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Differentiating weight-restored anorexia nervosa and body dysmorphic disorder using neuroimaging and psychometric markers

机译:使用神经影像学和心理测验标志物区分体重减轻的神经性厌食症和身体变形障碍

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摘要

Anorexia nervosa (AN) and body dysmorphic disorder (BDD) are potentially life-threatening conditions whose partially overlapping phenomenology—distorted perception of appearance, obsessions/compulsions, and limited insight—can make diagnostic distinction difficult in some cases. Accurate diagnosis is crucial, as the effective treatments for AN and BDD differ. To improve diagnostic accuracy and clarify the contributions of each of the multiple underlying factors, we developed a two-stage machine learning model that uses multimodal, neurobiology-based, and symptom-based quantitative data as features: task-based functional magnetic resonance imaging data using body visual stimuli, graph theory metrics of white matter connectivity from diffusor tensor imaging, and anxiety, depression, and insight psychometric scores. In a sample of unmedicated adults with BDD (n = 29), unmedicated adults with weight-restored AN (n = 24), and healthy controls (n = 31), the resulting model labeled individuals with an accuracy of 76%, significantly better than the chance accuracy of 35% (p^<104). In the multivariate model, reduced white matter global efficiency and better insight were associated more with AN than with BDD. These results improve our understanding of the relative contributions of the neurobiological characteristics and symptoms of these disorders. Moreover, this approach has the potential to aid clinicians in diagnosis, thereby leading to more tailored therapy.
机译:神经性厌食症(AN)和身体变形障碍(BDD)是潜在的威胁生命的疾病,其部分重叠的现象学-外观知觉失真,强迫症和有限的洞察力-在某些情况下难以做出诊断区分。准确的诊断至关重要,因为AN和BDD的有效治疗方法有所不同。为了提高诊断准确性并弄清每个潜在因素的影响,我们开发了一个两阶段机器学习模型,该模型使用多峰,基于神经生物学和基于症状的定量数据作为特征:基于任务的功能性磁共振成像数据使用人体视觉刺激,利用扩散扩散张量成像,焦虑,抑郁和洞察力心理测验得分对白质连通性进行图论度量。在未经药物治疗的BDD成人(n = 29),具有体重减轻的AN的未经药物治疗的成人(n = 24)和健康对照(n = 31)的样本中,所得模型以76%的准确性标记个体,明显好于比35%的机会准确度高( <移动者accent =“ true”> p ^ << / mo> 10 < mi mathvariant =“ normal”> ‑ 4 )。在多元模型中,白质的整体效率降低和更好的洞察力与AN的关系大于与BDD的关系。这些结果提高了我们对这些疾病的神经生物学特征和症状的相对贡献的理解。而且,这种方法具有帮助临床医生进行诊断的潜力,从而导致更加定制的治疗。

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