KENIA REPISO CAMPANHOLO

(Fonte: Lattes)
Índice h a partir de 2011
8
Projetos de Pesquisa
Unidades Organizacionais
Instituto do Câncer do Estado de São Paulo, Hospital das Clínicas, Faculdade de Medicina
LIM/43 - Laboratório de Medicina Nuclear, Hospital das Clínicas, Faculdade de Medicina

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  • article 5 Citação(ões) na Scopus
    The effect of lesion filling on brain network analysis in multiple sclerosis using structural magnetic resonance imaging
    (2022) WEIJDEN, Chris W. J. van der; PITOMBEIRA, Milena S.; HAVEMAN, Yudith R. A.; SANCHEZ-CATASUS, Carlos A.; CAMPANHOLO, Kenia R.; KOLINGER, Guilherme D.; RIMKUS, Carolina M.; BUCHPIGUEL, Carlos A.; DIERCKX, Rudi A. J. O.; RENKEN, Remco J.; MEILOF, Jan F.; VRIES, Erik F. J. de; FARIA, Daniele de Paula
    Background Graph theoretical network analysis with structural magnetic resonance imaging (MRI) of multiple sclerosis (MS) patients can be used to assess subtle changes in brain networks. However, the presence of multiple focal brain lesions might impair the accuracy of automatic tissue segmentation methods, and hamper the performance of graph theoretical network analysis. Applying ""lesion filling"" by substituting the voxel intensities of a lesion with the voxel intensities of nearby voxels, thus creating an image devoid of lesions, might improve segmentation and graph theoretical network analysis. This study aims to determine if brain networks are different between MS subtypes and healthy controls (HC) and if the assessment of these differences is affected by lesion filling. Methods The study included 49 MS patients and 19 HC that underwent a T1w, and T2w-FLAIR MRI scan. Graph theoretical network analysis was performed from grey matter fractions extracted from the original T1w-images and T1w-images after lesion filling. Results Artefacts in lesion-filled T1w images correlated positively with total lesion volume (r = 0.84, p < 0.001) and had a major impact on grey matter segmentation accuracy. Differences in sensitivity for network alterations were observed between original T1w data and after application of lesion filling: graph theoretical network analysis obtained from lesion-filled T1w images produced more differences in network organization in MS patients. Conclusion Lesion filling might reduce variability across subjects resulting in an increased detection rate of network alterations in MS, but also induces significant artefacts, and therefore should be applied cautiously especially in individuals with higher lesions loads.