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A comprehensive evaluation of multicentric reliability of single-subject cortical morphological networks on traveling subjects

Guole Yin, Ting Li, Suhui Jin, Ningkai Wang, Junle Li, Changwen Wu, Hongjian He, Jinhui Wang

2023Cerebral Cortex26 citationsDOIOpen Access PDF

Abstract

Despite the prevalence of research on single-subject cerebral morphological networks in recent years, whether they can offer a reliable way for multicentric studies remains largely unknown. Using two multicentric datasets of traveling subjects, this work systematically examined the inter-site test-retest (TRT) reliabilities of single-subject cerebral morphological networks, and further evaluated the effects of several key factors. We found that most graph-based network measures exhibited fair to excellent reliabilities regardless of different analytical pipelines. Nevertheless, the reliabilities were affected by choices of morphological index (fractal dimension > sulcal depth > gyrification index > cortical thickness), brain parcellation (high-resolution > low-resolution), thresholding method (proportional > absolute), and network type (binarized > weighted). For the factor of similarity measure, its effects depended on the thresholding method used (absolute: Kullback-Leibler divergence > Jensen-Shannon divergence; proportional: Jensen-Shannon divergence > Kullback-Leibler divergence). Furthermore, longer data acquisition intervals and different scanner software versions significantly reduced the reliabilities. Finally, we showed that inter-site reliabilities were significantly lower than intra-site reliabilities for single-subject cerebral morphological networks. Altogether, our findings propose single-subject cerebral morphological networks as a promising approach for multicentric human connectome studies, and offer recommendations on how to determine analytical pipelines and scanning protocols for obtaining reliable results.

Topics & Concepts

ThresholdingGyrificationConnectomeDivergence (linguistics)Artificial intelligencePattern recognition (psychology)Computer scienceMathematicsStatisticsPsychologyFunctional connectivityNeuroscienceCerebral cortexImage (mathematics)LinguisticsPhilosophyFunctional Brain Connectivity StudiesAdvanced Neuroimaging Techniques and ApplicationsNeural dynamics and brain function