1. Introduction
Early auditory deprivation can have a multitude of effects on brain development and may impact cognitive capacities that extend beyond the auditory system. It has been proposed that hearing loss can be considered a connectome disease, with individual differences in response to auditory deprivation accounting for variability in outcomes[
1] . This body of research indicates that areas of development are interconnected, such that deficits in one area of development have cascading effects on others. By extension, loss of auditory input would impact a variety of later outcomes, including cognitive, linguistic, and socioemotional functioning. This is corroborated by findings indicating a significantly higher rate of socioemotional and behavioral problems in children with hearing loss[
2], and differences in neural dynamics and processing when compared to typically hearing peers[
3].
Published literature on outcomes for children with cochlear implants (CIs) has been highly variable, with outcomes for children with hearing loss being similar, poorer, or stronger to their typically hearing peers[
4] . Studies investigating the cognitive profiles of children with CIs document variability; some studies report lower scores on measures of verbal abilities[
5,
6] and working memory tasks[
6,
7] compared to typically hearing peers, while others report no significant differences between those with hearing loss and their typically hearing peers[
8].
Positive correlations have been found between working memory and language development in children with CIs: working memory is acknowledged to be critical to the development of spoken language[
9]. Children with hearing loss have demonstrated varying degrees of speech comprehension and understanding; additional factors include age of implantation, degree of residual hearing prior to implantation, maternal sensitivity, socioeconomic status, and nonverbal cognitive abilities, among others[
4,
10,
11]. Understanding if, and how, these impacts are similar or different across children with hearing loss can aid in the development of targeted and specific early intervention programs that bolster cognitive, language, and socioemotional outcomes.
1.1. Language Development and Hearing Loss
Prior research has found that there is variability in how language skills develop in children with hearing loss[
12]. Specifically, differences in vocabulary, overall language, and pragmatic language use have all been noted when children with hearing loss are compared to their typically hearing peers[
12]. Differences have also been noted in outcomes for children based on mode of amplification. Children with bilateral cochlear implants were found to have stronger single-word vocabulary than children with unilateral implants, but bilateral and unilateral CI users showed similar overall language performance[
12]. Age of implantation has been found to account for significant variance in expressive language outcomes[
13]. However, the remainder of the variance in expressive language outcomes is not accounted for by activation age, suggesting further investigation into related factors is important. Other studies have indicated no relationship between age of implantation and later language outcomes, suggesting that more research into predictive capacity of demographic variables is necessary[
14].
Educational environment also can have a substantial impact on language acquisition in children with hearing loss. Children in oral language programs demonstrated stronger narrative and vocabulary abilities than children in total communication programs, though language comprehension and verbal reasoning skills were found to be the same across programs[
15]. Strong oral language ability has been linked to literacy development in studies of adolescents with hearing loss, especially in conjunction with early intervention[
15]. Overall, language is an essential area of skill development for children with hearing loss, and one that can have a significant impact on a variety of outcomes.
1.2. Language Development and Socioemotional Functioning
One hypothesis for why children with hearing loss struggle with language is that these children do not have the same benefit of “overhearing” and gaining incidental exposure to adult and peer language. As a result, their access to acquisition of knowledge and social skills can be limited[
12]. Social and emotional relationships are essential to language growth as well: maternal emotional availability has been found to be predictive of linguistic progress between ages 2 and 3 years in deaf children[
2]. Difficulties in speech and language development can have an impact on peer relationships, especially if communication with peers becomes challenging[
16]. Additionally, some children with hearing loss present as shy or withdrawn if they are not able to follow a group conversation[
16].
Self-esteem, mood, and social development can be vulnerabilities for children with hearing loss[
16]. Better communication skills have been found to be associated with higher self-esteem and social competence, both of which have been linked to socioemotional factors[
16]. Self-consciousness or discomfort about wearing one’s amplification devices can impact device wear time, and thus incidental language exposure[
17]. Ability to affiliate with a community and communicate have been found to relate to self-reported quality of life in adolescents with hearing loss[
17]. Communicative competence has been related to degree of socioemotional difficulties in children with hearing loss as well[
2]. Overall, socioemotional functioning is linked to language competence and skill development, and this relationship has been noted previously in children with hearing loss.
1.3. Working Memory and Hearing Loss
Working memory, and especially auditory working memory, has been found to be poorer in individuals with hearing loss as compared to their typically hearing peers[
18]. In children with single-sided deafness, significant differences in working memory performance were observed between those with amplification (i.e., hearing aids or bone-anchored hearing aids) and those without[
19]. Other studies found no group differences when testing visual and auditory working memory in children with and without hearing loss[
8] . Neuroimaging studies in children with hearing aids have found that differences in neural functioning around encoding and maintenance when compared to typically hearing peers were observed but wearing amplification devices for more than 8.5 hours a day mitigated observed variability in working memory outcomes[
3]. Overall, a relationship between working memory and hearing loss has been found, though more research is required to understand the mitigating factors of device use and mode of stimulus presentation.
A current hypothesis regarding the relationship between working memory and hearing loss suggests that working memory is related to challenges around listening in noise, or the ability to distinguish target information in noisy environments[
20]. This relationship is found consistently in older adults with age-related hearing loss, where individuals with poorer working memory were found to struggle more with discerning signal from noise[
21]. Further research in pediatric populations is warranted, though it is possible that the relationship between hearing loss and working memory is driven by this relationship to listening in noise.
1.4. Working Memory and Socioemotional Functioning
Working memory in early childhood has been previously identified as a predictor of socioemotional functioning in later years[
22]. It is likely that this relationship is driven by executive functioning, or the ability to self-regulate in behavioral, cognitive, and emotional domains. Self-reported inattention, a domain associated with working memory and executive functioning, was associated with self-esteem in children with hearing loss, a variable that relates to many aspects of social ability, including number of friends, shyness, and likelihood to engage in social activities[
15] (Warner-Czyz et al, 2015). Working memory training has broadly been found to support emotion regulation and mood in a variety of trials[
23,
24,
25]. Stronger working memory is hypothesized to reduce cognitive load across a variety of diagnostic profiles (e.g., PTSD, depression, eating disorders), improving cognitive efficiency in areas such as emotion regulation[
25]. Better understanding and confirmation of this relationship can support development of specific and targeted intervention. Challenges in working memory can lead to difficulty retaining and applying academic and social information – without appropriate access to this information, children may become more dysregulated, leading to difficulty in school and in friendships.
1.5. Study Aims
The current study hypothesized that, among children with hearing loss, working memory capacity and language ability would predict socioemotional functioning, with stronger working memory and language predicting better overall functioning. Specifically, it was expected that higher scores on the WISC-V or WPPSI-IV Working Memory Index scores would be related to and predict lower scores on the clinical scales of the BASC-3 Parent and Teacher Report. Additionally, it was hypothesized that higher language scores on expressive vocabulary, receptive vocabulary, overall language, and pragmatic language measures would also be related to and predict lower scores on the BASC-3.
2. Materials and Methods
2.1. Participants
Participants were 35 children with hearing loss (66% female, M = 5.17 years old, SD = ±1.97) enrolled in a private, auditory-oral school that was an inclusion program (i.e., children with typical hearing and children with hearing loss were taught together). All participants were in classrooms with a full-time speech language pathologist and master’s level educator in a co-teaching model. 94% of participants received additional auditory-verbal therapy or individual speech and language therapy at the time of evaluation.
Severity of hearing loss varied, with the majority of children either falling in the severe or profound ranges of hearing loss in at least one ear (71-90+ dB; see
Table 1 for further audiological information). Audiological evaluations were conducted at least twice yearly for all participants, and more frequently if concerns about auditory access were noted. Daily “listening checks” are conducted, during which the child’s classroom speech-language pathologist checks the child’s hearing aids or cochlear implants in both unilateral conditions and the bilateral condition.
2.2. Procedure
Participants were administered annual cognitive and speech and language evaluations as part of standard educational programming for children with hearing loss at The River School. All data for the current study were collected as a part of these annual evaluations conducted by qualified speech-language pathologists and psychologists. Parental consent was obtained for evaluations, and verbal assent was obtained from the children for their participation. Additionally, parents were informed on enrollment that their child’s data may be used anonymously for research purposes. Children were monitored for fatigue throughout test administration, and testing was broken up over multiple sessions to facilitate motivation and energy, consistent with typical protocol in this environment. No testing was conducted beyond what was already clinically indicated for progress monitoring and treatment planning.
2.3. Measures
2.3.1. Working Memory
Working memory was assessed by the Working Memory Index (WMI) of either the Wechsler Preschool and Primary Scales of Intelligence, Fourth Edition[
26] (WPPSI-IV) or the Wechsler Intelligence Scale for Children, Fifth Edition[
27] (WISC-V). Test selection was dependent on the age of the child, with children ages 2 years, 6 months through 7 years, 3 months receiving the WPPSI-IV, and children ages 6 years to 17 years receiving the WISC-V. For children aged 6 years to 7 years, 3 months, the appropriate measure was selected based on their performance on a separately administered achievement measure[
28] (Kaufman Assessment Battery for Children – Second Edition). Children who scored below average overall received the WPPSI-IV, and children who scored in the average range or above received the WISC-V.
Each Working Memory Index consists of two subtests that assess different functions of working memory. The WPPSI-IV WMI consists of Zoo Locations and Picture Memory subtests, measuring visual-spatial working memory and rote visual memory and immediate recall, respectively. The WISC-V WMI consists of the Digit Span subtest, evaluating rote auditory working memory, and the Picture Span subtest, assessing retention and recognition of visual information. Standard scores for the overall index were calculated in relation to the normative sample of age-matched, typically hearing children. The mean for standard scores in both measures is set to 100, with scores between 90 and 110 comprising the average range.
For the WPPSI-IV, internal consistency has been found to be between the good (.86) to excellent (>.90) range at the composite level[
29], and test-retest reliability was determined to be in the good range as well (.84-.89). For the WISC-V, internal consistency at the composite level was between the good and excellent range (.88-.93). Test-retest reliability at the index level was variable (.75-.94)[
30].
2.3.2. Language
Receptive and expressive language were each evaluated in isolation, and as a part of larger language measures. Receptive language was assessed using the Peabody Picture Vocabulary Test – Fifth Edition (PPVT-5)[
31], a standardized measure that evaluates recognition of everyday words. This is done by presenting an array of pictures from which the child selects the image that best represents a word the examiner presents verbally. This task was administered by speech-language pathologists that are experienced in administration of this measure to children with hearing loss. This measure can be administered starting at age 2 years, 6 months, and can be given through age 90 years and beyond. Internal consistency (.89-.97 for Form A) and test-retest reliability (.87-.93 for Form A) were excellent in the normative sample. Additionally, depending on the age of the child, their language level, and clinician preference, the Receptive One-Word Picture Vocabulary Tests were administered (ROWPVT-4)[
32]. Similar to the PPVT, the ROWPVT gives a child an auditory stimulus, and the child must match that one word to one of the pictures provided. The ROWPVT is given starting at age 2 years and can be administered through age 80 years. For the ROWPVT-4, internal consistency (.94-.98) and test-retest reliability (.91) are excellent in the normative sample.
Expressive language was evaluated using the companion measures to the PPVT and the ROWPVT - the Expressive Vocabulary Test – Second Edition (EVT-2)[
33] and the Expressive One-Word Picture Vocabulary Test – Fourth Edition (EOWPVT-4)[
34]. Serving as the inverse to the receptive language testing, children are presented with images of everyday objects and must name them. The EVT-2 has excellent internal consistency (.88-.97 for Form A) and test-retest reliability (.94-.97 for Form A)[
34]. The EOWPVT-4 was also found to have excellent internal consistency (.93-.97) and test-retest reliability (.97)[
35].
Broader language measures that provide composite scores include the Clinical Evaluation of Language Fundamentals – Fifth Edition (CELF-5)[
36] and the Comprehensive Assessment of Spoken Language – Second Edition (CASL-2)[
37]. These measures yield global composites that evaluate children’s’ language skills in multiple domains. The CELF-5 evaluates receptive language, expressive language, language structure and language content, all of which combine to provide a Core Language Score. The age range for this measure is from age 5 to age 21 years. The CASL-2 includes lexical/semantic, syntactic, supralinguistic, pragmatic, expressive, and receptive language indices that contribute to the overall General Language Ability Index (GLAI). This measure can be administered to children ages 3 through 21. For the current study, Core Language Score and GLAI were used as representations of overall language ability, as was the pragmatic language index of the CASL-2. This subscale was included as a hypothesized corollary of functional communication - if a child has the ability to practically use language, they are likely going to be able to use that language functionally in their everyday lives.
The CELF-5 has been found to be a reliable and valid measure of language ability[
38]. Internal consistency for each subtest ranged from acceptable to excellent in the age bands included in this sample (.77-.99), and test-retest reliability ranged from acceptable to excellent (.68-.92). The CASL-2 had similarly strong subtest-level internal consistency (.85-.99), though test-retest reliability was more variable (.65-.90)[
39].
2.3.3. Socioemotional Functioning
Socioemotional functioning was evaluated using the Behavior Assessment Scale for Children, Third Edition (BASC-3)[
40]. This self-report measure is designed to elicit information about internalizing, externalizing, and behavioral symptoms, as well as adaptive functions. Each overall index is composed of multiple scales that target specific patterns of symptomatology or adaptive skills (e.g., inattention, anxiety, leadership). Parent and teacher forms were administered. The preschool (ages 2-5) or child (ages 6-11) form was chosen based on the age of the child. Scores on the BASC-3 are reported as T-Scores, with a mean of 50, and clinical elevations indicated at 65 and higher.
For the BASC-3, internal consistency has been found to be variable across age groups and forms of the measure (i.e., parent/teacher, preschool/child). However, all reported coefficient alphas fell in the good range or better for clinical and adaptive scales, which was the primary focus of the current analysis (Parent=.83-.87, Teacher=.87-.89)[
40]. Test-retest reliability was found to be similar in range (Parent=.85-.87, Teacher=.85-.88). Construct validity was determined by the authors through factor analysis, use of the measures with children with prior diagnostic profiles, and through comparison to existing and validated measures evaluating similar constructs (e.g., autism spectrum disorder and attention-deficit hyperactivity disorder rating scales). It is important to note that this measure, among others in this study, was not normed on children with hearing loss.
2.4. Analytic Plan
Pearson correlations examined associations of working memory and language to parent- and teacher-reported domains of socioemotional functioning. Multiple linear regression was used to examine relationships between variables significantly correlated at the bivariate level. Analyses were conducted using RStudio in R version 3.6.3[
41].
3. Results
Descriptive statistics were calculated for all study variables and are presented in
Table 2 and
Table 3. Of note, the mean standard score for each language or working memory measure fell within the “average” range (SS=90-110), though the standard deviations were larger than would be expected (SD=12.17-22.95, expected=10). Ranges were consistent with the normative sample, as were median scores. Means and standard deviations for BASC-3 variables were comparable to the normative sample, with all sample means and medians falling within a standard deviation of the expected mean of T=50.
3.1. Bivariate Associations
3.1.1. Working Memory
Working memory scores were positively associated with teacher-reported functional communication (r = .37). Working memory was negatively associated with teacher-reported attention (r = -.31), atypicality (r = -.49), hyperactivity (r = -.44) and withdrawal (r = -.42; see
Table 4). Working memory scores were positively associated with parent-reported adaptability (r = .37) and functional communication (r = .33). Working memory was negatively associated with parent-reported attention (r = -.46), atypicality (r = -.35), and hyperactivity (r = -.31; see
Table 5). Working memory scores were not significantly correlated with any of the language variables in the current study. (See Tables 8 and 9 for full correlation tables of study variables).
3.1.2. Language
Teacher-reported inattention was significantly and negatively related to expressive vocabulary (r = -.34; see
Table 6 for correlations between language and socioemotional functioning), receptive vocabulary (r = -.44), and pragmatic language (r = -.55) Teacher-reported anxiety was significantly and positively related to core language (r = .44). Teacher-reported functional communication was associated with all language measures, and social skills scores were positively related to receptive vocabulary (r = .42). Parent-reported (see
Table 7 for parent form correlations with language) inattention was significantly and negatively related to receptive vocabulary (r = -.38) and core language (r = -.40). Parent-reported atypicality was associated with receptive vocabulary (r = -.33). Social skills were also associated with receptive vocabulary (r = .33).
3.2. Regression Analysis
Socioemotional domains that were associated with working memory and language were the subject of regression analysis. These analyses included other correlated factors - specifically, other socioemotional domains and demographic variables if they were associated. Gender, age at identification, and configuration of devices were not significantly correlated with any of the variables found to be related to working memory and language. Age at testing was found to be correlated with both parent (r = .39, p<.05) and teacher (r = .38, p<.05) report of functional communication, but not with the other variables. This is consistent with children with hearing loss developing stronger communication skills with age.
Due to the number of correlated factors, regression model fit was determined using a backward stepwise regression model. Backward elimination models iteratively remove variables from a model until optimal model fit is achieved. Model fit in this case was determined using the Akaike Information Criterion (AIC), an estimation of predictive error. A lower AIC indicates less error, and thus improved model fit[
42]. Stepwise regression was conducted using the “stepAIC” function in R[
43].
When predicting working memory, the initial model included all socioemotional variables correlated with working memory at the bivariate level (see
Table 8). Optimal model fit (AIC=142.05, R
2 = .391) was achieved when including teacher ratings of hyperactivity (b=-.38), withdrawal (b=-.45) and parent report of adaptability (b=.45). The same procedure was conducted to predict Core Language. Optimal model fit (AIC=159.46, R
2 = .614) included teacher report of functional communication (b=1.06) and anxiety (b=1.07), and parent report of adaptability (b=.79). Optimal model fit (AIC=199.67, R
2 = .506) for expressive vocabulary was achieved with parent reported adaptability (b=.56) and teacher reported functional communication (b=1.74). The model for pragmatic language initially included teacher reported attention problems (b=-.65) and teacher rating of functional communication (b=1.53). This was the optimal model (AIC=100.23, R
2 = .544). All optimal model fit is described in
Table 9.
Model fitting for receptive vocabulary was complicated by the high correlations between functional communication and receptive vocabulary. Optimal model fit was achieved with only parent (b=.65) and teacher (b=1.42) report of functional communication in the model (AIC=183.96, R2 = .639).
4. Discussion
Results of the current study supported our hypothesis, such that higher working memory was associated with lower scores in inattention, hyperactivity, withdrawal, and atypicality, as well as higher scores in functional communication. Language abilities across measures were also associated with a variety of outcomes. Stronger working memory skills were hypothesized to predict overall more positive socioemotional outcomes, which was consistent with our findings. Stepwise regression models yielded information regarding the best model fit for predicting working memory and language. Working memory was predicted by teacher hyperactivity and withdrawal and parent adaptability. Core Language was predicted by teacher functional communication and anxiety, and parent adaptability. Expressive vocabulary was predicted by teacher functional communication and parent adaptability. Pragmatic language was predicted by teacher functional communication and inattention.
Teacher report of functional communication served as a predictor for most of the language variables, which is consistent with what would be expected given the content of the functional communication scale. Parent report of adaptability was also a predictor in several of the models, suggesting that flexibility may bolster working memory capacity and language outcomes. Teacher hyperactivity was a predictor of working memory, which is consistent with the theory that executive functioning deficits would impact behavioral regulation and working memory capacity. Teacher withdrawal was also a predictor of working memory, such that more withdrawal predicted poorer working memory performance. Core language was also predicted by teacher report of anxiety, which may be related to likelihood to speak – if a child is anxious and worried about using their language, they would score lower on core language measures. Teacher inattention was a predictor of pragmatic language scores, suggesting that children with challenges focusing and attending to social and academic opportunities would then struggle to use their language effectively in those situations.
Functional communication was the main predictor of receptive vocabulary scores. This may be important to note with regard to use of this measure in children with hearing loss. The functional communication scale includes items related to getting needs met and advocating for oneself, neither of which is predicated on language use. In this sample, the children who had the strongest ability to communicate were the ones with the strongest receptive language, whether they communicated linguistically or through gestures, actions, and approximations. The BASC-3 functional communication index may be useful in tracking receptive language capacity as well as broader communication skills.
It is likely that the items of the BASC-3, when used with children with hearing loss, capture how children present when working memory or auditory processing is challenging (e.g., shutting down, acting odd). Moreover, if a child is unable or hesitant to respond verbally, they likely appear withdrawn. As would be expected, functional communication was significantly and positively related to language outcomes. However, report of inattention was negatively related to language outcomes, potentially highlighting the importance of identifying and separating which components of a child’s presentation are related to behavioral challenges, auditory access, and working memory.
Many professionals work with only a few children with hearing loss in their lifetimes, and even fewer are provided the training to do so effectively. Information from the current study demonstrates the need for specific training when psychologically evaluating children with hearing loss or providing diagnoses. For example, some of the behaviors comprising the atypicality scale are common for children with hearing loss, especially when their auditory access and language skills are still developing. Many measures used to evaluate children rely on auditory-only instructions and sometimes auditory-only activities, few of which are explicitly normed on children with hearing loss. The presentations and cognitive profiles of these children are unique and may be diagnostically misleading to someone with infrequent exposure to work with children with hearing loss.
Socioemotionally, children with hearing loss can have a variety of behavioral challenges, just like their typically hearing peers. When conducting differential diagnosis for a child with hearing loss, one should always include their hearing loss and early developmental history, particularly through the lens of the connectome model. Etiology of hearing loss can also be important to understand. Hearing loss can be associated with other complex syndromes, like Usher syndrome, and other medical diagnoses that impact other areas of functioning. For example, choosing the appropriate strategies for a child with hearing loss may be different depending on whether they have comorbid visual impairment. Multisensory approaches to learning, such as programs including tactile, auditory, and visual input together, can be effective in bridging this gap.
4.1. Limitations
A primary limitation of the current study is the sample size. Though the sample is large enough for analyses to approach normality, generalizability of these results is limited by the size and demographic characteristics of the sample (e.g., geographic location, school setting). Power of these analyses is limited by sample size, though large samples in a low incidence population are rare. Data analysis was conducted retrospectively on existing data collected from routine evaluations, which may introduce additional variables that would be accounted for in a prospective study. Some characteristics of the sample (e.g., listening devices, severity of loss, age of identification) were varied, which might impact generalizability as well. Etiology of hearing loss might also play a role in interpretation of the results of this study, though for many of the children, etiology of their hearing loss was not known.
4.2. Future Directions
The current study is limited by including one time point, rather than following these children through time. Future research will include data for cognitive, language, and socioemotional functioning measures over time. Additionally, increasing the sample size in future studies will be important for statistical power. Intervention is another avenue for potential research. With working memory and language found to be related to socioemotional functioning, interventions promoting each domain would support the others. Implementation of trials of such interventions would give valuable information regarding the relationships of the current study variables. Collection of data on interventions and measures normed on typically hearing children would serve to validate their use in children with hearing loss as well.
4.3. Call to Action
A call to action as a result of the current study is for more training and available materials for learning about children with hearing loss to be created and made available for all providers. Knowing whether a child is amplified, what kind of device they use, and if they use sign language to supplement their spoken language is crucial to providing successful support in the classroom and home environments. Having available materials that allow practitioners to gain greater understanding can aid families in getting what they need through the educational system without needing an advocate or legal representative. Navigating elementary school and developing an individualized education plan (IEP) is challenging, particularly when evaluators are unfamiliar with the challenges and needs of a child with hearing loss. Dissemination of this information and promotion of curiosity and growth can improve access to appropriate provisions for all children in schools.
Inclusion is also an important criterion to consider when some children have comorbid psychological disorders or medical conditions. If a child with hearing loss is also diagnosed with ADHD, it is possible that they will be separated into a more restrictive environment than the general education classroom. This deprives the child of the opportunity to access the typically developing peers who can serve as language models and support their language development. Giving children access to accommodations while still keeping them in a general education classroom when possible, exemplifies the least restrictive environment, and children have been consistently shown to develop stronger language skills when immersed in a general education environment. Providing children with the tools to advocate for themselves in that kind of classroom will increase their success: if they did not hear a direction or could not hold it in their working memory, the only way to get that information is to ask for it.
Overall, children with hearing loss have unique profiles with regard to working memory, language, and socioemotional functioning. Though there are variations in how auditory deprivation impacts the developing brain, some trends and predictive capacities emerged. With regard to working memory, children with higher working memory scores are less likely to struggle with behavioral, emotional, and cognitive regulation, key tenets of executive functioning. Future directions of this research include interventions that target building working memory capacity through multimodal instruction, potentially in sensitive or critical periods, that may bolster language development as well.
Author Contributions
Conceptualization, D.W., E.C., M.O., N.M. and S.O.; methodology, D.W.; software, D.W.; validation, D.W., E.C., M.O., N.M., S.O.; formal analysis, D.W.; investigation, D.W., S.O., M.O., and E.C.; resources, N.M.; data curation, D.W.; writing—original draft preparation, D.W.; writing—review and editing, D.W., E.C., M.O.; visualization, D.W.; supervision, E.C.; project administration, D.W. All authors have read and agreed to the published version of the manuscript.
Funding
This research received no external funding.
Informed Consent Statement
Informed consent was obtained from all subjects involved in the study.
Data Availability Statement
The data are not publicly available due to confidentiality and privacy concerns with a small sample size and potentially identifiable population.
Conflicts of Interest
The authors are all employees of The River School. However, there was no external funding provided for this study. The authors declare no conflict of interest. The school had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.
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Table 1.
Relevant Demographic Characteristics of Sample.
Table 1.
Relevant Demographic Characteristics of Sample.
| Age at Evaluation (months) |
n |
% |
|
| |
M (SD) |
62 (23.61) |
- |
|
| |
Mdn |
57 |
- |
|
| Gender |
|
|
|
|
| |
Female |
23 |
65.71 |
|
| |
Male |
12 |
34.29 |
|
| Racial/Ethnic identity |
|
|
|
| |
Asian/Asian American |
8 |
22.86 |
|
| |
Black/African American |
4 |
11.43 |
|
| |
Latinx |
1 |
2.86 |
|
| |
White |
19 |
54.29 |
|
| |
Middle Eastern/North African |
3 |
8.57 |
|
| Home Language |
|
|
|
|
| |
Spoken English Only |
24 |
68.57 |
|
| |
English/Sign Language |
4 |
11.43 |
|
| |
English/other spoken language |
7 |
20.00 |
|
| Age of HL identification (months) |
|
|
| |
M (SD) |
13.03 (13.99) |
|
|
| |
Mdn |
8 |
|
|
| Etiology of HL |
|
|
|
|
| |
Hereditary |
15 |
42.86 |
|
| |
Congenital Infection |
2 |
5.71 |
|
| |
Postnatal Infection |
2 |
5.71 |
|
| |
Unknown |
18 |
51.43 |
|
| Listening Device Configuration |
|
|
|
| |
|
Bilateral, Unilateral |
| |
CI |
18, 0 |
51.43 |
|
| |
HA |
9, 4 |
37.14 |
|
| |
CI/HA (bimodal) |
4 |
11.43 |
|
Table 2.
Descriptive Statistics for Language and Working Memory.
Table 2.
Descriptive Statistics for Language and Working Memory.
| |
M |
SD |
Mdn |
Range |
| Core Language/GLAI |
98.94 |
18.83 |
103 |
(48, 121) |
| Receptive Vocabulary |
95.74 |
21.45 |
95 |
(55, 132) |
| Expressive Vocabulary |
93.57 |
22.95 |
96 |
(55, 132) |
| Pragmatic Language |
103.11 |
18.17 |
108 |
(66, 140) |
| Working Memory Index |
97.6 |
12.17 |
98.5 |
(74, 116) |
Table 3.
Descriptive Statistics for BASC-3 Variables.
Table 3.
Descriptive Statistics for BASC-3 Variables.
| |
Parent (T-Score) |
Teacher (T-Score) |
| |
M |
SD |
Mdn |
M |
SD |
Mdn |
| Activities of Daily Living |
46.97 |
10.01 |
47 |
|
|
|
| Adaptability |
52.57 |
7.96 |
53 |
51.83 |
8.01 |
51 |
| Aggression |
48.20 |
6.05 |
45 |
48.14 |
7.26 |
46 |
| Anxiety |
49.23 |
7.04 |
48 |
46.57 |
7.78 |
46 |
| Attention |
48.63 |
8.97 |
48 |
49.71 |
9.40 |
49 |
| Atypicality |
49.37 |
9.38 |
46 |
48.14 |
6.37 |
46 |
| Conduct Problems |
45.00 |
5.58 |
44 |
46.60 |
7.07 |
44 |
| Depression |
48.11 |
8.18 |
46 |
47.91 |
8.02 |
45 |
| Functional Communication |
46.77 |
10.25 |
48 |
46.46 |
8.27 |
47 |
| Hyperactivity |
49.00 |
7.10 |
48 |
47.60 |
7.70 |
46 |
| Leadership |
51.4 |
10.15 |
52.5 |
50.09 |
8.57 |
46 |
| Learning Problems |
|
|
47.73 |
8.11 |
46 |
| Social Skills |
51.2 |
8.83 |
53 |
50.66 |
8.05 |
51 |
| Somatization |
48.83 |
10.07 |
47 |
46.71 |
6.35 |
45 |
| Study Skills |
|
|
|
48.64 |
7.79 |
47 |
| Withdrawal |
50.20 |
8.55 |
50 |
50.66 |
10.66 |
47 |
Table 4.
Statistically Significant Teacher Report Form Associations with Working Memory.
Table 4.
Statistically Significant Teacher Report Form Associations with Working Memory.
| Scale |
Atypicality |
Functional Communication |
Hyperactivity |
Withdrawal |
| Correlation |
-0.49 |
0.37 |
-0.44 |
-0.42 |
| p-value |
p<.01 |
p<.05 |
p<.05 |
p<.05 |
Table 5.
Statistically Significant Parent Report Form Associations with Working Memory.
Table 5.
Statistically Significant Parent Report Form Associations with Working Memory.
| Scale |
Adaptability |
Inattention |
| Correlation |
0.37 |
-0.46 |
| p-value |
p<.05 |
p<.01 |
Table 6.
Statistically Significant Teacher Report Form Associations with Language.
Table 6.
Statistically Significant Teacher Report Form Associations with Language.
| |
Inattention |
Anxiety |
Functional Communication |
Social Skills |
| Core/GLAI |
- |
0.44 |
0.60 |
- |
| PPVT/ROWPVT |
-0.44 |
- |
0.77 |
0.42 |
| EVT/EOWPVT |
-0.34 |
- |
0.69 |
- |
| Pragmatic |
-0.55 |
- |
0.68 |
- |
Table 7.
Statistically Significant Parent Report Form Associations with Language.
Table 7.
Statistically Significant Parent Report Form Associations with Language.
| |
Inattention |
Atypicality |
Adaptability |
Functional Communication |
Social Skills |
| Core/GLAI |
-0.40 |
- |
0.43 |
0.60 |
- |
| PPVT/ROWPVT |
-0.38 |
-0.33 |
- |
0.70 |
0.33 |
| EVT/EOWPVT |
- |
- |
0.39 |
0.60 |
- |
| Pragmatic |
- |
- |
- |
- |
- |
Table 8.
Language and Working Memory - Correlations with Demographic Variables.
Table 8.
Language and Working Memory - Correlations with Demographic Variables.
| |
WM |
Core GLAI |
Rec. |
Exp. |
Pragm |
Gender |
Age |
Age at ID |
| WM |
|
|
|
|
|
|
|
|
| Core/GLAI |
0.37 |
|
|
|
|
|
|
|
| PPVT/ROWPVT |
0.26 |
.79* |
|
|
|
|
|
|
| EVT/EOWPVT |
0.24 |
.84* |
.88* |
|
|
|
|
|
| Pragmatic |
0.38 |
.48* |
.65* |
.63* |
|
|
|
|
| Gender |
-0.33 |
-0.21 |
0.25 |
0.16 |
0.12 |
|
|
|
| Age |
0.01 |
0.05 |
0.3 |
.37* |
0.22 |
-0.13 |
|
|
| Age at ID |
-0.05 |
-.41* |
-0.33 |
-.38* |
-0.18 |
0.01 |
0.13 |
|
| Configuration |
-0.35 |
0.06 |
0.24 |
0.11 |
-0.44 |
0.05 |
0.14 |
0.18 |
Table 9.
Optimal Regression Model Fit and Equations.
Table 9.
Optimal Regression Model Fit and Equations.
| |
AIC |
R2 |
Regression Equation |
| Working Memory |
142.05 |
0.391 |
(TWithdrawal*-.45) + (THyperactivity*-.38) + (PAdapt*.45) |
| Core Language |
159.46 |
0.614 |
(TFunctionalComm*1.06) + (TAnxiety*1.07) + (PAdapt*.79) |
| Expressive Vocabulary |
199.67 |
0.506 |
(TFunctionalComm*1.74) + (PAdapt*.56) |
| Pragmatic Language |
100.23 |
0.544 |
(TFunctionalComm*1.53) + (TInattention*-.65) |
| Receptive Vocabulary |
183.96 |
0.639 |
(TFunctionalComm*1.42)+(PFunctionalComm*.65) |
|
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