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POD–Kalman filtering for improving noninvasive 3D temperature monitoring in MR‐guided hyperthermia

BACKGROUND: During resonance frequency (RF) hyperthermia treatment, the temperature of the tumor tissue is elevated to the range of 39–44°C. Accurate temperature monitoring is essential to guide treatments and ensure precise heat delivery and treatment quality. Magnetic resonance (MR) thermometry is...

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Autores principales: VilasBoas‐Ribeiro, Iva, Nouwens, Sven A.N., Curto, Sergio, de Jager, Bram, Franckena, Martine, van Rhoon, Gerard C., Heemels, W. P. M. H., Paulides, Margarethus M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9545729/
https://www.ncbi.nlm.nih.gov/pubmed/35717578
http://dx.doi.org/10.1002/mp.15811
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author VilasBoas‐Ribeiro, Iva
Nouwens, Sven A.N.
Curto, Sergio
de Jager, Bram
Franckena, Martine
van Rhoon, Gerard C.
Heemels, W. P. M. H.
Paulides, Margarethus M.
author_facet VilasBoas‐Ribeiro, Iva
Nouwens, Sven A.N.
Curto, Sergio
de Jager, Bram
Franckena, Martine
van Rhoon, Gerard C.
Heemels, W. P. M. H.
Paulides, Margarethus M.
author_sort VilasBoas‐Ribeiro, Iva
collection PubMed
description BACKGROUND: During resonance frequency (RF) hyperthermia treatment, the temperature of the tumor tissue is elevated to the range of 39–44°C. Accurate temperature monitoring is essential to guide treatments and ensure precise heat delivery and treatment quality. Magnetic resonance (MR) thermometry is currently the only clinical method to measure temperature noninvasively in a volume during treatment. However, several studies have shown that this approach is not always sufficiently accurate for thermal dosimetry in areas with motion, such as the pelvic region. Model‐based temperature estimation is a promising approach to correct and supplement 3D online temperature estimation in regions where MR thermometry is unreliable or cannot be measured. However, complete 3D temperature modeling of the pelvic region is too complex for online usage. PURPOSE: This study aimed to evaluate the use of proper orthogonal decomposition (POD) model reduction combined with Kalman filtering to improve temperature estimation using MR thermometry. Furthermore, we assessed the benefit of this method using data from hyperthermia treatment where there were limited and unreliable MR thermometry measurements. METHODS: The performance of POD–Kalman filtering was evaluated in several heating experiments and for data from patients treated for locally advanced cervical cancer. For each method, we evaluated the mean absolute error (MAE) concerning the temperature measurements acquired by the thermal probes, and we assessed the reproducibility and consistency using the standard deviation of error (SDE). Furthermore, three patient groups were defined according to susceptibility artifacts caused by the level of intestinal gas motion to assess if the POD–Kalman filtering could compensate for missing and unreliable MR thermometry measurements. RESULTS: First, we showed that this method is beneficial and reproducible in phantom experiments. Second, we demonstrated that the combined method improved the match between temperature prediction and temperature acquired by intraluminal thermometry for patients treated for locally advanced cervical cancer. Considering all patients, the POD–Kalman filter improved MAE by 43% (filtered MR thermometry = 1.29°C, POD–Kalman filtered temperature = 0.74°C). Moreover, the SDE was improved by 47% (filtered MR thermometry = 1.16°C, POD–Kalman filtered temperature = 0.61°C). Specifically, the POD–Kalman filter reduced the MAE by approximately 60% in patients whose MR thermometry was unreliable because of the great amount of susceptibilities caused by the high level of intestinal gas motion. CONCLUSIONS: We showed that the POD–Kalman filter significantly improved the accuracy of temperature monitoring compared to MR thermometry in heating experiments and hyperthermia treatments. The results demonstrated that POD–Kalman filtering can improve thermal dosimetry during RF hyperthermia treatment, especially when MR thermometry is inaccurate.
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spelling pubmed-95457292022-10-14 POD–Kalman filtering for improving noninvasive 3D temperature monitoring in MR‐guided hyperthermia VilasBoas‐Ribeiro, Iva Nouwens, Sven A.N. Curto, Sergio de Jager, Bram Franckena, Martine van Rhoon, Gerard C. Heemels, W. P. M. H. Paulides, Margarethus M. Med Phys THERAPEUTIC INTERVENTIONS BACKGROUND: During resonance frequency (RF) hyperthermia treatment, the temperature of the tumor tissue is elevated to the range of 39–44°C. Accurate temperature monitoring is essential to guide treatments and ensure precise heat delivery and treatment quality. Magnetic resonance (MR) thermometry is currently the only clinical method to measure temperature noninvasively in a volume during treatment. However, several studies have shown that this approach is not always sufficiently accurate for thermal dosimetry in areas with motion, such as the pelvic region. Model‐based temperature estimation is a promising approach to correct and supplement 3D online temperature estimation in regions where MR thermometry is unreliable or cannot be measured. However, complete 3D temperature modeling of the pelvic region is too complex for online usage. PURPOSE: This study aimed to evaluate the use of proper orthogonal decomposition (POD) model reduction combined with Kalman filtering to improve temperature estimation using MR thermometry. Furthermore, we assessed the benefit of this method using data from hyperthermia treatment where there were limited and unreliable MR thermometry measurements. METHODS: The performance of POD–Kalman filtering was evaluated in several heating experiments and for data from patients treated for locally advanced cervical cancer. For each method, we evaluated the mean absolute error (MAE) concerning the temperature measurements acquired by the thermal probes, and we assessed the reproducibility and consistency using the standard deviation of error (SDE). Furthermore, three patient groups were defined according to susceptibility artifacts caused by the level of intestinal gas motion to assess if the POD–Kalman filtering could compensate for missing and unreliable MR thermometry measurements. RESULTS: First, we showed that this method is beneficial and reproducible in phantom experiments. Second, we demonstrated that the combined method improved the match between temperature prediction and temperature acquired by intraluminal thermometry for patients treated for locally advanced cervical cancer. Considering all patients, the POD–Kalman filter improved MAE by 43% (filtered MR thermometry = 1.29°C, POD–Kalman filtered temperature = 0.74°C). Moreover, the SDE was improved by 47% (filtered MR thermometry = 1.16°C, POD–Kalman filtered temperature = 0.61°C). Specifically, the POD–Kalman filter reduced the MAE by approximately 60% in patients whose MR thermometry was unreliable because of the great amount of susceptibilities caused by the high level of intestinal gas motion. CONCLUSIONS: We showed that the POD–Kalman filter significantly improved the accuracy of temperature monitoring compared to MR thermometry in heating experiments and hyperthermia treatments. The results demonstrated that POD–Kalman filtering can improve thermal dosimetry during RF hyperthermia treatment, especially when MR thermometry is inaccurate. John Wiley and Sons Inc. 2022-06-26 2022-08 /pmc/articles/PMC9545729/ /pubmed/35717578 http://dx.doi.org/10.1002/mp.15811 Text en © 2022 The Authors. Medical Physics published by Wiley Periodicals LLC on behalf of American Association of Physicists in Medicine. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle THERAPEUTIC INTERVENTIONS
VilasBoas‐Ribeiro, Iva
Nouwens, Sven A.N.
Curto, Sergio
de Jager, Bram
Franckena, Martine
van Rhoon, Gerard C.
Heemels, W. P. M. H.
Paulides, Margarethus M.
POD–Kalman filtering for improving noninvasive 3D temperature monitoring in MR‐guided hyperthermia
title POD–Kalman filtering for improving noninvasive 3D temperature monitoring in MR‐guided hyperthermia
title_full POD–Kalman filtering for improving noninvasive 3D temperature monitoring in MR‐guided hyperthermia
title_fullStr POD–Kalman filtering for improving noninvasive 3D temperature monitoring in MR‐guided hyperthermia
title_full_unstemmed POD–Kalman filtering for improving noninvasive 3D temperature monitoring in MR‐guided hyperthermia
title_short POD–Kalman filtering for improving noninvasive 3D temperature monitoring in MR‐guided hyperthermia
title_sort pod–kalman filtering for improving noninvasive 3d temperature monitoring in mr‐guided hyperthermia
topic THERAPEUTIC INTERVENTIONS
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9545729/
https://www.ncbi.nlm.nih.gov/pubmed/35717578
http://dx.doi.org/10.1002/mp.15811
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