共 16 条
Classification of Cardiac Adipose Tissue Using Spectral Analysis of Ultrasound Radiofrequency Backscatter
被引:2
作者:
Karlapalem, Akhila
[1
]
Givan, Amy H.
[2
]
Fernandez-del-Valle, Maria
[2
]
Fulton, Miranda R.
[1
]
Klingensmith, Jon D.
[1
]
机构:
[1] Southern Illinois Univ Edwardsville, Dept Elect Engn, Box 1801, Edwardsville, IL 62025 USA
[2] Southern Illinois Univ Edwardsville, Dept Appl Hlth, Box 1126, Edwardsville, IL 62025 USA
来源:
MEDICAL IMAGING 2019: ULTRASONIC IMAGING AND TOMOGRAPHY
|
2019年
/
10955卷
关键词:
CAT;
random forests;
ultrasound;
autoregressive;
spectral analysis;
ultrasound backscatter;
EPICARDIAL FAT;
D O I:
10.1117/12.2512972
中图分类号:
R318 [生物医学工程];
学科分类号:
0831 ;
摘要:
Cardiac Adipose Tissue (CAT) is a type of visceral fat that is deposited between the myocardium and pericardium. An increased volume of CAT has been recognized as a crucial contributor to cardiovascular and coronary artery diseases. This tissue is a metabolically active organ that affects the cardiac functioning by secreting inflammatory adipokines making it a hazard when present in excess amounts. Quantifying CAT, therefore, can be an important factor in understanding the level of cardiovascular risk. The study presented in this paper investigates the use of frequency content from echocardiography and spectral analysis techniques in differentiating three different cardiac tissue types, including the adipose tissue. Thirteen spectral parameters were computed from the power spectrum of the radio frequency data in three different bandwidth ranges, including 3, 6 and 20 dB. Autoregressive models of order 4 were used as they provide effective estimates of the power spectrum for short-time data. The derived spectral parameters were used in generating random forests for tissue classification. Out of the total 175 ROIs available, 70% of the data was divided into training data and the remaining used as test data. The random forest classifier with 50 classification trees resulted in an overall accuracy of 92.4%, sensitivity of 91.1%, specificity of 93.9%, and Youden's index of 0.85 for a 20dB bandwidth. This result demonstrates the potential of echocardiography and spectral analysis techniques in differentiating CAT, myocardium, and blood.
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