Bayesian causal network modeling suggests adolescent cannabis use accelerates prefrontal cortical thinning.
Max M OwensMatthew D AlbaughNicholas AllgaierDekang YuanGabriel RobertRenata B CupertinoPhilip A SpechlerAnthony C JulianoSage HahnTobias BanaschewskiArun L W BokdeSylvane DesrivieresHerta FlorAntoine GrigisPenny A GowlandAndreas HeinzRüdiger BrühlJean-Luc MartinotMarie-Laure Paillère MartinotEric ArtigesFrauke NeesDimitri Papadopoulos OrfanosHerve LemaitreTomáš PausLuise PoustkaSabina MillenetJuliane Hilde FröhnerMichael N SmolkaHenrik WalterRobert WhelanScott MackeyGunter SchumannHugh Garavannull nullPublished in: Translational psychiatry (2022)
While there is substantial evidence that cannabis use is associated with differences in human brain development, most of this evidence is correlational in nature. Bayesian causal network (BCN) modeling attempts to identify probable causal relationships in correlational data using conditional probabilities to estimate directional associations between a set of interrelated variables. In this study, we employed BCN modeling in 637 adolescents from the IMAGEN study who were cannabis naïve at age 14 to provide evidence that the accelerated prefrontal cortical thinning found previously in adolescent cannabis users by Albaugh et al. [1] is a result of cannabis use causally affecting neurodevelopment. BCNs incorporated data on cannabis use, prefrontal cortical thickness, and other factors related to both brain development and cannabis use, including demographics, psychopathology, childhood adversity, and other substance use. All BCN algorithms strongly suggested a directional relationship from adolescent cannabis use to accelerated cortical thinning. While BCN modeling alone does not prove a causal relationship, these results are consistent with a body of animal and human research suggesting that adolescent cannabis use adversely affects brain development.
Keyphrases
- young adults
- mental health
- functional connectivity
- working memory
- resting state
- childhood cancer
- transcranial magnetic stimulation
- machine learning
- white matter
- electronic health record
- deep learning
- high frequency
- subarachnoid hemorrhage
- cerebral ischemia
- blood brain barrier
- brain injury
- induced pluripotent stem cells
- data analysis