Importance: Selection of antiseizure medications (ASMs) for epilepsy remains largely a trial-and-error approach. Under this approach, many patients have to endure sequential trials of ineffective treatments until the “right drugs” are prescribed. Objective: To develop and validate a deep learning model using readily available clinical information to predict treatment success with the first ASM for individual patients. Design, Setting, and Participants: This cohort study developed and validated a prognostic model. Patients were treated between 1982 and 2020. All patients were followed up for a minimum of 1 year or until failure of the first ASM. A total of 2404 adults with epilepsy newly treated at specialist clinics in Scotland, Malay...
[[abstract]]Importance: Little guidance exists to date on how to select antipsychotic medications fo...
Epilepsy is considered as a serious brain disorder in which patients frequently experience seizures....
Abstract—Objective: Key issues in the epilepsy seizure prediction research are (1) the reproducibili...
Objective: Antiepileptic drug (AED) treatments produce inconsistent outcomes, often necessitating pa...
AbstractPurposeA UCB–IBM collaboration explored the application of machine learning to large claims ...
© 2011 Dr. Slave PetrovskiOne of the single most difficult aspects of treating newly diagnosed epil...
A multigenic classifier based on five single nucleotide polymorphisms (SNPs) was previously reported...
Objective: Antiseizure medications (ASMs) are the first-line treatment for epilepsy. Many ASMs are a...
Background: Seizure prediction would be clinically useful in patients with epilepsy and could improv...
Seizure prediction may be the solution for epileptic patients whose drugs and surgery do not contro...
Background: Malformation of cortical development (MCD) is one of the most common causes of pharmacor...
Antiseizure medications (ASMs) should be tailored to individual characteristics, including seizure t...
Epilepsy is a neurological disorder and non communicable disease which affects patient's health, Dur...
OBJECTIVE:To identify people with epilepsy who will not achieve a 12-month seizure remission within ...
Epilepsy is responsible for an enormous amount of “untold” suffering around the globe. Fortunately, ...
[[abstract]]Importance: Little guidance exists to date on how to select antipsychotic medications fo...
Epilepsy is considered as a serious brain disorder in which patients frequently experience seizures....
Abstract—Objective: Key issues in the epilepsy seizure prediction research are (1) the reproducibili...
Objective: Antiepileptic drug (AED) treatments produce inconsistent outcomes, often necessitating pa...
AbstractPurposeA UCB–IBM collaboration explored the application of machine learning to large claims ...
© 2011 Dr. Slave PetrovskiOne of the single most difficult aspects of treating newly diagnosed epil...
A multigenic classifier based on five single nucleotide polymorphisms (SNPs) was previously reported...
Objective: Antiseizure medications (ASMs) are the first-line treatment for epilepsy. Many ASMs are a...
Background: Seizure prediction would be clinically useful in patients with epilepsy and could improv...
Seizure prediction may be the solution for epileptic patients whose drugs and surgery do not contro...
Background: Malformation of cortical development (MCD) is one of the most common causes of pharmacor...
Antiseizure medications (ASMs) should be tailored to individual characteristics, including seizure t...
Epilepsy is a neurological disorder and non communicable disease which affects patient's health, Dur...
OBJECTIVE:To identify people with epilepsy who will not achieve a 12-month seizure remission within ...
Epilepsy is responsible for an enormous amount of “untold” suffering around the globe. Fortunately, ...
[[abstract]]Importance: Little guidance exists to date on how to select antipsychotic medications fo...
Epilepsy is considered as a serious brain disorder in which patients frequently experience seizures....
Abstract—Objective: Key issues in the epilepsy seizure prediction research are (1) the reproducibili...