Background Antipsychotic treatment is associated with metabolic disturbance. However, the degree to which metabolic alterations occur in treatment with different antipsychotics is unclear. Predictors of metabolic dysregulation are poorly understood and the association between metabolic change and change in psychopathology is uncertain. We aimed to compare and rank antipsychotics on the basis of their metabolic side-effects, identify physiological and demographic predictors of antipsychotic-induced metabolic dysregulation, and investigate the relationship between change in psychotic symptoms and change in metabolic parameters with antipsychotic treatment.Methods We searched MEDLINE, EMBASE, and PsycINFO from inception until June 30, 2019. We included blinded, randomised controlled trials comparing 18 antipsychotics and placebo in acute treatment of schizophrenia. We did frequentist random-effects network meta-analyses to investigate treatment-induced changes in body weight, BMI, total cholesterol, LDL cholesterol, HDL cholesterol, triglyceride, and glucose concentrations. We did meta-regressions to examine relationships between metabolic change and age, sex, ethnicity, baseline weight, and baseline metabolic parameter level. We examined the association between metabolic change and psychopathology change by estimating the correlation between symptom severity change and metabolic parameter change. FindingsOf 6532 citations, we included 100 randomised controlled trials, including 25 952 patients. Median treatment duration was 6 weeks (IQR 6-8). Mean differences for weight gain compared with placebo ranged from −0•23 kg (95% CI −0•83 to 0•36) for haloperidol to 3•01 kg (1•78 to 4•24) for clozapine; for BMI from −0•25 kg/m² (−0•68 to 0•17) for haloperidol to 1•07 kg/m² (0•90 to 1•25) for olanzapine; for total-cholesterol from −0•09 mmol/L (-0•24 to 0•07) for cariprazine to 0•56 mmol/L (0•26-0•86) for clozapine; for LDL cholesterol from −0•13 mmol/L (−0.21 to −0•05) for cariprazine to 0•20 mmol/L (0•14 to 0•26) for olanzapine; for HDL cholesterol from 0•05 mmol/L (0•00 to 0•10) for brexpiprazole to −0•10 mmol/L (−0•33 to 0•14) for amisulpride; for triglycerides from −0•01 mmol/L (−0•10 to 0•08) for brexpiprazole to 0•98 mmol/L (0•48 to 1•49) for clozapine; for glucose from −0•29 mmol/L (−0•55 to −0•03) for lurasidone to 1•05 mmol/L (0•41 to 1•70) for clozapine. Greater increases in glucose were predicted by higher baseline weight (p=0•0015) and male sex (p=0•0082). Non-white ethnicity was associated with greater increases in total cholesterol (p=0•040) compared with white ethnicity. Improvements in symptom severity were associated with increases in weight (r=0•36, p=0•0021), BMI (r=0•84, p<0•0001), totalcholesterol (r=0•31, p=0•047), and LDL cholesterol (r=0•42, p=0•013), and decreases in HDL cholesterol (r=−0•35, p=0•035).Interpretation Marked differences exist between antipsychotics in terms of metabolic side-effects, with olanzapine and clozapine exhibiting the worst profiles and aripiprazole, brexpiprazole, caripraz...
Summary An ability to build structured mental maps of the world underpins our capacity to imagine relationships between objects that extend beyond experience. In rodents, such representations are supported by sequential place cell reactivations during rest, known as replay. Schizophrenia is proposed to reflect a compromise in structured mental representations, with animal models reporting abnormalities in hippocampal replay and associated ripple activity during rest. Here, utilizing magnetoencephalography (MEG), we tasked patients with schizophrenia and control participants to infer unobserved relationships between objects by reorganizing visual experiences containing these objects. During a post-task rest session, controls exhibited fast spontaneous neural reactivation of presented objects that replayed inferred relationships. Replay was coincident with increased ripple power in hippocampus. Patients showed both reduced replay and augmented ripple power relative to controls, convergent with findings in animal models. These abnormalities are linked to impairments in behavioral acquisition and subsequent neural representation of task structure.
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