Border Sensitive Network in Weakly Supervised Thyroid Nodule Detection for Ultrasound Image

Author(s):  
Luo Tao ◽  
Tong Xu ◽  
Jian Yu ◽  
Xuewei Li ◽  
Xi Wei ◽  
...  
Author(s):  
Eystratios G. Keramidas ◽  
Dimitris K. Iakovidis ◽  
Dimitris Maroulis ◽  
Stavros Karkanis

2019 ◽  
Vol 56 (24) ◽  
pp. 241003
Author(s):  
郑斌 Zheng Bin ◽  
杨晨 Yang Chen ◽  
马小萍 Ma Xiaoping ◽  
刘立波 Liu Libo

2020 ◽  
pp. 1-16
Author(s):  
Ling Zhang ◽  
Yan Zhuang ◽  
Zhan Hua ◽  
Lin Han ◽  
Cheng Li ◽  
...  

BACKGROUND: Thyroid ultrasonography is widely used to diagnose thyroid nodules in clinics. Automatic localization of nodules can promote the development of intelligent thyroid diagnosis and reduce workload of radiologists. However, besides the ultrasound image has low contrast and high noise, the thyroid nodules are diverse in shape and vary greatly in size. Thus, thyroid nodule detection in ultrasound images is still a challenging task. OBJECTIVE: This study proposes an automatic detection algorithm to locate nodules in B ultrasound images and Doppler ultrasound images. This method can be used to screen thyroid nodules and provide a basis for subsequent automatic segmentation and intelligent diagnosis. METHODS: We develop and optimize an improved YOLOV3 model for detecting thyroid nodules in ultrasound images with B-mode and Doppler mode. Improvements include (1) using the high-resolution network (HRNet) as the basic network for gradually extracting high-level semantic features to reduce the missed detection and misdetection, (2) optimizing the loss function for single target detection like nodules, and (3) obtaining the anchor boxes by clustering the candidate frames of real nodules in the dataset. RESULTS: The experimental results of applying to 8000 clinical ultrasound images show that the new method developed and tested in this study can effectively detect thyroid nodules. The method achieves 94.53% mean precision and 95.00% mean recall. CONCLUTIONS: The study demonstrates a new automated method that enables to achieve high detection accuracy and effectively locate thyroid nodules in various ultrasound images without any user interaction, which indicates its potential clinical application value for the thyroid nodule screening.


2020 ◽  
Vol 122 ◽  
pp. 103871
Author(s):  
Fatemeh Abdolali ◽  
Jeevesh Kapur ◽  
Jacob L. Jaremko ◽  
Michelle Noga ◽  
Abhilash R. Hareendranathan ◽  
...  

Measurement ◽  
2014 ◽  
Vol 47 ◽  
pp. 861-868 ◽  
Author(s):  
Ahmet Alkan ◽  
Seda Arslan Tuncer ◽  
Mucahid Gunay

Author(s):  
Nayana R. Shenoy ◽  
Anand Jatti

<p><span id="docs-internal-guid-cea63826-7fff-8080-83de-ad2ba4604953"><span>Thyroid nodule are fluid or solid lump that are formed within human’s gland and most thyroid nodule doesn’t show any symptom or any sign; moreover there are certain percentage of thyroid gland are cancerous and which could lead human into critical situation up to death. Hence, it is one of the important type of cancer and also it is important for detection of cancer. Ultrasound imaging is widely popular and frequently used tool for diagnosing thyroid cancer, however considering the wide application in clinical area such estimating size, shape and position of thyroid cancer. Further, it is important to design automatic and absolute segmentation for better detection and efficient diagnosis based on US-image. Segmentation of thyroid gland from the ultrasound image is quiet challenging task due to inhomogeneous structure and similar existence of intestine. Thyroid nodule can appear anywhere and have any kind of contrast, shape and size, hence segmentation process needs to designed carefully; several researcher have worked in designing the segmentation mechanism, however most of them were either semi-automatic or lack with performance metric, however it was suggested that U-Net possesses great accuracy. Hence, in this paper, we proposed improvised U-Net which focuses on shortcoming of U-Net, the main aim of this research work is to find the probable Region of interest and segment further. Furthermore, we develop High level and low-level feature map to avoid the low-resolution problem and information; later we develop dropout layer for further optimization. Moreover proposed model is evaluated considering the important metrics such as accuracy, Dice Coefficient, AUC, F1-measure and true positive; our proposed model performs better than the existing model. </span></span></p>


2020 ◽  
Vol 5 ◽  
pp. 8-8
Author(s):  
Young Jun Chai ◽  
Junho Song ◽  
Mohammad Shaear ◽  
Ka Hee Yi

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