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Lymphnode Cancer Biopsy Dataset (100k)
Overview
This dataset contains biopsy images of lymphnode cancer tissues, divided into two classes: benign and malignant. Each sample is stored in a separate image file, organized into respective class folders. The dataset is structured to be compatible with Lumina AI's Random Contrast Learning (RCL) algorithm via the PrismRCL application or API.
Dataset Structure
The dataset is organized into the following structure:
{dataset_folder_name}/
train_data/
benign/
sample_0.png
sample_1.png
...
malignant/
sample_0.png
sample_1.png
...
test_data/
benign/
sample_0.png
sample_1.png
...
malignant/
sample_0.png
sample_1.png
...
Note: All image file names must be unique across all class folders.
Features
- Image Data: Each file contains a biopsy image of lymphnode cancer tissue.
- Classes: There are two classes, each represented by a separate folder based on the type of tissue (benign or malignant).
Usage (not pre-split)
Here is an example of how to load the dataset using PrismRCL:
C:\PrismRCL\PrismRCL.exe chisquared rclticks=10 boxdown=0 data=C:\path\to\Lymphnode_Cancer_Biopsy_100k testsize=0.1 savemodel=C:\path\to\models\mymodel.classify log=C:\path\to\log_files stopwhendone
Explanation of Command:
C:\PrismRCL\PrismRCL.exe
: Path to the PrismRCL executable for classificationchisquared
: Specifies Chi-squared as the training evaluation methodrclticks=10
: Sets the number of RCL iterations during training to 10boxdown=0
: Configuration parameter for training behaviordata=C:\path\to\Lymphnode_Cancer_Biopsy_100k
: Path to the complete dataset for Lymphnode Cancer Biopsy classificationtestsize=0.1
: Specifies that 10% of the data should be used for testingsavemodel=C:\path\to\models\mymodel.classify
: Path to save the resulting trained modellog=C:\path\to\log_files
: Directory path for storing log files of the training processstopwhendone
: Instructs PrismRCL to end the session once training is complete
License
This dataset is licensed under the Creative Commons Attribution 4.0 International License. See the LICENSE file for more details.
Original Source
This dataset was originally sourced from the GitHub Repository. Please cite the original source if you use this dataset in your research or applications.
Additional Information
The data values have been prepared to ensure compatibility with PrismRCL. No normalization is required as of version 2.4.0.
Citations
If you use this dataset in your research, please cite the following papers:
Veeling, B. S., Linmans, J., Winkens, J., Cohen, T., & Welling, M. (2018). Rotation Equivariant CNNs for Digital Pathology. arXiv preprint arXiv:1806.03962.
Ehteshami Bejnordi, B., Veta, M., Johannes van Diest, P., van Ginneken, B., Karssemeijer, N., Litjens, G., ... & the CAMELYON16 Consortium. (2017). Diagnostic Assessment of Deep Learning Algorithms for Detection of Lymph Node Metastases in Women With Breast Cancer. JAMA, 318(22), 2199–2210. https://doi.org/10.1001/jama.2017.14585
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