| Literature DB >> 26368014 |
Samuel J Fahrenholtz1,2, Tim Y Moon3, Michael Franco3, David Medina3, Shabbar Danish4, Ashok Gowda5, Anil Shetty5, Florian Maier1, John D Hazle1,2, Roger J Stafford1,2, Tim Warburton3, David Fuentes1,2.
Abstract
A cross-validation analysis evaluating computer model prediction accuracy for a priori planning magnetic resonance-guided laser-induced thermal therapy (MRgLITT) procedures in treating focal diseased brain tissue is presented. Two mathematical models are considered. (1) A spectral element discretisation of the transient Pennes bioheat transfer equation is implemented to predict the laser-induced heating in perfused tissue. (2) A closed-form algorithm for predicting the steady-state heat transfer from a linear superposition of analytic point source heating functions is also considered. Prediction accuracy is retrospectively evaluated via leave-one-out cross-validation (LOOCV). Modelling predictions are quantitatively evaluated in terms of a Dice similarity coefficient (DSC) between the simulated thermal dose and thermal dose information contained within N = 22 MR thermometry datasets. During LOOCV analysis, the transient model's DSC mean and median are 0.7323 and 0.8001 respectively, with 15 of 22 DSC values exceeding the success criterion of DSC ≥ 0.7. The steady-state model's DSC mean and median are 0.6431 and 0.6770 respectively, with 10 of 22 passing. A one-sample, one-sided Wilcoxon signed-rank test indicates that the transient finite element method model achieves the prediction success criteria, DSC ≥ 0.7, at a statistically significant level.Entities:
Keywords: Bioheat transfer; MR temperature imaging; graphics processing unit (GPU); laser induced thermal therapy
Mesh:
Year: 2015 PMID: 26368014 PMCID: PMC4904296 DOI: 10.3109/02656736.2015.1055831
Source DB: PubMed Journal: Int J Hyperthermia ISSN: 0265-6736 Impact factor: 3.914