Intelligence Sparse Sensor Network for Automatic Early Evaluation of General Movements in Infants

Author:

Bao Benkun12,Zhang Senhao23ORCID,Li Honghua4,Cui Weidong2,Guo Kai12,Zhang Yingying12,Yang Kerong12,Liu Shuai12,Tong Yao12,Zhu Jia5,Lin Yuan5,Xu Huanlan6,Yang Hongbo12,Cheng Xiankai12,Cheng Huanyu3ORCID

Affiliation:

1. School of Biomedical Engineering (Suzhou) Division of Life Sciences and Medicine University of Science and Technology of China Hefei 230022 P. R. China

2. Suzhou Institute of Biomedical Engineering and Technology Chinese Academy of Science Suzhou 215011 P. R. China

3. Department of Engineering Science and Mechanics The Pennsylvania State University University Park PA 16802 USA

4. Department of Developmental and Behavioral Pediatrics The First Hospital of Jilin University Changchun 130021 P. R. China

5. School of Material and Energy University of Electronic Science and Technology of China Chengdu 610054 P. R. China

6. Department of Rehabilitation Medicine Children's Hospital of Soochow University Suzhou 215025 P. R. China

Abstract

AbstractGeneral movements (GMs) have been widely used for the early clinical evaluation of infant brain development, allowing immediate evaluation of potential development disorders and timely rehabilitation. The infants’ general movements can be captured digitally, but the lack of quantitative assessment and well‐trained clinical pediatricians presents an obstacle for many years to achieve wider deployment, especially in low‐resource settings. There is a high potential to explore wearable sensors for movement analysis due to outstanding privacy, low cost, and easy‐to‐use features. This work presents a sparse sensor network with soft wireless IMU devices (SWDs) for automatic early evaluation of general movements in infants. The sparse network consisting of only five sensor nodes (SWDs) with robust mechanical properties and excellent biocompatibility continuously and stably captures full‐body motion data. The proof‐of‐the‐concept clinical testing with 23 infants showcases outstanding performance in recognizing neonatal activities, confirming the reliability of the system. Taken together with a tiny machine learning algorithm, the system can automatically identify risky infants based on the GMs, with an accuracy of up to 100% (99.9%). The wearable sparse sensor network with an artificial intelligence‐based algorithm facilitates intelligent evaluation of infant brain development and early diagnosis of development disorders.

Funder

National Key Research and Development Program of China

National Institutes of Health

National Science Foundation

Pennsylvania State University

National Natural Science Foundation of China

Publisher

Wiley

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