Department of Psychiatry and Behavioural Neurosciences, McMaster University, Hamilton, ON, Canada. Seniors Mental Health Program, St. Joseph's Healthcare Hamilton, ON, Canada.
Instituto Nacional de Ciência e Tecnologia de Medicina Molecular (INCT-MM), Universidade Federal de Minas Gerais (UFMG), MG, Brazil.
Braz J Psychiatry. 2023 May 11;45(2):127-131. doi: 10.47626/1516-4446-2022-2811.
Childhood maltreatment (CM) is a significant risk factor for the development and severity of bipolar disorder (BD) with increased risk of suicide attempts (SA). This study evaluated whether a machine learning algorithm could be trained to predict if a patient with BD has a history of CM or previous SA based on brain metabolism measured by positron emission tomography.
Thirty-six euthymic patients diagnosed with BD type I, with and without a history of CM were assessed using the Childhood Trauma Questionnaire. Suicide attempts were assessed through the Mini International Neuropsychiatric Interview (MINI-Plus) and a semi-structured interview. Resting-state positron emission tomography with 18F-fluorodeoxyglucose was conducted, electing only grey matter voxels through the Statistical Parametric Mapping toolbox. Imaging analysis was performed using a supervised machine learning approach following Gaussian Process Classification.
Patients were divided into 18 participants with a history of CM and 18 participants without it, along with 18 individuals with previous SA and 18 individuals without such history. The predictions for CM and SA were not significant (accuracy = 41.67%; p = 0.879).
Further investigation is needed to improve the accuracy of machine learning, as its predictive qualities could potentially be highly useful in determining histories and possible outcomes of high-risk psychiatric patients.
儿童期虐待(CM)是双相障碍(BD)发展和严重程度的重要危险因素,自杀未遂(SA)的风险增加。本研究评估了一种机器学习算法是否可以根据正电子发射断层扫描测量的大脑代谢来预测患有 BD 的患者是否有 CM 病史或既往 SA。
使用儿童创伤问卷评估 36 名处于稳定期的被诊断为 I 型 BD 的患者,这些患者有无 CM 病史。通过 Mini International Neuropsychiatric Interview(MINI-Plus)和半结构化访谈评估自杀未遂。使用 18F-氟脱氧葡萄糖进行静息状态正电子发射断层扫描,通过统计参数映射工具箱选择仅灰质体素。使用监督机器学习方法进行成像分析,采用高斯过程分类。
患者被分为 18 名有 CM 病史的参与者和 18 名没有 CM 病史的参与者,以及 18 名有既往 SA 的参与者和 18 名没有 SA 病史的参与者。对 CM 和 SA 的预测没有显著意义(准确率=41.67%;p=0.879)。
需要进一步研究以提高机器学习的准确性,因为其预测质量可能对确定高风险精神科患者的病史和可能的结果非常有用。