4.7 Editorial Material

Brining it all together: wearable data fusion

Related references

Note: Only part of the references are listed.
Article Multidisciplinary Sciences

Reshaping healthcare with wearable biosensors

Aaron Asael Smith et al.

Summary: Wearable health sensors can monitor the wearer's health and surrounding environment in real-time. With advancements in sensor and operating system hardware technology, these devices have become more accurate and diverse in terms of functions and physiological indicators. They contribute significantly to improving personalized healthcare.

SCIENTIFIC REPORTS (2023)

Review Computer Science, Artificial Intelligence

A systematic review of trustworthy and explainable artificial intelligence in healthcare: Assessment of quality, bias risk, and data fusion

A. S. Albahri et al.

Summary: In recent years, there has been a significant shift in the healthcare sector towards embracing artificial intelligence (AI) to improve disease diagnosis accuracy and mitigate health risks. However, the development of trustworthy and explainable AI (XAI) in healthcare is still in its early stages. This study provides a systematic review of the trustworthiness and explainability of AI applications in healthcare, focusing on quality, bias risk, and data fusion, to offer more accurate insights and recommendations.

INFORMATION FUSION (2023)

Article Computer Science, Artificial Intelligence

Multi-modal gait: A wearable, algorithm and data fusion approach for clinical and free-living assessment

Y. Celik et al.

Summary: Gait abnormalities are often associated with neurological conditions or orthopaedic problems, leading to limited mobility and falls. Utilizing a multi-modal approach to gait analysis is crucial for identifying underlying deficits and developing effective rehabilitation programs. Wearable technology, such as sensors, plays a key role in providing reliable and extended gait analysis beyond traditional lab settings.

INFORMATION FUSION (2022)

Article Health Care Sciences & Services

Evaluation of physical health status beyond daily step count using a wearable activity sensor

Zheng Xu et al.

npj Digital Medicine (2022)

Article Automation & Control Systems

Multimodal Gait Recognition for Neurodegenerative Diseases

Aite Zhao et al.

Summary: This article proposes a novel hybrid model to learn gait differences between different neurodegenerative diseases, Parkinson's disease severity levels, and healthy individuals and patients through fusion and aggregation of data from multiple sensors. The model utilizes a spatial feature extractor and a new correlative memory neural network architecture to capture temporal information, along with a multiswitch discriminator to associate observations with individual state estimations. Compared to several state-of-the-art techniques, the framework shows more accurate classification results.

IEEE TRANSACTIONS ON CYBERNETICS (2022)

Article Engineering, Biomedical

Gait analysis in neurological populations: Progression in the use of wearables

Y. Celik et al.

Summary: Gait assessment is crucial in clinical settings for diagnosing and monitoring neurological conditions, with established methods and models for data collection and interpretation. This review depicts the evolution of gait assessment, from observation to wearable sensors, and discusses limitations and future directions in the field. Commercially available technologies and algorithms for neurological gait assessment are presented, along with discussions on the use of wearables and possible research directions.

MEDICAL ENGINEERING & PHYSICS (2021)

Review Engineering, Biomedical

Application of data fusion techniques and technologies for wearable health monitoring

Rachel C. King et al.

MEDICAL ENGINEERING & PHYSICS (2017)

Review Engineering, Biomedical

Wearable inertial sensors for human movement analysis

Marco Iosa et al.

EXPERT REVIEW OF MEDICAL DEVICES (2016)

Review Computer Science, Information Systems

Toward Pervasive Gait Analysis With Wearable Sensors: A Systematic Review

Shanshan Chen et al.

IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS (2016)

Review Engineering, Electrical & Electronic

Challenges and Issues in Multisensor Fusion Approach for Fall Detection: Review Paper

Gregory Koshmak et al.

JOURNAL OF SENSORS (2016)

Review Multidisciplinary Sciences

A Review of Data Fusion Techniques

Federico Castanedo

SCIENTIFIC WORLD JOURNAL (2013)

Article Computer Science, Artificial Intelligence

A review of data fusion models and architectures: Towards engineering guidelines

J Esteban et al.

NEURAL COMPUTING & APPLICATIONS (2005)