Influence of temperature variations on the entropy and correlation of the Grey-Level Co-occurrence Matrix from B-Mode images.

In this work, the feasibility of texture parameters extracted from B-Mode images were explored in quantifying medium temperature variation. The goal is to understand how parameters obtained from the gray-level content can be used to improve the actual state-of-the-art methods for non-invasive temperature estimation (NITE). B-Mode images were collected from a tissue mimic phantom heated in a water bath. The phantom is a mixture of water, glycerin, agar-agar and graphite powder. This mixture aims to have similar acoustical properties to in vivo muscle. Images from the phantom were collected using an ultrasound system that has a mechanical sector transducer working at 3.5 MHz. Three temperature curves were collected, and variations between 27 and 44 degrees C during 60 min were allowed. Two parameters (correlation and entropy) were determined from Grey-Level Co-occurrence Matrix (GLCM) extracted from image, and then assessed for non-invasive temperature estimation. Entropy values were capable of identifying variations of 2.0 degrees C. Besides, it was possible to quantify variations from normal human body temperature (37 degrees C) to critical values, as 41 degrees C. In contrast, despite correlation parameter values (obtained from GLCM) presented a correlation coefficient of 0.84 with temperature variation, the high dispersion of values limited the temperature assessment.

[1]  Tryphon T. Georgiou,et al.  Noninvasive estimation of tissue temperature via high-resolution spectral analysis techniques , 2005, IEEE Transactions on Biomedical Engineering.

[2]  H. Fukukita,et al.  Ultrasound thermometry in hyperthermia , 1990, IEEE Symposium on Ultrasonics.

[3]  R. M. Arthur,et al.  Non-invasive estimation of hyperthermia temperatures with ultrasound , 2005, International journal of hyperthermia : the official journal of European Society for Hyperthermic Oncology, North American Hyperthermia Group.

[4]  B. Garra,et al.  Improving the Distinction between Benign and Malignant Breast Lesions: The Value of Sonographic Texture Analysis , 1993 .

[5]  Abdulrahman Al-Janobi,et al.  Performance evaluation of cross-diagonal texture matrix method of texture analysis , 2001, Pattern Recognit..

[6]  Eduardo G Moros,et al.  Noninvasive temperature estimation based on the energy of backscattered ultrasound. , 2003, Medical physics.

[8]  António E. Ruano,et al.  A Soft-Computing Methodology for Noninvasive Time-Spatial Temperature Estimation , 2008, IEEE Transactions on Biomedical Engineering.

[9]  P. VanBaren,et al.  Two-dimensional temperature estimation using diagnostic ultrasound , 1998, IEEE Transactions on Ultrasonics, Ferroelectrics and Frequency Control.

[10]  M. Abolhassani,et al.  Noninvasive Temperature Estimation Using Sonographic Digital Images , 2007, Journal of ultrasound in medicine : official journal of the American Institute of Ultrasound in Medicine.