Department of Psychiatry and Behavioral Sciences, University of Minnesota, Minneapolis, MN, USA.
Department of Psychology, Harvard University, Cambridge, MA, USA.
Psychol Med. 2021 Jun;51(8):1392-1402. doi: 10.1017/S0033291720000227. Epub 2020 Feb 28.
Psychiatric disorders, including eating disorders (EDs), have clinical outcomes that range widely in severity and chronicity. The ability to predict such outcomes is extremely limited. Machine-learning (ML) approaches that model complexity may optimize the prediction of multifaceted psychiatric behaviors. However, the investigations of many psychiatric concerns have not capitalized on ML to improve prognosis. This study conducted the first comparison of an ML approach (elastic net regularized logistic regression) to traditional regression to longitudinally predict ED outcomes.
Females with heterogeneous ED diagnoses completed demographic and psychiatric assessments at baseline ( = 415) and Year 1 ( = 320) and 2 ( = 277) follow-ups. Elastic net and traditional logistic regression models comprising the same baseline variables were compared in ability to longitudinally predict ED diagnosis, binge eating, compensatory behavior, and underweight BMI at Years 1 and 2.
Elastic net models had higher accuracy for all outcomes at Years 1 and 2 [average Area Under the Receiving Operating Characteristics Curve (AUC) = 0.78] compared to logistic regression (average AUC = 0.67). Model performance did not deteriorate when the most important predictor was removed or an alternative ML algorithm (random forests) was applied. Baseline ED (e.g. diagnosis), psychiatric (e.g. hospitalization), and demographic (e.g. ethnicity) characteristics emerged as important predictors in exploratory predictor importance analyses.
ML algorithms can enhance the prediction of ED symptoms for 2 years and may identify important risk markers. The superior accuracy of ML for predicting complex outcomes suggests that these approaches may ultimately aid in advancing precision medicine for serious psychiatric disorders.
精神疾病,包括饮食失调(ED),其临床结果在严重程度和慢性程度上差异很大。预测这些结果的能力极其有限。能够模拟复杂性的机器学习(ML)方法可能可以优化对多方面精神行为的预测。然而,许多精神疾病的研究并没有利用 ML 来改善预后。本研究首次比较了一种 ML 方法(弹性网络正则逻辑回归)与传统回归,以纵向预测 ED 结果。
具有异质 ED 诊断的女性在基线(n=415)和第 1 年(n=320)和第 2 年(n=277)随访时完成了人口统计学和精神科评估。比较了包含相同基线变量的弹性网络和传统逻辑回归模型,以纵向预测 ED 诊断、暴食、补偿行为和第 1 年和第 2 年的低体重 BMI。
与逻辑回归相比(平均 AUC = 0.67),弹性网络模型在第 1 年和第 2 年对所有结果的准确性更高(平均 AUC = 0.78)。当最重要的预测因素被删除或应用替代 ML 算法(随机森林)时,模型性能不会恶化。基线 ED(例如诊断)、精神科(例如住院)和人口统计学(例如种族)特征在探索性预测因素重要性分析中成为重要的预测因素。
ML 算法可以提高对 ED 症状 2 年的预测能力,并且可能识别重要的风险标志物。ML 对预测复杂结果的更高准确性表明,这些方法最终可能有助于推进严重精神疾病的精准医疗。