INTRODUCTION: Asthma is a long-term condition with rapid onset worsening of symptoms ('attacks') which can be unpredictable and may prove fatal. Models predicting asthma attacks require high sensitivity to minimise mortality risk, and high specificity to avoid unnecessary prescribing of preventative medications that carry an associated risk of adverse events. We aim to create a risk score to predict asthma attacks in primary care using a statistical learning approach trained on routinely collected electronic health record data. // METHODS AND ANALYSIS: We will employ machine-learning classifiers (naïve Bayes, support vector machines, and random forests) to create an asthma attack risk prediction model, using the Asthma Learning Health Syste...
BACKGROUND: Asthma attacks are common, serious, and costly. Individual factors associated with attac...
Current understanding of risk factors for asthma attacks in children is based on studies of small bu...
Grant information: This work was supported by Wellcome [086118, https://doi.org/10.35802/086118], th...
Background Asthma attacks cause approximately 270 hospitalisations and four deaths per day in the U...
Background: There is no published algorithm predicting asthma crisis events (accident and emergency ...
Objective: The ability to predict impending asthma exacerbations may allow better utilization of hea...
Long-term conditions in Scotland account for 80%of all GP consultations; they also account for...
Introduction: Asthma has a considerable, but potentially, avoidable burden on many populations globa...
Introduction: Supported self-management empowering people with asthma to detect early deterioration ...
INTRODUCTION: Supported self-management empowering people with asthma to detect early deterioration ...
Introduction Asthma has a considerable, but potentially, avoidable burden on many populations global...
FUNDING This analysis was funded by Respiratory Effectiveness Group DATA AVAILABILITY STATEMENT Data...
BACKGROUND: Respiratory symptoms are common in early life and often transient. It is difficult to id...
Early detection of severe asthma exacerbations through home monitoring data in patients with stable ...
The paper presents ongoing issues, challenges, and dif-ficulties we face in applying machine learnin...
BACKGROUND: Asthma attacks are common, serious, and costly. Individual factors associated with attac...
Current understanding of risk factors for asthma attacks in children is based on studies of small bu...
Grant information: This work was supported by Wellcome [086118, https://doi.org/10.35802/086118], th...
Background Asthma attacks cause approximately 270 hospitalisations and four deaths per day in the U...
Background: There is no published algorithm predicting asthma crisis events (accident and emergency ...
Objective: The ability to predict impending asthma exacerbations may allow better utilization of hea...
Long-term conditions in Scotland account for 80%of all GP consultations; they also account for...
Introduction: Asthma has a considerable, but potentially, avoidable burden on many populations globa...
Introduction: Supported self-management empowering people with asthma to detect early deterioration ...
INTRODUCTION: Supported self-management empowering people with asthma to detect early deterioration ...
Introduction Asthma has a considerable, but potentially, avoidable burden on many populations global...
FUNDING This analysis was funded by Respiratory Effectiveness Group DATA AVAILABILITY STATEMENT Data...
BACKGROUND: Respiratory symptoms are common in early life and often transient. It is difficult to id...
Early detection of severe asthma exacerbations through home monitoring data in patients with stable ...
The paper presents ongoing issues, challenges, and dif-ficulties we face in applying machine learnin...
BACKGROUND: Asthma attacks are common, serious, and costly. Individual factors associated with attac...
Current understanding of risk factors for asthma attacks in children is based on studies of small bu...
Grant information: This work was supported by Wellcome [086118, https://doi.org/10.35802/086118], th...