A survey of human-in-the-loop for machine learning
Abstract Machine learning has become the state-of-the-art technique for many tasks
including computer vision, natural language processing, speech processing tasks, etc …
including computer vision, natural language processing, speech processing tasks, etc …
Self-supervised learning methods and applications in medical imaging analysis: A survey
The scarcity of high-quality annotated medical imaging datasets is a major problem that
collides with machine learning applications in the field of medical imaging analysis and …
collides with machine learning applications in the field of medical imaging analysis and …
An overview of deep learning methods for multimodal medical data mining
Deep learning methods have achieved significant results in various fields. Due to the
success of these methods, many researchers have used deep learning algorithms in …
success of these methods, many researchers have used deep learning algorithms in …
Mitigating bias in radiology machine learning: 2. Model development
There are increasing concerns about the bias and fairness of artificial intelligence (AI)
models as they are put into clinical practice. Among the steps for implementing machine …
models as they are put into clinical practice. Among the steps for implementing machine …
Best of both worlds: Multimodal contrastive learning with tabular and imaging data
Medical datasets and especially biobanks, often contain extensive tabular data with rich
clinical information in addition to images. In practice, clinicians typically have less data, both …
clinical information in addition to images. In practice, clinicians typically have less data, both …
Multi-ConDoS: Multimodal contrastive domain sharing generative adversarial networks for self-supervised medical image segmentation
J Zhang, S Zhang, X Shen… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
Existing self-supervised medical image segmentation usually encounters the domain shift
problem (ie, the input distribution of pre-training is different from that of fine-tuning) and/or …
problem (ie, the input distribution of pre-training is different from that of fine-tuning) and/or …
Contig: Self-supervised multimodal contrastive learning for medical imaging with genetics
High annotation costs are a substantial bottleneck in applying modern deep learning
architectures to clinically relevant medical use cases, substantiating the need for novel …
architectures to clinically relevant medical use cases, substantiating the need for novel …
Imitate: Clinical prior guided hierarchical vision-language pre-training
In the field of medical Vision-Language Pretraining (VLP), significant efforts have been
devoted to deriving text and image features from both clinical reports and associated …
devoted to deriving text and image features from both clinical reports and associated …
Intra-and inter-slice contrastive learning for point supervised oct fluid segmentation
OCT fluid segmentation is a crucial task for diagnosis and therapy in ophthalmology. The
current convolutional neural networks (CNNs) supervised by pixel-wise annotated masks …
current convolutional neural networks (CNNs) supervised by pixel-wise annotated masks …
[HTML][HTML] Improved colorization and classification of intracranial tumor expanse in MRI images via hybrid scheme of Pix2Pix-cGANs and NASNet-large
M Mehmood, N Alshammari, SA Alanazi… - Journal of King Saud …, 2022 - Elsevier
Clinical image processing plays a significant role in healthcare systems and is a widely used
methodology of the current era. The Intracranial tumor affects children and adults as it is the …
methodology of the current era. The Intracranial tumor affects children and adults as it is the …