Abstract

The emergence of antimicrobial resistance has raised great concern for public health in many lower-income countries including India. Socio-economic determinants like poverty, health expenditure and awareness accelerate this emergence by influencing individuals' attitudes and healthcare practices such as self-medication. This self-medication practice is highly prevalent in many countries, where antibiotics are available without prescriptions. Thus, complex dynamics of drug- resistance driven by economy, human behaviour, and disease epidemiology poses a serious threat to the community, which has been less emphasized in prior studies. Here, we formulate a game-theoretic model of human choices in self-medication integrating economic growth and disease transmission processes. We show that this adaptive behaviour emerges spontaneously in the population through a self-reinforcing process and continual feedback from the economy, resulting in the emergence of resistance as externalities of human choice under resource constraints situations. We identify that the disparity between social-optimum and individual interest in self-medication is primarily driven by the effectiveness of treatment, health awareness and public health interventions. Frequent multiple-peaks of resistant strains are also observed when individuals imitate others more readily and self-medication is more likely. Our model exemplifies that timely public health intervention for financial risk protection, and antibiotic stewardship policies can improve the epidemiological situation and prevent economic collapse.

Highlights

  • Self-medication (SM) is a global phenomenon and a potential contributor to antimicrobial resistance worldwide, especially in LICs and LMICs [1,2,3,4]

  • It was found that 50% of purchased antibiotics in South Asian countries like India, Nepal, Bangladesh and Pakistan is through Over-the-Counter (OTC) drug sales, which plays a crucial role in fostering self-medication [3,8,9,10]

  • The threat of antimicrobial resistance (AMR) is undoubtedly growing at an alarming rate and the situation is perhaps aggravated in developing countries due to gross misuse of antibiotics, mainly through self-medication (SM) [1,2]

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Summary

Introduction

Self-medication (SM) is a global phenomenon and a potential contributor to antimicrobial resistance worldwide, especially in LICs and LMICs [1,2,3,4]. The emergence of antimicrobial resistance is an ecological phenomenon—the result of a complex interplay among disease prevalence, socio-economic conditions and antibiotic utilization through self-medication [44,45,46]. To avoid high treatment costs, lengthy diagnosis and expensive medicines, irrational and inappropriate use of antibiotics driven by individual self-interest often crosses the social-optimum of antibiotic consumption, accelerating the emergence of drug-resistance in the population [47,48,49]. We use evolutionary game theory to model the co-evolving dynamics of human behaviour in self-medication and the emergence of resistance. We compute social-optimum self-medication and determine its proportional disparity with individual interest depending on key parameters like treatment effectiveness, health awareness and socio-economic conditions. Our analyses point out that timely public health initiatives can break this self-reinforcing cycle, and recover the population from economic downfall due to antibiotic drug-resistance—a result of the public health importance in controlling antibiotic drug-resistance

Model framework
Integrated model of antibiotic resistance and self-medication
Economic growth and feedback
Model equilibria and socially optimum self-medication
Effectiveness of hospital treatment
Risk perception as a function of income and awareness
Expected utility as function of success rate
Public health intervention
Impact of intervention
Recovery from economic downfall through public health investments
Conclusion
Full Text
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