Skip to main content
Erschienen in: Child's Nervous System 7/2020

Open Access 18.02.2020 | Original Article

Preoperative prediction of postoperative cerebellar mutism syndrome. Validation of existing MRI models and proposal of the new Rotterdam pCMS prediction model

verfasst von: Dhaenens BAE, Van Veelen MLC, CE Catsman-Berrevoets

Erschienen in: Child's Nervous System | Ausgabe 7/2020

Abstract

Purpose

Postoperative cerebellar mutism syndrome (pCMS) is a complication that may occur after pediatric fossa posterior tumor surgery. Liu et al. developed an MRI-based prediction model to estimate pCMS risk preoperatively. The goal of this study was to validate the model of Liu et al. and if validation was not as sensitive in our group as previously described to develop an easy to use, reliable, and sensitive preoperative risk prediction model for pCMS.

Methods

In this study, 121children with a fossa posterior tumor who underwent surgery at ErasmusMC/Sophia Children’s Hospital, the Netherlands between 2004 and 2018 could be included. Twenty-six percent of them developed pCMS. Preoperative MRI were scored using the Liu et al. model.

Results

The Liu et al. model reached an accuracy of 78%, a sensitivity of 58%, and a specificity of 84% in our cohort. In a new risk model some of the variables of Liu et al. were included as well as some of the recently described preoperative MRI characteristics in pCMS patients by Zhang et al. The new model reached an accuracy of 87%, a sensitivity of 97%, and a specificity of 84% in our patient group.

Conclusion

Because the Liu et al. model did not provide an as accurate risk prediction in our cohort as was expected, we created a new risk prediction model that reached high model accuracy in our cohort that could assist neurosurgeons in determining their surgical tactics and help prepare high risk patients and their parents for this severe complication.
Begleitmaterial
Hinweise

Electronic supplementary material

The online version of this article (https://​doi.​org/​10.​1007/​s00381-020-04535-4) contains supplementary material, which is available to authorized users.

Publisher’s note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Introduction

Cerebellar mutism syndrome (CMS) may occur as a complication in up to 2–29% of children after posterior fossa tumor surgery [1, 2]. The core symptom of postoperative CMS (pCMS) is mutism or occasionally a very severe reduction of speech, which can be accompanied in varying combinations and severity by irritability, ataxia and hypotonia, long tract signs, cranial nerve palsies, oropharyngeal dyspraxia, and behavioral symptoms such as whining, high-pitched crying, and apathy [3].
The exact pathophysiology of pCMS is unknown but it is suspected that functional and/or anatomical interruption of the reciprocal cerebello-cerebral pathway plays a vital role [46]. Damage to this pathway may lead to diaschisis: a sudden decrease in input from the dentato-thalamo-cerebral (DTC) tract that results in a temporary loss of function of corresponding parts of the cerebral cortex [7]. Risk factors for pCMS that were significant in multiple studies are midline location of the tumor [8], brainstem invasion [8, 9], the tumor being a large size (> 5 cm in diameter) medulloblastoma [4, 7, 8], and presurgical language impairment (PLI)) [6, 10, 11].
The onset of pCMS is delayed by hours to several days after surgery [4, 9], may last from a few days to several months [5], and the mutism resolves spontaneously [2, 4, 9]. Other symptoms may not normalize completely [4, 7, 10, 1215]. Long-term neurological symptoms, including persistent ataxia, deficits of language and speech, and intellectual handicaps are reported in children with pCMS symptoms of more than 4 weeks duration after medulloblastoma surgery [6, 9, 10, 16, 17]. Also, more severe long-term neuropsychological deficits were found in children with pCMS 1 year after medulloblastoma surgery compared with a matched medulloblastoma group without pCMS [18].
Given the severity of these long-term impairments, prevention of pCMS is crucial. An accurate and easy to use risk model that predicts which patient is at high risk for developing pCMS, and which patient is not, would ameliorate preoperative information for patients and parents and could help to stratify patients for relatively sparing surgical techniques [19]. Liu et al. developed a scoring system based on preoperative MRI to predict the chance of pCMS occurrence [19]. Through a retrospective cohort analysis, they identified five predictors that, when put into a model, yielded the highest accuracy and least number of false negatives: cerebellar hemisphere location of the tumor (preventive factor for pCMS), cerebellar hemisphere invasion, bilateral median cerebellar peduncle invasion and/or compression, dentate nucleus invasion, and age at imaging > 12.4 years. Using this model, they reached in their cohort an accuracy of 88.8%, a sensitivity of 96.2%, and specificity of 85.7%. However, to the best of our knowledge, no studies are published in which their results were validated in other cohorts. Recently, Zhang et al. also described reproducible measurable factors on preoperative MRI that proved to be risk factors for pCMS [20]. In this retrospective case matched study of 46 medulloblastoma patients of which 23 had developed pCMS that they found as reproducible predictors:
1.
Compression of cerebellum and brainstem (quantified by the A(axi)/d(axi) ratio, A(axi) being the angle between the tumor and the bottom of the basilar artery and d(axi) being the nearest distance from the bottom of the basilar artery to the tumor (Fig. 1))
 
2.
Compression of the upper brainstem (quantified by A(cor)/d(cor) ratio. A(cor) was defined as the angle between the tumor and the bottom of the third ventricle, d(cor) as the nearest distance from tumor to the bottom of the third ventricle)
 
3.
The distance from the upper to lower point of the brainstem invaded by tumor, multiplied by d(sag), the depth of invasion of the brainstem; Dsag*dsag (Fig. 1)
 
4.
Evan’s index as a measure of obstructive hydrocephalus (ratio between the greatest distance of the frontal horns and the brain parenchyma).
 
However, they did not as yet apply their risk factors into a predictive model. The primary focus of this paper was to apply the Liu et al. scoring system to the children in our cohort and evaluate the reproducibility of their results to predict pCMS after cerebellar tumor surgery [19]. In this cohort, we also evaluated the validity of the measurements reported by Zhang et al. [20] and aimed to ameliorate the prediction model, when applicable.

Methods

Study population

We included in this retrospective study all 2–18 years old children who underwent fossa posterior tumor surgery in our hospital between 2004 and 2018. All children with a posterior fossa tumor have a routine postoperative follow-up paying particular attention to signs and symptoms of pCMS by means of neurological evaluations at regular intervals. Patients with missing preoperative MRI-scans or age younger than 2 years were excluded. Language development is limited in this young age group, making an accurate diagnosis of mutism as a part of pCMS difficult. Children were attributed to either the group that developed pCMS or the non-pCMS group. Information on age at surgery, gender, and occurrence and duration of pCMS was collected from the electronic patient system. pCMS was diagnosed according to the definition based on the Iceland Delphi results as described by Gudrunardottir et al. [3].

Image analysis

The imaging features measured and scored in this study were carried out according to the methods used by Liu et al. [19] and Zhang et al. [20] (Table 1). For a definition of imaging features, we refer to the table from the publication by Liu et al. [19] In addition, we decided to measure Zhang et al.’s D(sag) and d(sag) irrespective of the tumor compressing or invading the brainstem. In addition to Zhang et al.’s measures, we calculated in a midsagittal section the tumor area compressing and or invading the brainstem by delineating the tumor compressing/invading the brainstem up to the D(sagittal) line indicating this measure as area sagittal: A(sagittal) (Fig. 2). The MRI-scans were assessed by a trained medical (master) student (BD). Following the initial assessment, an experienced pediatric neurologist also reviewed the scans (CC-B). Results were discussed and adjusted if deemed necessary.
Table 1
Definitions of measurements by Zhang et al. [20] and the measurement the area of tumor invasion and/or compression, which were used in our study
Measurement
Unit
Description
A(axial)
Degrees (°)
Angle between bottom of the basilar artery and the tumor.
d(axial)
Centimeters
Nearest distance from basilar artery to tumor.
D(sagittal)
Centimeters
Distance from the upper point to the lower point of the brainstem invaded by the tumor.
d(sagittal)
Centimeters
Depth of the invasion and/or compression of the brainstem by the tumor.
A(sagittal)
Square centimeters
Using the D(sagittal) line as reference, the area of invasion and/or compression of the brainstem by the tumor measured by hand. Measured at the level of greatest compression/invasion (Fig. 2).
Evan’s index
 
The ratio between the maximal diameter of the frontal horns and the inner diameter of the skull.

Statistical analysis

The study population was characterized by descriptive statistics. The two groups were compared using T test, chi-square, and Fisher’s exact test where appropriate. In order to identify possible risk factors for pCMS, odds ratios (OR’s) and 95% confidence intervals were calculated using logistic regression. Valuables that reached statistical significance (p < 0.05) in univariate analysis were then used as input in stepwise, backward, and forward multivariable logistic regression analysis. Risk models were developed based on the results from multivariate logistic regression, goodness of fit, and the classification table calculated by SPSS. Risk models were judged by their applicability and usefulness in the clinical setting. Following the method described by Liu et al. [19], risk scores for each predictor were calculated by adjusting the OR for age and gender, then multiplying the logistic regression coefficients by ten. In order to limit the number of possible total risk scores, the risks scores were truncated to the nearest integer divisible by 5 (5, 10, 15 etc.). Correlation analysis and linear regression were used to evaluate a possible connection between variables and the length of pCMS. All analyses were performed using SPSS version 24 for Windows and Mac.

Ethical approvals

Because of retrospective nature of the study and the fact that all data were collected as part of usual clinical care, ethical approval was not necessary for this study.

Results

Of the 160 patients that underwent posterior fossa tumor surgery in the given time period, 39 children were excluded because of missing preoperative MRI (n = 14) or age younger than 2 years (n = 25). Of the 121 patients included in the analysis, 31 children were attributed to the pCMS group (26%) and 90 children in the non-pCMS group. Relevant data are shown in Table 1. No statistical significant difference in age and gender was found between groups.
On preoperative MRI, 70% of the tumors were located in the midline (vermis and fourth ventricle) and 25% were located in the cerebellar hemispheres. Based on MRI characteristics, the tumor was preoperatively suspected to be a medulloblastoma (MB) in 37%, pilocytic astrocytoma (PA) in 33%, and ependymoma (Ep) in 21% of children. In contrast the final histopathological diagnosis was MB in 47% PA in 43% and Ep in 6% of children (Table 2).
Table 2
Distribution of relevant variables in the total cohort, the pCMS and non-pCMS group, with crude odds ratios and p values
Patients
Total (n = 121)
pCMS (n = 31)
Non pCMS (n = 90)
  
 
n
%
n
%
N
%
OR
p value
Age
      
0.94
0.183
  Mean ± SD
9.1 ± 4.6
 
8.2 ± 4.3
 
9.5 ± 4.6
   
Gender
      
0.44
0.085
  Male
78
64
24
77
54
60
  
  Female
43
36
7
23
36
40
  
Preoperative MRI diagnosis
        
  Medulloblastoma
45
37
20
65
25
28
4.73
< 0.001
  Pilocytic astrocytoma
40
33
2
7
38
42
0.09
0.002
  Ependymoma
25
21
9
29
16
18
1.89
0.186
  Other
7
6
0
0
7
8
  
Histopathology
  Medulloblastoma
57
47
26
84
31
34
9.89
< 0.001
  Pilocytic astrocytoma
52
43
4
13
48
53
0.13
< 0.001
  Ependymoma
7
6
1
3
6
7
0.47
0.489
  Other
5
4
0
0
5
6
  
Tumor location on MRI
  Vermis
72
59
29
93
43
48
15.85
< 0.001
  Cerebellar hemisphere
30
25
0
0
30
33
  
  Fourth ventricle
12
10
2
7
10
11
0.55
0.460
  Other
7
6
0
0
7
8
  
Values in italics: p < 0.05, n = number of patients, pCMS = postoperative cerebellar mutism syndrome, OR = odds ratio

Risk factors for pCMS

In our cohort, seven variables were found to be significant risk factors for pCMS in univariate logistic regression (Tables 2 and 3): preoperative radiological diagnosis of MB (OR 4.73), histopathological diagnosis of MB (OR 9.9), tumor location on MRI in the vermis (OR 15.85), tumor invasion on MRI into the brainstem (OR 32.79), tumor invasion on MRI into the fourth ventricle (OR 26.25), and tumor invasion on MRI into the middle (MCP) (OR 16.55), and superior cerebellar peduncle (SCP) (OR 11.08). PA, either by radiological diagnosis (OR 0.09) or histopathological diagnosis (OR 0.13), reduced pCMS risk. Also, tumor location in the cerebellar hemisphere showed a protective effect: of the 30 patients with a tumor in this location, none developed pCMS. Compression of a cerebellar hemisphere also slightly reduced pCMS risk (OR 0.25).
Table 3
Distribution of MRI features in the pCMS and non-pCMS group, with corresponding crude odds ratios and 95% confidence intervals
Patients
Total (n = 121)
pCMS (n = 31)
Non pCMS (n = 90)
   
 
n
%
n
%
n
%
OR
p value
95% CI
Vermis invasion
99
81.8
31
100
68
75.6
   
Vermis compression
116
95.9
31
100
85
94.4
   
Brainstem invasion
73
60.3
30
96.8
43
47.8
32.79
0.001
4.286–250.883
Brainstem compression
95
78.5
25
80.6
70
77.8
1.19
0.738
0.429–3.302
4th ventricle invasion
78
64.5
30
96.8
48
53.3
26.25
0.002
3.431–200.861
4th ventricle compression
113
93.4
31
100
82
91.1
   
CH invasion
68
56.2
13
41.9
55
61.1
0.46
0.066
0.200–1.054
Left
44
36.4
8
25.8
36
40
0.52
0.160
0.210–1.294
Right
33
27.3
8
25.8
25
27.8
0.90
0.832
0.358–2.286
Both sides
9
7.4
3
9.7
6
6.7
1.50
0.584
0.352–6.397
CH compression
55
45.5
7
22.6
48
53.3
0.25
0.004
0.100–0.652
Left
40
33.1
6
19.4
34
37.8
0.39
0.066
0.147–1.061
Right
40
33.1
5
16.1
35
38.9
0.30
0.025
0.106–0.861
Both sides
25
20.7
4
12.9
21
23.3
0.49
0.223
0.153–1.550
MCP invasion
88
72.7
30
96.8
58
64.4
16.55
0.007
2.155–127.111
Left
59
48.8
24
77.4
35
38.9
5.39
< 0.001
2.099–13.828
Right
66
54.5
30
96.8
36
40
45
< 0.001
5.872–344.870
Both sides
37
30.6
24
77.4
13
14.4
20.31
< 0.001
7.274–56.699
MCP compression
78
64.5
24
77.4
54
60
2.28
0.085
0.891–5.861
Left
52
43
19
61.3
33
36.7
2.73
0.019
1.180–6.337
Right
50
41.3
22
71
28
31.1
5.41
< 0.001
2.212–13.244
Both sides
24
19.8
17
54.8
7
7.8
14.40
< 0.001
5.055–41.006
SCP invasion
31
26.1
19
63.3
12
13.5
11.08
< 0.001
4.244–28.944
Left
22
18.5
13
43.3
9
10.1
6.80
< 0.001
2.505–18.443
Right
18
15.1
13
43.3
5
5.6
12.85
0.001
4.045–40.803
Both sides
9
7.6
7
23.3
2
2.2
13.24
0.002
2.575–68.065
SCP compression
61
50.4
18
58.1
43
47.8
1.51
0.325
0.663–3.452
Left
48
39.7
16
51.6
32
35.6
1.93
0.118
0.846–4.417
Right
36
29.8
14
45.2
22
24.4
2.54
0.032
1.082–5.987
Both sides
23
19
12
38.7
11
12.2
4.54
0.002
1.738–11.837
n = number of patients, CH = cerebellar hemisphere, MCP = middle cerebellar peduncle, SCP = superior cerebellar peduncle, pCMS = postoperative cerebellar mutism syndrome, OR = odds ratio. Values in italics: p < 0.05

The Liu et al. model

We used the risk prediction model developed by Liu et al. [19] in our cohort to test the model accuracy. The distribution of the risk scores is represented in Fig. 3. Using their proposed cut-off point of 238 for a high risk of pCMS, we found that in our cohort the Liu et al. model reached an accuracy of 78% (94/121 patients correctly predicted), a sensitivity of 58% (18/31), and a specificity of 84% (76/91).

Measurements of Zhang et al.

When assessing the measurements proposed by Zhang et al. [20], we found the following results (Table 4). Evan’s index gave a significant OR, although the effect size was small (OR 1.07). In axial MRI images, both A(axial) and d(axial) turned out to be insignificant risk factors for pCMS (OR of 1.03 and 0.25, respectively). The ratio of A(axial) divided by d(axial) was also not a significant risk factor (OR 1.01, p value 0.095). In the sagittal plane, D(sagittal) and d(sagittal) were significant risk factors for CMS (OR 2.95 and 11.06 respectively), as was the product of D(sagittal) and d(sagittal) (OR 2.07). A(sagittal) also proved to be a significant risk factor with an OR of 2.93.
Table 4
The mean and standard deviation (SD) of the measurements following Zhang et al. [20] and A(sagittal) in the pCMS and non-pCMS group, with corresponding odds ratios (OR) and 95% confidence interval (CI)
Patients
Total (n = 121)
pCMS (n = 31)
Non pCMS (n = 90)
   
 
Mean (±SD)
Mean (±SD)
Mean (±SD)
OR
p value
95% CI
Evan’s index
0.29 (0.10)
0.33 (0.07)
0.28 (0.10)
1.07
0.007
1.020–1.128
∠A axial
69.9 (22.6)
80.5 (16.3)
66.5 (23.4)
1.03
0.006
1.009–1.052
d axial (cm)
1.55 (0.69)
1.22 (0.39)
1.66 (0.73)
0.25
0.005
0.098–0.640
Ratio ∠A/d
60.7 (50.6)
75.6 (34.8)
55.8 (54.1)
1.01
0.095
0.999–1.015
D sagittal (cm)
2.91 (1.61)
4.07 (1.05)
2.51 (1.58)
2.49
< 0.001
1.596–3.897
d sagittal (cm)
0.44 (0.33)
0.62 (0.26)
0.37 (0.33)
11.06
0.002
2.460–49.736
Product of D*d
1.62 (1.44)
2.70 (1.60)
1.25 (1.18)
2.07
< 0.001
1.746–4.915
A sagittal (cm2)
1.00 (0.92)
1.67 (0.96)
0.77 (0.78)
2.93
< 0.001
1.746–4.915
pCMS = postoperative cerebellar mutism syndrome. SD = standard deviation. Values in italics: p < 0.05

The Rotterdam model

Considering the facts that, in our cohort, the model of Liu et al. [19] had a relatively low model accuracy and sensitivity and that Zhang et al. [20] provided measurements that were significant risk factors of varying effect size and were not as yet implemented into a risk prediction model, we made a new risk prediction model for pCMS combining results from these two studies and our analysis.
Following the method described by Liu et al. [19], all variables that were significant risk factors for pCMS in univariate analysis were used as input in multivariate logistic regression to select predictors for the prediction model. Potential protective variables, such as cerebellar hemisphere tumor location, were also included in prediction models.
Predictors used in the optimal model are represented in Table 5. In our cohort, this model reaches an accuracy of 87% (105/121), a sensitivity of 97% (30/31), and a specificity of 84% (75/91). Risk factors that are included are as follows: radiological diagnosis of MB, midline tumor location on preoperative MRI, invasion of the tumor in the middle cerebellar peduncle (MCP: right sided invasion and bilateral invasion were greater risk factors than left sided invasion, Table 3) and invasion of the tumor in the superior cerebellar peduncle (SCP: right sided invasion and bilateral invasion was a greater risk factor than left sided invasion, Table 3). The total calculated risk scores ranged from 0 to 145 (Fig. 4). A higher risk score is associated with an increased predicted risk of pCMS. Using cut-off scores of 50 and 100 splits, the total risk scores into three groups: scores 0–49 representing a low predicted probability, scores 50–99 an intermediate predicted probability, and scores of 100 and higher a high predicted probability of developing pCMS. An easy to use calculation tool in an excel file can be found as supplementary Table S1.
Table 5
Predictors for pCMS used in the Rotterdam pCMS prediction model with corresponding adjusted OR, 95% confidence interval (CI) and risk score appointed to the predictor
Predictors
Regression coefficient
Adjusted OR (95% CI)*
Risk score
Radiological diagnosis
  Medulloblastoma
1.655
5.234 (2.106–13.011)
15
  Other
0
Tumor location on MRI
  Midline
1.181
3.26 (2.221–8.312)
10
  Cerebellar hemisphere
Brainstem invasion
3.486
32.655 (4.232–251.966)
35
Middle cerebellar peduncle
  Invasion left
1.996
7.362 (2.646–20.485)
20
  Invasion right
3.915
50.124 (6.371–394.338)
40
  Bilateral invasion and/or compression
3.853
47.120 (12.365–179.561)
40
Invasion superior cerebellar peduncle
  Left
1.281
3.602 (1.009–12.859)
10
  Right
1.949
7.022 (1.581–31.197)
20
  Bilateral
2.707
14.983 (2.659–84.439)
25
d(sagittal) ≥ 0.58 cm
1.935
6.922 (2.691–17.808)
20
*Adjusted for gender and age. OR = odds ratio

Discussion

Because of the severe long-term neurological sequelae of pCMS, prevention of this syndrome is of utmost importance. We emphasize the need of an easy to use, reliable, and sensitive preoperative risk prediction model to facilitate an intraoperative approach to reduce the occurrence pCMS.
Considering the high model accuracy in the Liu et al. cohort [19], we expected that their model would predict pCMS risk accurately in our cohort as well. However, we found a rather disappointing model accuracy of 78%, a sensitivity of 58%, and a specificity of 84% in our cohort, indicating that the model of Liu et al. is not as accurate as we had hoped. In our cohort, the Liu et al. model did not correctly predict 13 out of 31 pCMS patients (42%). One of our problems with the model of Liu et al. was scoring one of their risk factors, i.e., correct identification of tumor invasion of the dentate nucleus (DN) on a preoperative MRI. Due to compression by often large sized tumors, we could not reliably identify the DN in 55.4% of the patients. We hypothesized that the low sensitivity of the model in our cohort could possibly be explained by our poor assessment of the DN. In order to test if DN tumor invasion had a large impact on model accuracy and sensitivity, we appointed the risk points for DN invasion to every pCMS patient in our cohort. This resulted in a model accuracy of 79% (95/121), a sensitivity of 61% (19/31), and a specificity of 84% (76/91). So theoretically, even if we could have easily identified DN invasion in pCMS patients, the Liu et al. model still would not predict pCMS risk well in our patients as well as in their cohort.
When considering the measurements of Zhang et al. [20], we should mention that we chose not to assess A(cor)and d(cor) and thus not A(cor)/d(cor) ratio because we found it hard to define the bottom of the third ventricle on coronal images. All other measurements of Zhang et al. showed a significant difference between the pCMS and non-pCMS group, except for the ratio between A(axial) and d(axial). We were especially impressed by the measurement illustrating compression/invasion of the dorsal brainstem, i.e., d(sagittal), that reached an impressive odds ratio of 11.06. This measurement made it into our final risk prediction model.
The results from the imaging features mostly match those from Liu et al. [19]. Known risk factors such as brainstem invasion, midline location of the tumor, and tumor type MB were confirmed in this study. A surprising finding was the protective effect of the tumor being a PA. We hypothesized that this effect could be explained by the preferably cerebellar hemisphere location of these tumors, but when analyzing only the midline located tumors, PA retained its protective effect. Considering that this protective factor has not been found in other studies, it is possible that there were more PA in our cohort than in other studies, resulting in skewed results.
Despite the fact that we did not include DN tumor invasion into our analysis, our finding that bilateral more than unilateral SCP compression or invasion are high risk factors to develop pCMS support the hypothesis that pCMS results from damage to the DTC tract. In agreement with Liu et al. [19], we found different odds ratios for invasion into the left, right, and bilateral SCP and therefore different scores were appointed (Table 5).
Also in agreement with Liu et al. [19], we found that tumor compression or invasion into the MCP is a high risk factor for pCMS. The MCP contains the ascending fibers of the cortico-ponto-cerebellar pathway. These fibers originate in the primary motor cortex, enter the ipsilateral pontine nucleus and cross the pons to reach the contralateral cerebellar cortex through the MCP. In turn, the cerebellum returns projections to the motor cortex by way of the DTC tract. This loop of strongly reciprocal fibers is involved in the initiation and execution of (fine) movements, including movements of the mouth and tongue. Damage to the MCP could disrupt this loop, and possibly contribute to onset of pCMS. Until now, focus has always been more on the DTC tract, but the cortico-ponto-cerebellar pathway could play an unrecognized part in pCMS pathophysiology. We found different odds ratios for invasion into the left, right, and bilateral peduncle and therefore different scores were appointed.
The strength of our study is that the risk factors used in our new model are easy to identify on preoperative MRI in daily practice. Of course, we acknowledge that our study has limitations. Images were assessed by two researchers and MRI assessments were done using a standardized assessment form. Secondly, in contrast to Liu et al. [19], we did not use decision tree analysis when creating the risk prediction model. It is possible that variable inclusion into the model would have been different if we had used a decision tree. Finally, the sample size and number of events (n = 31) used in this study was relatively small. This may lead to less reliable and skewed statistical results. As an example, some variables such as brainstem invasion show very large odds ratios with a wide confidence interval. We acknowledge this as a limitation to this study. However, given the fact that our results match those of Liu et al. [19], we are confident that our results give a good indication on which preoperative imaging features and variables influence pCMS risk. Ideally, multiple cohorts will be combined in the future, to validate the current prediction models. In earlier studies, PLI was strongly predictive of pCMS [6, 10, 11]. In the present study, we could not insert data in the model on preoperative language function because in our institution children that are admitted with a brain tumor are not routinely assessed neuropsychologically before surgery. Inserting results of presurgical language evaluation as proposed by Bianchi et al. [10] could possibly further ameliorate accuracy and specificity of the present MRI based model.
The tumor being a large sized (> 5 cm diameter) medulloblastoma and midline location are accepted greatest risk factors for developing pCMS [4, 7, 8]. In the past few decades, radical resections seemed to be the norm at least when treating patients with medulloblastoma. Given the hypothesis at that time that especially in children with medulloblastoma gross total resection improved survival, neurosurgeons usually attempt to remove all visible tumor, often at the expense of the DTC tract and other vulnerable cerebellar structures. However, in the last few years, it has become apparent that gross total resection not only increases pCMS risk but also does not improve survival in medulloblastoma compared with near total resection (residue less than 1.5 cm2) [21, 22]. For this reason, we have to ask ourselves if a possible minimal increased gain in chance of survival is worth the high risk of developing pCMS and its severe long-term consequences. We strongly advocate a step-wise strategy in intraoperative tumor approach in case of suspicion of MB on preoperative MRI and/or preoperative confirmation. Our study confirms that it is of utmost importance to aim at preserving the middle and superior cerebellar peduncles at least on one side, preferably the right side. Supported by studies that have shown that a complete resection does not improve survival over a subtotal resection with a residue less than 1.5 cm2, leaving such a small residue on the peduncle may be acceptable in order to preserve this structure critical in pCMS prevention. Strategies could start by dissecting the side that shows less infiltration on MRI and if indeed easy to dissect without harming the peduncle to proceed with a more radical resection on the contralateral side. If resection is difficult, it would be sensible to leave a small residue on the first side and adapt the extent of resection on the contralateral peduncle to preserve at least one peduncle or even accept to leave small residues on both peduncles.

Conclusion

We were unable to reproduce the accuracy of the pCMS prediction model as described by Liu et al. [23] in our cohort of children that underwent posterior fossa tumor surgery. We updated the Liu et al. pCMS prediction model to a new, easy to use in daily practice pCMS risk prediction model. This model reached a high accuracy in our cohort. After prospective validation of this pCMS risk prediction model, it could assist neurosurgeons in determining their surgical tactics in order to prevent pCMS if possible and help prepare high risk patients and their parents for this severe complication.

Compliance with ethical standards

Conflict of interest

On behalf of all authors, the corresponding author states that there is no conflict of interest.
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://​creativecommons.​org/​licenses/​by/​4.​0/​.

Publisher’s note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Unsere Produktempfehlungen

e.Med Interdisziplinär

Kombi-Abonnement

Für Ihren Erfolg in Klinik und Praxis - Die beste Hilfe in Ihrem Arbeitsalltag

Mit e.Med Interdisziplinär erhalten Sie Zugang zu allen CME-Fortbildungen und Fachzeitschriften auf SpringerMedizin.de.

e.Med Neurologie & Psychiatrie

Kombi-Abonnement

Mit e.Med Neurologie & Psychiatrie erhalten Sie Zugang zu CME-Fortbildungen der Fachgebiete, den Premium-Inhalten der dazugehörigen Fachzeitschriften, inklusive einer gedruckten Zeitschrift Ihrer Wahl.

e.Med Neurologie

Kombi-Abonnement

Mit e.Med Neurologie erhalten Sie Zugang zu CME-Fortbildungen des Fachgebietes, den Premium-Inhalten der neurologischen Fachzeitschriften, inklusive einer gedruckten Neurologie-Zeitschrift Ihrer Wahl.

Weitere Produktempfehlungen anzeigen
Anhänge

Electronic supplementary material

Literatur
1.
Zurück zum Zitat Küper M, Timmann D (2013) Cerebellar mutism. Brain Lang 127(3):327–333CrossRef Küper M, Timmann D (2013) Cerebellar mutism. Brain Lang 127(3):327–333CrossRef
2.
Zurück zum Zitat Renne B, Radic J, Agrawal D, Albrecht B, Bonfield CM, Cohrs G, Davis T, Gupta A, Hebb ALO, Lamberti-Pasculli M, Knerlich-Lukoschus F, Lindsay S, McNeely PD, Pillai S, Rai HIS, Sborov KD, Vitali A, Walling S, Woerdeman P, Suryaningtyas W, Cochrane D, Singhal A, Steinbok P (2019) Cerebellar mutism after posterior fossa tumor resection in children: a multicenter international retrospective study to determine possible modifiable factors. Childs Nerv Syst Epub ahead of print doi 1:11. https://doi.org/10.1007/s00381-019-04058-7 CrossRef Renne B, Radic J, Agrawal D, Albrecht B, Bonfield CM, Cohrs G, Davis T, Gupta A, Hebb ALO, Lamberti-Pasculli M, Knerlich-Lukoschus F, Lindsay S, McNeely PD, Pillai S, Rai HIS, Sborov KD, Vitali A, Walling S, Woerdeman P, Suryaningtyas W, Cochrane D, Singhal A, Steinbok P (2019) Cerebellar mutism after posterior fossa tumor resection in children: a multicenter international retrospective study to determine possible modifiable factors. Childs Nerv Syst Epub ahead of print doi 1:11. https://​doi.​org/​10.​1007/​s00381-019-04058-7 CrossRef
3.
Zurück zum Zitat Gudrunardottir T, Morgan AT, Lux AL, Walker DA, Walsh KS, Wells EM, Wisoff JH, Juhler M, Schmhmann JD, Keating RF, Catsman-Berrevoets C, Iceland Delphi Group (2016) Consensus paper on post-operative pediatric cerebellar mutism syndrome: the Iceland Delphi results. Childs Nerv Syst 32(7):1195–1203CrossRef Gudrunardottir T, Morgan AT, Lux AL, Walker DA, Walsh KS, Wells EM, Wisoff JH, Juhler M, Schmhmann JD, Keating RF, Catsman-Berrevoets C, Iceland Delphi Group (2016) Consensus paper on post-operative pediatric cerebellar mutism syndrome: the Iceland Delphi results. Childs Nerv Syst 32(7):1195–1203CrossRef
4.
Zurück zum Zitat Catsman-Berrevoets C, Patay Z (2018) Cerebellar mutism syndrome. Handb Clin Neurol 155:273–288CrossRef Catsman-Berrevoets C, Patay Z (2018) Cerebellar mutism syndrome. Handb Clin Neurol 155:273–288CrossRef
5.
Zurück zum Zitat Pitsika M, Tsitouras V (2013) Cerebellar mutism. J Neurosurg Pediatr 12(6):604–614CrossRef Pitsika M, Tsitouras V (2013) Cerebellar mutism. J Neurosurg Pediatr 12(6):604–614CrossRef
6.
Zurück zum Zitat Tamburini G, Frassanito P, Chieffo D, Massimi L, Caldarelli M, Di Rocco C (2015) Cerebellar mutism. Childs Nerv Syst 31:1841–1851CrossRef Tamburini G, Frassanito P, Chieffo D, Massimi L, Caldarelli M, Di Rocco C (2015) Cerebellar mutism. Childs Nerv Syst 31:1841–1851CrossRef
7.
Zurück zum Zitat Catsman-Berrevoets CE, Aarsen FK (2010) The spectrum of neurobehavioural deficits in the posterior fossa syndrome in children after cerebellar tumour surgery. Cortex 46(7):933–946CrossRef Catsman-Berrevoets CE, Aarsen FK (2010) The spectrum of neurobehavioural deficits in the posterior fossa syndrome in children after cerebellar tumour surgery. Cortex 46(7):933–946CrossRef
8.
Zurück zum Zitat Reed-Berendt R, Phillips B, Picton S, Chumas P, Warren D, Livingston JH, Hughes E, Morrall MC (2014) Cause and outcome of cerebellar mutism: evidence from a systematic review. Childs Nerv Syst 30(3):375–385CrossRef Reed-Berendt R, Phillips B, Picton S, Chumas P, Warren D, Livingston JH, Hughes E, Morrall MC (2014) Cause and outcome of cerebellar mutism: evidence from a systematic review. Childs Nerv Syst 30(3):375–385CrossRef
9.
Zurück zum Zitat Robertson PL, Muraszko KM, Holmes EJ, Sposto R, Packer RJ, Gajjar A, Dias MS, Allen JC, Children’s Oncology Group (2006) Incidence and severity of postoperative cerebellar mutism syndrome in children with medulloblastoma: a prospective study by the children's oncology group. J Neurosurg 105(6 Suppl):444–451PubMed Robertson PL, Muraszko KM, Holmes EJ, Sposto R, Packer RJ, Gajjar A, Dias MS, Allen JC, Children’s Oncology Group (2006) Incidence and severity of postoperative cerebellar mutism syndrome in children with medulloblastoma: a prospective study by the children's oncology group. J Neurosurg 105(6 Suppl):444–451PubMed
11.
Zurück zum Zitat Di Rocco C, Chieffo D, Frassanito P, Caldarelli M, MassimiL TG (2011) Heralding cerebellar mutism: evidence for pre-surgical language impairment as primary risk factor in posterior fossa surgery. Cerebellum 10:551–562CrossRef Di Rocco C, Chieffo D, Frassanito P, Caldarelli M, MassimiL TG (2011) Heralding cerebellar mutism: evidence for pre-surgical language impairment as primary risk factor in posterior fossa surgery. Cerebellum 10:551–562CrossRef
12.
Zurück zum Zitat De Smet HJ, Catsman-Berrevoets C, Aarsen F, Verhoeven J, Mariën P, Paquier PF (2012) Auditory-perceptual speech analysis in children with cerebellar tumours: a long-term follow-up study. Eur J Paediatr Neurol 16(5):434–442CrossRef De Smet HJ, Catsman-Berrevoets C, Aarsen F, Verhoeven J, Mariën P, Paquier PF (2012) Auditory-perceptual speech analysis in children with cerebellar tumours: a long-term follow-up study. Eur J Paediatr Neurol 16(5):434–442CrossRef
13.
Zurück zum Zitat Huber JF, Bradley K, Spiegler BJ, Dennis M (2006) Long-term effects of transient cerebellar mutism after cerebellar astrocytoma or medulloblastoma tumor resection in childhood. Childs Nerv Syst 22(2):132–138CrossRef Huber JF, Bradley K, Spiegler BJ, Dennis M (2006) Long-term effects of transient cerebellar mutism after cerebellar astrocytoma or medulloblastoma tumor resection in childhood. Childs Nerv Syst 22(2):132–138CrossRef
14.
Zurück zum Zitat Morgan AT, Liegeois F, Liederkerke C, Vogel AP, Hayward R, Harkness W, Chong K, Vargha-Khadem F (2011) Role of cerebellum in fine speech control in childhood: persistent dysarthria after surgical treatment for posterior fossa tumour. Brain Lang 117(2):69–76CrossRef Morgan AT, Liegeois F, Liederkerke C, Vogel AP, Hayward R, Harkness W, Chong K, Vargha-Khadem F (2011) Role of cerebellum in fine speech control in childhood: persistent dysarthria after surgical treatment for posterior fossa tumour. Brain Lang 117(2):69–76CrossRef
15.
Zurück zum Zitat Steinbok P, Cochrane DD, Perrin R, Price A (2003) Mutism after posterior fossa tumour resection in children: incomplete recovery on long-term follow-up. Pediatr Neurosurg 39(4):179–183CrossRef Steinbok P, Cochrane DD, Perrin R, Price A (2003) Mutism after posterior fossa tumour resection in children: incomplete recovery on long-term follow-up. Pediatr Neurosurg 39(4):179–183CrossRef
16.
Zurück zum Zitat Wells EM, Walsh KS, Khademian ZP, Keating RF, Packer RJ (2008) The cerebellar mutism syndrome and its relation to cerebellar cognitive function and the cerebellar cognitive affective disorder. Dev Disabil Res Rev 14:221–228CrossRef Wells EM, Walsh KS, Khademian ZP, Keating RF, Packer RJ (2008) The cerebellar mutism syndrome and its relation to cerebellar cognitive function and the cerebellar cognitive affective disorder. Dev Disabil Res Rev 14:221–228CrossRef
17.
Zurück zum Zitat Wells EM, Khademian ZP, Walsh KS, Vezina G, Sposto R, Keating RF, Packer RJ (2010) Postoperative cerebellar mutism syndrome following treatment of medulloblastoma: neuroradiographic features and origin. J Neurosurg Pediatr. 5(4):329–334CrossRef Wells EM, Khademian ZP, Walsh KS, Vezina G, Sposto R, Keating RF, Packer RJ (2010) Postoperative cerebellar mutism syndrome following treatment of medulloblastoma: neuroradiographic features and origin. J Neurosurg Pediatr. 5(4):329–334CrossRef
18.
Zurück zum Zitat Palmer SL, Hassall T, Evankovich K, Mabbott DJ, Bonner M, Deluca C, Cohn R, Fisher MJ, Morris EB, Broniscer A, Gajjar A (2010) Neurocognitive outcome 12 months following cerebellar mutism syndrome in pediatric patients with medulloblastoma. Neuro-Oncology 12:1311–1317PubMedPubMedCentral Palmer SL, Hassall T, Evankovich K, Mabbott DJ, Bonner M, Deluca C, Cohn R, Fisher MJ, Morris EB, Broniscer A, Gajjar A (2010) Neurocognitive outcome 12 months following cerebellar mutism syndrome in pediatric patients with medulloblastoma. Neuro-Oncology 12:1311–1317PubMedPubMedCentral
19.
Zurück zum Zitat Liu JF, Dineen RA, Avula S, Chambers T, Dutta M, Jaspan T, MacArthur DC, Howarth S, Soria D, Quinlan P, Harave S, Ong CC, Mallucci CL, Kumar R, Pizer B, Walker DA (2018) Development of a pre-operative scoring system for predicting risk of post-operative paediatric cerebellar mutism syndrome. Br J Neurosurg 32(1):18–27CrossRef Liu JF, Dineen RA, Avula S, Chambers T, Dutta M, Jaspan T, MacArthur DC, Howarth S, Soria D, Quinlan P, Harave S, Ong CC, Mallucci CL, Kumar R, Pizer B, Walker DA (2018) Development of a pre-operative scoring system for predicting risk of post-operative paediatric cerebellar mutism syndrome. Br J Neurosurg 32(1):18–27CrossRef
20.
Zurück zum Zitat Zhang H, Liao Z, Hao X, Han Z, Li C, Gong J, Liu W, Tian Y (2019) Establishing reproducible predictors of cerebellar mutism syndrome based on pre-operative imaging. Childs Nerv Syst 35(5):795–800CrossRef Zhang H, Liao Z, Hao X, Han Z, Li C, Gong J, Liu W, Tian Y (2019) Establishing reproducible predictors of cerebellar mutism syndrome based on pre-operative imaging. Childs Nerv Syst 35(5):795–800CrossRef
21.
Zurück zum Zitat Thompson EM, Hielscher T, Bouffet E, Remke M, Luu B, Gururangan S, McLendon E et al (2016) Prognostic value of medulloblastoma extent of resection after accounting for molecular subgroup: an integrated clinical and molecular analysis. Lancet.Oncol 17(4):484–495CrossRef Thompson EM, Hielscher T, Bouffet E, Remke M, Luu B, Gururangan S, McLendon E et al (2016) Prognostic value of medulloblastoma extent of resection after accounting for molecular subgroup: an integrated clinical and molecular analysis. Lancet.Oncol 17(4):484–495CrossRef
22.
Zurück zum Zitat Thompson EM, Bramall A, Herndon JE 2nd, Taylor MD, Ramaswamy V (2018) The clinical importance of medulloblastoma extent of resection: a systematic review. J Neuro-Oncol 139(3):523–539CrossRef Thompson EM, Bramall A, Herndon JE 2nd, Taylor MD, Ramaswamy V (2018) The clinical importance of medulloblastoma extent of resection: a systematic review. J Neuro-Oncol 139(3):523–539CrossRef
23.
Zurück zum Zitat Korah MP, Esiashvili N, Mazewski CM, Hudgins RJ, Tighiouart M, Janss AJ, Schwaibold FP, Crocker IR, Curran WJ Jr, Marcus RB Jr (2010) Incidence, risks, and sequelae of posterior fossa syndrome in pediatric medulloblastoma. Int J Radiat Oncol Biol Phys 77(1):106–112CrossRef Korah MP, Esiashvili N, Mazewski CM, Hudgins RJ, Tighiouart M, Janss AJ, Schwaibold FP, Crocker IR, Curran WJ Jr, Marcus RB Jr (2010) Incidence, risks, and sequelae of posterior fossa syndrome in pediatric medulloblastoma. Int J Radiat Oncol Biol Phys 77(1):106–112CrossRef
Metadaten
Titel
Preoperative prediction of postoperative cerebellar mutism syndrome. Validation of existing MRI models and proposal of the new Rotterdam pCMS prediction model
verfasst von
Dhaenens BAE
Van Veelen MLC
CE Catsman-Berrevoets
Publikationsdatum
18.02.2020
Verlag
Springer Berlin Heidelberg
Erschienen in
Child's Nervous System / Ausgabe 7/2020
Print ISSN: 0256-7040
Elektronische ISSN: 1433-0350
DOI
https://doi.org/10.1007/s00381-020-04535-4

Weitere Artikel der Ausgabe 7/2020

Child's Nervous System 7/2020 Zur Ausgabe

Update Chirurgie

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert.

S3-Leitlinie „Diagnostik und Therapie des Karpaltunnelsyndroms“

Karpaltunnelsyndrom BDC Leitlinien Webinare
CME: 2 Punkte

Das Karpaltunnelsyndrom ist die häufigste Kompressionsneuropathie peripherer Nerven. Obwohl die Anamnese mit dem nächtlichen Einschlafen der Hand (Brachialgia parästhetica nocturna) sehr typisch ist, ist eine klinisch-neurologische Untersuchung und Elektroneurografie in manchen Fällen auch eine Neurosonografie erforderlich. Im Anfangsstadium sind konservative Maßnahmen (Handgelenksschiene, Ergotherapie) empfehlenswert. Bei nicht Ansprechen der konservativen Therapie oder Auftreten von neurologischen Ausfällen ist eine Dekompression des N. medianus am Karpaltunnel indiziert.

Prof. Dr. med. Gregor Antoniadis
Berufsverband der Deutschen Chirurgie e.V.

S2e-Leitlinie „Distale Radiusfraktur“

Radiusfraktur BDC Leitlinien Webinare
CME: 2 Punkte

Das Webinar beschäftigt sich mit Fragen und Antworten zu Diagnostik und Klassifikation sowie Möglichkeiten des Ausschlusses von Zusatzverletzungen. Die Referenten erläutern, welche Frakturen konservativ behandelt werden können und wie. Das Webinar beantwortet die Frage nach aktuellen operativen Therapiekonzepten: Welcher Zugang, welches Osteosynthesematerial? Auf was muss bei der Nachbehandlung der distalen Radiusfraktur geachtet werden?

PD Dr. med. Oliver Pieske
Dr. med. Benjamin Meyknecht
Berufsverband der Deutschen Chirurgie e.V.

S1-Leitlinie „Empfehlungen zur Therapie der akuten Appendizitis bei Erwachsenen“

Appendizitis BDC Leitlinien Webinare
CME: 2 Punkte

Inhalte des Webinars zur S1-Leitlinie „Empfehlungen zur Therapie der akuten Appendizitis bei Erwachsenen“ sind die Darstellung des Projektes und des Erstellungswegs zur S1-Leitlinie, die Erläuterung der klinischen Relevanz der Klassifikation EAES 2015, die wissenschaftliche Begründung der wichtigsten Empfehlungen und die Darstellung stadiengerechter Therapieoptionen.

Dr. med. Mihailo Andric
Berufsverband der Deutschen Chirurgie e.V.