--- license: mit --- # 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: ```bash 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 classification - `chisquared`: Specifies Chi-squared as the training evaluation method - `rclticks=10`: Sets the number of RCL iterations during training to 10 - `boxdown=0`: Configuration parameter for training behavior - `data=C:\path\to\Lymphnode_Cancer_Biopsy_100k`: Path to the complete dataset for Lymphnode Cancer Biopsy classification - `testsize=0.1`: Specifies that 10% of the data should be used for testing - `savemodel=C:\path\to\models\mymodel.classify`: Path to save the resulting trained model - `log=C:\path\to\log_files`: Directory path for storing log files of the training process - `stopwhendone`: 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](https://github.com/basveeling/pcam). 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: 1. Veeling, B. S., Linmans, J., Winkens, J., Cohen, T., & Welling, M. (2018). Rotation Equivariant CNNs for Digital Pathology. arXiv preprint arXiv:1806.03962. 2. 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