Rocha Natalia P, Mwangi Benson, Gutierrez Candano Carlos A, Sampaio Cristina, Furr Stimming Erin, Teixeira Antonio L
Department of Psychiatry and Behavioral Sciences, McGovern Medical School, The University of Texas Health Science Center at Houston (UTHealth), Houston, TX, United States.
HDSA Center of Excellence at University of Texas Health Science Center at Houston, Houston, TX, United States.
Front Neurol. 2018 Nov 6;9:930. doi: 10.3389/fneur.2018.00930. eCollection 2018.
Psychotic symptoms have been under-investigated in Huntington's disease (HD) and research is needed in order to elucidate the characteristics linked to the unique phenotype of HD patients presenting with psychosis. To evaluate the frequency and factors associated with psychosis in HD. Cross-sectional study including manifest individuals with HD from the Enroll-HD database. Both conventional statistical analysis (Stepwise Binary Logistic Regression) and five machine learning algorithms [Least Absolute Shrinkage and Selection Operator (LASSO); Elastic Net; Support Vector Machines (SVM); Random Forest; and class-weighted SVM] were used to describe factors associated with psychosis in manifest HD patients. Approximately 11% of patients with HD presented history of psychosis. Logistic regression analysis indicated that younger age at HD clinical diagnosis, lower number of CAG repeats, history of [alcohol use disorders, depression, violent/aggressive behavior and perseverative/obsessive behavior], lower total functional capacity score, and longer time to complete trail making test-B were associated with psychosis. All machine learning algorithms were significant (chi-square < 0.05) and capable of distinguishing individual HD patients with history of psychosis from those without a history of psychosis with prediction accuracy around 71-73%. The most relevant variables were similar to those found in the conventional analyses. Psychiatric and behavioral symptoms as well as poorer cognitive performance were related to psychosis in HD. In addition, psychosis was associated with lower number of CAG repeats and younger age at clinical diagnosis of HD, suggesting that these patients may represent a unique phenotype in the HD spectrum.
亨廷顿舞蹈症(HD)中的精神病性症状一直未得到充分研究,需要开展研究以阐明与出现精神病症状的HD患者独特表型相关的特征。目的是评估HD中精神病性症状的发生率及相关因素。这是一项横断面研究,纳入了来自Enroll-HD数据库的显性HD个体。采用传统统计分析(逐步二元逻辑回归)和五种机器学习算法[最小绝对收缩和选择算子(LASSO);弹性网络;支持向量机(SVM);随机森林;以及类加权SVM]来描述显性HD患者中与精神病性症状相关的因素。约11%的HD患者有精神病病史。逻辑回归分析表明,HD临床诊断时年龄较小、CAG重复次数较少、有[酒精使用障碍、抑郁、暴力/攻击行为和持续性/强迫行为]病史、总功能能力得分较低以及完成连线测验B的时间较长与精神病性症状相关。所有机器学习算法均具有显著性(卡方<0.05),并且能够将有精神病病史的HD个体与无精神病病史的个体区分开来,预测准确率约为71-73%。最相关的变量与传统分析中发现的变量相似。精神和行为症状以及较差的认知表现与HD中的精神病性症状有关。此外,精神病性症状与HD临床诊断时CAG重复次数较少和年龄较小有关,这表明这些患者可能代表HD谱系中的一种独特表型。