Applying interpretable deep learning models to identify chronic cough patients using EHR data
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Kun Huang | Paul R. Dexter | Vladimir Turzhitsky | Vishal Bali | Wei Shao | Vasu Chandrasekaran | Priyanka Gandhi | Xiao Luo | Zuoyi Zhang | Zhi Han | Anna R. Roberts | Megan Metzger | Jarod Baker | Carmen La Rosa | Jessica Weaver | P. Dexter | Zhi Han | Kun Huang | Wei Shao | V. Turzhitsky | Jarod Baker | Zuoyi Zhang | V. Bali | A. Roberts | M. Metzger | J. Weaver | C. L. Rosa | P. Gandhi | Xiao Luo | V. Chandrasekaran
[1] M. Schatz,et al. Prevalence and Characteristics of Chronic Cough in Adults Identified by Administrative Data. , 2020, The Permanente journal.
[2] Jingcheng Du,et al. Deep Representation Learning of Patient Data from Electronic Health Records (EHR): A Systematic Review , 2020, J. Biomed. Informatics.
[3] Flávio Henrique Batista De Souza,et al. Prediction of Surgical Risk in General Surgeries: Process Optimization Through Support Vector Machine (SVM) Algorithm , 2020, Infection Control & Hospital Epidemiology.
[4] I. Pavord,et al. Design and rationale of two phase 3 randomised controlled trials (COUGH-1 and COUGH-2) of gefapixant, a P2X3 receptor antagonist, in refractory or unexplained chronic cough , 2020, ERJ Open Research.
[5] Syed Ahmad Chan Bukhari,et al. Correction to: A hybrid machine learning framework to predict mortality in paralytic ileus patients using electronic health records (EHRs) , 2020, Journal of Ambient Intelligence and Humanized Computing.
[6] Ziqian Xie,et al. Med-BERT: pretrained contextualized embeddings on large-scale structured electronic health records for disease prediction , 2020, npj Digital Medicine.
[7] Jiang Bian,et al. Explainable artificial intelligence models using real-world electronic health record data: a systematic scoping review , 2020, J. Am. Medical Informatics Assoc..
[8] O. Hardiman,et al. Prediction of caregiver burden in amyotrophic lateral sclerosis: a machine learning approach using random forests applied to a cohort study , 2020, BMJ Open.
[9] Jason Alan Fries,et al. Language models are an effective representation learning technique for electronic health record data , 2020, J. Biomed. Informatics.
[10] Scott L. Zeger,et al. Clinical risk prediction with random forests for survival, longitudinal, and multivariate (RF-SLAM) data analysis , 2019, BMC Medical Research Methodology.
[11] Xiuwen Liu,et al. Biomedical word sense disambiguation with bidirectional long short-term memory and attention-based neural networks , 2019, BMC Bioinformatics.
[12] Muhammad Ghulam,et al. Self-attention based recurrent convolutional neural network for disease prediction using healthcare data , 2019, Comput. Methods Programs Biomed..
[13] Hsuan-Chia Yang,et al. Development of Deep Learning Algorithm for Detection of Colorectal Cancer in EHR Data , 2019, MedInfo.
[14] Robert M Wachter,et al. Promoting Trust Between Patients and Physicians in the Era of Artificial Intelligence. , 2019, JAMA.
[15] Jaime S. Cardoso,et al. Machine Learning Interpretability: A Survey on Methods and Metrics , 2019, Electronics.
[16] Qingyu Chen,et al. BioWordVec, improving biomedical word embeddings with subword information and MeSH , 2019, Scientific Data.
[17] Wei-Hung Weng,et al. Publicly Available Clinical BERT Embeddings , 2019, Proceedings of the 2nd Clinical Natural Language Processing Workshop.
[18] Gang Liu,et al. Bidirectional LSTM with attention mechanism and convolutional layer for text classification , 2019, Neurocomputing.
[19] G. Maragatham,et al. LSTM Model for Prediction of Heart Failure in Big Data , 2019, Journal of Medical Systems.
[20] Fei Wang,et al. Predictive Modeling of the Hospital Readmission Risk from Patients’ Claims Data Using Machine Learning: A Case Study on COPD , 2019, Scientific Reports.
[21] Jun S. Kim,et al. An attention based deep learning model of clinical events in the intensive care unit , 2019, PloS one.
[22] Chunyang Li,et al. Identification of hub genes with diagnostic values in pancreatic cancer by bioinformatics analyses and supervised learning methods , 2018, World Journal of Surgical Oncology.
[23] Siu L. Hui,et al. A SEMI-AUTOMATED APPROACH TO IDENTIFYING CHRONIC COUGH IN ELECTRONIC HEALTH RECORDS , 2018, Annals of Allergy, Asthma & Immunology.
[24] James H. Harrison,et al. Patient2Vec: A Personalized Interpretable Deep Representation of the Longitudinal Electronic Health Record , 2018, IEEE Access.
[25] Lu Wang,et al. Supervised Reinforcement Learning with Recurrent Neural Network for Dynamic Treatment Recommendation , 2018, KDD.
[26] David Mascharka,et al. Transparency by Design: Closing the Gap Between Performance and Interpretability in Visual Reasoning , 2018, 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition.
[27] Parisa Rashidi,et al. DeepSOFA: A Continuous Acuity Score for Critically Ill Patients using Clinically Interpretable Deep Learning , 2018, Scientific Reports.
[28] Lei Zhang,et al. DeepHINT: Understanding HIV-1 integration via deep learning with attention , 2018, bioRxiv.
[29] N. Shah,et al. What This Computer Needs Is a Physician: Humanism and Artificial Intelligence. , 2018, JAMA.
[30] Ya Zhang,et al. A Machine Learning-based Framework to Identify Type 2 Diabetes through Electronic Health Records , 2016, bioRxiv.
[31] Ping Zhang,et al. Risk Prediction with Electronic Health Records: A Deep Learning Approach , 2016, SDM.
[32] Li Li,et al. Deep Patient: An Unsupervised Representation to Predict the Future of Patients from the Electronic Health Records , 2016, Scientific Reports.
[33] Jyotishman Pathak,et al. Developing EHR-driven heart failure risk prediction models using CPXR(Log) with the probabilistic loss function , 2016, J. Biomed. Informatics.
[34] David O. Meltzer,et al. Multicenter Comparison of Machine Learning Methods and Conventional Regression for Predicting Clinical Deterioration on the Wards , 2016, Critical care medicine.
[35] I. Pavord,et al. A worldwide survey of chronic cough: a manifestation of enhanced somatosensory response , 2014, European Respiratory Journal.
[36] J. Schmidhuber,et al. 2005 Special Issue: Framewise phoneme classification with bidirectional LSTM and other neural network architectures , 2005 .
[37] J. Bach,et al. Duchenne muscular dystrophy , 1999, Thorax.
[38] R. Irwin,et al. Impact of chronic cough on quality of life. , 1998, Archives of internal medicine.
[39] Xiaopeng Wei,et al. Predicting the Risk of Heart Failure With EHR Sequential Data Modeling , 2018, IEEE Access.
[40] Jyotishman Pathak,et al. Using EHRs and Machine Learning for Heart Failure Survival Analysis , 2015, MedInfo.