Datasets corresponding to "Real-time intelligent classification of COVID-19 and thrombosis via massive image-based analysis of platelet aggregates"
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https://zenodo.org/record/6825003
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资源简介:
Datasets corresponding to "Real-time intelligent classification of COVID-19 and thrombosis via massive image-based analysis of platelet aggregates"
Please find below an explanation for the files in this repository:
DiseaseClassifPaper_Dataset_01.7z, DiseaseClassifPaper_Dataset_02.7z
Experimental data. To reproduce the analyses, unzip both files and put the content into a folder called "Dataset"
02_CNN_PhenotypeClassif.7z
CNN Phenotype classification. Model was trained using AIDeveloper. using manually labelled data. Labelled Data is contained in folder "03_GatedData". The AIDeveloper session file in "02_Model\M10_Nitta6l_32pix_8class_meta.xlsx" shows, which files correspond to which subpopulation. The final model "M10_Nitta6l_32pix_8class_448.model" and corresponding .pb files are also located in that folder.
03_ExampleMeasurement.zip
One measurement file and a corresponding scatterplot
04_Dataset_load.zip
The python script "03_ExtractFeatures.py" loads the list of available experiment files (01_Dataset_Table_v02.csv). The experiment files are contained in DiseaseClassifPaper_Dataset_01.7z, DiseaseClassifPaper_Dataset_02.7z. The scrip then evaluates each experiment file to obtain distribution parameters for Area and Solidity. These values are written to new "01_Dataset_Table_v03.csv".
05_RF_training
Scripts to train and evaluate the Random Forest model (using features contained in "01_Dataset_Table_v03.csv").
07_pytranskit
Scripts for training and evaluating CDT-PLDA classifier
创建时间:
2022-08-03



