用多层次逻辑模型解锁体细胞标记假说的新见解。

IF 2.5 3区 医学 Q2 BEHAVIORAL SCIENCES
Félix Duplessis-Marcotte, Pier-Olivier Caron, Marie-France Marin
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引用次数: 0

摘要

躯体标记假说是一种有影响力的决策神经生物学解释,它指出情感躯体标记(如皮肤电导反应)影响决策过程。尽管这个假设很突出,但仍然存在争议,部分原因是由于不适当的统计方法导致的结果不一致。旨在评估决策的任务通常使用重复测量设计,例如爱荷华赌博任务(IGT),它要求参与者通过在四副牌中选择100张牌来实现利润最大化,这些牌提供了不同的输赢偶然性。研究人员经常将重复的测量结果汇总为一个平均值,以简化分析,这可能会犯生态谬误,因为他们错误地将从汇总数据(即个体间效应)获得的结果推广到个体重复测量(即个体内部效应)。本文通过演示如何使用多层逻辑模型分析自变量和因变量的并发重复测量来解决这个问题。首先,阐述了logistic多层模型的原理。然后,对模拟和实证IGT数据进行分析,比较传统统计方法(即一般线性模型)与多层逻辑模型的性能。我们提出的多层次逻辑分析解决了决策研究中关键的方法差距,确保了对重复测量数据的更准确解释。这种方法不仅推进了体细胞标记假说的研究,而且为类似的研究方案提供了一个强大的框架,最终提高了研究结果的可靠性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unlocking new insights into the somatic marker hypothesis with multilevel logistic models.

The Somatic Marker Hypothesis, an influential neurobiological account of decision-making, states that emotional somatic markers (e.g., skin conductance responses) influence decision-making processes. Despite its prominence, the hypothesis remains controversial partly because of inconsistent results stemming from inappropriate statistical methods. Tasks designed to assess decision-making often use repeated measures designs, such as the Iowa Gambling Task (IGT), which requires participants to maximize profits by selecting 100 cards among four decks offering varying win-loss contingencies. Researchers often aggregate repeated measures into a single averaged value to simplify analyses, potentially committing an ecological fallacy by erroneously generalizing results obtained from aggregated data (i.e., interindividual effects) to individual repeated measurements (i.e., intraindividual effects). This paper addresses this issue by demonstrating how to analyze concurrent repeated measures of both independent and dependent variables using multilevel logistic models. First, the principles of logistic multilevel models are explained. Then, simulated and empirical IGT data are analyzed to compare the performance of traditional statistical approaches (i.e., general linear models) with multilevel logistic models. Our proposed multilevel logistic analyses address critical methodological gaps in decision-making research, ensuring more accurate interpretations of repeated measures data. This approach not only advances the study of the Somatic Marker Hypothesis but also provides a robust framework for similar research protocols, ultimately enhancing the reliability and validity of findings.

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来源期刊
CiteScore
5.00
自引率
3.40%
发文量
64
审稿时长
6-12 weeks
期刊介绍: Cognitive, Affective, & Behavioral Neuroscience (CABN) offers theoretical, review, and primary research articles on behavior and brain processes in humans. Coverage includes normal function as well as patients with injuries or processes that influence brain function: neurological disorders, including both healthy and disordered aging; and psychiatric disorders such as schizophrenia and depression. CABN is the leading vehicle for strongly psychologically motivated studies of brain–behavior relationships, through the presentation of papers that integrate psychological theory and the conduct and interpretation of the neuroscientific data. The range of topics includes perception, attention, memory, language, problem solving, reasoning, and decision-making; emotional processes, motivation, reward prediction, and affective states; and individual differences in relevant domains, including personality. Cognitive, Affective, & Behavioral Neuroscience is a publication of the Psychonomic Society.
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