Abiot Sinamo Boltena

Work place: School of Computing, Ethiopian Institute of Technology-Mekelle, Mekelle University, Mekelle, Ethiopia

E-mail: abiotsinamo35@gmail.com

Website:

Research Interests: Computer systems and computational processes, Artificial Intelligence, Computational Learning Theory, Natural Language Processing, Operating Systems, Systems Architecture, Image Processing, Information Systems

Biography

Dr. Abiot Sinamo Boltena is currently working as a Director General, ICT sector at Federal Democratic Republic of Ethiopian, Ministry of Innovation and Technology. He obtained his PhD. in Intelligent systems and ERP systems from Oldenburg University, Germany, and MSc. Degree in Information Science from Addis Ababa University, Ethiopia, and BSc. Degree in Construction Technology from Nazereth Technic College, Ethiopia. His research area of interest is artificial intelligence and robotics.

Author Articles
Case-Based Reasoning Framework for Malaria Diagnosis

By Eshetie Gizachew Addisu Abiot Sinamo Boltena Samson Yohannes Amare

DOI: https://doi.org/10.5815/ijitcs.2020.06.04, Pub. Date: 8 Dec. 2020

Malaria is life threatening disease in Ethiopia specifically in Tigray region. Having common symptoms with other diseases makes it complex and challenging to diagnose effectively. In this paper case based reasoning framework for malaria diagnosis has been designed to diminish the challenges faced by inexperienced practitioners during malaria diagnosis and to solve the problem on shortage of health professionals. The required knowledge for this study was collected through interview and document analysis from domain experts, malaria patient history cards and other related relevant documents. In the case acquisition process the manual format of cases makes the process too challenging. Decision tree is used to model the acquired knowledge. The case structure was then constructed using the selected most determinant attributes. Machine learning approach is applied to select the most relevant features. Feature-vector case representation technique is applied to represent the collected malaria cases. Jcolibri programming tool integrated with Eclipse and Nearest Neighbor retrieval algorithm are used to design the framework. To the end based on the results we can say that the machine learning approach can be used to select most relevant attributes in diseases having several common symptoms and designing case-based diagnosis frameworks could overcome the main problems observed in health centers of Tigray. As an artifact the framework is evaluated by statistical analysis, comparative evaluation, user evaluation and other evaluation techniques. Averagely 79 % precision, 89 % recall, 91.4% accuracy and 78.8% domain expert’s evaluation was the results scored.

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