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Machine learning as structural solution to Nigeria’s healthcare problems

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By Fatimat Okeleye

Can Nigeria’s healthcare system overcome its structural problems and deliver better care? Nigeria’s healthcare system faces numerous structural challenges, consistently ranking among the bottom 20 in the World Health Organisation’s health system rankings. Issues such as insufficient healthcare infrastructure, limited access to quality care, and inadequate numbers of trained medical professionals plague the system, particularly in rural and underserved areas. Despite these challenges, the integration of machine learning (ML) technologies offers a promising pathway to revolutionise healthcare delivery, making it more efficient, accessible, and responsive to patient needs.

Challenges in Nigeria’s Healthcare System

The structural problems of Nigeria’s healthcare system are numerous:
Access Inequity: Rural areas face significant disparities in healthcare delivery due to a lack of medical facilities and specialists.

Diagnostic Limitations: The availability of diagnostic tools and expertise is insufficient to meet the population’s needs, leading to delayed or inaccurate diagnoses.

Resource Constraints: Healthcare resources, including medications, equipment, and staffing, are often inefficiently allocated, leaving some regions underserved.

High Maternal and Child Mortality Rates: Nigeria’s maternal mortality rate remains one of the highest in the world, exacerbated by poor access to prenatal and postnatal care.

Healthcare Workforce Shortage: The limited number of healthcare professionals struggles to cater to the needs of Nigeria’s large and growing population.

Machine Learning Applications in Healthcare

Machine learning can detect diseases such as tuberculosis, malaria, and cancer by analysing medical images and other diagnostic data. With algorithms trained on a few hundred medical images, ML-powered mobile health (M-health) tools can identify and prioritize severe cases, enabling one radiologist to serve multiple clinics efficiently. This is particularly valuable in rural areas where specialist doctors are scarce.

Predictive Analytics for Resource Optimisation

In a healthcare system burdened by resource constraints, predictive analytics powered by ML can ensure efficient allocation of critical resources. Algorithms can forecast patient inflow, anticipate drug stock needs, and streamline operational workflows. For instance, managing the high patient loads in Nigerian hospitals using ML-driven resource allocation can significantly improve patient outcomes.

Maternal Health Monitoring

Maternal health is a significant challenge in Nigeria, but ML-based mobile applications offer a practical solution. These tools can monitor pregnancies, detect complications early, and guide community health workers in providing timely interventions. This is particularly impactful in rural areas, where access to prenatal and postnatal care is limited.

Professional Training and Development

Artificial intelligence and machine learning are transforming medical education and professional development. Virtual learning platforms powered by ML can provide healthcare professionals with continuous access to the latest medical knowledge and protocols. This ensures that practitioners remain up to date, addressing the gap in continuous professional education.

Proven Applications in Nigeria

ML technology is already making an impact in Nigeria:
Malaria Diagnosis in Lagos: ML-assisted diagnostic tools have improved accuracy and timeliness in diagnosing malaria.

Vaccination Campaigns in Northern Nigeria: AI systems optimise vaccination campaigns by predicting vaccine requirements and refining transportation logistics, ensuring that vaccines reach their intended recipients efficiently.

In conclusion, the potential of machine learning to address Nigeria’s healthcare challenges is immense. From enhancing diagnostic accuracy to optimising resource allocation and improving maternal health outcomes, ML has demonstrated its ability to save lives and improve healthcare delivery. For Nigeria to fully realise these benefits, significant investments in digital health infrastructure and capacity-building among healthcare professionals are essential. A strong commitment to these advancements will ensure a more equitable, efficient, and effective healthcare system for all Nigerians.

READ MORE FROM: NIGERIAN TRIBUNE


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