Development of a dynamic prediction model for unplanned ICU admission and mortality in hospitalized patients
暂无分享,去创建一个
H. Thorsen-Meyer | Roc Reguant | Søren Brunak | B. S. Kaas-Hansen | D. Placido | R. Reguant | S. Brunak | Hans-Christian Thorsen-Meyer
[1] S. Brunak,et al. Population-wide analysis of laboratory tests to assess seasonal variation and the relevance of temporal reference interval modification , 2022, medRxiv.
[2] Suman V. Ravuri,et al. Use of deep learning to develop continuous-risk models for adverse event prediction from electronic health records , 2021, Nature Protocols.
[3] Chia Yee Ooi,et al. Use of learning approaches to predict clinical deterioration in patients based on various variables: a review of the literature , 2021, Artificial Intelligence Review.
[4] Björn Eskofier,et al. DeepSigns: A predictive model based on Deep Learning for the early detection of patient health deterioration , 2021, Expert Syst. Appl..
[5] Theodoros P. Zanos,et al. Let Sleeping Patients Lie, avoiding unnecessary overnight vitals monitoring using a clinically based deep-learning model , 2020, npj Digital Medicine.
[6] Søren Brunak,et al. Dynamic and explainable machine learning prediction of mortality in patients in the intensive care unit: a retrospective study of high-frequency data in electronic patient records. , 2020, The Lancet. Digital health.
[7] J. Kwon,et al. Detecting Patient Deterioration Using Artificial Intelligence in a Rapid Response System. , 2020, Critical care medicine.
[8] Farah E. Shamout,et al. Deep Interpretable Early Warning System for the Detection of Clinical Deterioration , 2020, IEEE Journal of Biomedical and Health Informatics.
[9] Bo Thiesson,et al. Explainable artificial intelligence model to predict acute critical illness from electronic health records , 2019, Nature Communications.
[10] Takuya Akiba,et al. Optuna: A Next-generation Hyperparameter Optimization Framework , 2019, KDD.
[11] Suman V. Ravuri,et al. A Clinically Applicable Approach to Continuous Prediction of Future Acute Kidney Injury , 2019, Nature.
[12] Bo Thiesson,et al. Early detection of sepsis utilizing deep learning on electronic health record event sequences , 2019, Artif. Intell. Medicine.
[13] L. Tarassenko,et al. The effect of fractional inspired oxygen concentration on early warning score performance: A database analysis , 2019, Resuscitation.
[14] Vitaly Herasevich,et al. Multicenter derivation and validation of an early warning score for acute respiratory failure or death in the hospital , 2018, Critical Care.
[15] Edieal J. Pinker,et al. Reporting accuracy of rare event classifiers , 2018, npj Digital Medicine.
[16] Marco A. F. Pimentel,et al. Manual centile-based early warning scores derived from statistical distributions of observational vital-sign data , 2018, Resuscitation.
[17] John Asger Petersen,et al. A critical assessment of early warning score records in 168,000 patients , 2018, Journal of Clinical Monitoring and Computing.
[18] Jeffrey Dean,et al. Scalable and accurate deep learning with electronic health records , 2018, npj Digital Medicine.
[19] R. Randell,et al. Strengths and limitations of early warning scores: A systematic review and narrative synthesis. , 2017, International journal of nursing studies.
[20] E. Joynes. More challenges around sepsis: definitions and diagnosis. , 2016, Journal of thoracic disease.
[21] Sigrun Alba Johannesdottir Schmidt,et al. The Danish National Patient Registry: a review of content, data quality, and research potential , 2015, Clinical epidemiology.
[22] Gary S Collins,et al. Transparent reporting of a multivariable prediction model for individual prognosis or diagnosis (TRIPOD): the TRIPOD Statement , 2015, BMC Medicine.
[23] Michele Freeman,et al. Early warning system scores for clinical deterioration in hospitalized patients: a systematic review. , 2014, Annals of the American Thoracic Society.
[24] Matthew M Churpek,et al. Predicting clinical deterioration in the hospital: the impact of outcome selection. , 2013, Resuscitation.
[25] Mike Jones,et al. NEWSDIG: The National Early Warning Score Development and Implementation Group. , 2012, Clinical medicine.
[26] R. Erichsen,et al. Existing data sources for clinical epidemiology: The clinical laboratory information system (LABKA) research database at Aarhus University, Denmark , 2011, Clinical epidemiology.
[27] Gary B. Smith,et al. ViEWS--Towards a national early warning score for detecting adult inpatient deterioration. , 2010, Resuscitation.
[28] J. Zimmerman,et al. Acute Physiology and Chronic Health Evaluation (APACHE) IV: Hospital mortality assessment for today’s critically ill patients* , 2006, Critical care medicine.
[29] J. le Gall,et al. SAPS 3—From evaluation of the patient to evaluation of the intensive care unit. Part 1: Objectives, methods and cohort description , 2005, Intensive Care Medicine.
[30] Rich Caruana,et al. Predicting good probabilities with supervised learning , 2005, ICML.
[31] C. Subbe,et al. Validation of a modified Early Warning Score in medical admissions. , 2001, QJM : monthly journal of the Association of Physicians.
[32] S. Hochreiter,et al. Long Short-Term Memory , 1997, Neural Computation.
[33] Timothy L Lash,et al. The predictive value of ICD-10 diagnostic coding used to assess Charlson comorbidity index conditions in the population-based Danish National Registry of Patients , 2011, BMC medical research methodology.