Products
Companies
News
About
About
FAQ
Contact
Contact
Newsletter
×
Subscribe to our monthly newsletter
Subscribe
Products
JBS-01K
JBS-01K
JLK Inc.
JBS-01K is an AI medical system that diagnoses a subtype of ischemic stroke using patient’s MR image and atrial fibrillation (AF) information. This system performs lesion detection and TOAST (Trial of ORG 10172 in Acute Stroke Treatment) classification of ischemic stroke using 3D hybrid artificial neural networks. JBS-01K provides classification probabilities by analyzing input MR images of 4 sequences (DWI, FLAIR, T1, T2) and clinical information data.
Information source:
Vendor
Last updated:
July 1, 2020
General Information
Technical Specifications
Regulatory
Market
Evidence
General Information
General
Product name
JBS-01K
Company
JLK Inc.
Subspeciality
Neuro
Modality
MR
Disease targeted
Stroke
Key-features
Lesion detection, ischemic stroke subclassification
Suggested use
During: perception aid (prompting all abnormalities/results/heatmaps), report suggestion
Technical Specifications
Data characteristics
Population
all brain MR
Input
DWI: compulsory, Fluid attenuated inversion recovery (FLAIR), T1-weighted image, T2-weighted image
Input format
DICOM, JPG
Output
Heatmap overlay, probability of stroke subtype
Output format
Technology
Integration
Stand-alone third party application, Stand-alone webbased
Deployment
Locally on dedicated hardware, Cloud-based, Hybrid solution
Trigger for analysis
On demand, triggered by a user through e.g. a button click, image upload, etc.
Processing time
3 - 10 seconds
Regulatory
Certification
CE
Certified, Class I
, MDD
FDA
No or not yet
Intended Use Statements
Intended use (according to CE)
Market
Market presence
On market since
04-2019
Distribution channels
Countries present (clinical, non-research use)
4
Paying clinical customers (institutes)
Research/test users (institutes)
Pricing
Pricing model
Pay-per-use, Subscription
Based on
Number of users, Number of installations
Evidence
Evidence
Peer reviewed papers on performance
Non-peer reviewed papers on performance
Other relevant papers