Affiliation:
1. Academy of Scientific & Innovative Research (AcSIR), Ghaziabad 201002, India
2. CSIR-Central Scientific Instruments Organisation, Chandigarh 160030, India
3. School of Computing Technologies, RMIT University, Melbourne, VIC 3000, Australia
4. Oral Health Sciences Centre, Post Graduate Institute of Medical Education & Research (PGIMER), Chandigarh 160012, India
Abstract
Deep semi-supervised learning (DSSL) is a machine learning paradigm that blends supervised and unsupervised learning techniques to improve the performance of various models in computer vision tasks. Medical image classification plays a crucial role in disease diagnosis, treatment planning, and patient care. However, obtaining labeled medical image data is often expensive and time-consuming for medical practitioners, leading to limited labeled datasets. DSSL techniques aim to address this challenge, particularly in various medical image tasks, to improve model generalization and performance. DSSL models leverage both the labeled information, which provides explicit supervision, and the unlabeled data, which can provide additional information about the underlying data distribution. That offers a practical solution to resource-intensive demands of data annotation, and enhances the model’s ability to generalize across diverse and previously unseen data landscapes. The present study provides a critical review of various DSSL approaches and their effectiveness and challenges in enhancing medical image classification tasks. The study categorized DSSL techniques into six classes: consistency regularization method, deep adversarial method, pseudo-learning method, graph-based method, multi-label method, and hybrid method. Further, a comparative analysis of performance for six considered methods is conducted using existing studies. The referenced studies have employed metrics such as accuracy, sensitivity, specificity, AUC-ROC, and F1 score to evaluate the performance of DSSL methods on different medical image datasets. Additionally, challenges of the datasets, such as heterogeneity, limited labeled data, and model interpretability, were discussed and highlighted in the context of DSSL for medical image classification. The current review provides future directions and considerations to researchers to further address the challenges and take full advantage of these methods in clinical practices.
Reference261 articles.
1. Sidey-Gibbons, J.A., and Sidey-Gibbons, C.J. (2019). Machine learning in medicine: A practical introduction. BMC Med. Res. Methodol., 19.
2. Deep learning applications in medical image analysis;Ker;IEEE Access,2017
3. The Role of generative adversarial network in medical image analysis: An in-depth survey;AlAmir;ACM Comput. Surv.,2022
4. GANs for medical image analysis;Kazeminia;Artif. Intell. Med.,2020
5. Solatidehkordi, Z., and Zualkernan, I. (2022). Survey on recent trends in medical image classification using semi-supervised learning. Appl. Sci., 12.