Utilizing AI for viral infection diagnosis: a case study in Tigray, Ethiopia

Imagine a world where diagnosing viral infections like common cold, influenza, Covid-19, measles or chickenpox is fast and affordable?

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Utilizing AI for viral infection diagnosis: a case study in Tigray, Ethiopia
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Utilizing AI for viral infection diagnosis: a case study in Tigray, Ethiopia - Discover Health Systems

In recent years, the emergence of viral infections has posed significant challenges to healthcare systems worldwide. Timely and accurate detection of viral infections is essential for effective patient care and outbreak management. Although the World Health Organization has declared an end to the emergency phase of the Covid-19 pandemic, it is still impacting countries like Ethiopia, particularly in the war-ridden Tigray region. Today, viral infection testing in Tigray is still expensive, less accessible and time consuming. In this study, we introduce a novel approach for intelligent detection of viral infections, particularly Covid-19 from similar other diseases. A rule-based system, called CSDIS, was developed using tree to identify symptoms of the viruses and analyze the behavior of each diseases. Accuracy and usability of the system was evaluated by employing a dataset of 100 patient cases. We use 70% of the dataset for training, and the remaining 30% for testing the model. Additionally, standard RT-PCR tests are employed to confirm the model prediction results. Accordingly, the developed model proved successful in accurately identifying each class of disease with 98% accuracy, and 96% acceptance rating from the local community. This suggests that the system can empower individual healthcare professionals and minimize the shortage of manpower and resources. Overall, this research not only enhances the efficiency and precision of viral infection detection but also has the capacity to transform how healthcare professionals, researchers, and policymakers respond to viral outbreaks.

The realities of health care

Viral infections have been a major public health concern and it is vital to have a reliable, fast and efficient method of diagnosing infections. In many regions with strained healthcare systems, diagnosing viral infections is costly and time consuming process for many people.

Imagine a healthcare system which has faced severe challenges due to a shortage of trained medical professionals, limited supplies and effects of a war. In this context, the need for an efficient, low cost and easily accessible diagnostic system is more critical than ever. That's why we turned to AI research.

The CSDIS Solution

The idea behind the designed  CSDIS were the desire and motivation of the researchers to bridge the gap between modern healthcare technologies and the realities of healthcare in resource limited settings. We wanted to study about the technology that could assist healthcare workers in diagnosing viral infections by analyzing patient symptoms and providing accurate predictions. For example, Covid-19 shares symptoms with other diseases like common cold and influenza, making it challenging for healthcare professionals to diagnose without testing.

To build CSDIS, we worked closely with healthcare professionals. We gathered data ethically from voluntary patients, including symptoms and medical history to create a robust knowledge base that could use to make accurate predictions. The CSDIS identifies key symptoms and able to differentiate between similar diseases.

The Methodology Behind

To ensure the accuracy of CSDIS, we used a dataset of 1,500 patient cases, which was divided into five categories: common cold, influenza, Covid-19, measles and chickenpox. These diseases were selected based on their prevalence in Tigray, Ethiopia.

The CSDIS was tested using 70% of the dataset for training and 30% for testing. The results were impressive: it achieved an accuracy rate of 98% in identifying these diseases, with a 96% acceptance rate from local healthcare workers. This is significant because it means that even in a resource constrained environment, healthcare professionals can be assisted by AI to make their final decision.

The CSDIS Prototype in Action

One of the standout features of CSDIS is its architecture. It is designed to serve the community in ground. It includes a user interface that supports multiple languages, including English, Tigrigna and Amharic. This makes it accessible to a wider Ethiopian population, ensuring that language barriers don't prevent people from benefiting an AI technology.

Real World Impact

To evaluate the effectiveness of CSDIS, we conducted field tests in three health centers: Wukro-Maray, Selekleka and Gendebta area. The results were positive. Healthcare workers found the CSDIS to be user friendly, accurate and highly valuable in diagnosing viral infections.

In one instance, a healthcare worker in Gendebta health center was able to diagnose a suspected case of Influenza in 5 minutes using the system’s recommendations and the patient’s symptoms. This saved valuable time and helped ensure that the patient received treatment as quickly as possible.

The results showed that CSDIS was well received with a high acceptance rate from the community. Healthcare workers appreciated how the system could assist them in making informed decisions especially in areas where they might not have specialized knowledge.

Looking Forward

The success of CSDIS highlights the transformative potential of AI in healthcare, particularly in underserved regions. By utilizing AI, we can make healthcare more accessible and efficient, even in the face of resource shortages. It can significantly improve patient outcomes.

As AI continues to evolve, the potential for systems like CSDIS to revolutionize healthcare worldwide is limitless. By making use of data driven approaches, we can create solutions that adapt to community needs, ensuring that no one is left behind, regardless of where they live.

Conclusion

The story behind this research is innovation, collaboration, determination and community engagement. AI improves healthcare delivery in resource limited settings. We hope that this research serves as a model for future projects that use technology to address global health challenges. Therefore, AI-driven healthcare solutions like CSDIS are essential for building a healthier and more equitable future for everyone.

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