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Predicting Serum Levels of Lithium-Treated Patients: A Supervised Machine Learning Approach.
Hsu, Chih-Wei; Tsai, Shang-Ying; Wang, Liang-Jen; Liang, Chih-Sung; Carvalho, Andre F; Solmi, Marco; Vieta, Eduard; Lin, Pao-Yen; Hu, Chien-An; Kao, Hung-Yu.
Afiliación
  • Hsu CW; Department of Psychiatry, Kaohsiung Chang Gung Memorial Hospital and Chang Gung University College of Medicine, Kaohsiung 83301, Taiwan.
  • Tsai SY; Department of Computer Science and Information Engineering, National Cheng Kung University, Tainan 70101, Taiwan.
  • Wang LJ; Department of Psychiatry, School of Medicine, College of Medicine, Taipei Medical University, Taipei 110301, Taiwan.
  • Liang CS; Department of Psychiatry and Psychiatric Research Center, Taipei Medical University Hospital, Taipei Medical University, Taipei 110301, Taiwan.
  • Carvalho AF; Department of Child and Adolescent Psychiatry, Kaohsiung Chang Gung Memorial Hospital, Chang Gung University College of Medicine, Kaohsiung 83301, Taiwan.
  • Solmi M; National Defense Medical Center, Department of Psychiatry, Beitou Branch, Tri-Service General Hospital, Taipei 112003, Taiwan.
  • Vieta E; National Defense Medical Center, Department of Psychiatry, Taipei 114201, Taiwan.
  • Lin PY; IMPACT (Innovation in Mental and Physical Health and Clinical Treatment) Strategic Research Centre, School of Medicine, Barwon Health, Deakin University, Geelong, VIC 3216, Australia.
  • Hu CA; Psychiatry Department, University of Ottawa, Ottawa, ON K1N 6N5, Canada.
  • Kao HY; The Ottawa Hospital, University of Ottawa, Ottawa, ON K1H 8L6, Canada.
Biomedicines ; 9(11)2021 Oct 28.
Article en En | MEDLINE | ID: mdl-34829787
Routine monitoring of lithium levels is common clinical practice. This is because the lithium prediction strategies available developed by previous studies are still limited due to insufficient prediction performance. Thus, we used machine learning approaches to predict lithium concentration in a large real-world dataset. Real-world data from multicenter electronic medical records were used in different machine learning algorithms to predict: (1) whether the serum level was 0.6-1.2 mmol/L or 0.0-0.6 mmol/L (binary prediction), and (2) its concentration value (continuous prediction). We developed models from 1505 samples through 5-fold cross-validation and used 204 independent samples to test their performance by evaluating their accuracy. Moreover, we ranked the most important clinical features in different models and reconstructed three reduced models with fewer clinical features. For binary and continuous predictions, the average accuracy of these models was 0.70-0.73 and 0.68-0.75, respectively. Seven features were listed as important features related to serum lithium levels of 0.6-1.2 mmol/L or higher lithium concentration, namely older age, lower systolic blood pressure, higher daily and last doses of lithium prescription, concomitant psychotropic drugs with valproic acid and -pine drugs, and comorbid substance-related disorders. After reducing the features in the three new predictive models, the binary or continuous models still had an average accuracy of 0.67-0.74. Machine learning processes complex clinical data and provides a potential tool for predicting lithium concentration. This may help in clinical decision-making and reduce the frequency of serum level monitoring.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Tipo de estudio: Clinical_trials / Prognostic_studies / Risk_factors_studies Idioma: En Revista: Biomedicines Año: 2021 Tipo del documento: Article País de afiliación: Taiwán Pais de publicación: Suiza

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Tipo de estudio: Clinical_trials / Prognostic_studies / Risk_factors_studies Idioma: En Revista: Biomedicines Año: 2021 Tipo del documento: Article País de afiliación: Taiwán Pais de publicación: Suiza