Most work to date on mitigating the COVID-19 pandemic is focused urgently on biomedicine and epidemiology. Yet, pandemic-related policy decisions cannot be made on health information alone. Decisions need to consider the broader impacts on people and their needs. Quantifying human needs across the population is challenging as it requires high geo-temporal granularity, high coverage across the population, and appropriate adjustment for seasonal and other external effects. Here, we propose a computational methodology, building on Maslow's hierarchy of needs, that can capture a holistic view of relative changes in needs following the pandemic through a difference-in-differences approach that corrects for seasonality and volume variations. We apply this approach to characterize changes in human needs across physiological, socioeconomic, and psychological realms in the US, based on more than 35 billion search interactions spanning over 36,000 ZIP codes over a period of 14 months. The analyses reveal that the expression of basic human needs has increased exponentially while higher-level aspirations declined during the pandemic in comparison to the pre-pandemic period. In exploring the timing and variations in statewide policies, we find that the durations of shelter-in-place mandates have influenced social and emotional needs significantly. We demonstrate that potential barriers to addressing critical needs, such as support for unemployment and domestic violence, can be identified through web search interactions. Our approach and results suggest that population-scale monitoring of shifts in human needs can inform policies and recovery efforts for current and anticipated needs.
翻译:迄今为止,减轻COVID-19大流行病的工作大多集中在生物医学和流行病学上,然而,不能仅就健康信息作出与大流行病有关的政策决定。决定需要考虑对人及其需要的更广泛影响。量化人口的整体需求具有挑战性,因为它需要14个月中超过350亿次搜索互动,范围超过36 000 ZIP代码,并适当调整季节性和其他外部影响。分析表明,在马斯洛的需求等级基础上,基本人类需求的表现呈指数性增长趋势,而较高水平的期望在大流行病发生前时期则下降。在探索全州政策的时间和变化时差方法,纠正季节性和数量差异。我们采用这一方法来描述人类需求在生理、社会经济和心理领域的变化。我们运用这一方法来描述整个美国在生理、社会、社会和心理领域的需求变化方面的变化。根据在14个月期间超过3 500亿次的搜索互动,覆盖了36 000 ZIP代码。分析表明,与广度需求相比,在大流行病期间,更高级别的愿望下降。在探索全州政策的时间和变化时,我们发现,通过网络的搜索需求可以影响当前对人口需求的潜在需求。