Abstract
Globally, obesity is on the rise. According to the world health organization over 300 million people in the world are obese. India is the third most obese country in the world. It is noteworthy that 30 million people are obese in India alone. If a person's body weight is 20% higher than normal, it means he is obese. People who are obese are at a much higher risk of developing many severe ailments than normal or healthy weight. Visceral adipose tissue (VAT) quantity and subcutaneous adipose tissue (SAT) (volume) is generally higher for those with obesity. Hence, developing a computer vision-based fully automated visceral and subcutaneous adipose tissue segmentation and quantification system is an urgent research problem. This can be very useful for physicians to predict a wide variety of highly absurd diseases earlier. In this research, a fully automated hybrid deep learning framework has been developed to optimize VAT and SAT segmentation from non-contrast abdominal MRI images. The texture layer is included in traditional convolutional neural network architecture for CNN hybridization to improve classification performance and reduce computational cost. This will reduce the unwanted iteration which takes place during feature learning, which further reduces the computational complexity and unwanted memory requirements of the traditional CNN model. Back-propagation algorithms are generally used to train CNN, which unnecessarily consumes a lot of time to train the model. This research has developed an improved back-propagation algorithm to reduce unwanted training time. The performance of the proposed method is evaluated using mean absolute error (MAE), mean square error (MSE), and root mean square error (RMSE). Experimental results make it clear that the performance of the proposed VAT segmentation system is better than state-of-the-art methods.
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Devi, B.S., Misbha, D.S. Hybrid convolutional neural network based segmentation of visceral and subcutaneous adipose tissue from abdominal magnetic resonance images. J Ambient Intell Human Comput 14, 13333–13347 (2023). https://doi.org/10.1007/s12652-022-03787-z
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DOI: https://doi.org/10.1007/s12652-022-03787-z