Department of Psychiatry, Boston Children's Hospital, Boston, MA, USA.
Department of Psychiatry, Harvard Medical School, Boston, MA, USA.
Schizophr Bull. 2024 Jul 27;50(4):792-803. doi: 10.1093/schbul/sbad149.
Structural brain alterations are well-established features of schizophrenia but they do not effectively predict disease/disease risk. Similar to polygenic risk scores in genetics, we integrated multifactorial aspects of brain structure into a summary "Neuroscore" and examined its potential as a marker of disease.
We extracted measures from T1-weighted scans and diffusion tensor imaging (DTI) models from three studies with schizophrenia and healthy individuals. We calculated individual-level summary scores (Neuroscores) for T1-weighted and DTI measures and a combined score (Multimodal Neuroscore-MM). We assessed each score's ability to differentiate schizophrenia cases from controls and its relationship to clinical symptomatology, intelligence quotient (IQ), and medication dosage. We assessed Neuroscore specificity by performing all analyses in a more inclusive psychosis sample and by using scores generated from MDD effect sizes.
All Neuroscores significantly differentiated schizophrenia cases from controls (T1 d = 0.56, DTI d = 0.29, MM d = 0.64) to a greater degree than individual brain regions. Higher Neuroscores (ie, increased liability) were associated with lower IQ (T1 β = -0.26, DTI β = -0.15, MM β = -0.30). Higher T1-weighted Neuroscores were associated with higher positive and negative symptom severity (Positive β = 0.21, Negative β = 0.16); Higher Multimodal Neuroscores were associated with higher positive symptom severity (β = 0.30). SZ Neuroscores outperformed MDD Neuroscores in predicting IQ (T1: z = 3.5, q = 0.0007; MM: z = 1.8, q = 0.05).
Neuroscores are a step toward leveraging widespread structural brain alterations in psychosis to identify robust neurobiological markers of disease. Future studies will assess ways to improve neuroscore calculation, including developing the optimal methods to calculate neuroscores and considering disorder overlap.
结构性脑改变是精神分裂症的显著特征,但它们并不能有效地预测疾病/疾病风险。类似于遗传学中的多基因风险评分,我们将大脑结构的多因素方面整合到一个综合的“神经评分”中,并研究了其作为疾病标志物的潜力。
我们从三项包含精神分裂症患者和健康个体的研究中提取了 T1 加权扫描和弥散张量成像(DTI)模型的测量值。我们为 T1 加权和 DTI 测量值以及综合评分(多模态神经评分-MM)计算了个体水平的综合评分(神经评分)。我们评估了每个评分区分精神分裂症患者与对照组的能力及其与临床症状、智商(IQ)和药物剂量的关系。我们通过在更广泛的精神病样本中进行所有分析以及使用来自 MDD 效应量生成的评分来评估神经评分的特异性。
所有神经评分均显著区分了精神分裂症患者与对照组(T1 d = 0.56,DTI d = 0.29,MM d = 0.64),其程度大于个别脑区。较高的神经评分(即,增加的易感性)与较低的 IQ 相关(T1 β = -0.26,DTI β = -0.15,MM β = -0.30)。较高的 T1 加权神经评分与更高的阳性和阴性症状严重程度相关(阳性 β = 0.21,阴性 β = 0.16);较高的多模态神经评分与更高的阳性症状严重程度相关(β = 0.30)。在预测 IQ 方面,SZ 神经评分优于 MDD 神经评分(T1:z = 3.5,q = 0.0007;MM:z = 1.8,q = 0.05)。
神经评分是利用广泛的精神分裂症结构性脑改变来识别疾病稳健神经生物学标志物的一个步骤。未来的研究将评估改善神经评分计算的方法,包括开发计算神经评分的最佳方法和考虑疾病重叠。