Literature DB >> 32560424

Using Bayesian Networks to Predict Long-Term Health-Related Quality of Life and Comorbidity after Bariatric Surgery: A Study Based on the Scandinavian Obesity Surgery Registry.

Yang Cao1, Mustafa Raoof2, Eva Szabo2, Johan Ottosson2, Ingmar Näslund2.   

Abstract

Previously published literature has identified a few predictors of health-related quality of life (HRQoL) after bariatric surgery. However, performance of the predictive models was not evaluated rigorously using real world data. To find better methods for predicting prognosis in patients after bariatric surgery, we examined performance of the Bayesian networks (BN) method in predicting long-term postoperative HRQoL and compared it with the convolution neural network (CNN) and multivariable logistic regression (MLR). The patients registered in the Scandinavian Obesity Surgery Registry (SOReg) were used for the current study. In total, 6542 patients registered in the SOReg between 2008 and 2012 with complete demographic and preoperative comorbidity information, and preoperative and postoperative 5-year HROoL scores and comorbidities were included in the study. HRQoL was measured using the RAND-SF-36 and the obesity-related problems scale. Thirty-five variables were used for analyses, including 19 predictors and 16 outcome variables. The Gaussian BN (GBN), CNN, and a traditional linear regression model were used for predicting 5-year HRQoL scores, and multinomial discrete BN (DBN) and MLR were used for 5-year comorbidities. Eighty percent of the patients were randomly selected as a training dataset and 20% as a validation dataset. The GBN presented a better performance than the CNN and the linear regression model; it had smaller mean squared errors (MSEs) than those from the CNN and the linear regression model. The MSE of the summary physical scale was only 0.0196 for GBN compared to the 0.0333 seen in the CNN. The DBN showed excellent predictive ability for 5-year type 2 diabetes and dyslipidemia (area under curve (AUC) = 0.942 and 0.917, respectively), good ability for 5-year hypertension and sleep apnea syndrome (AUC = 0.891 and 0.834, respectively), and fair ability for 5-year depression (AUC = 0.750). Bayesian networks provide useful tools for predicting long-term HRQoL and comorbidities in patients after bariatric surgery. The hybrid network that may involve variables from different probability distribution families deserves investigation in the future.

Entities:  

Keywords:  Bayesian network; bariatric surgery; comorbidity; health-related quality of life; improving diagnosis accuracy; machine learning-enabled decision support system

Year:  2020        PMID: 32560424     DOI: 10.3390/jcm9061895

Source DB:  PubMed          Journal:  J Clin Med        ISSN: 2077-0383            Impact factor:   4.241


  3 in total

Review 1.  Current Applications of Artificial Intelligence in Bariatric Surgery.

Authors:  Valentina Bellini; Marina Valente; Melania Turetti; Paolo Del Rio; Francesco Saturno; Massimo Maffezzoni; Elena Bignami
Journal:  Obes Surg       Date:  2022-05-26       Impact factor: 3.479

Review 2.  Clinical Applications of Artificial Intelligence-An Updated Overview.

Authors:  Ștefan Busnatu; Adelina-Gabriela Niculescu; Alexandra Bolocan; George E D Petrescu; Dan Nicolae Păduraru; Iulian Năstasă; Mircea Lupușoru; Marius Geantă; Octavian Andronic; Alexandru Mihai Grumezescu; Henrique Martins
Journal:  J Clin Med       Date:  2022-04-18       Impact factor: 4.964

3.  Optimization of anesthetic decision-making in ERAS using Bayesian network.

Authors:  Yuwen Chen; Yiziting Zhu; Kunhua Zhong; Zhiyong Yang; Yujie Li; Xin Shu; Dandan Wang; Peng Deng; Xuehong Bai; Jianteng Gu; Kaizhi Lu; Ju Zhang; Lei Zhao; Tao Zhu; Ke Wei; Bin Yi
Journal:  Front Med (Lausanne)       Date:  2022-09-14
  3 in total

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