Average Co-Inventor Count = 6.90
ph-index = 7
The patent ph-index is calculated by counting the number of publications for which an author has been cited by other authors at least that same number of times.
Company Filing History:
1. Shenzhen Keya Medical Technology Corporation (15 from 37 patents)
2. Keya Medical Technology Co., Ltd. (3 from 7 patents)
3. Keyamed Na, Inc. (3 from 3 patents)
4. Beijing Keya Medical Technology Co., Ltd. (2 from 7 patents)
5. Beijing Curacloud Technology Co., Ltd. (2 from 3 patents)
25 patents:
1. 12327350 - Method and system for performing vessel segmentation in a medical image
2. 12094188 - Methods and systems for training learning network for medical image analysis
3. 12026877 - Device and method for pneumonia detection based on deep learning
4. 11847547 - Method and system for generating a centerline for an object, and computer readable medium
5. 11776149 - Prediction method for healthy radius of blood vessel path, prediction method for candidate stenosis of blood vessel path, and blood vessel stenosis degree prediction device
6. 11748879 - Method and system for intracerebral hemorrhage detection and segmentation based on a multi-task fully convolutional network
7. 11748902 - Method, device and system for generating a centerline for an object in an image
8. 11574122 - Method and system for joint named entity recognition and relation extraction using convolutional neural network
9. 11538161 - Systems and methods for determining blood vessel conditions
10. 11508460 - Method and system for anatomical tree structure analysis
11. 11494908 - Medical image analysis using navigation processing
12. 11462326 - Method and system for disease quantification modeling of anatomical tree structure
13. 11416994 - Method and system for detecting chest x-ray thoracic diseases utilizing multi-view multi-scale learning
14. 11308362 - Method and system for generating a centerline for an object, and computer readable medium
15. 11170504 - Method and system for intracerebral hemorrhage detection and segmentation based on a multi-task fully convolutional network