Machine Learning Algorithm-Based Prediction Model for the Augmented Use of Clozapine with Electroconvulsive Therapy in Patients with Schizophreniaopen access
- Authors
- Oh, Hong Seok; Lee, Bong Ju; Lee, Yu Sang; Jang, Ok-Jin; Nakagami, Yukako; Inada, Toshiya; Kato, Takahiro A.; Kanba, Shigenobu; Chong, Mian-Yoon; Lin, Sih-Ku; Si, Tianmei; Xiang, Yu-Tao; Avasthi, Ajit; Grover, Sandeep; Kallivayalil, Roy Abraham; Pariwatcharakul, Pornjira; Chee, Kok Yoon; Tanra, Andi J.; Rabbani, Golam; Javed, Afzal; Kathiarachchi, Samudra; Myint, Win Aung; Cuong, Tran Van; Wang, Yuxi; Sim, Kang; Sartorius, Norman; Tan, Chay-Hoon; Shinfuku, Naotaka; Park, Yong Chon; Park, Seon-Cheol
- Issue Date
- Jun-2022
- Publisher
- MDPI
- Keywords
- schizophrenia; clozapine; electroconvulsive therapy (ECT); augmentation; machine learning; precision medicine
- Citation
- JOURNAL OF PERSONALIZED MEDICINE, v.12, no.6, pp 1 - 13
- Pages
- 13
- Indexed
- SCIE
SCOPUS
- Journal Title
- JOURNAL OF PERSONALIZED MEDICINE
- Volume
- 12
- Number
- 6
- Start Page
- 1
- End Page
- 13
- URI
- https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/203201
- DOI
- 10.3390/jpm12060969
- ISSN
- 2075-4426
2075-4426
- Abstract
- The augmentation of clozapine with electroconvulsive therapy (ECT) has been an optimal treatment option for patients with treatment- or clozapine-resistant schizophrenia. Using data from the Research on Asian Psychotropic Prescription Patterns for Antipsychotics survey, which was the largest international psychiatry research collaboration in Asia, our study aimed to develop a machine learning algorithm-based substantial prediction model for the augmented use of clozapine with ECT in patients with schizophrenia in terms of precision medicine. A random forest model and least absolute shrinkage and selection operator (LASSO) model were used to develop a substantial prediction model for the augmented use of clozapine with ECT. Among the 3744 Asian patients with schizophrenia, those treated with a combination of clozapine and ECT were characterized by significantly greater proportions of females and inpatients, a longer duration of illness, and a greater prevalence of negative symptoms and social or occupational dysfunction than those not treated. In the random forest model, the area under the curve (AUC), which was the most preferred indicator of the prediction model, was 0.774. The overall accuracy was 0.817 (95% confidence interval, 0.793-0.839). Inpatient status was the most important variable in the substantial prediction model, followed by BMI, age, social or occupational dysfunction, persistent symptoms, illness duration > 20 years, and others. Furthermore, the AUC and overall accuracy of the LASSO model were 0.831 and 0.644 (95% CI, 0.615-0.672), respectively. Despite the subtle differences in both AUC and overall accuracy of the random forest model and LASSO model, the important variables were commonly shared by the two models. Using the machine learning algorithm, our findings allow the development of a substantial prediction model for the augmented use of clozapine with ECT in Asian patients with schizophrenia. This substantial prediction model can support further studies to develop a substantial prediction model for the augmented use of clozapine with ECT in patients with schizophrenia in a strict epidemiological context.
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