Related references
Note: Only part of the references are listed.From local explanations to global understanding with explainable AI for trees
Scott M. Lundberg et al.
NATURE MACHINE INTELLIGENCE (2020)
Diagnosing asthma and chronic obstructive pulmonary disease with machine learning
Dimitris Spathis et al.
HEALTH INFORMATICS JOURNAL (2019)
Understanding Asthma Phenotypes, Endotypes, and Mechanisms of Disease
Merin E. Kuruvilla et al.
CLINICAL REVIEWS IN ALLERGY & IMMUNOLOGY (2019)
Machine Learning Models in Type 2 Diabetes Risk Prediction: Results from a Cross-sectional Retrospective Study in Chinese Adults
Xiao-lu Xiong et al.
CURRENT MEDICAL SCIENCE (2019)
Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery
Geoffrey H. Tison et al.
CIRCULATION-CARDIOVASCULAR QUALITY AND OUTCOMES (2019)
How to Read Articles That Use Machine Learning Users' Guides to the Medical Literature
Yun Liu et al.
JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION (2019)
Childhood Asthma: Advances Using Machine Learning and Mechanistic Studies
Sejal Saglani et al.
AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE (2019)
Emergency department triage prediction of clinical outcomes using machine learning models
Yoshihiko Raita et al.
CRITICAL CARE (2019)
POINTS OF SIGNIFICANCE Statistics versus machine learning
Danilo Bzdok et al.
NATURE METHODS (2018)
Potential Biases in Machine Learning Algorithms Using Electronic Health Record Data
Milena A. Gianfrancesco et al.
JAMA INTERNAL MEDICINE (2018)
Explainable machine-learning predictions for the prevention of hypoxaemia during surgery
Scott M. Lundberg et al.
NATURE BIOMEDICAL ENGINEERING (2018)
A Machine Learning Approach to Predicting Need for Hospitalization for Pediatric Asthma Exacerbation at the Time of Emergency Department Triage
Shilpa J. Patel et al.
ACADEMIC EMERGENCY MEDICINE (2018)
Opening the black box of machine learning
[Anonymous]
LANCET RESPIRATORY MEDICINE (2018)
The Economic Burden of Asthma in the United States, 2008-2013
Tursynbek Nurmagambetov et al.
ANNALS OF THE AMERICAN THORACIC SOCIETY (2018)
Machine learning in heart failure: ready for prime time
Saqib Ejaz Awan et al.
CURRENT OPINION IN CARDIOLOGY (2018)
Machine learning approaches to personalize early prediction of asthma exacerbations
Joseph Finkelstein et al.
ANNALS OF THE NEW YORK ACADEMY OF SCIENCES (2017)
Identifying patients at risk for severe exacerbations of asthma: development and external validation of a multivariable prediction model
Rik J. B. Loymans et al.
THORAX (2016)
Severe hypoalbuminemia is a strong independent risk factor for acute respiratory failure in COPD: a nationwide cohort study
Char-Wen Chen et al.
INTERNATIONAL JOURNAL OF CHRONIC OBSTRUCTIVE PULMONARY DISEASE (2015)
Hospital admission associates with higher total IgE level in pediatric patients with asthma
Michael G. Sherenian et al.
JOURNAL OF ALLERGY AND CLINICAL IMMUNOLOGY-IN PRACTICE (2015)
International ERS/ATS guidelines on definition, evaluation and treatment of severe asthma
Kian Fan Chung et al.
EUROPEAN RESPIRATORY JOURNAL (2014)
Risk factors of frequent exacerbations in difficult-to-treat asthma
A ten Brinke et al.
EUROPEAN RESPIRATORY JOURNAL (2005)