The Role of Data Science in Improving Healthcare Access and Equity
KIMENYI Thadée *
Engineering Academy, Peoples’ Friendship University of Russia named after Patrice Lumumba, Russia.
UWINGABIYE Florence
Engineering Academy, Peoples’ Friendship University of Russia named after Patrice Lumumba, Russia.
KIMENYI Asaph
Engineering Academy, Peoples’ Friendship University of Russia named after Patrice Lumumba, Russia.
NIAMIEN Koffi Hervé
Engineering Academy, Peoples’ Friendship University of Russia named after Patrice Lumumba, Russia.
*Author to whom correspondence should be addressed.
Abstract
The integration of data science in healthcare has transformed the landscape of medical decision-making, resource allocation, and patient care. Using big data, electronic health records (EHRs), and social determinants of health (SDOH), data science offers innovative solutions to identify healthcare disparities, optimize interventions, and enhance patient outcomes. Geospatial analytics and predictive modeling have proven effective in mapping underserved regions and forecasting disease trends, thereby enabling targeted policy interventions. However, challenges such as algorithmic bias, data interoperability, and privacy concerns remain significant barriers to widespread adoption. Ethical considerations, including fairness in AI-driven healthcare models, require urgent attention to ensure that data-driven interventions benefit all populations, especially marginalized communities. This paper explores the role of data science in improving healthcare access and equity, emphasizing predictive analytics, artificial intelligence, and machine learning applications. The study highlights the necessity of diverse and representative datasets to mitigate biases in predictive models and promote equitable healthcare delivery. Furthermore, the implementation of fairness-aware AI techniques can help prevent discriminatory outcomes and improve trust in data science applications. By addressing these challenges, data science has the potential to bridge gaps in healthcare access, ensuring that technological advancements translate into meaningful improvements in public health. The findings reveal the importance of collaboration between policymakers, healthcare providers, and data scientists to maximize the benefits of data-driven healthcare. This paper advocates for a systematic approach to integrating data science methodologies into healthcare policies to create a more inclusive and effective healthcare system.
Keywords: Algorithmic Bias, geospatial analytics, ethical AI, big data management, health informatics, predictive modeling