| Literature DB >> 35146699 |
Moritz M Daum1, Marco Bleiker2, Stephanie Wermelinger2, Ira Kurthen2, Laura Maffongelli3, Katharina Antognini4, Miriam Beisert2, Anja Gampe2,5.
Abstract
Today, a vast number of tools exist to measure development in early childhood in a variety of domains such as cognition, language, or motor, cognition. These tools vary in different aspects. Either children are examined by a trained experimenter, or caregivers fill out questionnaires. The tools are applied in the controlled setting of a laboratory or in the children's natural environment. While these tools provide a detailed picture of the current state of children's development, they are at the same time subject to several constraints. Furthermore, the measurement of an individual child's change of different skills over time requires not only one measurement but high-density longitudinal assessments. These assessments are time-consuming, and the breadth of developmental domains assessed remains limited. In this paper, we present a novel tool to assess the development of skills in different domains, a smartphone-based developmental diary app (the kleineWeltentdecker App, henceforth referred to as the APP (The German expression "kleine Weltentdecker" can be translated as "young world explorers".)). By using the APP, caregivers can track changes in their children's skills during development. Here, we report the construction and validation of the questionnaires embedded in the APP as well as the technical details. Empirical validations with children of different age groups confirmed the robustness of the different measures implemented in the APP. In addition, we report preliminary findings, for example, on children's communicative development by using existing APP data. This substantiates the validity of the assessment. With the APP, we put a portable tool for the longitudinal documentation of individual children's development in every caregiver's pocket, worldwide.Entities:
Keywords: Ambulatory assessment; Experience sampling; Longitudinal research design; Smartphone application
Mesh:
Year: 2022 PMID: 35146699 PMCID: PMC8831019 DOI: 10.3758/s13428-021-01755-7
Source DB: PubMed Journal: Behav Res Methods ISSN: 1554-351X
Number of items per domain that were included in the final version of the APP
| Domain | Number of items |
|---|---|
| Cognition | 34 |
| Language skills (Syntax, Grammar) | 157 |
| Motor | 176 |
| Social / Emotional | 151 |
| Demographics | 24 |
| Total | 630 |
Fig. 1Depiction of the APP navigation: (a) Home screen of user navigation, (b) item and answer options, (c) options to indicate the time since when a child shows a particular skill
Fig. 2Depiction of the four age groups: (a) An infant at 4 months, (b) an infant at 12 months, (c) a toddler at 24 months, and (d) a preschooler at 48 months
Fig. 3Exemplary Illustrations: (a) Child in planar style, adult in linear style, (b) movement of a child while moving from sitting to free standing, (c) additional information depicted by the duration in s
Psychometric values for the assessment of the objectivity and criterion validity for the motor and cognition items: Type III analysis of variance table with Satterthwaite’s method
| Sum Sq | Mean Sq | NumDF | DenDF | F value | Pr(>F) | Sig. Level | |
|---|---|---|---|---|---|---|---|
| PregnancyWeek | 20943 | 20943 | 1 | 1700.2 | 7.118 | .008 | ** |
| Sex | 517 | 259 | 2 | 1697.2 | 0.088 | .916 | |
| AgeMother | 206250 | 206250 | 1 | 1699.9 | 70.100 | < .001 | *** |
| AgeFather | 20175 | 20175 | 1 | 1697.5 | 6.857 | .009 | ** |
| EducationMother | 15525 | 3105 | 5 | 1696.8 | 1.055 | .384 | |
| EducationFather | 14553 | 2911 | 5 | 1693.0 | 0.989 | .423 | |
| APPUser | 4803 | 2401 | 2 | 1697.1 | 0.816 | .442 | |
| Domain | 103 | 103 | 1 | 206.0 | 0.035 | .852 |
Because there were only few cognitive items, we merged items of the motor and the cognitive items in this model and included domain as a factor. There was no effect of domain. The model accounted for 98.28% of the variance
Psychometric values for the assessment of objectivity and criterion validity for the language items: Type III analysis of variance table with Satterthwaite’s method
| Sum Sq | Mean Sq | NumDF | DenDF | F value | Pr(>F) | Sig. Level | |
|---|---|---|---|---|---|---|---|
| AgeDays | 472779 | 472779 | 1 | 289.29 | 582.325 | < .001 | *** |
| Pregnancyweek | 1589 | 1589 | 1 | 387.45 | 1.957 | .163 | |
| Sex | 4751 | 4751 | 1 | 410.92 | 5.852 | .016 | * |
| AgeMother | 95 | 95 | 1 | 321.50 | 0.118 | .732 | |
| AgeFather | 362 | 362 | 1 | 315.64 | 0.446 | .505 | |
| EducationMother | 2053 | 513 | 4 | 321.49 | 0.632 | .640 | |
| EducationFather | 1350 | 270 | 5 | 336.51 | 0.333 | .893 | |
| APPUser | 2392 | 1196 | 2 | 310.82 | 1.473 | .231 |
The model accounted for 65.24% of the variance
Internal consistency (Cronbach’s α) for cognition, language, fine motor, and gross motor items for different age ranges
| Scale | Age Range (Months) | |
|---|---|---|
| Cognition | 3 - 6 | 0.81 |
| Cognition | 6 - 12 | 0.449 |
| Cognition | 12 - 18 | 0.424 |
| Cognition | 18 - 24 | 0.421 |
| Cognition | 24 - 36 | 0.575 |
| Cognition | 36 - 48 | 0.334 |
| Language | 24 - 36 | 0.985 |
| Language | 36 - 48 | 0.982 |
| Language | 48 - 72 | 0.982 |
| Fine Motor | 3 - 6 | 0.918 |
| Fine Motor | 6 - 12 | 0.831 |
| Fine Motor | 12 - 18 | 0.653 |
| Fine Motor | 18 - 30 | 0.742 |
| Fine Motor | 30 - 44 | 0.817 |
| Fine Motor | 44 - 72 | 0.835 |
| Gross Motor | 3 - 6 | 0.9 |
| Gross Motor | 6 - 12 | 0.889 |
| Gross Motor | 12 - 18 | 0.738 |
| Gross Motor | 18 - 30 | 0.748 |
| Gross Motor | 30 - 44 | 0.755 |
| Gross Motor | 44 - 72 | 0.812 |
Number of users (total, mothers, and fathers) of the 15 countries with the largest numbers of users
| Country | Total | ||
|---|---|---|---|
| Switzerland | 2472 | 1227 | 1245 |
| Germany | 1827 | 918 | 909 |
| Austria | 68 | 35 | 33 |
| Italy | 52 | 31 | 21 |
| Poland | 35 | 12 | 23 |
| United States | 23 | 12 | 11 |
| Turkey | 22 | 14 | 8 |
| Russia | 21 | 9 | 12 |
| United Kingdom | 18 | 15 | 3 |
| Romania | 18 | 8 | 12 |
| Spain | 18 | 12 | 6 |
| Bosnia | 17 | 6 | 11 |
| France | 15 | 9 | 6 |
| Kazakhstan | 15 | 2 | 13 |
| Kosovo | 13 | 7 | 6 |
Fig. 4Relationship between AoA of Sharing Attention as an indicator of early joint attention ability and the AoA of First Word as an indicator of early language skills. Individual data points (blue) and box plots are illustrated