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Deep learning methods for drug response prediction in cancer: Predominant and emerging trends
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A novel meta-analysis based on data augmentation and elastic data shared lasso regularization for gene expression
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DualGCN: a dual graph convolutional network model to predict cancer drug response
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DeepTTA: a transformer-based model for predicting cancer drug response
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Augmentation of Transcriptomic Data for Improved Classification of Patients with Respiratory Diseases of Viral Origin
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Artificial intelligence for drug response prediction in disease models.
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Predicting Cancer Drug Response In Vivo by Learning an Optimal Feature Selection of Tumour Molecular Profiles
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TGSA: protein-protein association-based twin graph neural networks for drug response prediction with similarity augmentation
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SWnet: a deep learning model for drug response prediction from cancer genomic signatures and compound chemical structures
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Looking at the BiG picture: Incorporating bipartite graphs in drug response prediction
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Converting tabular data into images for deep learning with convolutional neural networks
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A cross-study analysis of drug response prediction in cancer cell lines
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Drug Sensitivity Prediction From Cell Line-Based Pharmacogenomics Data: Guidelines for Developing Machine Learning Models
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Graph Convolutional Network for Drug Response Prediction Using Gene Expression Data
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Deep generative neural network for accurate drug response imputation
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Deep learning prediction of BRAF-RAS gene expression signature identifies noninvasive follicular thyroid neoplasms with papillary-like nuclear features
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Network-based drug sensitivity prediction
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Learning curves for drug response prediction in cancer cell lines
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Measuring Domain Shift for Deep Learning in Histopathology
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Enhanced Co-Expression Extrapolation (COXEN) Gene Selection Method for Building Anti-Cancer Drug Response Prediction Models
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Patient-Derived Tumor Xenograft Models: Toward the Establishment of Precision Cancer Medicine
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DeepCDR: a hybrid graph convolutional network for predicting cancer drug response
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Machine learning approaches to drug response prediction: challenges and recent progress
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Ensemble transfer learning for the prediction of anti-cancer drug response
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Systematic Establishment of Robustness and Standards in Patient-Derived Xenograft Experiments and Analysis
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Pathway-guided deep neural network toward interpretable and predictive modeling of drug sensitivity
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Applications of patient-derived tumor xenograft models and tumor organoids
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Pathomic Fusion: An Integrated Framework for Fusing Histopathology and Genomic Features for Cancer Diagnosis and Prognosis
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Deep learning of pharmacogenomics resources: moving towards precision oncology
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Faculty Opinions recommendation of QuPath: Open source software for digital pathology image analysis.
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A Constructive Prediction of the Generalization Error Across Scales
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A survey on Image Data Augmentation for Deep Learning
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PDXGEM: patient-derived tumor xenograft-based gene expression model for predicting clinical response to anticancer therapy in cancer patients
34
Deep learning with multimodal representation for pancancer prognosis prediction
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Dr.VAE: improving drug response prediction via modeling of drug perturbation effects
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Integrative Pharmacogenomics Analysis of Patient Derived Xenografts
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LightGBM: A Highly Efficient Gradient Boosting Decision Tree
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Deep Learning Scaling is Predictable, Empirically
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Predicting cancer outcomes from histology and genomics using convolutional networks
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A Next Generation Connectivity Map: L1000 Platform and the First 1,000,000 Profiles
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QuPath: Open source software for digital pathology image analysis
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COSMIC: somatic cancer genetics at high-resolution
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Xception: Deep Learning with Depthwise Separable Convolutions
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RECIST 1.1-Update and clarification: From the RECIST committee.
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High-throughput screening using patient-derived tumor xenografts to predict clinical trial drug response
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The challenge of intratumour heterogeneity in precision medicine
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A community effort to assess and improve drug sensitivity prediction algorithms
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Cancer heterogeneity: implications for targeted therapeutics
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Inhibition of MEK and PI3K/mTOR Suppresses Tumor Growth but Does Not Cause Tumor Regression in Patient-Derived Xenografts of RAS-Mutant Colorectal Carcinomas
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Leakage in data mining: formulation, detection, and avoidance
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The COXEN principle: translating signatures of in vitro chemosensitivity into tools for clinical outcome prediction and drug discovery in cancer.
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ImageNet: A large-scale hierarchical image database
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Color Transfer between Images
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GAN-Based Data Augmentation for Prediction Improvement Using Gene Expression Data in Cancer
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OUP accepted manuscript
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Groen D, de Mulatier C, Paszynski M, Krzhizhanovskaya VV, Dongarra JJ, Sloot PMA, editors
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jamesdolezal/slideflow: Slideflow 1.0 - Official Public Release
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Availble online at: http:// citebay.com/how-to-cite/light-gradient-boosting-machine/ 25
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A large-scale hierarchical image database