2021
DOI: 10.2196/29769
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Application of Inertial Measurement Units and Machine Learning Classification in Cerebral Palsy: Randomized Controlled Trial

Abstract: Background Cerebral palsy (CP) is a physical disability that affects movement and posture. Approximately 17 million people worldwide and 34,000 people in Australia are living with CP. In clinical and kinematic research, goniometers and inclinometers are the most commonly used clinical tools to measure joint angles and positions in children with CP. Objective This paper presents collaborative research between the School of Electrical Engineering, Computi… Show more

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Cited by 12 publications
(5 citation statements)
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“…Table 4 presents some recent advancements in detection and diagnosis for biosensing applications. 96–128 Sensors based on diverse functionalities and constituents, such as capacitive pressure sensing, healing wearable sensors, pressure, wireless, FRET-based genetically encoded sensors for silver ions, oxygen sensors on an optofluidic platform, location tracking, metamaterials based on soft tactile, electrospinning-based PVDF-TrFE nanofiber sensors, glycine–chitosan-based biodegradable piezoelectric sensors, and DNA-regulated CRISPR-Cas12a sensors, represent important advances in the biosensor field. 96–106 Detection is based on diverse approaches, including paper-based devices, 3D-printing electrochemical, MoS 2 quantum dots, 2D nanomaterial-enhanced plasmonic functionality, smartphone-integrated colorimetric, PVDF-TrFE nanofiber, electronic, machine learning, fluorescent DNA, non-enzymatic glucose, and silicon nanowire biosensing platforms for the (bio)detection of various analytes ranging from metal, pollutants, cells, genetic materials, and even post-translational modification.…”
Section: Recent Advancements In Sensor-based Detection and Diagnosismentioning
confidence: 99%
“…Table 4 presents some recent advancements in detection and diagnosis for biosensing applications. 96–128 Sensors based on diverse functionalities and constituents, such as capacitive pressure sensing, healing wearable sensors, pressure, wireless, FRET-based genetically encoded sensors for silver ions, oxygen sensors on an optofluidic platform, location tracking, metamaterials based on soft tactile, electrospinning-based PVDF-TrFE nanofiber sensors, glycine–chitosan-based biodegradable piezoelectric sensors, and DNA-regulated CRISPR-Cas12a sensors, represent important advances in the biosensor field. 96–106 Detection is based on diverse approaches, including paper-based devices, 3D-printing electrochemical, MoS 2 quantum dots, 2D nanomaterial-enhanced plasmonic functionality, smartphone-integrated colorimetric, PVDF-TrFE nanofiber, electronic, machine learning, fluorescent DNA, non-enzymatic glucose, and silicon nanowire biosensing platforms for the (bio)detection of various analytes ranging from metal, pollutants, cells, genetic materials, and even post-translational modification.…”
Section: Recent Advancements In Sensor-based Detection and Diagnosismentioning
confidence: 99%
“…Additionally, a recent systematic review of children with physical and intellectual disabilities (including children with CP) reports a consistent positive association between physical activity and mental health, including improved psychological well-being and reduced anxiety and fatigue [ 30 ]. With an increasing number of studies evaluating interventions to promote physical activity in children with neuromotor disorders [ 2 , 31 33 ], reliable and valid measures of physical activity are crucial to assess baseline physical activity and to track physical activity over time [ 34 ].…”
Section: Physical Activity In Children With Neuromotor Disordersmentioning
confidence: 99%
“…The primary focus of existing ML models for 3DGA in children lies in gait classification ( Kamruzzaman and Begg, 2006 ; Zhang et al, 2009 ; Zhang and Ma, 2019 ; Choisne et al, 2020 ; Khaksar et al, 2021 ) rather than the development of models for predicting gait time series. There are only a handful of studies focused on predicting children’s gait using ML techniques ( Kwon et al, 2012 ; Vigneron et al, 2017 ; Morbidoni et al, 2021 ; Kolaghassi et al, 2022 ; Kolaghassi et al, 2023 ).…”
Section: Introductionmentioning
confidence: 99%