Heart Failure: Diagnosis, Severity Estimation and Prediction of Adverse Events Through Machine Learning Techniques
暂无分享,去创建一个
Dimitrios I. Fotiadis | Georgia S. Karanasiou | Katerina K. Naka | Evanthia E. Tripoliti | D. Fotiadis | K. Naka | E. Tripoliti | Theofilos G. Papadopoulos | G. Karanasiou
[1] Kathryn H. Bowles,et al. Utilizing Home Healthcare Electronic Health Records for Telehomecare Patients With Heart Failure: A Decision Tree Approach to Detect Associations With Rehospitalizations , 2016, Computers, informatics, nursing : CIN.
[2] Ewout W Steyerberg,et al. Regression trees for predicting mortality in patients with cardiovascular disease: What improvement is achieved by using ensemble-based methods? , 2012, Biometrical journal. Biometrische Zeitschrift.
[3] Juerg Schwitter,et al. ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure 2012 , 2010, European journal of heart failure.
[4] Yalcin Isler,et al. Combining classical HRV indices with wavelet entropy measures improves to performance in diagnosing congestive heart failure , 2007, Comput. Biol. Medicine.
[5] Ankur Teredesai,et al. Big data solutions for predicting risk-of-readmission for congestive heart failure patients , 2013, 2013 IEEE International Conference on Big Data.
[6] Sung-Nien Yu,et al. Bispectral analysis and genetic algorithm for congestive heart failure recognition based on heart rate variability , 2012, Comput. Biol. Medicine.
[7] Charles O. Akinyokun,et al. Application of Neuro-Fuzzy Technology in Medical Diagnosis: Case Study of Heart Failure , 2009 .
[8] Darryl N. Davis,et al. Alternating decision tree applied to risk assessment of heart failure patients , 2013 .
[9] Jian Qin,et al. Computer-assisted diagnosis for chronic heart failure by the analysis of their cardiac reserve and heart sound characteristics , 2015, Comput. Methods Programs Biomed..
[10] Donald E. Brown,et al. Random Forests on Ubiquitous Data for Heart Failure 30-Day Readmissions Prediction , 2013, 2013 12th International Conference on Machine Learning and Applications.
[11] E Rocha,et al. Prediction of hospital readmission for heart failure: development of a simple risk score based on administrative data. , 1999, Revista portuguesa de cardiologia : orgao oficial da Sociedade Portuguesa de Cardiologia = Portuguese journal of cardiology : an official journal of the Portuguese Society of Cardiology.
[12] L. A. Bonet,et al. ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure 2012 , 2010, European journal of heart failure.
[13] Corinna Cortes,et al. Support-Vector Networks , 1995, Machine Learning.
[14] B. Sredniawa,et al. Heart rate variability in heart failure. , 2003, Kardiologia polska.
[15] Jeffrey M. Hausdorff,et al. Physionet: Components of a New Research Resource for Complex Physiologic Signals". Circu-lation Vol , 2000 .
[16] D. Sommer,et al. Discrimination and relevance determination of heart rate variability features for the identification of congestive heart failure , 2014, 2014 8th Conference of the European Study Group on Cardiovascular Oscillations (ESGCO).
[17] G. Casolo,et al. Heart rate variability and functional severity of congestive heart failure secondary to coronary artery disease. , 1995, European heart journal.
[18] Antonio Candelieri,et al. Knowledge Discovery Approaches for Early Detection of Decompensation Conditions in Heart Failure Patients , 2009, 2009 Ninth International Conference on Intelligent Systems Design and Applications.
[19] A. Candelieri,et al. Early detection of decompensation conditions in heart failure patients by knowledge discovery: The HEARTFAID approaches , 2008, 2008 Computers in Cardiology.
[20] Michael A. Burke,et al. Phenomapping for Novel Classification of Heart Failure With Preserved Ejection Fraction , 2015, Circulation.
[21] P. Binkley,et al. Role of spectral measures of heart rate variability as markers of disease progression in patients with chronic congestive heart failure not treated with angiotensin-converting enzyme inhibitors. , 1996, American heart journal.
[22] W John Boscardin,et al. Risk stratification for in-hospital mortality in acutely decompensated heart failure: classification and regression tree analysis. , 2005, JAMA.
[23] Lei Wang,et al. A New Approach to Detect Congestive Heart Failure Using Short-Term Heart Rate Variability Measures , 2014, PloS one.
[24] Shin Ishii,et al. A Bayesian missing value estimation method for gene expression profile data , 2003, Bioinform..
[25] Antonio Candelieri,et al. A Hyper-Solution Framework for SVM Classification: Application for Predicting Destabilizations in Chronic Heart Failure Patients , 2010, The open medical informatics journal.
[26] K. Adams,et al. Characteristics and outcomes of patients hospitalized for heart failure in the United States: rationale, design, and preliminary observations from the first 100,000 cases in the Acute Decompensated Heart Failure National Registry (ADHERE). , 2005, American heart journal.
[27] Perry M. Elliott,et al. ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure 2012 , 2010, European journal of heart failure.
[28] Jason Roy,et al. Prediction Modeling Using EHR Data: Challenges, Strategies, and a Comparison of Machine Learning Approaches , 2010, Medical care.
[29] Farhad Soleimanian Gharehchopogh,et al. Neural Network application in diagnosis of patient: A case study , 2011, International Conference on Computer Networks and Information Technology.
[30] Wayne C Levy,et al. Multivariate risk scores and patient outcomes in advanced heart failure. , 2011, Congestive heart failure.
[31] G N Arbolishvili,et al. [Heart rate variability in chronic heart failure and its role in prognosis of the disease.]. , 2006, Kardiologiia.
[32] P. Fergus,et al. Predicting the likelihood of heart failure with a multi level risk assessment using decision tree , 2015, 2015 Third International Conference on Technological Advances in Electrical, Electronics and Computer Engineering (TAEECE).
[33] Gabriele Guidi,et al. Heart Failure Artificial Intelligence-Based Computer Aided Diagnosis Telecare System , 2012, ICOST.
[34] Anita Deswal,et al. New Predictive Models of Heart Failure Mortality Using Time-Series Measurements and Ensemble Models , 2011, Circulation. Heart failure.
[35] Salim Yusuf,et al. Predictors of mortality and morbidity in patients with chronic heart failure. , 2006, European heart journal.
[36] Juan Pablo Martínez,et al. Automatic SVM classification of sudden cardiac death and pump failure death from autonomic and repolarization ECG markers. , 2015, Journal of electrocardiology.
[37] Ernesto Iadanza,et al. A multi-layer monitoring system for clinical management of Congestive Heart Failure , 2015, BMC Medical Informatics and Decision Making.
[38] A L Goldberger,et al. The pNNx files: re-examining a widely used heart rate variability measure , 2002, Heart.
[39] M. Gulati,et al. Assessment of functional capacity in clinical and research settings: a scientific statement from the American Heart Association Committee on Exercise, Rehabilitation, and Prevention of the Council on Clinical Cardiology and the Council on Cardiovascular Nursing. , 2007, Circulation.
[40] Gabriele Guidi,et al. A Machine Learning System to Improve Heart Failure Patient Assistance , 2014, IEEE Journal of Biomedical and Health Informatics.
[41] Anna Strömberg,et al. ESC GUIDELINES FOR THE DIAGNOSIS AND TREATMENT OF ACUTE AND CHRONIC HEART FAILURE 2008 (ENDING) , 2009 .
[42] Jyotishman Pathak,et al. Developing EHR-driven heart failure risk prediction models using CPXR(Log) with the probabilistic loss function , 2016, J. Biomed. Informatics.
[43] Majid Sarrafzadeh,et al. A data-driven feature extraction framework for predicting the severity of condition of congestive heart failure patients , 2015, 2015 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).
[44] Paolo Melillo,et al. Classification Tree for Risk Assessment in Patients Suffering From Congestive Heart Failure via Long-Term Heart Rate Variability , 2013, IEEE Journal of Biomedical and Health Informatics.
[45] Volkmar Falk,et al. 2016 ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure , 2016, Revista espanola de cardiologia.
[46] Babak Mohammadzadeh Asl,et al. Generalized discriminant analysis for congestive heart failure risk assessment based on long-term heart rate variability , 2015, Comput. Methods Programs Biomed..
[47] Li Liang,et al. A Validated Risk Score for In-Hospital Mortality in Patients With Heart Failure From the American Heart Association Get With the Guidelines Program , 2010, Circulation. Cardiovascular quality and outcomes.
[48] Jan Bohacik,et al. Algorithmic model for risk assessment of heart failure patients , 2015, 2015 IEEE 8th International Conference on Intelligent Data Acquisition and Advanced Computing Systems: Technology and Applications (IDAACS).
[49] Peter C Austin,et al. Using methods from the data-mining and machine-learning literature for disease classification and prediction: a case study examining classification of heart failure subtypes. , 2013, Journal of clinical epidemiology.
[50] Jyotishman Pathak,et al. Using EHRs and Machine Learning for Heart Failure Survival Analysis , 2015, MedInfo.
[51] Abdulhamit Subasi,et al. Congestive heart failure detection using random forest classifier , 2016, Comput. Methods Programs Biomed..
[52] Paolo Melillo,et al. Remote Health Monitoring of Heart Failure With Data Mining via CART Method on HRV Features , 2011, IEEE Transactions on Biomedical Engineering.
[53] D. Iakovidis,et al. Telemonitoring predicts in advance heart failure admissions. , 2016, International journal of cardiology.
[54] Paolo Melillo,et al. Discrimination Power of Short-Term Heart Rate Variability Measures for CHF Assessment , 2011, IEEE Transactions on Information Technology in Biomedicine.
[55] Sung-Nien Yu,et al. Conditional mutual information-based feature selection for congestive heart failure recognition using heart rate variability , 2012, Comput. Methods Programs Biomed..
[56] Min-Soo Kim,et al. Decision-making model for early diagnosis of congestive heart failure using rough set and decision tree approaches , 2012, J. Biomed. Informatics.
[57] Yalcin Isler,et al. Discrimination of systolic and diastolic dysfunctions using multi-layer perceptron in heart rate variability analysis , 2016, Comput. Biol. Medicine.
[58] Nikola Bogunovic,et al. Electrocardiogram analysis using a combination of statistical, geometric, and nonlinear heart rate variability features , 2011, Artif. Intell. Medicine.
[59] Guolong Cai,et al. A heart failure diagnosis model based on support vector machine , 2010, 2010 3rd International Conference on Biomedical Engineering and Informatics.
[60] Peter C Austin,et al. Predicting mortality among patients hospitalized for heart failure: derivation and validation of a clinical model. , 2003, JAMA.
[61] Ali Narin,et al. Investigating the performance improvement of HRV Indices in CHF using feature selection methods based on backward elimination and statistical significance , 2014, Comput. Biol. Medicine.
[62] V. Roger,et al. The Heart Failure Epidemic , 2010, International journal of environmental research and public health.
[63] P. Ponikowski,et al. [2016 ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure]. , 2016, Kardiologia polska.
[64] M C Limacher,et al. Assessment of functional capacity in clinical and research applications: An advisory from the Committee on Exercise, Rehabilitation, and Prevention, Council on Clinical Cardiology, American Heart Association. , 2000, Circulation.
[65] Musa H. Asyali,et al. Discrimination power of long-term heart rate variability measures , 2003, Proceedings of the 25th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (IEEE Cat. No.03CH37439).
[66] Rui Liu,et al. Dynamic Hierarchical Classification for Patient Risk-of-Readmission , 2015, KDD.
[67] Verónica Bolón-Canedo,et al. Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning , 2015, Clinical Medicine Insights. Cardiology.
[68] R. A. Thuraisingham,et al. A Classification System to Detect Congestive Heart Failure Using Second-Order Difference Plot of RR Intervals , 2010, Cardiology research and practice.
[69] Jerrold H. May,et al. A mixed-ensemble model for hospital readmission , 2016, Artif. Intell. Medicine.
[70] Paolo Melillo,et al. Discrimination power of long-term heart rate variability measures for chronic heart failure detection , 2011, Medical & Biological Engineering & Computing.
[71] Nazar Elfadil,et al. Self organizing neural network approach for identification of patients with Congestive Heart Failure , 2011, 2011 International Conference on Multimedia Computing and Systems.
[72] B. Reiser,et al. Estimation of the Youden Index and its Associated Cutoff Point , 2005, Biometrical journal. Biometrische Zeitschrift.
[73] D. Mozaffarian,et al. The Seattle Heart Failure Model: Prediction of Survival in Heart Failure , 2006, Circulation.