2018
DOI: 10.1101/343442
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Application of mechanistic methods to clinical trials in multiple sclerosis: the simvastatin case

Abstract: Keywords: secondary progressive multiple sclerosis; cholesterol; simvastatin. and a faster decline in serum cholesterol levels (all p <0.05), when compared with placebo.The cholesterol-independent model, in which simvastatin has a direct effect on the clinical outcome measures and brain atrophy, independent of its impact on lowering the serum cholesterol levels, was the more likely model. When we deconstructed the total treatment effect on EDSS and block design, into indirect effects, which were mediated by br… Show more

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Cited by 2 publications
(3 citation statements)
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“…We used an established pipeline as described elsewhere. 21 Briefly, this pipeline included N4 bias field correction, 22 lesion filling 23 (to reduce the effects of hypointense lesions in T1 scans during segmentation), and used the Geodesic Information Flows (GIF) V.3.0 24 to segment the lesion filled T1-weighted images into GM, WM and cerebrospinal fluid (CSF) probability maps, as well as to divide the brain into 120 parcellations according to the Neuromorphometrics atlas. 25 We used GIF because it allows the inclusion of 2D-MRI data and does not require additional manual editing, which for a cohort of this size would have been unfeasible.…”
Section: Methodsmentioning
confidence: 99%
“…We used an established pipeline as described elsewhere. 21 Briefly, this pipeline included N4 bias field correction, 22 lesion filling 23 (to reduce the effects of hypointense lesions in T1 scans during segmentation), and used the Geodesic Information Flows (GIF) V.3.0 24 to segment the lesion filled T1-weighted images into GM, WM and cerebrospinal fluid (CSF) probability maps, as well as to divide the brain into 120 parcellations according to the Neuromorphometrics atlas. 25 We used GIF because it allows the inclusion of 2D-MRI data and does not require additional manual editing, which for a cohort of this size would have been unfeasible.…”
Section: Methodsmentioning
confidence: 99%
“…We used an established pipeline as described elsewhere [18]. Briefly, this pipeline included N4 bias field correction [19], lesion filling [20] (to reduce the effects of hypointense lesions in T1 scans during segmentation), and used the Geodesic Information Flows (GIF) version 3.0 [21] to segment the lesion filled T1-weighted images into GM, white matter (WM), and CSF probability maps, as well as to parcellate the brain into 120 regions according to the Neuromorphometrics atlas [22].…”
Section: Image Processingmentioning
confidence: 99%
“…The 9 networks encompassed mainly the cerebellum, caudate, putamen, thalamus, precuneus, frontal, parietal, temporal and occipital brain regions (ICA-networks6,7,8,9,11,12,15,18,20, whole brain GM, and age). EDSS was significantly associated with component 6 (= -0.19, se= 0.07, t(817.87)= -2.76, p <0.01), component 8 (= 0.17, se= 0.07, t(809.09)= 2.37, p <0.05), component 11 (= 0.15, se= 0.07, t(776.81)= 2.10, p <0.05), component 20 (= 0.15, se= 0.07, t(815.87)= 2.08, p <0.05), and whole brain GM (= -0.17, se= 0.08, t(817.51)= -2.10, p <0.05) (Table 4 in Supplementary materials).…”
mentioning
confidence: 99%