Literature DB >> 18180752

Performance of a neuro-fuzzy model in predicting weight changes of chronic schizophrenic patients exposed to antipsychotics.

T H Lan1, E W Loh, M S Wu, T M Hu, P Chou, T Y Lan, H-J Chiu.   

Abstract

Artificial intelligence has become a possible solution to resolve the problem of loss of information when complexity of a disease increases. Obesity phenotypes are observable clinical features of drug-naive schizophrenic patients. In addition, atypical antipsychotic medications may cause these unwanted effects. Here we examined the performance of neuro-fuzzy modeling (NFM) in predicting weight changes in chronic schizophrenic patients exposed to antipsychotics. Two hundred and twenty inpatients meeting DSMIV diagnosis of schizophrenia, treated with antipsychotics, either typical or atypical, for more than 2 years, were recruited. All subjects were assessed in the same study period between mid-November 2003 and mid-April 2004. The baseline and first visit's physical data including weight, height and circumference were used in this study. Clinical information (Clinical Global Impression and Life Style Survey) and genotype data of five single nucleotide polymorphisms were also included as predictors. The subjects were randomly assigned into the first group (105 subjects) and second group (115 subjects), and NFM was performed by using the FuzzyTECH 5.54 software package, with a network-type structure constructed in the rule block. A complete learned model trained from merged data of the first and second groups demonstrates that, at a prediction error of 5, 93% subjects with weight gain were identified. Our study suggests that NFM is a feasible prediction tool for obesity in schizophrenic patients exposed to antipsychotics, with further improvements required.

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Year:  2008        PMID: 18180752     DOI: 10.1038/sj.mp.4002128

Source DB:  PubMed          Journal:  Mol Psychiatry        ISSN: 1359-4184            Impact factor:   15.992


  6 in total

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2.  Prediction of the period of psychotic episode in individual schizophrenics by simulation-data construction approach.

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Review 3.  The intersection of pharmacology, imaging, and genetics in the development of personalized medicine.

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4.  Fuzzy logic: A "simple" solution for complexities in neurosciences?

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5.  Machine learning for prediction of schizophrenia using genetic and demographic factors in the UK biobank.

Authors:  Matthew Bracher-Smith; Elliott Rees; Georgina Menzies; James T R Walters; Michael C O'Donovan; Michael J Owen; George Kirov; Valentina Escott-Price
Journal:  Schizophr Res       Date:  2022-06-29       Impact factor: 4.662

6.  Effects of sports participation on psychiatric symptoms and brain activations during sports observation in schizophrenia.

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  6 in total

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