的理论假设。伪人群是一种数学构造,用于平衡基线特征,从观察性研究中提取因果推论。统计群体和变量一样多。这导致实体数量激增,为不同的分析和操作提供了很大的空间。目标人群是指研究结果应适用的人群。在缺乏真实人群的情况下,目标人群会被错误地同化为研究对象的资格标准。归纳问题仍未解决,因为从研究对象到未来患者的推论取决于不确定描述中所用词语的含义:在概括和推论问题上,"人群 "一词所隐藏的问题往往多于所揭示的问题。由于该术语会导致错误和误解,因此在临床研究中应尽量少用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding statistical populations and inferences

Background

The term population is frequently used in clinical research and statistics, but concepts are multiple and confusing. Populations are a roundabout way of conceiving classifications, generalizations and inductive inferences. When misapplied, the term can lead to serious errors in study design, analysis and interpretation.

Methods

We review various notions of populations, their relationship with statistical inferences, and whether they refer to persons, variables or theoretical constructions.

Results

There are design- and model-based statistical inferences. The simplest design-based inference is from a representative random sample to a real definite population, but it is rarely possible or even pertinent in clinical research. The term population rarely concerns patients. Super-populations are theoretical postulates of statistical models that attempt to explain the distributions and relationships of variables. Pseudo-populations are mathematical constructs used to balance baseline characteristics to extract causal inferences from observational studies. Statistical populations are as numerous as variables. This leads to an explosion of entities, with much room for divergent analyses and manipulations. Target populations are to whom study results should apply. In the absence of a real population, they are erroneously assimilated to the eligibility criteria of study subjects. The inductive problem remains unsolved, for inferences from study subjects to future patients then depend on the meaning of words used in indefinite descriptions.

Conclusion

The term population often hides more than it reveals regarding problems of generalizations and inferences. Because the term leads to errors and misconceptions, it should rarely be used in clinical research.
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来源期刊
Neurochirurgie
Neurochirurgie 医学-临床神经学
CiteScore
2.70
自引率
6.20%
发文量
100
审稿时长
29 days
期刊介绍: Neurochirurgie publishes articles on treatment, teaching and research, neurosurgery training and the professional aspects of our discipline, and also the history and progress of neurosurgery. It focuses on pathologies of the head, spine and central and peripheral nervous systems and their vascularization. All aspects of the specialty are dealt with: trauma, tumor, degenerative disease, infection, vascular pathology, and radiosurgery, and pediatrics. Transversal studies are also welcome: neuroanatomy, neurophysiology, neurology, neuropediatrics, psychiatry, neuropsychology, physical medicine and neurologic rehabilitation, neuro-anesthesia, neurologic intensive care, neuroradiology, functional exploration, neuropathology, neuro-ophthalmology, otoneurology, maxillofacial surgery, neuro-endocrinology and spine surgery. Technical and methodological aspects are also taken onboard: diagnostic and therapeutic techniques, methods for assessing results, epidemiology, surgical, interventional and radiological techniques, simulations and pathophysiological hypotheses, and educational tools. The editorial board may refuse submissions that fail to meet the journal''s aims and scope; such studies will not be peer-reviewed, and the editor in chief will promptly inform the corresponding author, so as not to delay submission to a more suitable journal. With a view to attracting an international audience of both readers and writers, Neurochirurgie especially welcomes articles in English, and gives priority to original studies. Other kinds of article - reviews, case reports, technical notes and meta-analyses - are equally published. Every year, a special edition is dedicated to the topic selected by the French Society of Neurosurgery for its annual report.
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