Comparison between neural networks and multiple logistic regression to predict acute coronary syndrome in the emergency room
暂无分享,去创建一个
Michael Green | Mattias Ohlsson | Lars Edenbrandt | Ulf Ekelund | Jonas Björk | Jakob Lundager Forberg | L. Edenbrandt | M. Ohlsson | J. Björk | J. Forberg | U. Ekelund | Michael Green
[1] R. L. Kennedy,et al. Artificial neural network models for prediction of acute coronary syndromes using clinical data from the time of presentation. , 2005, Annals of emergency medicine.
[2] Ulf Ekelund,et al. Patients with suspected acute coronary syndrome in a university hospital emergency department: an observational study , 2002, BMC emergency medicine.
[3] R F Harrison,et al. Identification of patients with evolving coronary syndromes by using statistical models with data from the time of presentation , 2005, Heart.
[4] W. Baxt. Use of an artificial neural network for the diagnosis of myocardial infarction. , 1991, Annals of internal medicine.
[5] W. Baxt,et al. A neural network aid for the early diagnosis of cardiac ischemia in patients presenting to the emergency department with chest pain. , 2002, Annals of emergency medicine.
[6] EdenbrandtLars,et al. Comparison between neural networks and multiple logistic regression to predict acute coronary syndrome in the emergency room , 2006 .
[7] Lorien Y. Pratt,et al. Comparing Biases for Minimal Network Construction with Back-Propagation , 1988, NIPS.
[8] Anders Krogh,et al. Neural Network Ensembles, Cross Validation, and Active Learning , 1994, NIPS.
[9] Rich Caruana,et al. Predicting good probabilities with supervised learning , 2005, ICML.
[10] Hein Putter,et al. The bootstrap: a tutorial , 2000 .
[11] Thomas G. Dietterich. Multiple Classifier Systems , 2000, Lecture Notes in Computer Science.
[12] L Edenbrandt,et al. Usefulness of serial electrocardiograms for diagnosis of acute myocardial infarction. , 2001, The American journal of cardiology.
[13] R. Lippmann,et al. Coronary artery bypass risk prediction using neural networks. , 1997, Annals of Thoracic Surgery.
[14] L. Edenbrandt,et al. Acute myocardial infarction detected in the 12-lead ECG by artificial neural networks. , 1997, Circulation.
[15] W. Baxt,et al. A neural computational aid to the diagnosis of acute myocardial infarction. , 2002, Annals of emergency medicine.
[16] J. Hanley,et al. The meaning and use of the area under a receiver operating characteristic (ROC) curve. , 1982, Radiology.
[17] J. Griffith,et al. Clinical Features of Emergency Department Patients Presenting with Symptoms Suggestive of Acute Cardiac Ischemia: A Multicenter Study , 1998, Journal of Thrombosis and Thrombolysis.
[18] D. Hosmer,et al. Applied Logistic Regression , 1991 .
[19] D. Opitz,et al. Popular Ensemble Methods: An Empirical Study , 1999, J. Artif. Intell. Res..
[20] W. Baxt,et al. Prospective validation of artificial neural network trained to identify acute myocardial infarction , 1996, The Lancet.
[21] Ook.,et al. PREDICTION OF THE NEED FOR INTENSIVE CARE IN PATIENTS WHO COME TO EMERGENCY DEPARTMENTS WITH ACUTE CHEST PAIN , 2000 .
[22] D. Hosmer,et al. A comparison of goodness-of-fit tests for the logistic regression model. , 1997, Statistics in medicine.
[23] J Herlitz,et al. Early prediction of acute myocardial infarction from clinical history, examination and electrocardiogram in the emergency room. , 1991, The American journal of cardiology.
[24] Paulo J. G. Lisboa,et al. Artificial Neural Networks in Biomedicine , 2000, Perspectives in Neural Computing.
[25] G W Rouan,et al. Clinical characteristics and natural history of patients with acute myocardial infarction sent home from the emergency room. , 1987, The American journal of cardiology.
[26] J P Ornato,et al. Use of the Acute Cardiac Ischemia Time-Insensitive Predictive Instrument (ACI-TIPI) To Assist with Triage of Patients with Chest Pain or Other Symptoms Suggestive of Acute Cardiac Ischemia: A Multicenter, Controlled Clinical Trial , 1998, Annals of Internal Medicine.
[27] H. Tunstall-Pedoe,et al. Myocardial Infarction and Coronary Deaths in the World Health Organization MONICA Project: Registration Procedures, Event Rates, and Case‐Fatality Rates in 38 Populations From 21 Countries in Four Continents , 1994, Circulation.
[28] Leo Breiman,et al. Bagging Predictors , 1996, Machine Learning.
[29] Mattias Ohlsson,et al. DETECTION OF ACUTE CORONARY SYNDROMES IN CHEST PAIN PATIENTS USING NEURAL NETWORK ENSEMBLES , 2005 .
[30] R Ruthazer,et al. Missed diagnoses of acute cardiac ischemia in the emergency department. , 2000, The New England journal of medicine.
[31] R. Harrison,et al. Early diagnosis of acute myocardial infarction using clinical and electrocardiographic data at presentation: derivation and evaluation of logistic regression models. , 1996, European heart journal.
[32] Vivian West,et al. Computing, Artificial Intelligence and Information Technology Ensemble strategies for a medical diagnostic decision support system: A breast cancer diagnosis application , 2005 .
[33] Brian Young,et al. Added value of new acute coronary syndrome computer algorithm for interpretation of prehospital electrocardiograms. , 2004, Journal of electrocardiology.