Stephen Afrifa

Work place: Department of Information and Communication Engineering, Tianjin University, Tianjin 300072, China

E-mail: afrifastephen@tju.edu.cn

Website:

Research Interests: Deep Learning, Cloud Computing, Machine Learning, Signal Processing

Biography

Stephen Afrifa received a BSc. degree in Information Technology from University of Energy and Natural Resources, Ghana in 2020. He is a currently a postgraduate student leading to MSc. Information and Communication Engineering from Tianjin University, China. He currently provides community services to school children through imparting the technological experience for IT entrepreneurial skills for sustainable development. His current research interest includes image and signal processing, deep learning, machine learning, IoT, cloud computing, and network security. His current thesis is focused on using mathematical and machi

Author Articles
Machine Learning Algorithms for Iron Deficiency Anemia Detection in Children Using Palm Images

By Stephen Afrifa Peter Appiahene Tao Zhang Vijayakumar Varadarajan

DOI: https://doi.org/10.5815/ijeme.2024.01.01, Pub. Date: 8 Feb. 2024

Anemia is a common condition among adults, particularly in children and pregnant women. Anemia is defined as a lack of healthy red blood cells or hemoglobin. Early identification of anemia is critical for excellent health and well-being, which contributes to the sustainable development goals (SDGs), notably SDG 3. The intrusive way to detecting anemia has several hurdles, including anxiety and cost, which impedes health development. With the advent of technology, it is critical to create non-invasive techniques to diagnose anemia that can minimize costs while also improving detection efficacy. A distinct non-invasive technique is developed in this study employing machine learning (ML) models. This study's dataset contains 4260 observations of non-anemic (0) and anemic (1) children. To train the dataset, six (6) different ML models were employed: k-Nearest Neighbor (KNN), decision tree (DT), logistic regression (LR), nave bayes (NB), random forest (RF), and kernel-support vector machine (KSVM). The DT and RF models obtained the highest accuracy of 99.92%, followed by the KNN at 98.98%. The ML models used in this study produced substantial results. The models also received high marks on performance evaluation metrics such as accuracy, recall, F1-score, and Area Under the Curve-Receiver Operating Characteristics (AUC-ROC). When compared to the other ML models, the DT and RF had the best precision (1.000), recall (0.9987), F1-score (0.9994), and AUC-ROC (0.9994) ratings. According to the findings, ML models are crucial in the detection of anemia using a non-invasive technique, which is critical for health facilities to boost efficiency and quality healthcare. Various machine learning models were used in this study to detect anemia in children using palm images. Finally, the findings confirm earlier studies on the effectiveness of ML algorithms as a non-invasive means of detecting iron deficiency anemia.

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