Abstract
Histopathological examination is an important criterion in the clinical diagnosis of osteosarcoma. With the improvement of hardware technology and computing power, pathological image analysis systems based on artificial intelligence have been widely used. However, classifying numerous intricate pathology images by hand is a tiresome task for pathologists. The lack of labeling data makes the system costly and difficult to build. This study constructs a classification assistance system (OHIcsA) based on active learning (AL) and a generative adversarial network (GAN). The system initially uses a small, labeled training set to train the classifier. Then, the most informative samples from the unlabeled images are selected for expert annotation. To retrain the network, the final chosen images are added to the initial labeled dataset. Experiments on real datasets show that our proposed method achieves high classification performance with an AUC value of 0.995 and an accuracy value of 0.989 using a small amount of labeled data. It reduces the cost of building a medical system. Clinical diagnosis can be aided by the system’s findings, which can also increase the effectiveness and verifiable accuracy of doctors.
Subject
Health Information Management,Health Informatics,Health Policy,Leadership and Management
Reference65 articles.
1. A medical assistant segmentation method for MRI images of osteosarcoma based on DecoupleSegNet;Wu;Int. J. Intell. Syst.,2022
2. Osteosarcoma;Eaton;Pediatr. Blood Cancer,2021
3. Liu, F., Gou, F., and Wu, J. An Attention-Preserving Network-Based Method for Assisted Segmentation of Osteosarcoma MRI Images. Mathematics, 2022. 10.
4. A Residual Fusion Network for Osteosarcoma MRI Image Segmentation in Developing Countries;Zhou;Comput. Intell. Neurosci.,2022
5. Rathore, R., and van Tine, B.A. Pathogenesis and Current Treatment of Osteosarcoma: Perspectives for Future Therapies. J. Clin. Med., 2021. 10.
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