Latent class analysis of psychotic-affective disorders with data-driven plasma proteomics

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作者
Sang Jin Rhee
Dongyoon Shin
Daun Shin
Yoojin Song
Eun-Jeong Joo
Hee Yeon Jung
Sungwon Roh
Sang-Hyuk Lee
Hyeyoung Kim
Minji Bang
Kyu Young Lee
Se Hyun Kim
Minah Kim
Jihyeon Lee
Jaenyeon Kim
Yeongshin Kim
Jun Soo Kwon
Kyooseob Ha
Youngsoo Kim
Yong Min Ahn
机构
[1] Seoul National University Hospital,Biomedical Research Institute
[2] Seoul National University College of Medicine,Department of Biomedical Sciences
[3] Seoul National University College of Medicine,Department of Psychiatry
[4] Seoul National University Hospital,Department of Neuropsychiatry
[5] School of Medicine,Department of Neuropsychiatry
[6] Eulji University,Department of Psychiatry
[7] Uijeongbu Eulji Medical Center,Department of Psychiatry
[8] Eulji University,Institute of Human Behavioral Medicine
[9] SMG-SNU Boramae Medical Center,Department of Psychiatry
[10] Seoul National University Medical Research Center,Department of Psychiatry, CHA Bundang Medical Center
[11] Hanyang University Hospital and Hanyang University College of Medicine,Department of Psychiatry
[12] CHA University School of Medicine,Department of Psychiatry
[13] Inha University Hospital,Institute of Medical and Biological Engineering Medical Research Center
[14] Nowon Eulji University Hospital,undefined
[15] Seoul National University College of Medicine,undefined
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摘要
Data-driven approaches to subtype transdiagnostic samples are important for understanding heterogeneity within disorders and overlap between disorders. Thus, this study was conducted to determine whether plasma proteomics-based clustering could subtype patients with transdiagnostic psychotic-affective disorder diagnoses. The study population included 504 patients with schizophrenia, bipolar disorder, and major depressive disorder and 160 healthy controls, aged 19 to 65 years. Multiple reaction monitoring was performed using plasma samples from each individual. Pathologic peptides were determined by linear regression between patients and healthy controls. Latent class analysis was conducted in patients after peptide values were stratified by sex and divided into tertile values. Significant demographic and clinical characteristics were determined for the latent clusters. The latent class analysis was repeated when healthy controls were included. Twelve peptides were significantly different between the patients and healthy controls after controlling for significant covariates. Latent class analysis based on these peptides after stratification by sex revealed two distinct classes of patients. The negative symptom factor of the Brief Psychiatric Rating Scale was significantly different between the classes (t = −2.070, p = 0.039). When healthy controls were included, two latent classes were identified, and the negative symptom factor of the Brief Psychiatric Rating Scale was still significant (t = −2.372, p = 0.018). In conclusion, negative symptoms should be considered a significant biological aspect for understanding the heterogeneity and overlap of psychotic-affective disorders.
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