AI-Rad Companion (Pulmonary) is AI-powered software that analyzes chest CT scans to help radiologists and clinicians identify and measure lung structures and lesions. It segments lungs and lung lobes, detects lung nodules, compares current images to prior scans for lesion follow-up, and quantifies pulmonary density. These features support the clinical assessment and monitoring of lung diseases, improving workflow efficiency and diagnostic accuracy.
syngo.CT Extended Functionality is a software package that provides advanced visualization and measurement tools for medical images acquired from CT and potentially other modalities like MRI. It helps technicians and physicians perform qualitative and quantitative analysis of clinical imaging data to assist in diagnosis by creating detailed images and measurements using various specialized extensions.
HealthOST is an AI-powered image processing software that analyzes CT scans of the spine to help clinicians detect and assess musculoskeletal diseases in patients aged 50 and older. It labels vertebrae, measures vertebral height loss, and calculates bone density using Hounsfield Units, providing quantitative data to aid diagnosis and treatment planning without replacing clinical judgment.
syngo.CT Extended Functionality is a software suite from Siemens that provides advanced visualization tools for CT and possibly MRI medical images. It helps technicians and physicians perform qualitative and quantitative measurements, facilitates advanced clinical evaluations using various extensions, and supports processing to aid in diagnosis.
Al-Rad Companion (Pulmonary) is an AI-powered software by Siemens that processes CT images of the lungs to assist clinicians in quantitatively and qualitatively analyzing lung diseases. It segments lungs and lobes, detects lung lesions and areas of abnormal tissue density, and provides measurements to support radiologists and physicians in emergency, specialty, and general care settings. This helps streamline and improve lung disease evaluation.
VIDA|vision is an interactive imaging software that helps physicians analyze CT scans of the lungs. It uses deep learning algorithms to automatically segment lung regions and provides detailed quantitative analyses to assist in diagnosing and monitoring lung diseases such as lung cancer, COPD, and asthma. This software reconstructs two-dimensional CT images into 3D views and generates detailed reports, streamlining the workflow and reducing manual effort for clinicians.
Hepatic VCAR is a medical software designed to assist clinicians in analyzing liver CT scans by providing automated and editable 3D segmentation of the liver, liver lesions, and hepatic artery. It uses deep learning algorithms to improve accuracy, helping to assess liver morphology and changes over time, thereby facilitating faster and more precise liver evaluations.
Al-Rad Companion (Musculoskeletal) is AI-powered software designed to analyze CT images of the spine. It supports clinicians by automatically segmenting and labeling vertebrae, measuring vertebral heights, and calculating the mean Hounsfield unit values within vertebrae, aiding in musculoskeletal disease evaluation and assessment.
Broncholab is a software tool that helps doctors analyze CT scans of the lungs by providing detailed quantitative information about lung volume, airway volume, lung density, and other pulmonary tissue characteristics. It assists in the diagnosis and follow-up of lung abnormalities by creating 3D models and measurements from CT images, supporting clinical decision-making.
AI-Rad Companion (Cardiovascular) is an AI-powered software that analyzes previously acquired CT chest images to segment the heart and aorta, quantify coronary calcium, and measure aortic diameters. It assists clinicians by providing quantitative and qualitative cardiovascular assessments to support diagnosis and evaluation in emergency, specialty, and general practice care.
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