Video-based early cerebral palsy prediction using motion segmentation

Analysing distinct motion patterns that occur during infancy can be a way through early prediction of cerebral palsy. This analysis can only be performed by well-trained expert clinicians, and hence can not be widespread, specially in poor countries. In order to decrease the need for experts, computer-based methods can be applied. If individual motions of different body parts are available, these methods could achieve more accurate results with better clinical insight. Thus far, motion capture systems or the like were needed in order to provide such data. However, these systems not only need laboratory and experts to set up the experiment, but they could be intrusive for the infant's motions. In this paper we build up our prediction method on a solution based on a single video camera, that is far less intrusive and a lot cheaper. First, the motions of different body parts are separated, then, motion features are extracted and used to classify infants to healthy or affected. Our experimental results show that visually obtained motion data allows cerebral palsy detection as accurate as state-of-the-art electromagnetic sensor data.

[1]  Alexander Refsum Jensenius,et al.  Using computer-based video analysis in the study of fidgety movements. , 2009, Early human development.

[2]  P. P. Berg,et al.  Neurologic and Developmental Disability at Six Years of Age After Extremely Preterm Birth , 2006 .

[3]  H Dickhaus,et al.  Quantitative Score for the Evaluation of Kinematic Recordings in Neuropediatric Diagnostics , 2010, Methods of Information in Medicine.

[4]  Luc Van Gool,et al.  Motion Segmentation with Weak Labeling Priors , 2014, GCPR.

[5]  Marlette Burger,et al.  The predictive validity of general movements--a systematic review. , 2009, European journal of paediatric neurology : EJPN : official journal of the European Paediatric Neurology Society.

[6]  Mette Langaas,et al.  Identification of fidgety movements and prediction of CP by the use of computer-based video analysis is more accurate when based on two video recordings , 2013, Physiotherapy theory and practice.

[7]  O. M. Aamo,et al.  An Optical Flow-Based Method to Predict Infantile Cerebral Palsy , 2012, IEEE Transactions on Neural Systems and Rehabilitation Engineering.

[8]  Andreas Berg Modellbasert klassifisering av spedbarns bevegelser , 2008 .

[9]  Corinna Cortes,et al.  Support-Vector Networks , 1995, Machine Learning.

[10]  P. Cochat,et al.  Et al , 2008, Archives de pediatrie : organe officiel de la Societe francaise de pediatrie.

[11]  Christa Einspieler,et al.  Prechtl's assessment of general movements: a diagnostic tool for the functional assessment of the young nervous system. , 2005, Mental retardation and developmental disabilities research reviews.

[12]  Kurt Keutzer,et al.  Dense Point Trajectories by GPU-Accelerated Large Displacement Optical Flow , 2010, ECCV.

[13]  R Bellazzi,et al.  Supporting Regenerative Medicine by Integrative Dimensionality Reduction , 2012, Methods of Information in Medicine.

[14]  M. Aizerman,et al.  Theoretical Foundations of the Potential Function Method in Pattern Recognition Learning , 1964 .

[15]  G Rau,et al.  Movement analysis in the early detection of newborns at risk for developing spasticity due to infantile cerebral palsy. , 2006, Human movement science.

[16]  Huiyu Zhou,et al.  Object tracking using SIFT features and mean shift , 2009, Comput. Vis. Image Underst..

[17]  Hartmut Dickhaus,et al.  Kinematic assessment of stereotypy in spontaneous movements in infants. , 2012, Gait & posture.

[18]  C. Cans Surveillance of cerebral palsy in Europe: a collaboration of cerebral palsy surveys and registers , 2000, Developmental medicine and child neurology.

[19]  G. Breart,et al.  Neurodevelopmental disabilities and special care of 5-year-old children born before 33 weeks of gestation (the EPIPAGE study): a longitudinal cohort study , 2008, The Lancet.

[20]  Gentaro Taga,et al.  Specific characteristics of spontaneous movements in preterm infants at term age are associated with developmental delays at age 3 years , 2013, Developmental medicine and child neurology.

[21]  A. Jensenius,et al.  Early prediction of cerebral palsy by computer‐based video analysis of general movements: a feasibility study , 2010, Developmental medicine and child neurology.