NEURAL NETWORK PREDICTIVE MODELS TO DETERMINE THE EFFECT OF BLOOD COMPOSITION ON THE PATIENT-SPECIFIC ANEURYSM

Author:

QUADROS JAIMON DENNIS1ORCID,PAHLAVANI HAMED2,OZDEMIR I. BEDII2ORCID,MOGUL YAKUB IQBAL3ORCID

Affiliation:

1. Faculty of Mechanical Engineering, University of Bolton, RAK Academic Center, 16038 Ras Al Khaimah, UAE

2. Fluids Group, Faculty of Mechanical Engineering, Istanbul Technical University, Gumussuyu, 34437 Istanbul, Turkey

3. National Centre for Motorsport Engineering, University of Bolton, Deane Road, BL3 5AB, Bolton, UK

Abstract

Using the data obtained from the computational fluid dynamics simulations, a back-propagation neural network model was developed to predict the velocity magnitudes and the instantaneous wall shear stresses in two patient-specific aneurysms. The models were also used to determine the effect of the blood composition on the rapture risk of the aneurysms. Based on the possible combination, five back propagation models were developed. The architecture of five models is determined based on number of neurons in the hidden layer. All the models in each algorithm were trained and tested. The accuracy of the developed models was evaluated through statistical analysis of the network output in terms of mean absolute error, root mean squared error, mean squared error, and error deviation. According to the results obtained, all BPA effectively predicted velocity magnitude and instantaneous wall shear stress. Model 1 was, however, less accurate when compared to the other five models, as it had one neuron in its hidden layer. The analysis confirms that the neuron number in the hidden layer play a definitive role in predicting the respective outputs. The performance assessment all of the back-propagation models revealed that the error incurred was acceptable. The algorithms’ training and testing in this study were satisfactory, since the network output was in reasonably good conformity with the target computational fluid dynamics result.

Publisher

World Scientific Pub Co Pte Ltd

Subject

Biomedical Engineering

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