Using Machine Learning for Personalized Patient Adherence Level Determination.

Using Machine Learning for Personalized Patient Adherence Level Determination.

Taranik, Maksim;Kopanitsa, Georgy;
Studies in health technology and informatics 2019 Vol. 261 pp. 174-178
224
taranik2019usingstudies

Abstract

The paper deals with using a machine-learning algorithm for patient adherence level determination. For this purpose, we developed a neural network using the Python language, Keras library, and PyCharm platform. We analyzed different medical data collected from medical staff, patient interviews, and measurements preprocessed using a fuzzy Mamdani algorithm. After analysing 369 records we received 79.4% of accuracy.

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