Struck Aaron F, Garcia-Ramos Camille, Nair Veena A, Prabhakaran Vivek, Dabbs Kevin, Boly Melanie, Conant Lisa L, Binder Jeffrey R, Meyerand Mary E, Hermann Bruce P
Department of Neurology, University of Wisconsin-Madison, Madison, WI 53726, USA.
Department of Neurology, William S. Middleton Veterans Administration Hospital, Madison, WI 53705, USA.
Brain Commun. 2023 Mar 30;5(2):fcad095. doi: 10.1093/braincomms/fcad095. eCollection 2023.
The relationship between temporal lobe epilepsy and psychopathology has had a long and contentious history with diverse views regarding the presence, nature and severity of emotional-behavioural problems in this patient population. To address these controversies, we take a new person-centred approach through the application of unsupervised machine learning techniques to identify underlying latent groups or behavioural phenotypes. Addressed are the distinct psychopathological profiles, their linked frequency, patterns and severity and the disruptions in morphological and network properties that underlie the identified latent groups. A total of 114 patients and 83 controls from the Epilepsy Connectome Project were administered the Achenbach System of Empirically Based Assessment inventory from which six Diagnostic and Statistical Manual of Mental Disorders-oriented scales were analysed by unsupervised machine learning analytics to identify latent patient groups. Identified clusters were contrasted to controls as well as to each other in order to characterize their association with sociodemographic, clinical epilepsy and morphological and functional imaging network features. The concurrent validity of the behavioural phenotypes was examined through other measures of behaviour and quality of life. Patients overall exhibited significantly higher (abnormal) scores compared with controls. However, cluster analysis identified three latent groups: (i) unaffected, with no scale elevations compared with controls (Cluster 1, 37%); (ii) mild symptomatology characterized by significant elevations across several Diagnostic and Statistical Manual of Mental Disorders-oriented scales compared with controls (Cluster 2, 42%); and (iii) severe symptomatology with significant elevations across all scales compared with controls and the other temporal lobe epilepsy behaviour phenotype groups (Cluster 3, 21%). Concurrent validity of the behavioural phenotype grouping was demonstrated through identical stepwise links to abnormalities on independent measures including the National Institutes of Health Toolbox Emotion Battery and quality of life metrics. There were significant associations between cluster membership and sociodemographic (handedness and education), cognition (processing speed), clinical epilepsy (presence and lifetime number of tonic-clonic seizures) and neuroimaging characteristics (cortical volume and thickness and global graph theory metrics of morphology and resting-state functional MRI). Increasingly dispersed volumetric abnormalities and widespread disruptions in underlying network properties were associated with the most abnormal behavioural phenotype. Psychopathology in these patients is characterized by a series of discrete latent groups that harbour accompanying sociodemographic, clinical and neuroimaging correlates. The underlying neurobiological patterns suggest that the degree of psychopathology is linked to increasingly dispersed abnormal brain networks. Similar to cognition, machine learning approaches support a novel developing taxonomy of the comorbidities of epilepsy.
颞叶癫痫与精神病理学之间的关系有着悠久且存在争议的历史,对于该患者群体中情绪行为问题的存在、性质和严重程度存在多种不同观点。为了解决这些争议,我们采用一种新的以患者为中心的方法,即应用无监督机器学习技术来识别潜在的群体或行为表型。探讨了不同的精神病理学特征、它们的相关频率、模式和严重程度,以及构成所识别潜在群体基础的形态学和网络特性的破坏情况。对癫痫连接组项目中的114名患者和83名对照者进行了基于经验的阿肯巴克评估系统量表测试,并通过无监督机器学习分析对六个基于《精神疾病诊断与统计手册》的量表进行分析,以识别潜在的患者群体。将所识别的聚类与对照者以及彼此进行对比,以表征它们与社会人口统计学、临床癫痫以及形态学和功能成像网络特征的关联。通过其他行为和生活质量测量方法检验了行为表型的同时效度。总体而言,患者的得分显著高于(异常)对照者。然而,聚类分析识别出三个潜在群体:(i)未受影响组,与对照者相比量表得分无升高(第1组,37%);(ii)轻度症状组,与对照者相比,在几个基于《精神疾病诊断与统计手册》的量表上得分显著升高(第2组,42%);(iii)重度症状组,与对照者及其他颞叶癫痫行为表型组相比,所有量表得分均显著升高(第3组,21%)。通过与包括美国国立卫生研究院工具箱情绪量表和生活质量指标在内的独立测量指标上的异常情况存在相同的逐步关联,证明了行为表型分组的同时效度。聚类成员与社会人口统计学(利手和教育程度)、认知(处理速度)、临床癫痫(强直阵挛发作的存在情况和终生发作次数)以及神经影像学特征(皮质体积和厚度以及形态学和静息态功能磁共振成像的全局图论指标)之间存在显著关联。体积异常愈发分散以及基础网络特性的广泛破坏与最异常的行为表型相关。这些患者的精神病理学特征表现为一系列离散的潜在群体,伴有相关的社会人口统计学、临床和神经影像学关联。潜在的神经生物学模式表明,精神病理学程度与愈发分散的异常脑网络有关。与认知情况类似,机器学习方法支持一种关于癫痫共病的新型分类法。