Literature DB >> 19814949

Easy and low-cost identification of metabolic syndrome in patients treated with second-generation antipsychotics: artificial neural network and logistic regression models.

Chao-Cheng Lin1, Ya-Mei Bai, Jen-Yeu Chen, Tzung-Jeng Hwang, Tzu-Ting Chen, Hung-Wen Chiu, Yu-Chuan Li.   

Abstract

OBJECTIVE: Metabolic syndrome (MetS) is an important side effect of second-generation antipsychotics (SGAs). However, many SGA-treated patients with MetS remain undetected. In this study, we trained and validated artificial neural network (ANN) and multiple logistic regression models without biochemical parameters to rapidly identify MetS in patients with SGA treatment.
METHOD: A total of 383 patients with a diagnosis of schizophrenia or schizoaffective disorder (DSM-IV criteria) with SGA treatment for more than 6 months were investigated to determine whether they met the MetS criteria according to the International Diabetes Federation. The data for these patients were collected between March 2005 and September 2005. The input variables of ANN and logistic regression were limited to demographic and anthropometric data only. All models were trained by randomly selecting two-thirds of the patient data and were internally validated with the remaining one-third of the data. The models were then externally validated with data from 69 patients from another hospital, collected between March 2008 and June 2008. The area under the receiver operating characteristic curve (AUC) was used to measure the performance of all models.
RESULTS: Both the final ANN and logistic regression models had high accuracy (88.3% vs 83.6%), sensitivity (93.1% vs 86.2%), and specificity (86.9% vs 83.8%) to identify MetS in the internal validation set. The mean +/- SD AUC was high for both the ANN and logistic regression models (0.934 +/- 0.033 vs 0.922 +/- 0.035, P = .63). During external validation, high AUC was still obtained for both models. Waist circumference and diastolic blood pressure were the common variables that were left in the final ANN and logistic regression models.
CONCLUSION: Our study developed accurate ANN and logistic regression models to detect MetS in patients with SGA treatment. The models are likely to provide a noninvasive tool for large-scale screening of MetS in this group of patients. (c) 2010 Physicians Postgraduate Press, Inc.

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Year:  2009        PMID: 19814949     DOI: 10.4088/JCP.08m04628yel

Source DB:  PubMed          Journal:  J Clin Psychiatry        ISSN: 0160-6689            Impact factor:   4.384


  11 in total

1.  ANN Prediction of Metabolic Syndrome: a Complex Puzzle that will be Completed.

Authors:  Darko Ivanović; Aleksandar Kupusinac; Edita Stokić; Rade Doroslovački; Dragan Ivetić
Journal:  J Med Syst       Date:  2016-10-11       Impact factor: 4.460

Review 2.  Atypical antipsychotics and metabolic syndrome in patients with schizophrenia: risk factors, monitoring, and healthcare implications.

Authors:  Henry J Riordan; Paola Antonini; Michael F Murphy
Journal:  Am Health Drug Benefits       Date:  2011-09

3.  Hybrid EANN-EA System for the Primary Estimation of Cardiometabolic Risk.

Authors:  Aleksandar Kupusinac; Edita Stokić; Ilija Kovaćevic
Journal:  J Med Syst       Date:  2016-04-22       Impact factor: 4.460

4.  A meta-analysis of cardio-metabolic abnormalities in drug naïve, first-episode and multi-episode patients with schizophrenia versus general population controls.

Authors:  Davy Vancampfort; Martien Wampers; Alex J Mitchell; Christoph U Correll; Amber De Herdt; Michel Probst; Marc De Hert
Journal:  World Psychiatry       Date:  2013-10       Impact factor: 49.548

5.  Hip fracture risk assessment: artificial neural network outperforms conditional logistic regression in an age- and sex-matched case control study.

Authors:  Wo-Jan Tseng; Li-Wei Hung; Jiann-Shing Shieh; Maysam F Abbod; Jinn Lin
Journal:  BMC Musculoskelet Disord       Date:  2013-07-15       Impact factor: 2.362

6.  Cost prediction of antipsychotic medication of psychiatric disorder using artificial neural network model.

Authors:  Arash Mirabzadeh; Enayatollah Bakhshi; Mohamad Reza Khodae; Mohamad Reza Kooshesh; Bibi Riahi Mahabadi; Hossein Mirabzadeh; Akbar Biglarian
Journal:  J Res Med Sci       Date:  2013-09       Impact factor: 1.852

7.  Prediction of metabolic syndrome based on sleep and work-related risk factors using an artificial neural network.

Authors:  Meysam Eyvazlou; Mahdi Hosseinpouri; Hamidreza Mokarami; Vahid Gharibi; Mehdi Jahangiri; Rosanna Cousins; Hossein-Ali Nikbakht; Abdullah Barkhordari
Journal:  BMC Endocr Disord       Date:  2020-11-12       Impact factor: 2.763

8.  The Utility of Artificial Neural Networks for the Non-Invasive Prediction of Metabolic Syndrome Based on Personal Characteristics.

Authors:  Feng-Hsu Wang; Chih-Ming Lin
Journal:  Int J Environ Res Public Health       Date:  2020-12-11       Impact factor: 3.390

9.  Development and evaluation of a simple and effective prediction approach for identifying those at high risk of dyslipidemia in rural adult residents.

Authors:  Chong-Jian Wang; Yu-Qian Li; Ling Wang; Lin-Lin Li; Yi-Rui Guo; Ling-Yun Zhang; Mei-Xi Zhang; Rong-Hai Bie
Journal:  PLoS One       Date:  2012-08-28       Impact factor: 3.240

Review 10.  Data mining for the identification of metabolic syndrome status.

Authors:  Apilak Worachartcheewan; Nalini Schaduangrat; Virapong Prachayasittikul; Chanin Nantasenamat
Journal:  EXCLI J       Date:  2018-01-10       Impact factor: 4.068

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