Assessing Children’s Fine Motor Skills With Sensor-Augmented Toys: Machine Learning Approach

BackgroundApproximately 5%-10% of elementary school children show delayed development of fine motor skills. To address these problems, detection is required. Current assessment tools are time-consuming, require a trained supervisor, and are not motivating for children. Sensor...

Full description

Bibliographic Details
Main Authors: Brons, Annette, de Schipper, Antoine, Mironcika, Svetlana, Toussaint, Huub, Schouten, Ben, Bakkes, Sander, Kröse, Ben
Format: Article
Language:English
Published: JMIR Publications 2021-04-01
Series:Journal of Medical Internet Research
Online Access:https://www.jmir.org/2021/4/e24237
id doaj-8e70b34374d740e2a5957715e4ef140a
record_format Article
spelling doaj-8e70b34374d740e2a5957715e4ef140a2021-04-22T13:15:57ZengJMIR PublicationsJournal of Medical Internet Research1438-88712021-04-01234e2423710.2196/24237Assessing Children’s Fine Motor Skills With Sensor-Augmented Toys: Machine Learning ApproachBrons, Annettede Schipper, AntoineMironcika, SvetlanaToussaint, HuubSchouten, BenBakkes, SanderKröse, Ben BackgroundApproximately 5%-10% of elementary school children show delayed development of fine motor skills. To address these problems, detection is required. Current assessment tools are time-consuming, require a trained supervisor, and are not motivating for children. Sensor-augmented toys and machine learning have been presented as possible solutions to address this problem. ObjectiveThis study examines whether sensor-augmented toys can be used to assess children’s fine motor skills. The objectives were to (1) predict the outcome of the fine motor skill part of the Movement Assessment Battery for Children Second Edition (fine MABC-2) and (2) study the influence of the classification model, game, type of data, and level of difficulty of the game on the prediction. MethodsChildren in elementary school (n=95, age 7.8 [SD 0.7] years) performed the fine MABC-2 and played 2 games with a sensor-augmented toy called “Futuro Cube.” The game “roadrunner” focused on speed while the game “maze” focused on precision. Each game had several levels of difficulty. While playing, both sensor and game data were collected. Four supervised machine learning classifiers were trained with these data to predict the fine MABC-2 outcome: k-nearest neighbor (KNN), logistic regression (LR), decision tree (DT), and support vector machine (SVM). First, we compared the performances of the games and classifiers. Subsequently, we compared the levels of difficulty and types of data for the classifier and game that performed best on accuracy and F1 score. For all statistical tests, we used α=.05. ResultsThe highest achieved mean accuracy (0.76) was achieved with the DT classifier that was trained on both sensor and game data obtained from playing the easiest and the hardest level of the roadrunner game. Significant differences in performance were found in the accuracy scores between data obtained from the roadrunner and maze games (DT, P=.03; KNN, P=.01; LR, P=.02; SVM, P=.04). No significant differences in performance were found in the accuracy scores between the best performing classifier and the other 3 classifiers for both the roadrunner game (DT vs KNN, P=.42; DT vs LR, P=.35; DT vs SVM, P=.08) and the maze game (DT vs KNN, P=.15; DT vs LR, P=.62; DT vs SVM, P=.26). The accuracy of only the best performing level of difficulty (combination of the easiest and hardest level) achieved with the DT classifier trained with sensor and game data obtained from the roadrunner game was significantly better than the combination of the easiest and middle level (P=.046). ConclusionsThe results of our study show that sensor-augmented toys can efficiently predict the fine MABC-2 scores for children in elementary school. Selecting the game type (focusing on speed or precision) and data type (sensor or game data) is more important for determining the performance than selecting the machine learning classifier or level of difficulty.https://www.jmir.org/2021/4/e24237
collection DOAJ
language English
format Article
sources DOAJ
author Brons, Annette
de Schipper, Antoine
Mironcika, Svetlana
Toussaint, Huub
Schouten, Ben
Bakkes, Sander
Kröse, Ben
spellingShingle Brons, Annette
de Schipper, Antoine
Mironcika, Svetlana
Toussaint, Huub
Schouten, Ben
Bakkes, Sander
Kröse, Ben
Assessing Children’s Fine Motor Skills With Sensor-Augmented Toys: Machine Learning Approach
Journal of Medical Internet Research
author_facet Brons, Annette
de Schipper, Antoine
Mironcika, Svetlana
Toussaint, Huub
Schouten, Ben
Bakkes, Sander
Kröse, Ben
author_sort Brons, Annette
title Assessing Children’s Fine Motor Skills With Sensor-Augmented Toys: Machine Learning Approach
title_short Assessing Children’s Fine Motor Skills With Sensor-Augmented Toys: Machine Learning Approach
title_full Assessing Children’s Fine Motor Skills With Sensor-Augmented Toys: Machine Learning Approach
title_fullStr Assessing Children’s Fine Motor Skills With Sensor-Augmented Toys: Machine Learning Approach
title_full_unstemmed Assessing Children’s Fine Motor Skills With Sensor-Augmented Toys: Machine Learning Approach
title_sort assessing children’s fine motor skills with sensor-augmented toys: machine learning approach
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2021-04-01
description BackgroundApproximately 5%-10% of elementary school children show delayed development of fine motor skills. To address these problems, detection is required. Current assessment tools are time-consuming, require a trained supervisor, and are not motivating for children. Sensor-augmented toys and machine learning have been presented as possible solutions to address this problem. ObjectiveThis study examines whether sensor-augmented toys can be used to assess children’s fine motor skills. The objectives were to (1) predict the outcome of the fine motor skill part of the Movement Assessment Battery for Children Second Edition (fine MABC-2) and (2) study the influence of the classification model, game, type of data, and level of difficulty of the game on the prediction. MethodsChildren in elementary school (n=95, age 7.8 [SD 0.7] years) performed the fine MABC-2 and played 2 games with a sensor-augmented toy called “Futuro Cube.” The game “roadrunner” focused on speed while the game “maze” focused on precision. Each game had several levels of difficulty. While playing, both sensor and game data were collected. Four supervised machine learning classifiers were trained with these data to predict the fine MABC-2 outcome: k-nearest neighbor (KNN), logistic regression (LR), decision tree (DT), and support vector machine (SVM). First, we compared the performances of the games and classifiers. Subsequently, we compared the levels of difficulty and types of data for the classifier and game that performed best on accuracy and F1 score. For all statistical tests, we used α=.05. ResultsThe highest achieved mean accuracy (0.76) was achieved with the DT classifier that was trained on both sensor and game data obtained from playing the easiest and the hardest level of the roadrunner game. Significant differences in performance were found in the accuracy scores between data obtained from the roadrunner and maze games (DT, P=.03; KNN, P=.01; LR, P=.02; SVM, P=.04). No significant differences in performance were found in the accuracy scores between the best performing classifier and the other 3 classifiers for both the roadrunner game (DT vs KNN, P=.42; DT vs LR, P=.35; DT vs SVM, P=.08) and the maze game (DT vs KNN, P=.15; DT vs LR, P=.62; DT vs SVM, P=.26). The accuracy of only the best performing level of difficulty (combination of the easiest and hardest level) achieved with the DT classifier trained with sensor and game data obtained from the roadrunner game was significantly better than the combination of the easiest and middle level (P=.046). ConclusionsThe results of our study show that sensor-augmented toys can efficiently predict the fine MABC-2 scores for children in elementary school. Selecting the game type (focusing on speed or precision) and data type (sensor or game data) is more important for determining the performance than selecting the machine learning classifier or level of difficulty.
url https://www.jmir.org/2021/4/e24237
work_keys_str_mv AT bronsannette assessingchildrensfinemotorskillswithsensoraugmentedtoysmachinelearningapproach
AT deschipperantoine assessingchildrensfinemotorskillswithsensoraugmentedtoysmachinelearningapproach
AT mironcikasvetlana assessingchildrensfinemotorskillswithsensoraugmentedtoysmachinelearningapproach
AT toussainthuub assessingchildrensfinemotorskillswithsensoraugmentedtoysmachinelearningapproach
AT schoutenben assessingchildrensfinemotorskillswithsensoraugmentedtoysmachinelearningapproach
AT bakkessander assessingchildrensfinemotorskillswithsensoraugmentedtoysmachinelearningapproach
AT kroseben assessingchildrensfinemotorskillswithsensoraugmentedtoysmachinelearningapproach
_version_ 1721514362752991232