Detecting and Analyzing Easy to miss Lung Nodules on Low-Dose Chest CT with Imaging Artificial Intelligence.
Efficiently diagnose with awareness of patient conditions.
Finding microscopic nodules provides a variety of information, including basic, number of nodules, size and status, and RADS category. Findings that are likely to develop into lung cancer can also be checked in advance, reducing working time and allowing efficient reading depending on the case. Microscopic Nodule Detection: Providing Comprehensive Information on Number of Nodules, Size, Status, and RADS Category Early Detection of Potential Lung Cancer Development Enables Time-efficient Scans Reading.
Follow up mode
Automated Matching of Follow-up with Previous Lung CT Scans Instantly Assess Nodule Changes.
Monitoring Nodule Growth is Vital for Accurate Readings.
It autonomously assesses growth and changes by matching lung nodules, going beyond mere image comparisons.
aview LCS efficiently classifies lung nodules into the relevant categories according to the Lung CT Screening Reporting and Data System (Lung-RADS ver 1.1) guidelines as recommended by the American College of Radiology.
Clinical Viewer
User-Friendly Viewer for Medical Professionals and Patients.
Advanced 3D Rendering of Patient’s Lung.
2D Images May Not Provide Adequate Information of Abnormal Findings Visualized 3D Model of Patient’s Lung is much more informative and intuitive. Abnormal findings can be easily explained by demonstration of the 3D Model.