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VUNO Med®-LungCT AI™
VUNO Med®-LungCT AI™
VUNO
It detects and quantifies pulmonary nodules, providing size, volume, nodule type, location, calcification, and spiculation. An automatic report based on the calculated Lung-RADS category is produced to assist in managing pulmonary nodules. Its follow-up registration and nodule matching aid the comparison of serial CT scans. Operation settings can be customized between sensitivity-oriented for high-risk patients and specificity-oriented for efficient screening.
Information source:
Vendor
Last updated:
July 12, 2020
General Information
Technical Specifications
Regulatory
Market
Evidence
General Information
General
Product name
VUNO Med®-LungCT AI™
Company
VUNO
Subspeciality
Chest
Modality
CT
Disease targeted
Lung Cancer
Key-features
Nodule detection, Nodule measurement, Nodule classification, Lung-RADS reporting
Suggested use
Before: adapting worklist order
During: perception aid (prompting all abnormalities/results/heatmaps), interactive decision support (shows abnormalities/results only on demand), report suggestion
Technical Specifications
Data characteristics
Population
All lung cancer screening population
Input
Low-dose Lung CT Scan
Input format
DICOM
Output
List of detected nodules, Nodule diameter/volume, Nodule types, Nodule growth
Output format
DICOM, PDF
Technology
Integration
Integration in standard reading environment (PACS), Integration via AI marketplace or distribution platform, Stand-alone third party application, Stand-alone webbased
Deployment
Locally on dedicated hardware, Locally virtualized (virtual machine, docker), Cloud-based, Hybrid solution
Trigger for analysis
Automatically, right after the image acquisition
Processing time
10 - 60 seconds
Regulatory
Certification
CE
Certified, Class IIa
, MDD
FDA
No or not yet
Intended Use Statements
Intended use (according to CE)
Market
Market presence
On market since
06-2020
Distribution channels
Countries present (clinical, non-research use)
10+
Paying clinical customers (institutes)
Research/test users (institutes)
Pricing
Pricing model
Pay-per-use
Based on
Number of analyses
Evidence
Evidence
Peer reviewed papers on performance
Non-peer reviewed papers on performance
Other relevant papers
Deep Learning Algorithm for Reducing CT Slice Thickness: Effect on Reproducibility of Radiomic Features in Lung Cancer
(read)
Residual CNN-based Image Super-Resolution for CT Slice Thickness Reduction using Paired CT Scans: Preliminary Clinical Validation
(read)
A Deep Learning-based CAD that Can Reduce False Negative Reports: A Preliminary Study in Health Screening Center
(read)