Nick has done an amazing job developing a variety of machine learning algorithms in the context of breast imaging. Nick's next step will be a postdoc at UNC Chapel Hill, where he will continue working on machine learning.
Nick has done an amazing job developing a variety of machine learning algorithms in the context of breast imaging. Nick's next step will be a postdoc at UNC Chapel Hill, where he will continue working on machine learning.
Just published in Nature Scientific Data.
We're happy to publicly release another medical imaging dataset: Duke University Cervical Spine MRI Segmentation Dataset (CSpineSeg). Here are some details:
Just published in Nature Scientific Data.
We're happy to publicly release another medical imaging dataset: Duke University Cervical Spine MRI Segmentation Dataset (CSpineSeg). Here are some details:
The paper discusses the use of foundation models in the context of image registration.
The paper discusses the use of foundation models in the context of image registration.
We evaluated various fine-tuning algorithms using 17 medical imaging datasets, with both task-specific fine-tuning and self-supervised learning.
We evaluated various fine-tuning algorithms using 17 medical imaging datasets, with both task-specific fine-tuning and self-supervised learning.
Introducing Fréchet Radiomic Distance (FRD): A Versatile Metric for Comparing Medical Imaging Datasets, led by
@nickkonz.bsky.social and Richard Osuala.
Our paper can be found at arxiv.org/abs/2412.01496, and you can easily compute FRD yourself with our code at github.com/RichardObi/f...
Introducing Fréchet Radiomic Distance (FRD): A Versatile Metric for Comparing Medical Imaging Datasets, led by
@nickkonz.bsky.social and Richard Osuala.
Our paper can be found at arxiv.org/abs/2412.01496, and you can easily compute FRD yourself with our code at github.com/RichardObi/f...