Us2.ai offers an advanced AI-driven software solution designed to fully automate the analysis and reporting of echocardiographic (heart ultrasound images. By leveraging machine learning, Us2.ai processes DICOM image data to generate comprehensive cardiac measurements and reports in approximately two minutes, significantly reducing the time and variability associated with manual analysis. This innovation enhances the efficiency and accuracy of cardiovascular diagnostics, enabling healthcare providers to deliver faster and more precise care to patients.
Key Features and Functionality:
- Complete Automation: Eliminates the need for manual frame selection, annotation, and view selection, providing a seamless AI-driven workflow.
- Comprehensive Analysis: Performs detailed quantitative assessments of cardiac structure and function, including measurements of left and right atrial and ventricular dimensions, volumes, and both systolic and diastolic functions.
- Strain Imaging: Automates global longitudinal strain (GLS quantification, aiding in the detection of heart failure and coronary artery disease.
- Aortic Stenosis Evaluation: Provides measurements aligned with the American Society of Echocardiography (ASE recommendations for assessing aortic stenosis severity.
- Integration with International Guidelines: Seamlessly incorporates reference guidelines into reports, covering all heart chambers and both 2D and Doppler views.
- Connectivity and Storage: Integrates with existing Picture Archiving and Communication Systems (PACS or utilizes the Us2.connect server for enterprise-wide storage and analysis.
Primary Value and User Benefits:
Us2.ai addresses the critical need for efficient, accurate, and standardized echocardiographic analysis in the detection and management of heart disease. By automating the entire process, the software reduces analysis time from up to an hour to just minutes, minimizes inter-operator variability, and enhances diagnostic precision. This allows healthcare providers to focus more on patient care and less on time-consuming manual measurements, ultimately improving patient outcomes and streamlining clinical workflows.