Javier Mar1,2,3,4, Ania Gorostiza1,2, Oliver Ibarrondo1,2,3, Carlos Cernuda5, Arantzazu Arrospide1,2,3,4, Álvaro Iruin3,6, Igor Larrañaga1,2, Mikel Tainta2,7,8, Enaitz Ezpeleta5, Ane Alberdi5. 1. Basque Health Service (Osakidetza), Debagoiena Integrated Healthcare Organisation, Research Unit, Arrasate-Mondragón, Guipúzcoa, Spain. 2. Kronikgune Institute for Health Service Research, Barakaldo, Spain. 3. Biodonostia Health Research Institute, Donostia-San Sebastán, Guipúzcoa, Spain. 4. Health Services Research on Chronic Patients Network (REDISSEC), Bilbao, Vizcaya, Spain. 5. Mondragon Unibertsitatea, Faculty of Engineering, Electronics and Computing Department, Arrasate-Mondragon, Gipuzkoa, Spain. 6. Basque Health Service (Osakidetza), Gipuzkoa Mental Health Network, Donostia-San Sebastián, Guipúzcoa, Spain. 7. Department of Neurology, Basque Health Service (Osakidetza), Goierri-Urola Garaia Integrated Healthcare Organisation, Zumarraga, Guipúzcoa, Spain. 8. Fundación CITA-Alzheimer Fundazioa, Donostia-San Sebastián, Guipúzcoa, Spain.
Abstract
BACKGROUND: Neuropsychiatric symptoms (NPS) are the leading cause of the social burden of dementia but their role is underestimated. OBJECTIVE: The objective of the study was to validate predictive models to separately identify psychotic and depressive symptoms in patients diagnosed with dementia using clinical databases representing the whole population to inform decision-makers. METHODS: First, we searched the electronic health records of 4,003 patients with dementia to identify NPS. Second, machine learning (random forest) algorithms were applied to build separate predictive models for psychotic and depressive symptom clusters in the training set (N = 3,003). Third, calibration and discrimination were assessed in the test set (N = 1,000) to assess the performance of the models. RESULTS: Neuropsychiatric symptoms were noted in the electronic health record of 58% of patients. The area under the receiver operating curve reached 0.80 for the psychotic cluster model and 0.74 for the depressive cluster model. The Kappa index and accuracy also showed better discrimination in the psychotic model. Calibration plots indicated that both types of model had less predictive accuracy when the probability of neuropsychiatric symptoms was <25%. The most important variables in the psychotic cluster model were use of risperidone, level of sedation, use of quetiapine and haloperidol and the number of antipsychotics prescribed. In the depressive cluster model, the most important variables were number of antidepressants prescribed, escitalopram use, level of sedation, and age. CONCLUSION: Given their relatively good performance, the predictive models can be used to estimate prevalence of NPS in population databases.
BACKGROUND: Neuropsychiatric symptoms (NPS) are the leading cause of the social burden of dementia but their role is underestimated. OBJECTIVE: The objective of the study was to validate predictive models to separately identify psychotic and depressive symptoms in patients diagnosed with dementia using clinical databases representing the whole population to inform decision-makers. METHODS: First, we searched the electronic health records of 4,003 patients with dementia to identify NPS. Second, machine learning (random forest) algorithms were applied to build separate predictive models for psychotic and depressive symptom clusters in the training set (N = 3,003). Third, calibration and discrimination were assessed in the test set (N = 1,000) to assess the performance of the models. RESULTS: Neuropsychiatric symptoms were noted in the electronic health record of 58% of patients. The area under the receiver operating curve reached 0.80 for the psychotic cluster model and 0.74 for the depressive cluster model. The Kappa index and accuracy also showed better discrimination in the psychotic model. Calibration plots indicated that both types of model had less predictive accuracy when the probability of neuropsychiatric symptoms was <25%. The most important variables in the psychotic cluster model were use of risperidone, level of sedation, use of quetiapine and haloperidol and the number of antipsychotics prescribed. In the depressive cluster model, the most important variables were number of antidepressants prescribed, escitalopram use, level of sedation, and age. CONCLUSION: Given their relatively good performance, the predictive models can be used to estimate prevalence of NPS in population databases.
Authors: Oliver Ibarrondo; José María Huerta; Pilar Amiano; María Encarnación Andreu-Reinón; Olatz Mokoroa; Eva Ardanaz; Rosa Larumbe; Sandra M Colorado-Yohar; Fernando Navarro-Mateu; María Dolores Chirlaque; Javier Mar Journal: J Alzheimers Dis Date: 2022 Impact factor: 4.160
Authors: Oliver Ibarrondo; Maíra Aguiar; Nico Stollenwerk; Rubén Blasco-Aguado; Igor Larrañaga; Joseba Bidaurrazaga; Carlo Delfin S Estadilla; Javier Mar Journal: Int J Environ Res Public Health Date: 2022-10-05 Impact factor: 4.614
Authors: Aaqib Shehzad; Kenneth Rockwood; Justin Stanley; Taylor Dunn; Susan E Howlett Journal: J Med Internet Res Date: 2020-11-11 Impact factor: 5.428