| Literature DB >> 28868253 |
Elodie Doger de Speville1,2,3, Charlotte Robert4,5,6,7, Martin Perez-Guevara8, Antoine Grigis9, Stephanie Bolle4, Clemence Pinaud1,2, Christelle Dufour3, Anne Beaudré4,7, Virginie Kieffer3,10, Audrey Longaud3,11, Jacques Grill3,11, Dominique Valteau-Couanet3,11, Eric Deutsch4,5,6,7, Dimitri Lefkopoulos4,7, Catherine Chiron1,2, Lucie Hertz-Pannier1,2, Marion Noulhiane1,2.
Abstract
Pediatric posterior fossa tumor (PFT) survivors who have been treated with cranial radiation therapy often suffer from cognitive impairments that might relate to IQ decline. Radiotherapy (RT) distinctly affects brain regions involved in different cognitive functions. However, the relative contribution of regional irradiation to the different cognitive impairments still remains unclear. We investigated the relationships between the changes in different cognitive scores and radiation dose distribution in 30 children treated for a PFT. Our exploratory analysis was based on a principal component analysis (PCA) and an ordinary least square regression approach. The use of a PCA was an innovative way to cluster correlated irradiated regions due to similar radiation therapy protocols across patients. Our results suggest an association between working memory decline and a high dose (equivalent uniform dose, EUD) delivered to the orbitofrontal regions, whereas the decline of processing speed seemed more related to EUD in the temporal lobes and posterior fossa. To identify regional effects of RT on cognitive functions may help to propose a rehabilitation program adapted to the risk of cognitive impairment.Entities:
Keywords: cognitive impairments; pediatric; posterior fossa; radiation effects; radiotherapy
Year: 2017 PMID: 28868253 PMCID: PMC5563322 DOI: 10.3389/fonc.2017.00166
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
Absorbed dose and type of fractionation [conformational fractionation (CF) vs. hyperfractionated radiotherapy (HFRT)] prescribed to the cranio-spinal irradiation (CSI) and posterior fossa (PF) for the 17 patients.
| Patients | CSI (Gy) | PF (Gy) | Fractionation |
|---|---|---|---|
| Patient 1 | 18 | 54 | CF |
| Patient 2 | 18 | 54 | CF |
| Patient 3 | 25.2 | 50.4 | CF |
| Patient 4 | 18 | 36 | CF |
| Patient 5 | 18 | 55.4 | CF |
| Patient 6 | 18 | 50.4 | CF |
| Patient 7 | 36 | 54 | CF |
| Patient 8 | 25.2 | 54 | CF |
| Patient 9 | 36 | 68 | HFRT |
| Patient 10 | 36 | 68 | HFRT |
| Patient 11 | 18 | 45 | CF |
| Patient 12 | 36 | 54 | CF |
| Patient 13 | 36 | 68 | HFRT |
| Patient 14 | 36 | 68 | HFRT |
| Patient 15 | 36 | 68 | HFRT |
| Patient 16 | 36 | 68 | HFRT |
| Patient 17 | 36 | 68 | HFRT |
The number of fractions per day and the dose per fraction varied from one patient to another. Some patients received two fractions of 1 Gy per day with an inter fraction of 8 h with HFRT, whereas other patients were treated by CF, i.e., one fraction of 1.82 Gy per day.
Changes in the three measured cognitive scores [Delta (Δ)] with the corresponding number of evaluated patients: mean score change (±SD, range) and mean test interval ΔT (±SD, range).
| Δ scores | Mean (±SD) | Range | Mean [ΔT in years (±SD)] | Range | |
|---|---|---|---|---|---|
| ΔFIQ | 30 | −2.03 (11.70) | [−29; 28] | 3.97 (±2.74) | [1.00; 12.29] |
| ΔPSI | 23 | −0.6 (14.44) | [−28; 41] | 3.74 (±2.30) | [0.89; 9.93] |
| ΔWMI | 14 | −3.66 (9.15) | [−24; 6] | 2.81 (±1.85) | [1.00; 8.14] |
Figure 1Preprocessing pipeline (see Patients and Methods). Step 1: Selection of age appropriate templates. Step 2: Registration of the selected template on individual patient 3DT1 image. Step 3: Registration of individual 3DT1 image to the corresponding individual CT. Step 4: Down-sampling of CT to match the corresponding radiation dose map. Step 5: Registration of the selected template on the individual dose map coordinate system.
Figure 2Steps of the analysis. Step 1: Equating dose maps across patients: EQD2 computation. Step 2: Calculation of dose index in each ROI: equivalent uniform dose computation. Step 3: Principal component analysis approach. Step 4: Highlighting the respective contribution of clinical variables and PC-EUD on clinical scores changes using ordinary least square regression.
Effects on changes of cognitive scores (ΔFSIQ, ΔPSI, and ΔWMI) of the clinical variables and the components of the principal component analysis, according to our models (see Patients and Methods).
| Δ score | Age at diagnosis | ΔT | Chemotherapy | |||||
|---|---|---|---|---|---|---|---|---|
| ΔFSIQ | 30 | −2.14 (0.04) | −2.26 (0.04) | 3.08 (0.01) | −0.35 (0.73) | −1.98 (0.06) | −1.98 (0.06) | 0.43 |
| ΔPSI | 23 | −1.38 (0.18) | −0.31 (0.76) | 1.49 (0.15) | −1.15 (0.27) | −2.31 (0.03) | −2.05 (0.05) | 0.43 |
| ΔWMI | 14 | 0.44 (0.67) | −1.32 (0.22) | 0.44 (0.67) | −3.13 (0.01) | −2.12 (0.06) | −4.09 (0.0001) | 0.80 |
For each variable, .
Figure 3Summary of results: impact of equivalent uniform dose (EUD) principal components on cognitive changes (ΔFSIQ, ΔPSI, and ΔWMI). (A) Effects of EUD components on each cognitive score (ΔFSIQ, ΔPSI, and ΔWMI). The weights of each PC-EUD on the cognitive change are displayed in gray color scale, with significance levels (*p ≤ 0.05: **p ≤ 0.01: ***p ≤ 0.001). (B) Regional effects of EUD. The color scale displays the regional correlation coefficients R between EUD and the PC-EUD in each ROI, i.e., the relative participation of each ROI on each EUD component (with higher positive correlations shown in red, stronger negative correlations in blue).