A comprehensive method for automated multi-organ segmentation based on deep fully convolutional networks and adversarial training, achieving superior results compared to existing techniques.
Improvements in medical imaging technology
Integration into AI-based diagnostic systems
Enhancements in research applications requiring organ segmentation
Utilizes fully convolutional networks and adversarial training
Offers a fully automated system, reducing the need for human intervention
Provides superior results, as demonstrated by high Dice metrics
Problems Solved:
*Solves the problem of time-consuming and error-prone manual multi-organ segmentation
*Improves upon the accuracy limitations of existing automated methods
This technology offers a fully-automatic method for multi-chamber segmentation, utilizing deep fully convolutional networks and adversarial training. The system was successfully tested on 20 echocardiograms from 100 patients for training and validation, outperforming state-of-the-art techniques with significantly improved Dice metrics.
Country | Type | Number | Dated | Case |
United States Of America | Published Application | 2021-001288 | 01/14/2021 | 2020-303 |