Characterization of high-intensity focused ultrasound (HIFU) systems using ex vivo tissues is an important part of the preclinical testing for new HIFU devices. In ex vivo characterization, the lesion volume produced by the absorption of HIFU energy is quantified as operational parameters are varied. This paper examines the three methods used for lesion-volume quantification: histology, magnetic resonance (MR) imaging, and numerical calculations. The methods were studied in the context of a clinically relevant problem for HIFU procedures—that of quantifying the change in the lesion volume with changing sonication time. The lesion volumes of sonicated samples of porcine liver were determined using the three methods, at focal intensities ranging from to and sonication times between 20 s and 40 s. It was found that histology consistently yielded lower lesion volumes than the other two methods, and the calculated values were below magnetic resonance imaging (MRI) at high applied energies. Still, the three methods agreed with each other to within a difference for all of the experiments. Increasing the sonication time produced much larger changes in the lesion volume than increasing the acoustic intensity, for the same total energy expenditure, at lower energy (less than 1000 J) levels. At higher energy levels, (around 1500 J), increasing the sonication time and increasing the intensity produced roughly the same change in the lesion volume for the same total energy expenditure.
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August 2010
Research Papers
HIFU Lesion Volume as a Function of Sonication Time, as Determined by MRI, Histology, and Computations
Subhashish Dasgupta,
Subhashish Dasgupta
Department of Mechanical Engineering,
University of Cincinnati
, Cincinnati, OH 45221
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Janaka Wansapura,
Janaka Wansapura
Department of X-Ray/Radiology,
Cincinnati Children’s Hospital Medical Center
, Cincinnati, OH 45229
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Prasanna Hariharan,
Prasanna Hariharan
Department of Mechanical Engineering,
University of Cincinnati
, Cincinnati, OH 45221; Division of Solid and Fluid Mechanics, Center for Devices and Radiological Health, U. S. Food and Drug Administration
, Silver Spring, MD 20993
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Ron Pratt,
Ron Pratt
Department of X-Ray/Radiology,
Cincinnati Children’s Hospital Medical Center
, Cincinnati, OH 45229
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David Witte,
David Witte
Department of Histopathology,
Cincinnati Children’s Hospital Medical Center
, Cincinnati, OH 45229
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Matthew R. Myers,
Matthew R. Myers
Division of Solid and Fluid Mechanics, Center for Devices and Radiological Health,
U. S. Food and Drug Administration
, Silver Spring, MD 20993
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Rupak K. Banerjee
Rupak K. Banerjee
Department of Mechanical Engineering and Department of Biomedical Engineering,
e-mail: rupak.banerjee@uc.edu
University of Cincinnati
, Cincinnati, OH 45221
Search for other works by this author on:
Subhashish Dasgupta
Department of Mechanical Engineering,
University of Cincinnati
, Cincinnati, OH 45221
Janaka Wansapura
Department of X-Ray/Radiology,
Cincinnati Children’s Hospital Medical Center
, Cincinnati, OH 45229
Prasanna Hariharan
Department of Mechanical Engineering,
University of Cincinnati
, Cincinnati, OH 45221; Division of Solid and Fluid Mechanics, Center for Devices and Radiological Health, U. S. Food and Drug Administration
, Silver Spring, MD 20993
Ron Pratt
Department of X-Ray/Radiology,
Cincinnati Children’s Hospital Medical Center
, Cincinnati, OH 45229
David Witte
Department of Histopathology,
Cincinnati Children’s Hospital Medical Center
, Cincinnati, OH 45229
Matthew R. Myers
Division of Solid and Fluid Mechanics, Center for Devices and Radiological Health,
U. S. Food and Drug Administration
, Silver Spring, MD 20993
Rupak K. Banerjee
Department of Mechanical Engineering and Department of Biomedical Engineering,
University of Cincinnati
, Cincinnati, OH 45221e-mail: rupak.banerjee@uc.edu
J Biomech Eng. Aug 2010, 132(8): 081005 (7 pages)
Published Online: June 15, 2010
Article history
Received:
July 4, 2009
Revised:
April 14, 2010
Posted:
May 11, 2010
Published:
June 15, 2010
Online:
June 15, 2010
Citation
Dasgupta, S., Wansapura, J., Hariharan, P., Pratt, R., Witte, D., Myers, M. R., and Banerjee, R. K. (June 15, 2010). "HIFU Lesion Volume as a Function of Sonication Time, as Determined by MRI, Histology, and Computations." ASME. J Biomech Eng. August 2010; 132(8): 081005. https://doi.org/10.1115/1.4001739
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