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An n=1 Clinical Network Analysis of Symptoms and Treatment in Psychosis
Maarten Bak
*
,
Marjan Drukker
, Laila Hasmi
, Jim van Os
*
Corresponding author for this work
MHeNs - Mental Health
Psychiatrie & Neuropsychologie
MA Psychiatrie
Hersen en Zenuw Centrum
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Keyphrases
Network Analysis
100%
Psychosis
100%
Clinical Trials Network
100%
Paranoia
100%
Single Patient
50%
Qualitative Change
50%
Hearing Voices
50%
Patient-completed
25%
Graph Network
25%
Patient Data
25%
Pharmacological Treatment
25%
Experience Sampling
25%
Regression Analysis
25%
Psychopathology
25%
Severity Level
25%
Symptom Level
25%
Disease Severity
25%
Regression Coefficient
25%
Loss of Control
25%
Strategic Focus
25%
Central Symptoms
25%
Whole Network
25%
Daily Assessment
25%
Quantitative Change
25%
Network Representation
25%
Dynamic Relationship
25%
Lagged Association
25%
Individual Networks
25%
INIS
symptoms
100%
network analysis
100%
psychoses
100%
levels
30%
data
23%
patients
23%
assessments
15%
hearings
15%
graphs
15%
control
7%
regression analysis
7%
losses
7%
dynamics
7%
construction
7%
sampling
7%
Psychology
Sensation of Hearing
100%
Regression Analysis
50%
Dependent Variable
50%
Pharmacological Treatment
50%
Drug Therapy
50%
Nursing and Health Professions
Time Series Analysis
100%
Disease Severity
50%
Drug Therapy
50%
Dependent Variable
50%
Patient Coding
50%
Computer Science
Qualitative Change
100%
Collected Data
50%
Dependent Variable
50%
Regression Coefficient
50%
Pharmacology, Toxicology and Pharmaceutical Science
Disease Severity
100%