Dataset: 9.3K articles from Wikipedia (CC BY-SA).
More datasets: Wikipedia | CORD-19

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Made by DATEXIS (Data Science and Text-based Information Systems) at Beuth University of Applied Sciences Berlin

Deep Learning Technology: Sebastian Arnold, Betty van Aken, Paul Grundmann, Felix A. Gers and Alexander Löser. Learning Contextualized Document Representations for Healthcare Answer Retrieval. The Web Conference 2020 (WWW'20)

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Results for Query ‹ Nicotine addiction risk

Cannabis use disorder – Cause | High risk groups

Nicotine dependence – Epidemiology

Nicotine dependence – Mechanisms

Cannabis use disorder – Cause | High risk groups | Adolescents

Cocaine dependence – Risk

Nicotine withdrawal – Epidemiology

Cocaine dependence – Epidemiology

Substance abuse – Special populations | Street children

Substance abuse – Special populations | Musicians

Substance use disorder – Causes | Risk factors

Substance dependence – Withdrawal

Substance use disorder – Management | Addiction severity index

Substance dependence – Risk factors | Dependence potential

Opioid use disorder – Epidemiology | United States

Nicotine withdrawal – Causes

Opioid use disorder – Cause

Stimulant use disorder – Signs and symptoms | Long-term effects

Stimulant use disorder – Signs and symptoms | Symptoms of the disorder

Anabolic-androgenic steroids abuse – Abuse potential | National Institute on Drug Abuse

Anabolic-androgenic steroids abuse – Abuse potential | International Classification of Diseases

Barbiturate dependence – Abstract

Exercise addiction – Epidemiology

Dual diagnosis – Prevalence

Exercise addiction – Animal models

Psychological dependence – Abstract