Reliable Estimation of the Intra-Voxel Incoherent Motion Parameters of Brain Diffusion Imaging Using θ-Teaching-Learning-Based Optimization
Intra-voxel incoherent motion (IVIM) imaging can characterize diffusion and perfusion of tissues. Traditionally, the least-square method has been used to determine IVIM parameters consisting of pure diffusion coefficient (D), pseudo-diffusion coefficient (D*) and the micro-vascular volume fraction (...
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Spolecnost pro radioelektronicke inzenyrstvi
2020-04-01
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doaj-39a9c69e89e14d5aacaff76731bc86272020-11-25T02:36:17ZengSpolecnost pro radioelektronicke inzenyrstviRadioengineering1210-25122020-04-01291251258Reliable Estimation of the Intra-Voxel Incoherent Motion Parameters of Brain Diffusion Imaging Using θ-Teaching-Learning-Based OptimizationA. GhassemiK. KazemiS. SefidbakhtH. DanyaliIntra-voxel incoherent motion (IVIM) imaging can characterize diffusion and perfusion of tissues. Traditionally, the least-square method has been used to determine IVIM parameters consisting of pure diffusion coefficient (D), pseudo-diffusion coefficient (D*) and the micro-vascular volume fraction (f). This paper proposes an accurate estimation method for IVIM parameters in human brain tissues using θ-teaching-learning-based-optimization (θ-TLBO). θ-TLBO as an evolutionary algorithm provides high quality solutions for parameter estimations in curve fitting problems. Evaluation of the proposed method was performed on simulated data with different levels of noise and experimental data. The estimated parameters were compared with the results of TLBO and three conventional algorithms: Segmented-Unconstrained (“SU”), Segmented-Constrained (“SC”) and “Full”. The results show that the proposed θ-TLBO has higher accuracy, precision and robustness than other methods in estimating parameters of simulated and experimental data in human brain images especially in low SNR images according to analysis of variance (ANOVA), coefficient of variation (CV), relative bias and relative root mean square errors.https://www.radioeng.cz/fulltexts/2020/20_01_0251_0258.pdfhuman brainintra-voxel incoherent motion (ivim)diffusionperfusionθ-teaching-learning-based optimization (θ-tlbo) |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
A. Ghassemi K. Kazemi S. Sefidbakht H. Danyali |
spellingShingle |
A. Ghassemi K. Kazemi S. Sefidbakht H. Danyali Reliable Estimation of the Intra-Voxel Incoherent Motion Parameters of Brain Diffusion Imaging Using θ-Teaching-Learning-Based Optimization Radioengineering human brain intra-voxel incoherent motion (ivim) diffusion perfusion θ-teaching-learning-based optimization (θ-tlbo) |
author_facet |
A. Ghassemi K. Kazemi S. Sefidbakht H. Danyali |
author_sort |
A. Ghassemi |
title |
Reliable Estimation of the Intra-Voxel Incoherent Motion Parameters of Brain Diffusion Imaging Using θ-Teaching-Learning-Based Optimization |
title_short |
Reliable Estimation of the Intra-Voxel Incoherent Motion Parameters of Brain Diffusion Imaging Using θ-Teaching-Learning-Based Optimization |
title_full |
Reliable Estimation of the Intra-Voxel Incoherent Motion Parameters of Brain Diffusion Imaging Using θ-Teaching-Learning-Based Optimization |
title_fullStr |
Reliable Estimation of the Intra-Voxel Incoherent Motion Parameters of Brain Diffusion Imaging Using θ-Teaching-Learning-Based Optimization |
title_full_unstemmed |
Reliable Estimation of the Intra-Voxel Incoherent Motion Parameters of Brain Diffusion Imaging Using θ-Teaching-Learning-Based Optimization |
title_sort |
reliable estimation of the intra-voxel incoherent motion parameters of brain diffusion imaging using θ-teaching-learning-based optimization |
publisher |
Spolecnost pro radioelektronicke inzenyrstvi |
series |
Radioengineering |
issn |
1210-2512 |
publishDate |
2020-04-01 |
description |
Intra-voxel incoherent motion (IVIM) imaging can characterize diffusion and perfusion of tissues. Traditionally, the least-square method has been used to determine IVIM parameters consisting of pure diffusion coefficient (D), pseudo-diffusion coefficient (D*) and the micro-vascular volume fraction (f). This paper proposes an accurate estimation method for IVIM parameters in human brain tissues using θ-teaching-learning-based-optimization (θ-TLBO). θ-TLBO as an evolutionary algorithm provides high quality solutions for parameter estimations in curve fitting problems. Evaluation of the proposed method was performed on simulated data with different levels of noise and experimental data. The estimated parameters were compared with the results of TLBO and three conventional algorithms: Segmented-Unconstrained (“SU”), Segmented-Constrained (“SC”) and “Full”. The results show that the proposed θ-TLBO has higher accuracy, precision and robustness than other methods in estimating parameters of simulated and experimental data in human brain images especially in low SNR images according to analysis of variance (ANOVA), coefficient of variation (CV), relative bias and relative root mean square errors. |
topic |
human brain intra-voxel incoherent motion (ivim) diffusion perfusion θ-teaching-learning-based optimization (θ-tlbo) |
url |
https://www.radioeng.cz/fulltexts/2020/20_01_0251_0258.pdf |
work_keys_str_mv |
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