PURPOSE: A generalised polynomial chaos (gPC) method is used to incorporate constitutive parameter uncertainties within the Pennes representation of bioheat transfer phenomena. The stochastic temperature predictions of the mathematical model are critically evaluated against MR thermometry data for planning MR-guided laser-induced thermal therapies (MRgLITT). METHODS: The Pennes bioheat transfer model coupled with a diffusion theory approximation of laser tissue interaction was implemented as the underlying deterministic kernel. A probabilistic sensitivity study was used to identify parameters that provide the most variance in temperature output. Confidence intervals of the temperature predictions are compared to MR temperature imaging (MRTI) obtained during phantom and in vivo canine (n = 4) MRgLITT experiments. The gPC predictions were quantitatively compared to MRTI data using probabilistic linear and temporal profiles as well as 2-D 60 °C isotherms. RESULTS: Optical parameters provided the highest variance in the model output (peak standard deviation: anisotropy 3.51 °C, absorption 2.94 °C, scattering 1.84 °C, conductivity 1.43 °C, and perfusion 0.94 °C). Further, within the statistical sense considered, a non-linear model of the temperature and damage-dependent perfusion, absorption, and scattering is captured within the confidence intervals of the linear gPC method. Multivariate stochastic model predictions using parameters with the dominant sensitivities show good agreement with experimental MRTI data. CONCLUSIONS: Given parameter uncertainties and mathematical modelling approximations of the Pennes bioheat model, the statistical framework demonstrates conservative estimates of the therapeutic heating and has potential for use as a computational prediction tool for thermal therapy planning.
PURPOSE: A generalised polynomial chaos (gPC) method is used to incorporate constitutive parameter uncertainties within the Pennes representation of bioheat transfer phenomena. The stochastic temperature predictions of the mathematical model are critically evaluated against MR thermometry data for planning MR-guided laser-induced thermal therapies (MRgLITT). METHODS: The Pennes bioheat transfer model coupled with a diffusion theory approximation of laser tissue interaction was implemented as the underlying deterministic kernel. A probabilistic sensitivity study was used to identify parameters that provide the most variance in temperature output. Confidence intervals of the temperature predictions are compared to MR temperature imaging (MRTI) obtained during phantom and in vivo canine (n = 4) MRgLITT experiments. The gPC predictions were quantitatively compared to MRTI data using probabilistic linear and temporal profiles as well as 2-D 60 °C isotherms. RESULTS: Optical parameters provided the highest variance in the model output (peak standard deviation: anisotropy 3.51 °C, absorption 2.94 °C, scattering 1.84 °C, conductivity 1.43 °C, and perfusion 0.94 °C). Further, within the statistical sense considered, a non-linear model of the temperature and damage-dependent perfusion, absorption, and scattering is captured within the confidence intervals of the linear gPC method. Multivariate stochastic model predictions using parameters with the dominant sensitivities show good agreement with experimental MRTI data. CONCLUSIONS: Given parameter uncertainties and mathematical modelling approximations of the Pennes bioheat model, the statistical framework demonstrates conservative estimates of the therapeutic heating and has potential for use as a computational prediction tool for thermal therapy planning.
Authors: Joshua P Yung; Anil Shetty; Andrew Elliott; Jeffrey S Weinberg; Roger J McNichols; Ashok Gowda; John D Hazle; R Jason Stafford Journal: Med Phys Date: 2010-10 Impact factor: 4.071
Authors: Alexandre Carpentier; Roger J McNichols; R Jason Stafford; Jean-Pierre Guichard; Daniel Reizine; Suzette Delaloge; Eric Vicaut; Didier Payen; Ashok Gowda; Bernard George Journal: Lasers Surg Med Date: 2011-11-22 Impact factor: 4.025
Authors: Alexandre Carpentier; Roger J McNichols; R Jason Stafford; Julian Itzcovitz; Jean-Pierre Guichard; Daniel Reizine; Suzette Delaloge; Eric Vicaut; Didier Payen; Ashok Gowda; Bernard George Journal: Neurosurgery Date: 2008-07 Impact factor: 4.654
Authors: Samuel John Fahrenholtz; Reza Madankan; Shabbar Danish; John D Hazle; R Jason Stafford; David Fuentes Journal: Int J Hyperthermia Date: 2017-05-19 Impact factor: 3.914
Authors: Jan Sebek; Steve Kramer; Rob Rocha; Kun-Chang Yu; Radoslav Bortel; Warren L Beard; David S Biller; David S Hodgson; Charan K Ganta; Henky Wibowo; John Yee; Renelle Myers; Stephen Lam; Punit Prakash Journal: ERJ Open Res Date: 2020-10-13
Authors: Samuel J Fahrenholtz; Tim Y Moon; Michael Franco; David Medina; Shabbar Danish; Ashok Gowda; Anil Shetty; Florian Maier; John D Hazle; Roger J Stafford; Tim Warburton; David Fuentes Journal: Int J Hyperthermia Date: 2015-09-14 Impact factor: 3.914