Search Results
Found 1 results
510(k) Data Aggregation
(232 days)
uOmnispace. CT is a software for viewing, manipulating, evaluating and analyzing medical images. It supports interpretation and evaluation of examinations within healthcare institutions. It has the following additions: -The uOmnispace. CT Colon Analysis application is intended to provide the user a tool to enable easy visualization and efficient evaluation of CT volume data sets of the colon. -The uOmnispace. CT Dental application is intended to provide the user a tool to reconstruct panoramic and paraxial views of jaw. -The uOmnispace. CT Lung Density Analysis application is intended to segment pulmonary, lobes, and airway, providing the user quantitative parameters, structure information to evaluate the lung and airway. -The uOmnispace.CT Lung Nodule application is intended to provide the user a tool for the review and analysis of thoracic CT images, providing quantitative and characterizing information about nodules in the lung in a single study, or over the time course of several thoracic studies. -The uOmnispace.CT Vessel Analysis application is intended to provide a tool for viewing, and evaluating CT vascular images. -The uOmnispace. CT Brain Perfusion is intended to calculate the parameters such as: CBV, CBF, etc. in order to analyze functional blood flow information about a region of interest (ROI) in brain. -The uOmnispace.CT Heart application is intended to segment heart and extract coronary artery. It also provides analysis of vascular stenosis, plaque and heart function. -The uOmnispace. CT Calcium Scoring application is intended to identify calcifications and calculate the calcium soore. -The uOmnispace. CT Dynamic Analysis application is intended to support visualization of the CT datasets over time with the 3D/4D display modes. -The uOmnispace.CT Bone Structure Analysis application is intended to provide visualization and labels for the ribs and spine, and support batch function for intervertebral disk. -The uOmnispace. CT Liver Evaluation application is intended to processing and visualization for liver segmentation and vessel extraction. It also provides a tool for the user to perform liver separation and residual liver segments evaluation. -The uOmnispace. CT Dual Energy is a post-processing software package that accepts UIH CT images acquired using different tube voltages and/or tube currents of the same anatomical location. The u0mnispace.CT Dual Energy application is intended to provide information on the chemical composition of the scanned body materials and/or contrast agents. Additionally, it enables images to be generated at multiple energies within the available spectrum. -The uOmnispace.CT Cardiovascular Combined Analysis is an image analysis software package for evaluating contrast enhanced CT images. The CT Cardiovascular Combined Analysis is intended to analyze vascular and cardiac structures. It can be used in the qualitative and quantitative for the analysis of head-neck, abdomen, multi-body part combined, TAVR (Transcatheter Aortic Valve Replacement) CT data as input for the planning of cardiovascular procedures.
The uOmnispace.CT is a post-processing software based on the uOmnispace platform for viewing, manipulating, evaluating and analyzing medical images, can run alone or with other advanced commercially cleared applications.
The provided text describes the performance data for three AI/ML algorithms integrated into the uOmnispace.CT software: Spine Labeling Algorithm, Rib Labeling Algorithm, and TAVR Analysis Algorithm.
Here's a breakdown of the acceptance criteria and study details for each:
1. Spine Labeling Algorithm
Acceptance Criteria Table:
Validation Type | Acceptance Criteria | Reported Device Performance | Meets Criteria? |
---|---|---|---|
Score based on ground truth | The average score of the proposed device results is higher than 4 points. | 5.0 points | Yes |
Study Proving Device Meets Acceptance Criteria:
- Sample Size for Test Set: 120 subjects.
- Data Provenance: Retrospective, with data collected from five major CT manufacturers (GE, Philips, Siemens, Toshiba, UIH). Clinical subgroups included U.S. (90 subjects) and Asia (30 subjects) for ethnicity.
- Number of Experts for Ground Truth: At least two licensed physicians with U.S. credentials.
- Qualifications of Experts: Licensed physicians with U.S. credentials.
- Adjudication Method: Ground truth annotations were made by "well-trained annotators" using an interactive tool to set annotation points and assign anatomical labels. All ground truth was finally evaluated by two licensed physicians with U.S. credentials. This suggests a post-annotation review/adjudication by experts.
- MRMC Comparative Effectiveness Study: No, this was a standalone performance evaluation of the algorithm against established ground truth.
- Standalone Performance: Yes, the performance of the algorithm itself was evaluated based on a scoring system against ground truth.
- Type of Ground Truth Used: Expert consensus (annotators + review by licensed physicians).
- Sample Size for Training Set: Not specified, but stated that "The training data used for the training of the spine labeling algorithm is independent of the data used to test the algorithm."
- How Ground Truth for Training Set was Established: Not specified beyond the implication that a ground truth process was followed for training data as well.
2. Rib Labeling Algorithm
Acceptance Criteria Table:
Validation Type | Acceptance Criteria | Reported Device Performance | Meets Criteria? |
---|---|---|---|
Score based on ground truth | The average score of the proposed device results is higher than 4 points. | 5.0 points | Yes |
Study Proving Device Meets Acceptance Criteria:
- Sample Size for Test Set: 120 subjects.
- Data Provenance: Retrospective, with data collected from five major CT manufacturers (GE, Philips, Siemens, Toshiba, UIH). Clinical subgroups included U.S. (80 subjects) and Asia (40 subjects) for ethnicity.
- Number of Experts for Ground Truth: At least two licensed physicians with U.S. credentials.
- Qualifications of Experts: Licensed physicians with U.S. credentials.
- Adjudication Method: Ground truth annotations were made by "well-trained annotators" using an interactive tool to generate initial rib masks, which were then refined, and anatomical labels assigned. After the first round, annotators "checked each other's annotation." Finally, all ground truth was evaluated by two licensed physicians with U.S. credentials. This indicates a multi-step adjudication process.
- MRMC Comparative Effectiveness Study: No, this was a standalone performance evaluation of the algorithm against established ground truth.
- Standalone Performance: Yes, the performance of the algorithm itself was evaluated based on a scoring system against ground truth.
- Type of Ground Truth Used: Expert consensus (annotators + cross-checking + review by licensed physicians).
- Sample Size for Training Set: Not specified, but stated that "The training data used for the training of the rib labeling algorithm is independent of the data used to test the algorithm."
- How Ground Truth for Training Set was Established: Not specified beyond the implication that a ground truth process was followed for training data as well.
3. TAVR Analysis Algorithm
Acceptance Criteria Table:
Validation Type | Acceptance Criteria | Reported Device Performance | Meets Criteria? |
---|---|---|---|
Verify the consistency with ground truth (Mean Landmark Error) | The mean landmark error between the proposed device results and ground truth is less than the threshold, 1 mm. | 0.86 mm | Yes |
Subjective Scoring of doctors with U.S. professional qualifications | The average score of the evaluation criteria is higher than 2. | 3 points | Yes |
Study Proving Device Meets Acceptance Criteria:
- Sample Size for Test Set: 60 subjects.
- Data Provenance: Retrospective. Clinical subgroups included Asia (25 subjects) and U.S. (35 subjects) for ethnicity, including data from U.S. Facility 1 (25 subjects) and U.S. Facility 2 (10 subjects).
- Number of Experts for Ground Truth: At least two licensed physicians with U.S. credentials for the final evaluation of the ground truth.
- Qualifications of Experts: Licensed physicians with U.S. credentials (specifically, "two MD with the American Board of Radiology Qualification" for the subjective scoring).
- Adjudication Method: Ground truth annotations were made by "well-trained annotators." After the first round of annotation, they "checked each other's annotation." Finally, all ground truth was evaluated by two licensed physicians with U.S. credentials. This indicates a multi-step adjudication process.
- MRMC Comparative Effectiveness Study: No, this was a standalone performance evaluation of the algorithm against established ground truth and subjective expert scoring.
- Standalone Performance: Yes, the performance of the algorithm itself was evaluated based on landmark error and subjective expert scoring.
- Type of Ground Truth Used: Expert consensus (annotators + cross-checking + review by licensed physicians).
- Sample Size for Training Set: Not specified, but stated that "The training data used for the training of the post-processing algorithm is independent of the data used to test the algorithm."
- How Ground Truth for Training Set was Established: Not specified beyond the implication that a ground truth process was followed for training data as well.
Ask a specific question about this device
Page 1 of 1