Product

AI –POWERED PEDIATRIC ECHO-CARDIOGRAPH

Human expertise and clinical judgment are crucial for accurate diagnosis and patient management. AI-assisted cardiology, particularly in the context of pediatric cardiography, is gaining significant attention due to its potential to revolutionize cardiac diagnostics and timely patient care.

Pediatric Echo-Cardiography

NuRe FutureTech’s AI-Powered Pediatric Echo-Cardiography.

Nure FutureTech's AI-powered Pediatric Echo-Cardiography PEC leverages human-like cognitive algorithms to enhance decision-making by delivering precise insights, impactful interventions, and valuable contributions to diagnostics, treatment variability, patient care, and outcomes.

Pediatric Echo-Cardiography

Video & Image Analyses 

Nure FutureTech's AI-powered Pediatric Echo-Cardiography PEC leverages human-like cognitive algorithms to enhance decision-making by delivering precise insights, impactful interventions, and valuable contributions to diagnostics, treatment variability, patient care, and outcomes. 

Recognizes and interprets pediatric cardiography images (optimal and sub-optimal) and videos to identify patterns and features indicative of specific heart abnormalities.

Enables automatic detection and measurement of various cardiac parameters, such as chamber dimensions, wall thickness, ejection fraction, and blood flow velocities with computational and statistical algorithms to reduce inter-observer variability and improve efficiency.

Pediatric Echo-Cardiography

AI for Congenital Heart Disease

Multi-Role Alignment to streamline decision-making and actions across various roles and prioritize enterprise wide KPIs automatically.

Segmentation and Assessment of Cardiac Structures and Functions with medical images and videos.
Valuable information on the structural and functional assessment of a child’s heart.
Identification and isolation of heart chambers, valves, or blood vessels for detailed analysis.
Effective structural assessment which includes 2D ultrasound image quality, view classification, and detection of variances in heart structures.
NuRe FutureTech’s Competitive Dynamic

Deep Convolutional Neural Networking

Convolutional Neural Networks (CNNs) are deep learning algorithms that facilitate the processing and analyzing visual data, such as images and videos. The interpretation and validation of CNN –generated results work as an important tool to assist with imaging modalities and outcome prediction to augment the wide and varied expertise the physicians, skilled clinicians, pediatric cardiologists, and healthcare professionals bring to this effort. Given the heightened risk of arrhythmias and heart failure among patients with coronary heart (CHD), the potential of AI algorithms to predict these conditions holds immense potential as a life-saving tool. Early accurate detections can facilitate timely diagnosis of conditions like congenital heart diseases in neonates and infants, and in areas with limited or no access to quality diagnostics, an initial AI report can go a long way in helping a General Practitioner address the issue effectively and efficiently. In recent years, AI-based solutions in pediatric heart care have delivered significant benefits, including early detection of heart abnormalities, and timely interventions enabling non-cardiac doctors and general practitioners to create the Golden Hour for pediatric cardiologists to address potential issues.

AI for Congenital Heart Disease

1
Segmentation and Assessment

Segmentation and Assessment of Cardiac Structures and Functions with medical images and videos.

2
Valuable information

Valuable information on the structural and functional assessment of a child’s heart- right from the size, shape, and functioning of the heart, which is crucial in diagnosing and monitoring CHD patients.

 

3
Identification and isolation

Identification and isolation of heart chambers, valves, or blood vessels for detailed analysis.

 

4
Effective structural assessment

Effective structural assessment which includes 2D ultrasound image quality, view classification, and detection of variances in heart structures.

 

5
Risk stratification

Risk stratification to predict the risk and prognosis of CHD patients.

 

6
Pattern recognition

Pattern recognition using clinical, genetic, and imaging data of patients to study disease progression, treatment outcomes, or the likelihood of developing complications.

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