Explaining "U-shaped" distributions of population substance use with a simple computational approach.

IF 2.2 3区 工程技术 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY
Jacob T Borodovsky
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引用次数: 0

Abstract

Background: "U-shaped" distributions of past 30-day substance use frequencies are pervasive, yet no established model explains this phenomenon. Using probability functions to describe these distributions yields unintuitive, atheoretical results. This study introduces a simple computational model of individual-level, longitudinal substance use patterns to understand how cross-sectional U-shaped distributions emerge in populations.

Model: Each independent computational object transitions between two states: not using a substance ("N"), or using a substance ("U"). The model has two key components: (1) each object has a unique risk factor probability governing the transition from N to U, and a unique protective factor probability governing the transition from U to N; (2) an object's current decision to use or not use is influenced by its prior decisions (i.e., "path dependence"). Three modeler input parameters control these two components.

Analysis: First, the model is fit to empirical cross-sectional distributions of past 30-day use frequencies for ten substances (e.g., alcohol, cannabis, tobacco, etc.) from the U.S. National Survey on Drug Use and Health. Next, combinations of values of the model's three inputs are tested to determine the conditions that produce U-shaped distributions. Finally, supplemental testing explored structural variations of the original model to assess whether simpler or alternative configurations are also capable of generating U-shaped distributions.

Results: The model effectively reproduced the U-shaped distributions observed in empirical data across all substances. Path dependence emerged as a critical feature for generating U-shaped distributions, independent of the specific distribution shapes used for assigning transition probabilities. However, results also indicated that neither of the model's two key components are required for generating U-shaped distributions.

Conclusion: This study demonstrates how a simple, theoretically-grounded computational model of individual-level substance use patterns can help substance use researchers understand the emergence of population-level, cross-sectional U-shaped distributions of substance use.

用简单的计算方法解释人口物质使用的“u形”分布。
背景:过去30天内物质使用频率的“u形”分布是普遍存在的,但没有既定的模型解释这一现象。使用概率函数来描述这些分布会产生不直观的理论结果。本研究引入了一个简单的个人水平的计算模型,纵向物质使用模式,以了解人口中横截面u形分布是如何出现的。模型:每个独立的计算对象在两种状态之间转换:不使用物质(“N”),或使用物质(“U”)。该模型有两个关键组成部分:(1)每个目标具有唯一的控制从N向U过渡的风险因素概率,以及唯一的控制从U向N过渡的保护因素概率;(2)对象当前使用或不使用的决定受到其先前决定的影响(即“路径依赖”)。三个建模器输入参数控制这两个组件。分析:首先,该模型适合于美国国家药物使用和健康调查中过去30天内10种物质(如酒精、大麻、烟草等)使用频率的经验横截面分布。接下来,对模型三个输入值的组合进行测试,以确定产生u形分布的条件。最后,补充测试探索了原始模型的结构变化,以评估更简单或替代配置是否也能够产生u形分布。结果:该模型有效地再现了在所有物质的经验数据中观察到的u形分布。路径依赖成为生成u形分布的关键特征,独立于分配转移概率的特定分布形状。然而,结果也表明,模型的两个关键组成部分都不需要产生u形分布。结论:本研究展示了一个简单的、基于理论的个人水平物质使用模式计算模型如何帮助物质使用研究人员理解人口水平、横截面u型物质使用分布的出现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.40
自引率
9.50%
发文量
16
审稿时长
21 weeks
期刊介绍: The Journal of Artificial Societies and Social Simulation is an interdisciplinary journal for the exploration and understanding of social processes by means of computer simulation. Since its first issue in 1998, it has been a world-wide leading reference for readers interested in social simulation and the application of computer simulation in the social sciences. Original research papers and critical reviews on all aspects of social simulation and agent societies that fall within the journal"s objective to further the exploration and understanding of social processes by means of computer simulation are welcome.
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