Alisa Hamilton , Fardad Haghpanah , Alexander Tulchinsky , Nodar Kipshidze , Suprena Poleon , Gary Lin , Hongru Du , Lauren Gardner , Eili Klein
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Fewer models incorporated behavior endogenously (e.g., dynamically changing a model parameter throughout the simulation).</p></div><div><h3>Methods</h3><p>This review aimed to qualitatively characterize models that included an adaptive (endogenous) behavioral element in the context of COVID-19 transmission. We categorized studies into three approaches: 1) feedback loops, 2) game theory/utility theory, and 3) information/opinion spread.</p></div><div><h3>Findings</h3><p>Of the 92 included studies, 72% employed a feedback loop, 27% used game/utility theory, and 9% used a model if information/opinion spread. Among all studies, 89% used a compartmental model alone or in combination with other model types. Similarly, 15% used a network model, 11% used an agent-based model, 7% used a system dynamics model, and 1% used a Markov chain model. Descriptors of behavior change included mask-wearing, social distancing, vaccination, and others. Sixty-eight percent of studies calibrated their model to observed data and 25% compared simulated forecasts to observed data. Forty-one percent of studies compared versions of their model with and without endogenous behavior. Models with endogenous behavior tended to show a smaller and delayed initial peak with subsequent periodic waves.</p></div><div><h3>Interpretation</h3><p>While many COVID-19 models incorporated behavior exogenously, these approaches may fail to capture future adaptations in human behavior, resulting in under- or overestimates of disease burden. By incorporating behavior endogenously, the next generation of infectious disease models could more effectively predict outcomes so that decision makers can better prepare for and respond to epidemics.</p></div><div><h3>Funding</h3><p>This study was funded in-part by Centers for Disease Control and Prevention (CDC) <em>MInD-Healthcare Program</em> (1U01CK000536), the National Science Foundation (NSF) <em>Modeling Dynamic Disease-Behavior Feedbacks for Improved Epidemic Prediction and Response</em> grant (2229996), and the NSF <em>PIPP Phase I: Evaluating the Effectiveness of Messaging and Modeling during Pandemics</em> grant (2200256).</p></div>","PeriodicalId":72803,"journal":{"name":"Dialogues in health","volume":"4 ","pages":"Article 100179"},"PeriodicalIF":0.0000,"publicationDate":"2024-05-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2772653324000157/pdfft?md5=2b74a0a4096da6f489697d2353f1d8a3&pid=1-s2.0-S2772653324000157-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Incorporating endogenous human behavior in models of COVID-19 transmission: A systematic scoping review\",\"authors\":\"Alisa Hamilton , Fardad Haghpanah , Alexander Tulchinsky , Nodar Kipshidze , Suprena Poleon , Gary Lin , Hongru Du , Lauren Gardner , Eili Klein\",\"doi\":\"10.1016/j.dialog.2024.100179\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><h3>Background</h3><p>During the COVID-19 pandemic there was a plethora of dynamical forecasting models created, but their ability to effectively describe future trajectories of disease was mixed. 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引用次数: 0
摘要
背景在 COVID-19 大流行期间,人们创建了大量动态预测模型,但这些模型有效描述未来疾病轨迹的能力参差不齐。评估未来病例趋势的一个主要挑战是预测个人行为。当行为被纳入模型时,它主要是被外生纳入的(例如,与手机移动数据相匹配)。本综述旨在定性分析在 COVID-19 传播背景下包含适应性(内生)行为元素的模型。我们将研究分为三种方法:在纳入的 92 项研究中,72% 采用了反馈回路,27% 采用了博弈/效用理论,9% 采用了信息/观点传播模型。在所有研究中,89%的研究单独或与其他类型的模型结合使用了分区模型。同样,15% 使用了网络模型,11% 使用了基于代理的模型,7% 使用了系统动力学模型,1% 使用了马尔可夫链模型。行为改变的描述包括戴口罩、社会疏远、接种疫苗等。68%的研究根据观察到的数据对模型进行了校准,25%的研究将模拟预测与观察到的数据进行了比较。41% 的研究比较了有内生行为和无内生行为的模型版本。虽然许多 COVID-19 模型都将行为作为外生因素,但这些方法可能无法捕捉到人类行为的未来适应性,从而导致低估或高估疾病负担。通过将行为纳入内生因素,下一代传染病模型可以更有效地预测结果,从而使决策者能更好地准备和应对流行病。本研究的部分经费来自美国疾病控制和预防中心(CDC)的 MInD-Healthcare 计划(1U01CK000536)、美国国家科学基金会(NSF)的 "模拟动态疾病-行为反馈以改进流行病预测和应对"(Modeling Dynamic Disease-Behavior Feedbacks for Improved Epidemic Prediction and Response)基金(2229996)以及美国国家科学基金会的 "PIPP 第一阶段:评估大流行期间信息传递和建模的有效性"(PIPP Phase I: Evaluating the Effectiveness of Messaging and Modeling during Pandemics)基金(2200256)。
Incorporating endogenous human behavior in models of COVID-19 transmission: A systematic scoping review
Background
During the COVID-19 pandemic there was a plethora of dynamical forecasting models created, but their ability to effectively describe future trajectories of disease was mixed. A major challenge in evaluating future case trends was forecasting the behavior of individuals. When behavior was incorporated into models, it was primarily incorporated exogenously (e.g., fitting to cellphone mobility data). Fewer models incorporated behavior endogenously (e.g., dynamically changing a model parameter throughout the simulation).
Methods
This review aimed to qualitatively characterize models that included an adaptive (endogenous) behavioral element in the context of COVID-19 transmission. We categorized studies into three approaches: 1) feedback loops, 2) game theory/utility theory, and 3) information/opinion spread.
Findings
Of the 92 included studies, 72% employed a feedback loop, 27% used game/utility theory, and 9% used a model if information/opinion spread. Among all studies, 89% used a compartmental model alone or in combination with other model types. Similarly, 15% used a network model, 11% used an agent-based model, 7% used a system dynamics model, and 1% used a Markov chain model. Descriptors of behavior change included mask-wearing, social distancing, vaccination, and others. Sixty-eight percent of studies calibrated their model to observed data and 25% compared simulated forecasts to observed data. Forty-one percent of studies compared versions of their model with and without endogenous behavior. Models with endogenous behavior tended to show a smaller and delayed initial peak with subsequent periodic waves.
Interpretation
While many COVID-19 models incorporated behavior exogenously, these approaches may fail to capture future adaptations in human behavior, resulting in under- or overestimates of disease burden. By incorporating behavior endogenously, the next generation of infectious disease models could more effectively predict outcomes so that decision makers can better prepare for and respond to epidemics.
Funding
This study was funded in-part by Centers for Disease Control and Prevention (CDC) MInD-Healthcare Program (1U01CK000536), the National Science Foundation (NSF) Modeling Dynamic Disease-Behavior Feedbacks for Improved Epidemic Prediction and Response grant (2229996), and the NSF PIPP Phase I: Evaluating the Effectiveness of Messaging and Modeling during Pandemics grant (2200256).