InferRead DR Chest

JSON twin: https://www.healthaidb.com/software/inferread-dr-chest.json

Company Name

Infervision

Product URL

https://www.infervision.com/products/inferread-dr-chest

Company URL

https://www.infervision.com

Categories

Summary

InferRead DR Chest is an AI-powered software developed by Infervision to assist in the detection of multiple chest abnormalities from X-ray images, including tuberculosis, fractures, and pleural effusion.

Description

InferRead DR Chest is a computer-aided diagnostic software designed to analyze chest X-ray images and evaluate the probability of various chest abnormalities, such as tuberculosis, fractures, pleural effusion, and pneumothorax. It integrates with standard reading environments like PACS, RIS, and CIS, and can be deployed locally on dedicated hardware or virtualized environments. The software processes images automatically upon acquisition or on-demand, providing results within 3 to 10 seconds. It is CE marked and intended to assist physicians in diagnosis, not to make diagnoses independently.

Api Available

unknown

Certifications

Company Founding

2016

Company Offices

Compliance

Customers

Data Residency

On-prem deployment or cloud hosting with region choices; supports local (customer) on-prem hosting and cloud multi-region options

Data Standards

Deployment Model

Features

Id

SW0712

Integration Partners

Integrations

Languages Supported

Last Updated

2025-10-11

License

commercial

Market Segment

Optional Modules

Os Platforms

Pricing Details

Contact vendor for pricing information.

Pricing Model

subscription

Privacy Features

Product Code

SW0712

Product Name

InferRead DR Chest

Ratings

Regions Available

Related Urls

Release Year

Security Features

Specialties

Support Channels

System Requirements

Browser-based client; on-prem server deployment supported (PACS connectivity, DICOM store/SCU), cloud-hosted option available

Target Users

Training Options

Type

product

User Reviews

Version

1.0

Alternatives

See related products

Canonical JSON