| Literature DB >> 25183543 |
S Kulikova1, L Hertz-Pannier2,3, G Dehaene-Lambertz4, A Buzmakov5, C Poupon6, J Dubois4.
Abstract
In vivo evaluation of the brain white matter maturation is still a challenging task with no existing gold standards. In this article we propose an original approach to evaluate the early maturation of the white matter bundles, which is based on comparison of infant and adult groups using the Mahalanobis distance computed from four complementary MRI parameters: quantitative qT1 and qT2 relaxation times, longitudinal λ║ and transverse λ⊥ diffusivities from diffusion tensor imaging. Such multi-parametric approach is expected to better describe maturational asynchrony than conventional univariate approaches because it takes into account complementary dependencies of the parameters on different maturational processes, notably the decrease in water content and the myelination. Our approach was tested on 17 healthy infants (aged 3- to 21-week old) for 18 different bundles. It finely confirmed maturational asynchrony across the bundles: the spino-thalamic tract, the optic radiations, the cortico-spinal tract and the fornix have the most advanced maturation, while the superior longitudinal and arcuate fasciculi, the anterior limb of the internal capsule and the external capsule have the most delayed maturation. Furthermore, this approach was more reliable than univariate approaches as it revealed more maturational relationships between the bundles and did not violate a priori assumptions on the temporal order of the bundle maturation. Mahalanobis distances decreased exponentially with age in all bundles, with the only difference between them explained by different onsets of maturation. Estimation of these relative delays confirmed that the most dramatic changes occur during the first post-natal year.Entities:
Keywords: Brain development; Bundles; Diffusion tensor Imaging DTI; Infants; Mahalanobis distance; T1 and T2 relaxometry; White matter
Mesh:
Year: 2014 PMID: 25183543 PMCID: PMC4575699 DOI: 10.1007/s00429-014-0881-y
Source DB: PubMed Journal: Brain Struct Funct ISSN: 1863-2653 Impact factor: 3.270
Fig. 1Quantitative maps of MRI parameters. Maps of DTI parameters and relaxation times are presented for a 6-week-old infant
Fig. 2Quantification of the MRI parameters over the infant and adult groups. Mean and standard deviations of the parameters are shown across the bundles in the infant (light boxes) and adult (dark boxes) groups. Asterisk indicates that variations in the infant group could be attributed to the age-related changes by performing linear regressions with age (R 2 > 0.46, p < 0.05)
Fig. 3Bundle maturational order revealed by the Mahalanobis distance. a Mahalanobis distances to the adult stage progressively decreased with the infants’ age in all bundles and were modeled by linear fitting over this short developmental period. The rate of decrease was slower in the bundles already advanced in maturation (smaller distances) than in those showing higher distances to the adult bundles (see Fig. 4). b Maturational relationships between the bundles are represented as a graph. Bundles showing advanced maturation are close to the bottom; those with delayed maturation are on the top. Gray lines (between CGsup and ILF; UF and EC) mark relationships that failed to reach statistical significance (0.05 < p < 0.1). Relative maturational delays (in weeks) between the bundles or bundle groups are indicated on the right side. Delays between the spino-thalamic tract (STT) and other bundles were not considered (see text for explanations). See Fig. 2 for abbreviations
Fig. 4Relationship between the speed of changes of the Mahalanobis distance and the maturational stage. For each bundle b, the age-related decrease in the Mahalanobis distance was modeled by a linear approximation: . Across the bundles, the corresponding slopes linearly increased with the mean Mahalanobis distances (R 2 = 0.89)
Comparison of the Mahalanobis distance approach (M) with other univariate approaches
|
| violations | Prediction errors (%) | |
|---|---|---|---|
| M | 142 | – | 17 ± 8 |
| FA | 74 | 1. Spino-thalamic tract was among the least mature bundles. | 46 ± 20 |
| 2. Optic radiations and anterior limb of the internal capsule were at the same immature level. | |||
| <D> | 72 | Optic radiations and anterior limb of the internal capsule were placed at the same intermediate maturational level. | 45 ± 24 |
| λ║ | 76 | – | 54 ± 38 |
| λ⊥ | 70 | 1. Optic radiations were less advanced in maturation than anterior limb of the internal capsule. | 44 ± 21 |
| 2. Cortico-spinal tract and anterior limb of the internal capsule were at the same maturational level. | |||
| qT1 | 90 | Optic radiations were among the least mature bundles. | 27 ± 20 |
| qT2 | 89 | Optic radiations and arcuate fasciculus were placed at the same intermediate maturational level | 21 ± 10 |
Mahalanobis distance was able to discriminate more maturational relationships between the bundles (n out of 153) than other univariate approaches and it did not violate a priori known maturational relationships (violations). Additionally, prediction errors (in %) of the maturational age in the leave-one-out validation were smaller for Mahalanobis distance approach than for other univariate approaches (for details see Online Resource 2)
Exponential fitting of the Mahalanobis distance (Eq. 4) for different bundles
| CSTinf | CSTmid | CSTsup | STT | OR | ALIC | |
|---|---|---|---|---|---|---|
|
| 29.2 | 20.4 | 36.4 | 7.3 | 16.6 | 64.4 |
Bundle-related coefficients are specified here: they were further used for calculation of the relative maturational delays between the bundles or bundle groups (Eq. 6). See Fig. 2 for abbreviations
Evaluation of the maturational model in a 34-week-old infant
| CSTinf | CSTmid | CSTsup | STT | OR | ALIC | |
|---|---|---|---|---|---|---|
| Predicted | 10.3 | 7.2 | 12.8 | 2.6 | 5.8 | 22.6 |
| True | 9.8 | 5.4 | 11.6 | 3.9 | 5.7 | 24.8 |
| Error (%) | 5 | 33 | 11 | 33 | 1 | 9 |
For each bundle, the value of the Mahalanobis distance predicted by the maturational model (Eq. 4) and the true value calculated using Eq. 3, are detailed. The average prediction error across the bundles was 13.5 %. See Fig. 2 for abbreviations