Elsevier

Biosystems

Volume 151, January 2017, Pages 1-7
Biosystems

Predicting the physiological response of Tivela stultorum hearts with digoxin from cardiac parameters using artificial neural networks

https://doi.org/10.1016/j.biosystems.2016.11.002Get rights and content
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Abstract

Multi-layer perceptron artificial neural networks (MLP-ANNs) were used to predict the concentration of digoxin needed to obtain a cardio-activity of specific biophysical parameters in Tivela stultorum hearts. The inputs of the neural networks were the minimum and maximum values of heart contraction force, the time of ventricular filling, the volume used for dilution, heart rate and weight, volume, length and width of the heart, while the output was the digoxin concentration in dilution necessary to obtain a desired physiological response. ANNs were trained, validated and tested with the dataset of the in vivo experiment results. To select the optimal network, predictions for all the dataset for each configuration of ANNs were made, a maximum 5% relative error for the digoxin concentration was set and the diagnostic accuracy of the predictions made was evaluated. The double-layer perceptron had a barely higher performance than the single-layer perceptron; therefore, both had a good predictive ability. The double-layer perceptron was able to obtain the most accurate predictions of digoxin concentration required in the hearts of T. stultorum using MLP-ANNs.

Keywords

Artificial neural networks
Cardio-activity
Digitalis
Digoxin
Drug response
Tivela stultorum

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