Impact Statement:MalaNet introduces an enhanced tool for malaria diagnosis by effectively combining FNN and CNN, both inspired by small-world network principles. The small-world character...Show More
Abstract:
In this work, a novel neural network architecture called MalaNet is proposed for the detection and diagnosis of malaria, an infectious disease that poses a major global h...Show MoreMetadata
Impact Statement:
MalaNet introduces an enhanced tool for malaria diagnosis by effectively combining FNN and CNN, both inspired by small-world network principles. The small-world characteristics in these architectures enable faster processing and more accurate diagnostics through improved connectivity and information flow. The FNN component analyzes symptomatology; it offers swift diagnostic assessments even in the absence of blood smear images, while the CNN aspect enhances accuracy through its ability to detect subtle morphological changes in red blood cells via image analysis. This dual approach enables faster and more precise malaria diagnoses, which are critical for timely treatment and reducing disease spread. By streamlining the detection process, MalaNet can potentially reduce healthcare costs and lessen the load on healthcare systems, particularly in malaria-endemic areas. Its application in clinical settings could improve patient outcomes by providing quicker, more accurate screenings. Overall...
Abstract:
In this work, a novel neural network architecture called MalaNet is proposed for the detection and diagnosis of malaria, an infectious disease that poses a major global health challenge. The proposed neural network architecture is inspired by small-world network principles, which generally involve the introduction of new links. A small-world neural network is realized by establishing new connections, thereby reducing the average path length and increasing clustering coefficient. These characteristics are known to enhance interconnectivity and improve feature propagation within the network. In the context of malaria diagnosis, these characteristics of MalaNet can enhance detection accuracy and enable better generalization in scenarios with limited data availability. Broadly, two variants of MalaNet are proposed in this work. First, a small-world-inspired Feed-Forward Neural Network (FNN) is developed for symptom and categorical feature-based diagnosis, providing an accessible solution w...
Published in: IEEE Transactions on Artificial Intelligence ( Early Access )
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