scholarly journals Screening high-risk clusters for developing birth defects in mothers in Shanxi Province, China: application of latent class cluster analysis

2015 ◽  
Vol 15 (1) ◽  
Author(s):  
Hongyan Cao ◽  
Xiaoyuan Wei ◽  
Xingping Guo ◽  
Chunying Song ◽  
Yanhong Luo ◽  
...  
2018 ◽  
Vol 197 ◽  
pp. 522-530 ◽  
Author(s):  
Arthur T. Ryan ◽  
Jean Addington ◽  
Carrie E. Bearden ◽  
Kristin S. Cadenhead ◽  
Barbara A. Cornblatt ◽  
...  

2011 ◽  
Vol 26 (S2) ◽  
pp. 2087-2087 ◽  
Author(s):  
L. Valmaggia ◽  
D. Stahl ◽  
A. Yung ◽  
B. Nelson ◽  
P. McGorry ◽  
...  

IntroductionIndividuals at Ultra High Risk (UHR) for psychosis typically present with attenuated psychotic symptoms. However it is difficult to predict which individuals will later develop frank psychosis when their mental state is rated in terms of individual symptoms.The objective of the study was to examine the phenomenological structure of the UHR mental state and identify symptom profiles that predict later transition to psychosis.MethodPsychopathological data from a large sample of UHR subjects were analysed using latent class cluster analysis.A total of 318 individuals with a UHR for psychosis. Data were collected from two specialised community mental health services for people at UHR for psychosis: OASIS in London and PACE, in Melbourne.ResultsLatent class cluster analysis produced 4 classes: Class 1 - Mild was characterized by lower scores on all the CAARMS items. Subjects in Class 2 - Moderate scored moderately on all CAARMS items and was more likely to be in employment. Those in Class 3 - Moderate-Severe scored moderately-severe on negative symptoms, social isolation and impaired role functioning. Class 4 - Severe was the smallest group and was associated with the most impairment: subjects in this class scored highest on all items of the CAARMS, had the lowest GAF score and were more likely to be unemployed. This group was also characterized by the highest transition rate (41%).ConclusionsDifferent constellations of symptomatology are associates with varying levels of risk to of transition to psychosis.


Author(s):  
Ömer Karadaş ◽  
Bilgin Öztürk ◽  
Ali Rıza Sonkaya ◽  
Bahar Taşdelen ◽  
Aynur Özge ◽  
...  

2013 ◽  
Vol 43 (11) ◽  
pp. 2311-2325 ◽  
Author(s):  
L. R. Valmaggia ◽  
D. Stahl ◽  
A. R. Yung ◽  
B. Nelson ◽  
P. Fusar-Poli ◽  
...  

BackgroundMany research groups have attempted to predict which individuals with an at-risk mental state (ARMS) for psychosis will later develop a psychotic disorder. However, it is difficult to predict the course and outcome based on individual symptoms scores.MethodData from 318 ARMS individuals from two specialized services for ARMS subjects were analysed using latent class cluster analysis (LCCA). The score on the Comprehensive Assessment of At-Risk Mental States (CAARMS) was used to explore the number, size and symptom profiles of latent classes.ResultsLCCA produced four high-risk classes, censored after 2 years of follow-up: class 1 (mild) had the lowest transition risk (4.9%). Subjects in this group had the lowest scores on all the CAARMS items, they were younger, more likely to be students and had the highest Global Assessment of Functioning (GAF) score. Subjects in class 2 (moderate) had a transition risk of 10.9%, scored moderately on all CAARMS items and were more likely to be in employment. Those in class 3 (moderate–severe) had a transition risk of 11.4% and scored moderately severe on the CAARMS. Subjects in class 4 (severe) had the highest transition risk (41.2%), they scored highest on the CAARMS, had the lowest GAF score and were more likely to be unemployed. Overall, class 4 was best distinguished from the other classes on the alogia, avolition/apathy, anhedonia, social isolation and impaired role functioning.ConclusionsThe different classes of symptoms were associated with significant differences in the risk of transition at 2 years of follow-up. Symptomatic clustering predicts prognosis better than individual symptoms.


2020 ◽  
Vol 11 ◽  
Author(s):  
Mariagrazia Benassi ◽  
Sara Garofalo ◽  
Federica Ambrosini ◽  
Rosa Patrizia Sant’Angelo ◽  
Roberta Raggini ◽  
...  

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