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Diabsense: Early Diagnosis of Non-insulin-dependent Diabetes Mellitus Using Smartphone-based Human Activity Recognition and Diabetic Retinopathy Analysis with Graph Neural Network

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dc.contributor.author Alam, Md Nuho Ul
dc.contributor.author Hasnine, Ibrahim
dc.contributor.author Bahadur, Erfanul Hoque
dc.contributor.author Masum, Abdul Kadar Muhammad
dc.contributor.author Urbano, Mercedes Briones
dc.contributor.author Vergara, Manuel Masias
dc.contributor.author Ashraf, Imran
dc.contributor.author Samad, Md. Abdus
dc.date.accessioned 2025-06-01T04:49:49Z
dc.date.available 2025-06-01T04:49:49Z
dc.date.issued 2024-08-03
dc.identifier.uri http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/13782
dc.description.abstract Non-Insulin-Dependent Diabetes Mellitus (NIDDM) is a chronic health condition caused by high blood sugar levels, and if not treated early, it can lead to serious complications i.e. blindness. Human Activity Recognition (HAR) offers potential for early NIDDM diagnosis, emerging as a key application for HAR technology. This research introduces DiabSense, a state-of-the-art smartphone-dependent system for early staging of NIDDM. DiabSense incorporates HAR and Diabetic Retinopathy (DR) upon leveraging the power of two different Graph Neural Networks (GNN). HAR uses a comprehensive array of 23 human activities resembling Diabetes symptoms, and DR is a prevalent complication of NIDDM. Graph Attention Network (GAT) in HAR achieved 98.32% accuracy on sensor data, while Graph Convolutional Network (GCN) in the Aptos 2019 dataset scored 84.48%, surpassing other state-of-the-art models. The trained GCN analyzed retinal images of four experimental human subjects for DR report generation, and GAT generated their average duration of daily activities over 30 days. The daily activities in non-diabetic periods of diabetic patients were measured and compared with the daily activities of the experimental subjects, which helped generate risk factors. Fusing risk factors with DR conditions enabled early diagnosis recommendations for the experimental subjects despite the absence of any apparent symptoms. The comparison of DiabSense system outcome with clinical diagnosis reports in the experimental subjects was conducted using the A1C test. The test results confirmed the accurate assessment of early diagnosis requirements for experimental subjects by the system. Overall, DiabSense exhibits significant potential for ensuring early NIDDM treatment, improving millions of lives worldwide. en_US
dc.language.iso en_US en_US
dc.publisher Springer Nature en_US
dc.subject Diabetes en_US
dc.subject Chronic health en_US
dc.subject Neural network en_US
dc.subject Health condition en_US
dc.title Diabsense: Early Diagnosis of Non-insulin-dependent Diabetes Mellitus Using Smartphone-based Human Activity Recognition and Diabetic Retinopathy Analysis with Graph Neural Network en_US
dc.type Article en_US


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