A New Hypergraph Clustering Method For Exploring Transdiagnostic Biotypes In Mental Illnesses: Application To Schizophrenia And Psychotic Bipolar Disorder

Yuhui Du, Ju Niu, V. Calhoun
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引用次数: 1

Abstract

It is difficult to distinguish schizophrenia (SZ) and bipolar disorder with psychosis (BPP) due to their overlapping symptoms. Indeed, there has been evidence supporting different subtypes within them. Data-driven clustering approaches are commonly used to explore biologically meaningful biotypes using neuroimaging features. However, previous studies typically consider pair-wise subject relationships. Here, we propose a hypergraph clustering method to explore biotypes. Our method extracts high-order features via hyperedges sampling, measures similarity and then regroups subjects using community detection. We applied it to identify biotypes of 100 BPP and 100 SZ patients using brain functional connectivity estimated from resting-state fMRI data, and compared with solutions from K-means and normalized cut (Ncut). Two reliable biotypes were identified and had greater differences in functional connectivity than groups determined by clinical diagnosis. Our method also outperformed K-means and Ncut for the clustering ability and computation efficiency. In summary, the proposed method is promising for developing biotypes, targeting accurate clinical diagnosis for psychosis.
探索精神疾病跨诊断生物型的超图聚类新方法:在精神分裂症和精神病性双相情感障碍中的应用
精神分裂症(SZ)和双相情感障碍与精神病(BPP)由于症状重叠而难以区分。事实上,有证据表明它们有不同的亚型。数据驱动的聚类方法通常用于利用神经影像学特征探索生物学上有意义的生物型。然而,以前的研究通常考虑成对的受试者关系。在这里,我们提出了一种超图聚类方法来探索生物型。我们的方法通过超边缘采样提取高阶特征,测量相似度,然后使用社区检测对主题进行重新分组。我们利用静息状态fMRI数据估计的脑功能连通性来识别100名BPP和100名SZ患者的生物型,并与K-means和归一化切割(Ncut)的解决方案进行比较。确定了两种可靠的生物型,与临床诊断确定的组相比,它们在功能连接方面具有更大的差异。我们的方法在聚类能力和计算效率方面也优于K-means和Ncut。综上所述,该方法有望用于开发生物型,针对精神病的准确临床诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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