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Mortality in the United States, 2019.
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Training confounder-free deep learning models for medical applications
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External Evaluation of 3 Commercial Artificial Intelligence Algorithms for Independent Assessment of Screening Mammograms.
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Assessing the (Un)Trustworthiness of Saliency Maps for Localizing Abnormalities in Medical Imaging
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Noise or Signal: The Role of Image Backgrounds in Object Recognition
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Mitigating Gender Bias in Captioning Systems
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Evaluation of Combined Artificial Intelligence and Radiologist Assessment to Interpret Screening Mammograms
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Changes in cancer detection and false-positive recall in mammography using artificial intelligence: a retrospective, multireader study.
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Stratified Rule-Aware Network for Abstract Visual Reasoning
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Concept whitening for interpretable image recognition
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Making deep neural networks right for the right scientific reasons by interacting with their explanations
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International evaluation of an AI system for breast cancer screening
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Towards Interpretable Object Detection by Unfolding Latent Structures
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Association Between Surgical Skin Markings in Dermoscopic Images and Diagnostic Performance of a Deep Learning Convolutional Neural Network for Melanoma Recognition.
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Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening
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Convolutional Neural Networks for Radiologic Images: A Radiologist's Guide.
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Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead
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Deep learning predicts hip fracture using confounding patient and healthcare variables
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Sanity Checks for Saliency Maps
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Variable generalization performance of a deep learning model to detect pneumonia in chest radiographs: A cross-sectional study
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This looks like that: deep learning for interpretable image recognition
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DeepMiner: Discovering Interpretable Representations for Mammogram Classification and Explanation
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Breast lesion shape and margin evaluation: BI-RADS based metrics understate radiologists' actual levels of agreement
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Removing Confounding Factors Associated Weights in Deep Neural Networks Improves the Prediction Accuracy for Healthcare Applications
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ICADx: interpretable computer aided diagnosis of breast masses
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Context Augmentation for Convolutional Neural Networks
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Grad-CAM++: Generalized Gradient-Based Visual Explanations for Deep Convolutional Networks
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Learning Multi-attention Convolutional Neural Network for Fine-Grained Image Recognition
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Look Closer to See Better: Recurrent Attention Convolutional Neural Network for Fine-Grained Image Recognition
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Robust arbitrary view gait recognition based on parametric 3D human body reconstruction and virtual posture synthesis
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A data augmentation methodology for training machine/deep learning gait recognition algorithms
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Grad-CAM: Visual Explanations from Deep Networks via Gradient-Based Localization
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Learning Deep Features for Discriminative Localization
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Diagnostic Accuracy of Digital Screening Mammography With and Without Computer-Aided Detection.
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External validation of a publicly available computer assisted diagnostic tool for mammographic mass lesions with two high prevalence research datasets.
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Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification
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Very Deep Convolutional Networks for Large-Scale Image Recognition
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Fast Implementation of DeLong’s Algorithm for Comparing the Areas Under Correlated Receiver Operating Characteristic Curves
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A Convolutional Neural Network for Modelling Sentences
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Evaluation of clinical breast MR imaging performed with prototype computer-aided diagnosis breast MR imaging workstation: reader study.
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Optimal Breast Biopsy Decision-Making Based on Mammographic Features and Demographic Factors
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Breast imaging reporting and data system lexicon for US: interobserver agreement for assessment of breast masses.
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ImageNet: A large-scale hierarchical image database
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Probabilistic computer model developed from clinical data in national mammography database format to classify mammographic findings.
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Anniversary paper: History and status of CAD and quantitative image analysis: the role of Medical Physics and AAPM.
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The prediction of breast cancer biopsy outcomes using two CAD approaches that both emphasize an intelligible decision process.
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Observer Agreement Using the ACR Breast Imaging Reporting and Data System (BI-RADS)-Ultrasound, First Edition (2003)
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BI-RADS lexicon for US and mammography: interobserver variability and positive predictive value.
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A case-based training system in radiology-senology
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Case-based reasoning computer algorithm that uses mammographic findings for breast biopsy decisions.
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BI-RADS categorization as a predictor of malignancy.
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Breast imaging reporting and data system standardized mammography lexicon: observer variability in lesion description.
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MacRad: Radiology Image Resource with a Case-Based Retrieval System
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Comparing the areas under two or more correlated receiver operating characteristic curves: a nonparametric approach.
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An application of hierarchical kappa-type statistics in the assessment of majority agreement among multiple observers.
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A cross sectional study
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added value for the inexperienced breast radiologist
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FDA Guidance on Clinical Decision Support: Peering Inside the Black Box of Algorithmic Intelligence. https://www.chilmarkresearch.com/fda-guidance-clinical-decision-support/, December 2017
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peering inside the black box of algorithmic intelligence
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Grad-CAM: Why did you say that? Visual Explanations from Deep Networks via Gradient-based Localization
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Breast imaging reporting and data system (BI-RADS) lexicon for breast MRI: interobserver variability in the description and assignment of BI-RADS category.
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Acr bi-rads® mammography. ACR BI-RADS® atlas, breast imaging reporting and data
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Breast Imaging Reporting and Data System Lexicon for US: Interobserver Agreement for Assessment of Breast Masses
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The Nonparametric Approach
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Computer-aided Diagnosis of Intracranial Aneurysms in Mra Images with Case-based Reasoning
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Extended Data Fig. 5 | A comparison of explanations. We compare explanations from two common saliency methods