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AI-Based Video Analysis for Motor Development Assessment in Children (AMD-AI)

15 de maio de 2026 atualizado por: Abdullah Furkan Cangi, Medipol University

Development and Validation of an Artificial Intelligence-Based System for Assessing Motor Development in Children Using Video Analysis

This is a non-interventional, prospective observational study aimed at developing and validating an artificial intelligence-based system for assessing motor development in children using video analysis. Children aged 5 to 10 years will perform standardized motor tasks, which will be recorded under controlled conditions. The recorded videos will be analyzed using computer vision and deep learning techniques to extract movement patterns.

The results of the AI-based analysis will be compared with standardized motor assessment scores obtained from the Bruininks-Oseretsky Test of Motor Proficiency, Second Edition - Short Form (BOT-2 SF). Participants will be classified into typical and atypical motor development groups based on BOT-2 scores. The primary objective is to evaluate the classification performance of the AI model. Secondary analyses will examine the relationship between AI predictions and continuous motor performance scores.

The study is designed to explore whether motor development can be assessed objectively without direct clinical testing, using only short video recordings. The findings may contribute to the development of scalable and accessible digital screening tools for early identification of motor development differences in children.

Visão geral do estudo

Descrição detalhada

This study is a prospective, non-interventional observational study conducted to develop and validate an artificial intelligence-based system for the assessment of motor development in children. The study includes children aged between 5 and 10 years who have no previously diagnosed neurological, developmental, or orthopedic disorders.

All participants will complete the Bruininks-Oseretsky Test of Motor Proficiency, Second Edition - Short Form (BOT-2 SF), which will serve as the reference standard for motor performance. Based on BOT-2 scores, participants will be categorized into typical and atypical motor development groups using predefined thresholds derived from normative data and statistical distribution methods.

In addition to standardized testing, participants will perform a series of structured motor tasks, including jumping jacks, tandem walking, skipping, single-leg balance, finger-to-nose coordination, and protective extension responses. These tasks will be recorded using high-resolution video under controlled environmental conditions.

Video data will be processed using computer vision pipelines. Skeletal keypoints will be extracted using pose estimation models, and silhouette segmentation will be obtained using deep learning-based segmentation models. Extracted features will be normalized and used as input for machine learning and deep learning architectures, including transformer-based models and graph-based networks.

The primary outcome is the classification performance of the AI model in distinguishing typical versus atypical motor development profiles, evaluated using metrics such as ROC-AUC, accuracy, sensitivity, specificity, F1-score, and balanced accuracy. Secondary outcomes include regression performance for predicting continuous motor scores, evaluated using MAE, RMSE, and R-squared values.

Inter-rater reliability of expert evaluations will be assessed using intraclass correlation coefficients (ICC). Additional analyses will include error distribution examination and Bland-Altman analysis to assess agreement between AI predictions and standardized test scores.

This study does not involve any intervention, treatment, or risk beyond standard observational procedures. All participants are healthy volunteers, and informed consent will be obtained from parents or legal guardians. The study has been approved by the Istanbul Medipol University Non-Interventional Clinical Research Ethics Committee.

Tipo de estudo

Observacional

Inscrição (Estimado)

60

Contactos e Locais

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Contato de estudo

Locais de estudo

Critérios de participação

Os pesquisadores procuram pessoas que se encaixem em uma determinada descrição, chamada de critérios de elegibilidade. Alguns exemplos desses critérios são a condição geral de saúde de uma pessoa ou tratamentos anteriores.

Critérios de elegibilidade

Idades elegíveis para estudo

  • Filho

Aceita Voluntários Saudáveis

Sim

Método de amostragem

Amostra Não Probabilística

População do estudo

The study population consists of children aged 5 to 10 years recruited from schools and clinical settings. All participants are typically developing individuals without prior diagnoses, and they are evaluated to identify variations in motor development patterns using standardized testing and video-based analysis.

Descrição

Inclusion Criteria:

  • Children aged between 5 and 10 years
  • No diagnosed neurological, developmental, or orthopedic disorders
  • Ability to follow verbal instructions
  • Informed consent obtained from parents or legal guardians
  • No prior participation in sensory integration therapy or special education programs

Exclusion Criteria:

  • Diagnosed neurological, developmental, or orthopedic conditions (e.g., autism spectrum disorder, cerebral palsy, epilepsy)
  • Visual or hearing impairments affecting task performance
  • Severe attention or behavioral problems preventing test completion
  • Physical limitations preventing participation in motor tasks

Plano de estudo

Esta seção fornece detalhes do plano de estudo, incluindo como o estudo é projetado e o que o estudo está medindo.

Como o estudo é projetado?

Detalhes do projeto

Coortes e Intervenções

Grupo / Coorte
Intervenção / Tratamento
Typical Motor Development
Children classified as having typical motor development based on BOT-2 scores. This group represents the control group for comparison with atypical motor development profiles.
This study does not include any therapeutic or experimental intervention. The procedures are limited to observational assessment and data collection. Participants perform standardized motor tasks and are video recorded under controlled conditions. No treatment, training, or behavioral modification is applied. The collected data are analyzed using artificial intelligence-based methods to evaluate motor development patterns.

O que o estudo está medindo?

Medidas de resultados primários

Medida de resultado
Descrição da medida
Prazo
AI-Based Classification Accuracy of Motor Development
Prazo: Baseline assessment (Day 1)
Classification accuracy of the artificial intelligence model in distinguishing typical versus atypical motor development based on video analysis, using the Bruininks-Oseretsky Test of Motor Proficiency, Second Edition Short Form (BOT-2 SF) total score as the reference standard. BOT-2 SF scores range from 0 to 88, with higher scores indicating better motor proficiency.
Baseline assessment (Day 1)

Medidas de resultados secundários

Medida de resultado
Descrição da medida
Prazo
Correlation Between AI Predictions and BOT-2 Scores
Prazo: Baseline assessment (Day 1)
Statistical relationship between artificial intelligence-generated motor development predictions and Bruininks-Oseretsky Test of Motor Proficiency, Second Edition Short Form (BOT-2 SF) total scores. BOT-2 SF scores range from 0 to 88, with higher scores indicating better motor proficiency.
Baseline assessment (Day 1)
Mean Absolute Error of AI-Based Motor Score Prediction
Prazo: Baseline assessment (Day 1)
Mean absolute error (MAE) of the artificial intelligence model in predicting continuous motor development scores based on video analysis, compared with Bruininks-Oseretsky Test of Motor Proficiency, Second Edition Short Form (BOT-2 SF) total scores.
Baseline assessment (Day 1)
Root Mean Square Error of AI-Based Motor Score Prediction
Prazo: Baseline assessment (Day 1)
Root mean square error (RMSE) of the artificial intelligence model in predicting continuous motor development scores based on video analysis, compared with Bruininks-Oseretsky Test of Motor Proficiency, Second Edition Short Form (BOT-2 SF) total scores.
Baseline assessment (Day 1)
R-Squared Performance of AI-Based Motor Score Prediction
Prazo: Baseline assessment (Day 1)
Coefficient of determination (R-squared) for the artificial intelligence model in predicting continuous motor development scores based on video analysis, compared with Bruininks-Oseretsky Test of Motor Proficiency, Second Edition Short Form (BOT-2 SF) total scores.
Baseline assessment (Day 1)

Colaboradores e Investigadores

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Patrocinador

Publicações e links úteis

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Links úteis

Datas de registro do estudo

Essas datas acompanham o progresso do registro do estudo e os envios de resumo dos resultados para ClinicalTrials.gov. Os registros do estudo e os resultados relatados são revisados ​​pela National Library of Medicine (NLM) para garantir que atendam aos padrões específicos de controle de qualidade antes de serem publicados no site público.

Datas Principais do Estudo

Início do estudo (Real)

1 de janeiro de 2026

Conclusão Primária (Estimado)

1 de agosto de 2026

Conclusão do estudo (Estimado)

1 de setembro de 2026

Datas de inscrição no estudo

Enviado pela primeira vez

29 de abril de 2026

Enviado pela primeira vez que atendeu aos critérios de CQ

15 de maio de 2026

Primeira postagem (Real)

19 de maio de 2026

Atualizações de registro de estudo

Última Atualização Postada (Real)

19 de maio de 2026

Última atualização enviada que atendeu aos critérios de controle de qualidade

15 de maio de 2026

Última verificação

1 de maio de 2026

Mais Informações

Termos relacionados a este estudo

Outros números de identificação do estudo

  • AMD-2026-01

Plano para dados de participantes individuais (IPD)

Planeja compartilhar dados de participantes individuais (IPD)?

INDECISO

Informações sobre medicamentos e dispositivos, documentos de estudo

Estuda um medicamento regulamentado pela FDA dos EUA

Não

Estuda um produto de dispositivo regulamentado pela FDA dos EUA

Não

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Ensaios clínicos em Motor Development Assessment

Ensaios clínicos em Observational Assessment Only

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