Supporting data for "Reliable interpretability of biology-inspired deep neural networks"
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<strong>Contents</strong> <em>data.tgz</em> contains all data necessary for reproducing the analysis in the manuscript. After cloning the GitHub repository, extract the contents of this file into folder <em>data</em>. The archive contains the following subfolders: <em>dtox</em><br> DTox results, one subfolder per seed <em>module_relevance.tsv</em>: contains node importance scores, with the following columns: (first, unnamed): compound identifier remaining columns: node identifiers (UniProt and Reactome IDs) <em>test_labels.csv</em>: predictions for the test set, with two columns: truth: true label (0 or 1) predicted: predicted label (decimal number between 0 and 1)<br> <em>mskimpact_[cancer type]_[experiment]</em><br> P-NET results using the MSK-IMPACT 2017 dataset, one subfolder per seed<br> [cancer type] is one of bc (breast cancer), cc (colorectal cancer), nsclc (non-small cell lung cancer), or pc (prostate cancer)<br> [experiment] is one of original (original setup) and shuffled (shuffled labels)<br> <em>pnet_[experiment]</em><br> P-NET results using the original (prostate cancer) dataset, one subfolder per seed<br> [experiment] is one of deterministic (deterministic input data), original (original setup), and shuffled (shuffled labels) <em>node_importance.csv</em>: contains node importance scores, with the following columns: (first, unnamed): node name coef: original node importance scores coef_graph: indegree plus outdegree of node coef_combined: adjusted node importance score (= coef / coef_graph if coef_graph > mean(coef_graph) + 5 sd(coef_graph) in the respective layer) coef_combined_zscore: scaled coef_combined coef_combined2: z(z(coef_graph) - z(coef)) layer: layer of the node <em>predictions_test.csv</em>: predictions for the test set, with the following columns: (first, unnamed): sample name pred: predicted class (unfortunately, encoded by a double 1.0 or 0.0) pred_scores: probability of the predicted class y: true class (encoded as integer 1 or 0) <em>predictions_train.csv</em>: predictions for the training set (same columns as above) <em>link_weights_[layer].csv</em>: only in subfolder 234_20080808; matrices with edge weights <strong>Changelog</strong> <em>v1.1.0 – 2023-06-28</em> added DTox results added results of P-NET experiments with MSK-IMPACT 2017 dataset <em>v1.0.0 – 2023-03-22</em> initial release
提供机构:
Fortelny, Nikolaus; Esser-Skala, Wolfgang
创建时间:
2023-03-22



