Development and Validation of a Deep Learning Method to Predict Cerebral Palsy From Spontaneous Movements in Infants at High Risk

被引:41
|
作者
Groos, Daniel [1 ]
Adde, Lars [2 ,3 ]
Aubert, Sindre [4 ]
Boswell, Lynn [5 ]
de Regnier, Raye-Ann [5 ,6 ]
Fjortoft, Toril [2 ,3 ]
Gaebler-Spira, Deborah [6 ,7 ]
Haukeland, Andreas [4 ]
Loennecken, Marianne [8 ]
Msall, Michael [9 ,10 ]
Moinichen, Unn Inger [8 ]
Pascal, Aurelie [11 ]
Peyton, Colleen [6 ,12 ]
Ramampiaro, Heri [4 ]
Schreiber, Michael D. [12 ]
Silberg, Inger Elisabeth [8 ]
Songstad, Nils Thomas [13 ]
Thomas, Niranjan [14 ]
Van den Broeck, Christine [11 ]
Oberg, Gunn Kristin [8 ,15 ]
Ihlen, Espen A. F. [1 ]
Stoen, Ragnhild [2 ,16 ]
机构
[1] Norwegian Univ Sci & Technol, Dept Neuromed & Movement Sci, Trondheim, Norway
[2] Norwegian Univ Sci & Technol, Dept Clin & Mol Med, Trondheim, Norway
[3] Trondheim Reg & Univ Hosp, St Olavs Hosp, Clin Clin Serv, Trondheim, Norway
[4] Norwegian Univ Sci & Technol, Dept Comp Sci, Trondheim, Norway
[5] Ann & Robert H Lurie Childrens Hosp Chicago, Chicago, IL 60611 USA
[6] Northwestern Univ, Feinberg Sch Med, Chicago, IL 60611 USA
[7] Shirley Ryan AbilityLab, Chicago, IL USA
[8] Oslo Univ Hosp, Div Paediat & Adolescent Med, Oslo, Norway
[9] Univ Chicago, Sect Dev & Behav Pediat, Comer Childrens Hosp, Chicago, IL 60637 USA
[10] Univ Chicago, Kennedy Res Ctr Neurodev Disabil, Comer Childrens Hosp, Chicago, IL 60637 USA
[11] Univ Ghent, Dept Rehabil Sci & Physiotherapy, Ghent, Belgium
[12] Univ Chicago, Dept Pediat, Comer Childrens Hosp, Chicago, IL 60637 USA
[13] Univ Hosp North Norway, Dept Pediat & Adolescent Med, Tromso, Norway
[14] Christian Med Coll Vellore, Dept Neonatol, Vellore, Tamil Nadu, India
[15] Arctic Univ Norway, Dept Hlth & Care Sci, Fac Hlth Sci, Tromso, Norway
[16] Trondheim Reg & Univ Hosp, Dept Neonatol, St Olavs Hosp, Trondheim, Norway
关键词
GENERAL MOVEMENTS; FIDGETY MOVEMENTS; VIDEO ANALYSIS; CLASSIFICATION; RELIABILITY; DIAGNOSIS; ACCURATE; CHILDREN; MARKER; TOOL;
D O I
10.1001/jamanetworkopen.2022.21325
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
IMPORTANCE Early identification of cerebral palsy (CP) is important for early intervention, yet expert-based assessments do not permit widespread use, and conventional machine learning alternatives lack validity. OBJECTIVE To develop and assess the external validity of a novel deep learning-based method to predict CP based on videos of infants' spontaneous movements at 9 to 18 weeks' corrected age. DESIGN, SETTING, AND PARTICIPANTS This prognostic study of a deep learning-based method to predict CP at a corrected age of 12 to 89 months involved 557 infants with a high risk of perinatal brain injury who were enrolled in previous studies conducted at 13 hospitals in Belgium, India, Norway, and the US between September 10, 2001, and October 25, 2018. Analysis was performed between February 11, 2020, and September 23, 2021. Included infants had available video recorded during the fidgety movement period from 9 to 18 weeks' corrected age, available classifications of fidgety movements ascertained by the general movement assessment (GMA) tool, and available data on CP status at 12 months' corrected age or older. A total of 418 infants (75.0%) were randomly assigned to the model development (training and internal validation) sample, and 139 (25.0%) were randomly assigned to the external validation sample (1 test set). EXPOSURE Video recording of spontaneous movements. MAIN OUTCOMES AND MEASURES The primary outcome was prediction of CP. Deep learning-based prediction of CP was performed automatically from a single video. Secondary outcomes included prediction of associated functional level and CP subtype. Sensitivity, specificity, positive and negative predictive values, and accuracy were assessed. RESULTS Among 557 infants (310 [55.7%] male), the median (IQR) corrected age was 12 (11-13) weeks at assessment, and 84 infants (15.1%) were diagnosed with CP at a mean (SD) age of 3.4 (1.7) years. Data on race and ethnicity were not reported because previous studies (from which the infant samples were derived) used different study protocols with inconsistent collection of these data. On external validation, the deep learning-based CP prediction method had sensitivity of 71.4% (95% CI, 47.8%-88.7%), specificity of 94.1%(95% CI, 88.2%-97.6%), positive predictive value of 68.2% (95% CI, 45.1%-86.1%), and negative predictive value of 94.9% (95% CI, 89.2%-98.1%). In comparison, the GMA tool had sensitivity of 70.0% (95% CI, 45.7%-88.1%), specificity of 88.7% (95% CI, 81.5%-93.8%), positive predictive value of 51.9% (95% CI, 32.0%-71.3%), and negative predictive value of 94.4% (95% CI, 88.3%-97.9%). The deep learning method achieved higher accuracy than the conventional machine learning method (90.6% [95% CI, 84.5%-94.9%] vs 72.7% [95% CI, 64.5%-79.9%]; P < .001), but no significant improvement in accuracy was observed compared with the GMA tool (85.9%; 95% CI, 78.9%-91.3%; P = .11). The deep learning prediction model had higher sensitivity among infants with nonambulatory CP (100%; 95% CI, 63.1%-100%) vs ambulatory CP (58.3%; 95% CI, 27.7%-84.8%; P = .02) and spastic bilateral CP (92.3%; 95% CI, 64.0%-99.8%) vs spastic unilateral CP (42.9%; 95% CI, 9.9%-81.6%; P < .001). CONCLUSIONS AND RELEVANCE In this prognostic study, a deep learning-based method for predicting CP at 9 to 18 weeks' corrected age had predictive accuracy on external validation, which suggests possible avenues for using deep learning-based software to provide objective early detection of CP in clinical settings.
引用
收藏
页数:14
相关论文
共 50 条
  • [31] Vision Assessments and Interventions for Infants 0-2 Years at High Risk for Cerebral Palsy: A Systematic Review
    Chorna, Olena D.
    Guzzetta, Andrea
    Maitre, Nathalie L.
    PEDIATRIC NEUROLOGY, 2017, 76 : 3 - 13
  • [32] Development and content validation of the Upper Limb-Motor Learning Strategy Tool for cerebral palsy
    Taghizadeh, Atefeh
    Webster, Kate E.
    Bhopti, Anoo
    Hoare, Brian
    DISABILITY AND REHABILITATION, 2024, 46 (23) : 5624 - 5632
  • [33] The Predictive Accuracy of the General Movement Assessment for Cerebral Palsy: A Prospective, Observational Study of High-Risk Infants in a Clinical Follow-Up Setting
    Stoen, Ragnhild
    Boswell, Lynn
    de Regnier, Raye-Ann
    Fjortoft, Toril
    Gaebler-Spira, Deborah
    Ihlen, Espen
    Labori, Cathrine
    Loennecken, Marianne
    Msall, Michael
    Moinichen, Unn Inger
    Peyton, Colleen
    Russow, Annamarie
    Schreiber, Michael D.
    Silberg, Inger Elisabeth
    Songstad, Nils Thomas
    Vagen, Randi
    Oberg, Gunn Kristin
    Adde, Lars
    JOURNAL OF CLINICAL MEDICINE, 2019, 8 (11)
  • [34] Movement Imitation Therapy for Preterm Babies (MIT-PB): a Novel Approach to Improve the Neurodevelopmental Outcome of Infants at High-Risk for Cerebral Palsy
    Soloveichick, Marina
    Marschik, Peter B.
    Gover, Ayala
    Molad, Michal
    Kessel, Irena
    Einspieler, Christa
    JOURNAL OF DEVELOPMENTAL AND PHYSICAL DISABILITIES, 2020, 32 (04) : 587 - 598
  • [35] Reliability of Center of Pressure Measures for Assessing the Development of Sitting Postural Control in Infants With or at Risk of Cerebral Palsy
    Kyvelidou, Anastasia
    Harbourne, Regina T.
    Shostrom, Valerie K.
    Stergiou, Nicholas
    ARCHIVES OF PHYSICAL MEDICINE AND REHABILITATION, 2010, 91 (10): : 1593 - 1601
  • [36] LEARN 2 MOVE 0-2 years: effects of a new intervention program in infants at very high risk for cerebral palsy; a randomized controlled trial
    Hielkema, Tjitske
    Hamer, Elisa G.
    Reinders-Messelink, Heleen A.
    Maathuis, Carel G. B.
    Bos, Arend F.
    Dirks, Tineke
    van Doormaal, Lily
    Verheijden, Johannes
    Vlaskamp, Carla
    Lindeman, Eline
    Hadders-Algra, Mijna
    BMC PEDIATRICS, 2010, 10
  • [37] The Small Step Early Intervention Program for Infants at High Risk of Cerebral Palsy: A Single-Subject Research Design Study
    Elvrum, Ann-Kristin G.
    Karstad, Silja Berg
    Hansen, Gry
    Bjorkoy, Ingrid Randby
    Lydersen, Stian
    Grunewaldt, Kristine Hermansen
    Eliasson, Ann-Christin
    JOURNAL OF CLINICAL MEDICINE, 2024, 13 (17)
  • [38] Deep Learning Algorithm for Classification of Cerebral Palsy from Functional Magnetic Resonance Imaging (fMRI) Classification of Cerebral Palsy from Functional Magnetic Resonance Imaging
    Palraj, Pradeepa
    Siddan, Gopinath
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2021, 12 (03) : 718 - 724
  • [39] Can cerebral palsy impairments be minimized in infants at risk? Potential insights from basic neuroscience research
    Gordon, Andrew M.
    Hadders-Algra, Mijna
    DEVELOPMENTAL MEDICINE AND CHILD NEUROLOGY, 2011, 53 : 2 - 3
  • [40] Development and validation of a deep learning system to classify aetiology and predict anatomical outcomes of macular hole
    Xiao, Yu
    Hu, Yijun
    Quan, Wuxiu
    Yang, Yahan
    Lai, Weiyi
    Wang, Xun
    Zhang, Xiayin
    Zhang, Bin
    Wu, Yuqing
    Wu, Qiaowei
    Liu, Baoyi
    Zeng, Xiaomin
    Lin, Zhanjie
    Fang, Ying
    Hu, Yu
    Feng, Songfu
    Yuan, Ling
    Cai, Hongmin
    Li, Tao
    Lin, Haotian
    Yu, Honghua
    BRITISH JOURNAL OF OPHTHALMOLOGY, 2023, 107 (01) : 109 - 115