Department of Psychiatry and Biobehavioral Sciences, David Geffen School of Medicine at UCLA, Los Angeles, CA, USA.
Department of Psychiatry and Biobehavioral Sciences, David Geffen School of Medicine at UCLA, Los Angeles, CA, USA.
Neuroimage Clin. 2021;29:102517. doi: 10.1016/j.nicl.2020.102517. Epub 2020 Dec 2.
Individuals with gender incongruence (GI) experience serious distress due to incongruence between their gender identity and birth-assigned sex. Sociological, cultural, interpersonal, and biological factors are likely contributory, and for some individuals medical treatment such as cross-sex hormone therapy and gender-affirming surgery can be helpful. Cross-sex hormone therapy can be effective for reducing body incongruence, but responses vary, and there is no reliable way to predict therapeutic outcomes. We used clinical and MRI data before cross-sex hormone therapy as features to train a machine learning model to predict individuals' post-therapy body congruence (the degree to which photos of their bodies match their self-identities). Twenty-five trans women and trans men with gender incongruence participated. The model significantly predicted post-therapy body congruence, with the highest predictive features coming from the cingulo-opercular (R = 0.41) and fronto-parietal (R = 0.30) networks. This study provides evidence that hormone therapy efficacy can be predicted from information collected before therapy, and that patterns of functional brain connectivity may provide insights into body-brain effects of hormones, affecting one's sense of body congruence. Results could help identify the need for personalized therapies in individuals predicted to have low body-self congruence after standard therapy.
个体的性别不一致(GI)体验到严重的痛苦,由于他们的性别认同和出生分配的性别之间的不一致。社会学、文化、人际和生物因素可能是促成因素,对于一些个体,如跨性别激素治疗和性别肯定手术等医疗治疗可能会有所帮助。跨性别激素治疗可以有效地减少身体的不一致,但反应各不相同,而且没有可靠的方法来预测治疗效果。我们使用跨性别激素治疗前的临床和 MRI 数据作为特征来训练机器学习模型,以预测个体治疗后的身体一致性(他们的身体照片与自我认同的匹配程度)。25 名性别不一致的跨性别女性和跨性别男性参与了研究。该模型显著预测了治疗后的身体一致性,最高的预测特征来自扣带-脑回(R=0.41)和额顶网络(R=0.30)。这项研究提供了证据,表明可以从治疗前收集的信息预测激素治疗的效果,并且大脑功能连接模式可能提供对激素对身体-大脑影响的见解,影响个体的身体一致性感。这些结果可能有助于识别在接受标准治疗后预测身体自我一致性低的个体需要个性化治疗的需求。