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Handling Irregularly Sampled Longitudinal Data and Prognostic Modeling of Diabetes Using Machine Learning Technique
Journal article   Open access  Peer reviewed

Handling Irregularly Sampled Longitudinal Data and Prognostic Modeling of Diabetes Using Machine Learning Technique

Sajida Perveen, Muhammad Shahbaz, Tanzila Saba, Karim Keshavjee, Amjad Rehman and Aziz Guergachi
IEEE access, Vol.8, pp.21875-21885
2020

Abstract

approximation technique Data models Diabetes Diseases Distributed databases Hidden Markov models HMM irregular and sparsely sampled data handling Machine learning Newton‘s divided difference method (NDDM) prognostic modeling risk prediction risk scoring Type 2 diabetes mellitus (T2DM)
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https://doi.org/10.1109/ACCESS.2020.2968608View
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