Nervus: A Comprehensive Deep Learning Classification, Regression, and Prognostication Tool for both Medical Image and Clinical Data Analysis
The goal of our research is to create a comprehensive and flexible library that is easy to use for medical imaging research, and capable of handling grayscale images, multiple inputs (both images and tabular data), and multi-label tasks. We have named it Nervus. Based on the PyTorch library, which i...
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Zusammenfassung: | The goal of our research is to create a comprehensive and flexible library
that is easy to use for medical imaging research, and capable of handling
grayscale images, multiple inputs (both images and tabular data), and
multi-label tasks. We have named it Nervus. Based on the PyTorch library, which
is suitable for AI for research purposes, we created a four-part model to
handle comprehensive inputs and outputs. Nervus consists of four parts. First
is the dataloader, then the feature extractor, the feature mixer, and finally
the classifier. The dataloader preprocesses the input data, the feature
extractor extracts the features between the training data and ground truth
labels, feature mixer mixes the features of the extractors, and the classifier
classifies the input data from feature mixer based on the task. We have created
Nervus, which is a comprehensive and flexible model library that is easy to use
for medical imaging research which can handle grayscale images, multi-inputs
and multi-label tasks. This will be helpful for researchers in the field of
radiology. |
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DOI: | 10.48550/arxiv.2212.11113 |