Allison L Moreau, Aaron J Gorelik, Annchen Knodt, Deanna M Barch, Ahmad R Hariri, Douglas B Samuel, Thomas F Oltmanns, Alexander S Hatoum, Ryan Bogdan
{"title":"利用规范人格数据和机器学习研究强迫性人格障碍特征的大脑结构相关性。","authors":"Allison L Moreau, Aaron J Gorelik, Annchen Knodt, Deanna M Barch, Ahmad R Hariri, Douglas B Samuel, Thomas F Oltmanns, Alexander S Hatoum, Ryan Bogdan","doi":"10.1037/abn0000919","DOIUrl":null,"url":null,"abstract":"<p><p>Brain structure correlates of obsessive-compulsive personality disorder (OCPD) remain poorly understood as limited OCPD assessment has precluded well-powered studies. Here, we tested whether machine learning (ML; elastic net regression, gradient boosting machines, support vector regression with linear and radial kernels) could estimate OCPD scores from personality data and whether ML-predicted scores are associated with indices of brain structure (cortical thickness and surface area and subcortical volumes). Among older adults (ns = 898-1,606) who completed multiple OCPD assessments, ML elastic net regression with Revised NEO Personality Inventory personality items as features best predicted Five-Factor Obsessive-Compulsive Inventory-Short Form (FFOCI-SF) scores, root-mean-squared error (RMSE)/SD = 0.66; performance generalized to a sample of college students (n = 175; RMSE/SD = 0.51). Items from all five-factor model personality traits contributed to predicted FFOCI-SF (p-FFOCI-SF) scores; conscientiousness and openness items were the most influential. In college students (n = 1,253), univariate analyses of cortical thickness, surface area, and subcortical volumes revealed only a positive association between p-FFOCI-SF and right superior frontal gyrus cortical thickness after adjusting for multiple testing (b = 2.21, p = .0014; all other |b|s < 1.04; all other ps > .009). Multivariate ML models of brain features predicting FFOCI, conscientiousness, and neuroticism performed poorly (RMSE/SDs > 1.00). These data reveal that all five-factor model traits contribute to maladaptive OCPD traits and identify greater right superior frontal gyrus cortical thickness as a promising correlate of OCPD for future study. Broadly, this study highlights the utility of ML to estimate unmeasured psychopathology phenotypes in neuroimaging data sets but that our application of ML to neuroimaging may not resolve unreliable associations and small effects characteristic of univariate psychiatric neuroimaging research. (PsycInfo Database Record (c) 2024 APA, all rights reserved).</p>","PeriodicalId":73914,"journal":{"name":"Journal of psychopathology and clinical science","volume":"133 8","pages":"656-666"},"PeriodicalIF":3.1000,"publicationDate":"2024-11-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Leveraging normative personality data and machine learning to examine the brain structure correlates of obsessive-compulsive personality disorder traits.\",\"authors\":\"Allison L Moreau, Aaron J Gorelik, Annchen Knodt, Deanna M Barch, Ahmad R Hariri, Douglas B Samuel, Thomas F Oltmanns, Alexander S Hatoum, Ryan Bogdan\",\"doi\":\"10.1037/abn0000919\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Brain structure correlates of obsessive-compulsive personality disorder (OCPD) remain poorly understood as limited OCPD assessment has precluded well-powered studies. Here, we tested whether machine learning (ML; elastic net regression, gradient boosting machines, support vector regression with linear and radial kernels) could estimate OCPD scores from personality data and whether ML-predicted scores are associated with indices of brain structure (cortical thickness and surface area and subcortical volumes). Among older adults (ns = 898-1,606) who completed multiple OCPD assessments, ML elastic net regression with Revised NEO Personality Inventory personality items as features best predicted Five-Factor Obsessive-Compulsive Inventory-Short Form (FFOCI-SF) scores, root-mean-squared error (RMSE)/SD = 0.66; performance generalized to a sample of college students (n = 175; RMSE/SD = 0.51). Items from all five-factor model personality traits contributed to predicted FFOCI-SF (p-FFOCI-SF) scores; conscientiousness and openness items were the most influential. 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引用次数: 0
摘要
强迫性人格障碍(OCPD)的脑部结构相关性仍然鲜为人知,因为对强迫性人格障碍的评估有限,无法进行有充分证据的研究。在此,我们测试了机器学习(ML;弹性网回归、梯度提升机、带线性和径向核的支持向量回归)是否能从人格数据中估算出 OCPD 分数,以及 ML 预测的分数是否与脑结构指数(皮质厚度和表面积以及皮质下体积)相关。在完成多项 OCPD 评估的老年人(ns = 898-1,606 人)中,以修订版 NEO 人格量表人格项目为特征的 ML 弹性净回归对五因素强迫量表-简表(FFOCI-SF)得分的预测效果最佳,均方根误差(RMSE)/SD = 0.66;在大学生样本(n = 175 人;RMSE/SD = 0.51)中的表现也很普遍。所有五因素模型人格特质中的项目都对预测的 FFOCI-SF (p-FFOCI-SF) 分数有贡献;自觉性和开放性项目的影响最大。在大学生(n = 1,253)中,皮质厚度、表面积和皮质下体积的单变量分析显示,经多重测试调整后,p-FFOCI-SF 与右额叶上回皮质厚度之间仅存在正相关(b = 2.21,p = .0014;所有其他 |b|s < 1.04;所有其他 ps > .009)。预测 FFOCI、自觉性和神经质的大脑特征的多变量 ML 模型表现不佳(RMSE/SDs > 1.00)。这些数据揭示了所有五因素模型特征都有助于形成适应不良的 OCPD 特征,并确定了更大的右额上回皮质厚度是 OCPD 的一个有希望的相关因素,可供今后研究使用。从广义上讲,本研究强调了 ML 在估计神经影像数据集中未测量的精神病理学表型方面的实用性,但我们将 ML 应用于神经影像可能无法解决单变量精神神经影像研究中特有的不可靠关联和小效应问题。(PsycInfo Database Record (c) 2024 APA,保留所有权利)。
Leveraging normative personality data and machine learning to examine the brain structure correlates of obsessive-compulsive personality disorder traits.
Brain structure correlates of obsessive-compulsive personality disorder (OCPD) remain poorly understood as limited OCPD assessment has precluded well-powered studies. Here, we tested whether machine learning (ML; elastic net regression, gradient boosting machines, support vector regression with linear and radial kernels) could estimate OCPD scores from personality data and whether ML-predicted scores are associated with indices of brain structure (cortical thickness and surface area and subcortical volumes). Among older adults (ns = 898-1,606) who completed multiple OCPD assessments, ML elastic net regression with Revised NEO Personality Inventory personality items as features best predicted Five-Factor Obsessive-Compulsive Inventory-Short Form (FFOCI-SF) scores, root-mean-squared error (RMSE)/SD = 0.66; performance generalized to a sample of college students (n = 175; RMSE/SD = 0.51). Items from all five-factor model personality traits contributed to predicted FFOCI-SF (p-FFOCI-SF) scores; conscientiousness and openness items were the most influential. In college students (n = 1,253), univariate analyses of cortical thickness, surface area, and subcortical volumes revealed only a positive association between p-FFOCI-SF and right superior frontal gyrus cortical thickness after adjusting for multiple testing (b = 2.21, p = .0014; all other |b|s < 1.04; all other ps > .009). Multivariate ML models of brain features predicting FFOCI, conscientiousness, and neuroticism performed poorly (RMSE/SDs > 1.00). These data reveal that all five-factor model traits contribute to maladaptive OCPD traits and identify greater right superior frontal gyrus cortical thickness as a promising correlate of OCPD for future study. Broadly, this study highlights the utility of ML to estimate unmeasured psychopathology phenotypes in neuroimaging data sets but that our application of ML to neuroimaging may not resolve unreliable associations and small effects characteristic of univariate psychiatric neuroimaging research. (PsycInfo Database Record (c) 2024 APA, all rights reserved).