A study on liver tumor detection from an ultrasound image using deep learning

Author(s):  
Takahiro Nakashima ◽  
Issei Tsutsumi ◽  
Hiroki Takami ◽  
Keisuke Doman ◽  
Yoshito Mekada ◽  
...  
Sensors ◽  
2021 ◽  
Vol 21 (8) ◽  
pp. 2629
Author(s):  
Kunkyu Lee ◽  
Min Kim ◽  
Changhyun Lim ◽  
Tai-Kyong Song

Point-of-care ultrasound (POCUS), realized by recent developments in portable ultrasound imaging systems for prompt diagnosis and treatment, has become a major tool in accidents or emergencies. Concomitantly, the number of untrained/unskilled staff not familiar with the operation of the ultrasound system for diagnosis is increasing. By providing an imaging guide to assist clinical decisions and support diagnosis, the risk brought by inexperienced users can be managed. Recently, deep learning has been employed to guide users in ultrasound scanning and diagnosis. However, in a cloud-based ultrasonic artificial intelligence system, the use of POCUS is limited due to information security, network integrity, and significant energy consumption. To address this, we propose (1) a structure that simultaneously provides ultrasound imaging and a mobile device-based ultrasound image guide using deep learning, and (2) a reverse scan conversion (RSC) method for building an ultrasound training dataset to increase the accuracy of the deep learning model. Experimental results show that the proposed structure can achieve ultrasound imaging and deep learning simultaneously at a maximum rate of 42.9 frames per second, and that the RSC method improves the image classification accuracy by more than 3%.


Author(s):  
Tariq Sadad ◽  
Amjad Rehman ◽  
Asim Munir ◽  
Tanzila Saba ◽  
Usman Tariq ◽  
...  

Author(s):  
Stojan Trajanovski ◽  
Caifeng Shan ◽  
Pim J.C. Weijtmans ◽  
Susan G. Brouwer de Koning ◽  
Theo J. M. Ruers

1993 ◽  
Vol 28 (9) ◽  
pp. 838-844 ◽  
Author(s):  
Andreas Sachse ◽  
Jens U. Leike ◽  
Georg L. RÖling ◽  
Susanne E. Wagner ◽  
Werner Krause

Brain tumor detection from MRI images is a challenging process due to high diversity in the tumor pixels of different peoples. Automatic detection has got wide spread acclaim because the manual detection by experts is time consuming and prone to error in judgment. Due to its high mortality rate, detection of tumor automatically is a new emerging technique in bio medical imaging. Here we present a review of few methods from simple thresholding to advanced deep learning methods for segmentation of tumor from MRI data. The segmentation of tumor methods is classified to image segmentation using gray level processing, machine learning and deep learning. The results of various methods are compared to find the best methods available. As medical imaging methods have improving day by day this review will help to understand emerging trends in brain tumor detection.


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