Pharmaceutical consumption, economic growth and life expectancy in the OECD: the application of a new causal direction from dependency algorithm and a DeepNet process

IF 1.9 Q2 ECONOMICS JOURNAL OF ECONOMIC STUDIES Pub Date : 2024-06-11 DOI:10.1108/jes-02-2024-0066
Cosimo Magazzino, Monica Auteri, Nicolas Schneider, Ferdinando Ofria, M. Mele
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Abstract

PurposeThe objective of this study is to reevaluate the correlation among pharmaceutical consumption, per capita income, and life expectancy across different age groups (at birth, middle age, and advanced age) within the OECD countries between 1998 and 2018.Design/methodology/approachWe employ a two-step methodology, utilizing two independent approaches. Firstly, we con-duct the Dumitrescu-Hurlin pairwise panel causality test, followed by Machine Learning (ML) experiments employing the Causal Direction from Dependency (D2C) Prediction algorithm and a DeepNet process, thought to deliver robust inferences with respect to the nature, sign, direction, and significance of the causal relationships revealed in the econometric procedure.FindingsOur findings reveal a two-way positive bidirectional causal relationship between GDP and total pharmaceutical sales per capita. This contradicts the conventional notion that health expenditures decrease with economic development due to general health improvements. Furthermore, we observe that GDP per capita positively correlates with life expectancy at birth, 40, and 60, consistently generating positive and statistically significant predictive values. Nonetheless, the value generated by the input life expectancy at 60 on the target income per capita is negative (−61.89%), shedding light on the asymmetric and nonlinear nature of this nexus. Finally, pharmaceutical sales per capita improve life expectancy at birth, 40, and 60, with higher magnitudes compared to those generated by the income input.Practical implicationsThese results offer valuable insights into the intricate dynamics between economic development, pharmaceutical consumption, and life expectancy, providing important implications for health policy formulation.Originality/valueVery few studies shed light on the nature and the direction of the causal relationships that operate among these indicators. Exiting from the standard procedures of cross-country regressions and panel estimations, the present manuscript strives to promote the relevance of using causality tests and Machine Learning (ML) methods on this topic. Therefore, this paper seeks to contribute to the literature in three important ways. First, this is the first study analyzing the long-run interactions among pharmaceutical consumption, per capita income, and life expectancy for the Organization for Economic Co-operation and Development (OECD) area. Second, this research contrasts with previous ones as it employs a complete causality testing framework able to depict causality flows among multiple variables (Dumitrescu-Hurlin causality tests). Third, this study displays a last competitive edge as the panel data procedures are complemented with an advanced data testing method derived from AI. Indeed, using an ML experiment (i.e. Causal Direction from Dependency, D2C and algorithm) it is believed to deliver robust inferences regarding the nature and the direction of the causality. All in all, the present paper is believed to represent a fruitful methodological research orientation. Coupled with accurate data, this seeks to complement the literature with novel evidence and inclusive knowledge on this topic. Finally, to bring accurate results, data cover the most recent and available period for 22 OECD countries: from 1998 to 2018.
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经合组织的药品消费、经济增长和预期寿命:依赖性算法和 DeepNet 流程的新因果方向应用
目的本研究旨在重新评估 1998 年至 2018 年期间经合组织国家不同年龄组(出生时、中年和老年)的药品消费、人均收入和预期寿命之间的相关性。首先,我们进行了 Dumitrescu-Hurlin 成对面板因果关系检验,然后使用机器学习(ML)实验,采用了 "从依赖性看因果方向"(D2C)预测算法和 DeepNet 流程,该流程被认为可对计量经济学程序中揭示的因果关系的性质、符号、方向和显著性进行稳健推断。研究结果我们的研究结果显示,GDP 与人均药品销售总额之间存在双向正向因果关系。这与传统的观点相矛盾,即随着经济的发展,人们的健康水平普遍提高,医疗支出也随之减少。此外,我们还发现人均 GDP 与出生时、40 岁时和 60 岁时的预期寿命呈正相关,持续产生正向且具有统计意义的预测值。然而,60 岁时预期寿命对目标人均收入的输入值为负值(-61.89%),揭示了这一关系的非对称和非线性性质。最后,人均药品销售额提高了出生时、40 岁和 60 岁时的预期寿命,与收入输入相比,提高的幅度更大。 原创性/价值很少有研究能揭示这些指标之间因果关系的性质和方向。本手稿摒弃了跨国回归和面板估算的标准程序,努力宣传在这一主题上使用因果检验和机器学习(ML)方法的相关性。因此,本文力图在三个重要方面为相关文献做出贡献。首先,这是第一项分析经济合作与发展组织(OECD)地区药品消费、人均收入和预期寿命之间长期互动关系的研究。其次,这项研究与以往的研究不同,它采用了一个完整的因果关系检验框架,能够描述多个变量之间的因果关系流(Dumitrescu-Hurlin 因果关系检验)。第三,本研究显示了最后的竞争优势,因为面板数据程序得到了源自人工智能的先进数据测试方法的补充。事实上,通过使用 ML 实验(即从依赖性看因果方向,D2C 和算法),我们相信可以对因果关系的性质和方向做出可靠的推断。总之,本文被认为代表了一种富有成效的方法论研究方向。再加上准确的数据,本文力图以新颖的证据和对这一主题的全面了解来补充文献。最后,为了得出准确的结果,数据涵盖了 22 个经合组织国家的最新可用时期:从 1998 年到 2018 年。
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
4.00
自引率
5.90%
发文量
59
期刊介绍: The Journal of Economic Studies publishes high quality research findings and commentary on international developments in economics. The journal maintains a sound balance between economic theory and application at both the micro and the macro levels. Articles on economic issues between individual nations, emerging and evolving trading blocs are particularly welcomed. Contributors are encouraged to spell out the practical implications of their work for economists in government and industry
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