Machine Learning Approach for Prediction of Hematic Parameters in Hemodialysis Patients

Publication date: 1 Gen 2019

JournalSource: OPENALEXOpenAlex type: articleOpen Access
Authors: Cristoforo Decaro, G. B. Montanari, Riccardo Molinari, Alessio Gilberti, Davide Bagnoli, Marco Bianconi, Gaetano Bellanca

Objective: This paper shows the application of machine learning techniques to predict hematic parameters using blood visible spectra during ex-vivo treatments. Methods: A spectroscopic setup was prepared for acquisition of blood absorbance spectrum and tested in an operational environment. This setup is non invasive and can be applied during dialysis sessions. A support vector machine and an artificial neural network, trained with a dataset of spectra, have been implemented for the prediction of hematocrit and oxygen saturation. Results & Conclusion: Results of different machine learning algorithms are compared, showing that support vector machine is the best technique for the prediction of hematocrit and oxygen saturation.

Origin
IEEE Journal of Translational Engineering in Health and Medicine
Volume
7
Pages
1-8
Cited by
29