Events Calendar

Mon
Tue
Wed
Thu
Fri
Sat
Sun
M
T
W
T
F
S
S
1
2
3
4
5
6
7
8
9
10
11
13
14
17
18
19
20
21
22
23
24
25
26
27
28
29
30
1
2
3
4
5
Drug Addiction and Rehabilitation Therapy
2021-11-12 - 2021-11-13    
All Day
Conference Series LLC Ltd is delighted to invite the Scientists, Physiotherapists, neurologists, Doctors, researchers & experts from the arena of Drug Addiction and Rehabilitation therapy, [...]
Drug Addiction and Rehabilitation Therapy
2021-11-12 - 2021-11-13    
All Day
This Rehabilitation 2021 Conference is based on the theme “Exploring latest Innovations in Drug Addiction and Rehabilitation”. Rehabilitation 2021, Singapore welcomes proposals and ideas from [...]
3D Printing and Additive Manufacturing
2021-11-15 - 2021-11-16    
All Day
DLP (Digital Light Processing) is a similar process to stereolithography in that it is a 3D printing process that works with photopolymers. The major difference [...]
Microfluidics and Bio-MEMS 2021
2021-11-16 - 2021-11-17    
All Day
Lab-on-a-chip (LOC) devices integrate and scale down laboratory functions and processes to a miniaturized chip format. Many LOC devices are used in a wide array [...]
Food Technology & Processing
2021-12-01 - 2021-12-02    
All Day
Food Technology 2021 scientific committee feels esteemed delight to invite participants from around the world to join us at 25th International Conference on Food Technology [...]
Events on 2021-11-15
Events on 2021-11-16
Events on 2021-12-01
Articles

Can a Generative AI Platform Improve Workflow Triage and Efficiency in Radiology?

Generative AI is revolutionizing radiology by easing cognitive burdens, optimizing triage processes, and boosting workflow efficiency. Solutions such as Viz Assist by Viz.ai demonstrate how multimodal AI technologies are increasingly essential in today’s clinical operations.

Transforming Radiology Workflows
Radiology departments frequently encounter delays due to time-consuming manual data extraction and scattered information sources. Viz Assist addresses this challenge by integrating generative AI with electronic health record (EHR) data and ambient listening to automatically generate patient history summaries. This removes the need for clinicians to manually review extensive data, enabling radiologists to concentrate more on diagnosis and clinical decision-making.

Enhanced Triage with Real-Time Insights
The platform’s autonomous AI agents analyze both structured and unstructured data to detect and highlight critical clinical signals. By identifying urgent cases and delivering timely alerts to radiologists, Viz Assist improves triage accuracy and accelerates response times. This real-time prioritization ensures patients with severe conditions receive prompt attention, reducing delays in care.

Minimizing Documentation Workload
A key benefit of Viz Assist is its ability to automate clinical documentation. Leveraging generative AI, the tool creates detailed summaries and can even provide coding suggestions, easing the administrative burden on clinicians. Over time, this automation boosts productivity, helps combat burnout, and enhances the consistency and accuracy of medical records.

A Constant Digital Expert
Peter Kan, M.D., Chair of Neurosurgery at the University of Texas Medical Branch, describes Viz Assist as a “virtual expert on staff” that continuously works behind the scenes to identify critical patients and coordinate care across teams. Operating around the clock and analyzing multimodal data streams, the platform significantly improves collaboration between radiology and other departments.

Looking Forward
As AI becomes more deeply integrated into healthcare, platforms like Viz Assist are poised to expand their roles beyond triage and documentation. Incorporating predictive analytics, advanced imaging interpretation, and personalized care planning could further optimize patient flow and ensure radiologists always have access to the most relevant data. Generative AI is evolving from an experimental technology to an essential clinical partner, reshaping the efficiency and accuracy of radiology practice.