Back issue
Content of Technical Papers in our journal
Published in last 1 year | In last 2 years | In last 3 years | All
Please wait a minute...
For Selected: Toggle Thumbnails
The Leap from Digitalization to Intelligentization of Medical Digital Ultrasonic Imaging Workstations
Yande Zhang, DBA, Yanjun Cheng, MBME, Yingxin Li, MCS, Shengli Li, MM
Advanced Ultrasound in Diagnosis and Therapy    0, (): 305-312.  
Abstract111)   HTML19)    PDF(pc) (834KB)(123)    PDF(mobile) (333KB)(1)    Save

This paper begins with the medical digital ultrasonic imaging workstations' development history and stages of PACS (Picture Archiving and Communication Systems). We analyze the actual application scenarios and pain points in medical digital ultrasonic imaging and introduce the support of medical digital ultrasonic imaging workstations for the entire business process. At the same time, we explain the role of AI functions in promoting business improvements throughout the process, using Shenzhen Maternal and Child Health Hospital as an application case study. This paper also discusses the difficulties faced by the development of AI in medical digital ultrasonic imaging and provides some solutions and suggestions. We offer a perspective on the future development of artificial intelligence in medical digital ultrasonic imaging. We explore potential application scenarios in areas such as empowering the ultrasound process with intelligent management, ultrasound consultation, cloud-based electronic films, and the Internet of Things (IoT) services.

Table and Figures | Reference | Related Articles | Metrics
The Impact of Deep Learning on Ultrasound in Diagnosis and Therapy: Enhancing Clinical Decision Support, Workflow Efficiency, Quantification, Image Registration, and Real-time Assistance
Won-Chul Bang, PhD, Vice President, Yeong Kyeong Seong, PhD, Jinyong Lee
Advanced Ultrasound in Diagnosis and Therapy    2023, 7 (2): 204-216.  
Abstract177)   HTML8)    PDF(pc) (11598KB)(81)       Save

This review article introduces the main concepts and architectures of deep learning networks for medical imaging tasks, such as classification, detection, segmentation, and generation. It then surveys how deep learning has been applied to ultrasound imaging for various purposes, such as image processing, diagnosis, and workflow enhancement. It covers different organs and body parts that can be imaged by ultrasound, such as liver, breast, thyroid, heart, kidney, prostate, nerve, muscle, and fetus. It also discusses how deep learning can help with view recognition, registration, and quantification, measurement, image registration for interventional guidance, and real-time assistance while scanning. Moreover, it explores how generative AI can be used in the future medical field by leveraging deep learning for ultrasound imaging, such as generating realistic and diverse images, virtual organs/patients with diseases, synthesizing missing or corrupted data and augmenting existing data for training and testing.

Table and Figures | Reference | Related Articles | Metrics
Intel® oneAPI Base Toolkit Helps SonoScape Optimize the Performance of Its S-Fetus 4.0 Obstetric Screening Assistant
Intel; Naizhang Feng, Guoyi Zhou
Advanced Ultrasound in Diagnosis and Therapy    2022, 6 (4): 238-244.  
Abstract274)   HTML10)    PDF(pc) (823KB)(493)       Save
Table and Figures | Reference | Related Articles | Metrics
Diagnosis And Management of Carotid Atherosclerosis with 3D Duplex Ultrasonography
Muhammad Hasan, MBBCh , RPVI , RVT , RDCS , RDMS
Advanced Ultrasound in Diagnosis and Therapy    2022, 6 (4): 245-246.  
Abstract235)   HTML4)    PDF(pc) (348KB)(445)       Save
Reference | Related Articles | Metrics
Automated Cardiac Measurements
Isabella Braun, Matthias Friedrichs, Sean Lucas, Hendrik Wiebel
Advanced Ultrasound in Diagnosis and Therapy    2022, 6 (4): 247-248.  
Abstract196)   HTML2)    PDF(pc) (340KB)(328)       Save
Table and Figures | Reference | Related Articles | Metrics
  First page | Prev page | Next page | Last page Page 1 of 1, 5 records  

Open Access, Peer-reviewed

ISSN 2576-2516 (Online)

ISSN 2576-2508 (Print)

AnnouncementMore
Top 10 DownloadsMore
Top 10 ClicksMore
DownloadMore
LinksMore